Literature DB >> 28288648

Assessment of pre-injury health-related quality of life: a systematic review.

Annemieke C Scholten1, Juanita A Haagsma1, Ewout W Steyerberg1, Ed F van Beeck1, Suzanne Polinder1.   

Abstract

BACKGROUND: Insight into the change from pre- to post-injury health-related quality of life (HRQL) of trauma patients is important to derive estimates of the impact of injury on HRQL. Prospectively collected pre-injury HRQL data are, however, often not available due to the difficulty to collect these data before the injury. We performed a systematic review on the current methods used to assess pre-injury health status and to estimate the change from pre- to post-injury HRQL due to an injury.
METHODS: A systematic literature search was conducted in EMBASE, MEDLINE, and other databases. We identified studies that reported on the pre-injury HRQL of trauma patients. Articles were collated by type of injury and HRQL instrument used. Reported pre-injury HRQL scores were compared with general age- and gender-adjusted norms for the EQ-5D, SF-36, and SF-12.
RESULTS: We retrieved results from 31 eligible studies, described in 41 publications. All but two studies used retrospective assessment and asked patients to recall their pre-injury HRQL, showing widely varying timings of assessments (soon after injury up to years after injury). These studies commonly applied the SF-36 (n = 13), EQ-5D (n = 9), or SF-12 (n = 3) using questionnaires (n = 14) or face-to-face interviews (n = 11). Two studies reported prospective pre-injury assessment, based on prospective longitudinal cohort studies from a sample of initially non-injured patients, and applied questionnaires using the SF-36 or SF-12. The recalled pre-injury HRQL scores of injury patients consistently exceeded age- and sex-adjusted population norms, except in a limited number of studies on injury types of higher severity (e.g., traumatic brain injury and hip fractures). All studies reported reduced post-injury HRQL compared to pre-injury HRQL. Both prospective studies reported that patients had recovered to their pre-injury levels of physical and mental health, while in all but one retrospective study patients did not regain the reported pre-injury levels of HRQL, even years after injury.
CONCLUSIONS: So far, primarily retrospective research has been conducted to assess pre-injury HRQL. This research shows consistently higher pre-injury HRQL scores than population norms and a recovery that lags behind that of prospective assessments, implying a systematic overestimation of the change in HRQL from pre- to post-injury due to an injury. More prospective research is necessary to examine the effect of recall bias and response shift. Researchers should be aware of the bias that may arise when pre-injury HRQL is assessed retrospectively or when population norms are applied, and should use prospectively derived HRQL scores wherever possible to estimate the impact of injury on HRQL.

Entities:  

Keywords:  Disability; General population norms; Health-related quality of life; Pre-injury HRQL; Retrospective measurement; Wounds and injuries

Mesh:

Year:  2017        PMID: 28288648      PMCID: PMC5348891          DOI: 10.1186/s12963-017-0127-3

Source DB:  PubMed          Journal:  Popul Health Metr        ISSN: 1478-7954


Background

Insight into the change from pre- to post-injury health status of trauma patients is important in order to derive population estimates of the impact of injuries on health-related quality of life (HRQL). The difficulty in measuring the impact of injuries is that the patient’s HRQL after sustaining an injury may be influenced by factors other than the injury [1]. For instance, pre-existing comorbidity may contaminate our estimates of the injury-related disability, since HRQL scores might incorporate the impact of one or more comorbid diseases instead of solely reflecting the impact of the injury. To overcome attribution bias (i.e., attributing post-injury HRQL scores solely to the injury when it may have been caused by other factors), information on pre-injury HRQL is vital to make valid estimates of the change from pre- to post-injury HRQL due to the injury under study. However, prospectively collected information on the pre-injury HRQL of injury patients is difficult to obtain. This has led researchers to use alternative methods to assess the contrast between pre-injury and post-injury HRQL, such as use of patient recall or retrospective baseline scores (in other words, pre-injury HRQL that is assessed after sustaining the injury). However, retrospective baseline scores of pre-injury health status are potentially subject to bias [2, 3]. Patients may remember their pre-injury HRQL as better or worse than it actually was (recall bias) [2]. Moreover, patients’ perception on HRQL may change after the injury, due to a change in internal standards or values (response shift) [4]. This change in perception of HRQL after the injury may also affect the retrospectively assessed pre-injury HRQL. Other methods are the application of general population norms (i.e., using normative values from the general population as a reference point for the health status before the injury), or the use of a matched non-injured comparison group as a baseline to assess the reduction in health due to the injury. The application of population norms or a matched non-injured comparison group may lead to an inaccurate estimate of the change in health status, as injured people may differ from the general non-injured population [5, 6]. Research indicated that injured people have a higher prevalence of comorbidity, hospitalization, and health service utilization prior to their injury in comparison to non-injured people [5]. This suggests that pre-injury health status is worse compared to population norms and conflicts with the reported better pre-injury health status compared to the general population [6-8]. On the other hand, the injured population might be healthier and more likely to participate in activities, exposing them to a higher risk of injuries [6]. The current systematic review identifies the methods that are used to assess pre-injury health status of trauma patients and to estimate the change from pre- to post-injury HRQL due to an injury. Moreover, bias that may occur from these methods is examined, by comparing the reported pre-injury HRQL scores with population norms by calculating age- and gender-specific norm scores based on the demographics of the included study samples. The objectives of this study are: To identify the methods which are used to measure pre-injury HRQL; To compare the reported pre-injury HRQL scores with calculated general age- and gender-adjusted norms; To address the pre-injury HRQL scores per HRQL instrument and injury type; To examine the change between pre- and post-injury HRQL in injury patients; and To formulate recommendations for future studies on (pre-injury) HRQL.

Methods

Relevant studies were identified through systematic literature searches in the databases EMBASE, MEDLINE (via Ovid SP), Cochrane Central, PubMed, Web of Science, SCOPUS, PsycINFO, CINAHL, Lilacs, Scielo, ScienceDirect, and ProQuest. Grey literature was examined via Google Scholar. Search strategies were developed in consultation with a search expert, and included a combination of subheadings and text words (Appendix). Reference lists and citation indices of the included papers and relevant reviews were inspected to identify additional relevant citations.

Study selection

We included studies that assessed the pre-injury HRQL of injury patients, published in English in peer-reviewed journals until July 6, 2015. We included studies on general injury populations, as well as injury-specific studies (e.g., traumatic brain injury or hip fractures). There was no restriction in the methods of patient selection used in the studies (e.g., samples drawn from the Emergency Department (ED), hospital, or outpatient programs). HRQL was conceptualized as an individual’s perception of how an illness and its treatment affect physical, mental, and social aspects of his/her life [9]. Studies that assessed only some domains of HRQL (e.g., functional status, activities of daily living, mobility, mental health) were excluded. We included studies that assessed the HRQL of patients before the injury, whether assessed before the injury or retrospectively. Studies that solely used population norms, as a substitute of pre-injury HRQL, were excluded. For studies using data from the same study sample, one study was chosen as the reference study by giving priority to the study that focused on reporting pre-injury HRQL summary scores or utility scores (e.g., instead of percentage of problems per HRQL domain).

Data extraction and methodological quality

The first review author (AS) screened all titles and abstracts and deleted obviously irrelevant papers. Two independent review authors (AS and SP) screened the remaining citations on title and abstract and those obtained in full text. Results from both reviewers were compared by a third review author (JH) and any disagreement was be resolved by discussion between the three authors. We extracted information on the participants (age and gender), injury (type, severity, and mechanism), the assessment of pre-injury HRQL (instrument, procedure, and timing), and recovery of injury patients (change between pre- and post-injury HRQL). The methodological quality of the studies was evaluated with four elements of the STROBE checklist [10] which were most relevant to the quality of reported pre-injury HRQL by injury type: setting, participants, data sources/measurement, and study size. In addition, risk of bias was assessed using items from the Research Triangle Institute item bank for observational studies on attrition bias (“Impact missing data adequately assessed”) and reporting bias (“No important primary outcomes missing”) [11].

Statistical analysis

Pre-injury HRQL scores from the study samples were compared with norm scores derived from the general population. To provide population norms for all studies, we used norms by age and sex groups of the EQ-5D (UK population) [12], SF-36 [13], and SF-12 [14] (both US population) to calculate age- and gender-adjusted norms based on the demographics in the study samples. Heterogeneity between pre-injury HRQL scores was assessed with the Q-statistic and I2-statistic, using a random-effects model in a Microsoft Excel spreadsheet [15]. The Q-statistic is a Chi2-test for heterogeneity, which assesses whether observed differences in results are compatible with chance alone. A significant Q (low p-value) indicates heterogeneity among the HRQL scores and a variation that is beyond chance [16]. The I2-statistic describes the percentage of variation across studies that is due to heterogeneity rather than chance, with an I2 value of 25% or lower is associated with low heterogeneity, 50% indicating substantial heterogeneity, and 75% or higher indicating high heterogeneity [17]. In case of substantial or high heterogeneity, pooled results should not be calculated, or at the very least, should be interpreted with caution.

Results

Literature search

The extensive search strategy identified 2,286 unique titles of potentially relevant articles (Fig. 1). Screening of the titles and abstracts resulted in a selection of 383 articles that appeared to meet all selection criteria. After screening and selection of the full text papers, we retrieved 31 studies described in 41 publications. The main reasons for exclusion were not measuring pre-injury health status, not reporting on injuries or only reporting part of the outcomes on HRQL.
Fig. 1

Study selection

Study selection

Study characteristics

Of the 31 studies included in our systematic review, most were conducted in the US (n = 8) [18-25], Australia (n = 5) [6, 26–29], and Canada (n = 5) [30-34] (Table 1). Eight studies measured the pre-injury HRQL of patients with a hip fracture [24, 30, 34–39], followed in frequency by extremity injury (n = 6) [19, 23, 32, 37, 40, 41], general injury (n = 5) [8, 29, 31, 42, 43] and traumatic brain injury (TBI, n = 4) [22, 25, 27, 44]. Sample sizes of the studies varied widely, ranging between 34 [33] and 2,842 [8] participants, with most studies having sample sizes between 100 and 600 (n = 17). The majority of the participants were males (>50% men in 20 out of the 31 studies). The nine studies that included more women than men [18, 23, 30, 34, 36, 38, 39, 45, 46] often focused on hip fractures (n = 5) [30, 34, 36, 38, 39], or reported on the outcomes after a motor vehicle crash of a longitudinal (annual) survey (n = 2) [18, 46]. The mean age of the participants in the included studies ranged between 10 [19] and 87 [30], with an average of 30 to 54 in half (n = 16) of the studies and 75+ in six of the 31 included studies. Four studies measured the pre-injury HRQL for children and adolescents [19, 22, 25, 31], of which the author names are indicated in bold in Table 1.
Table 1

Study characteristics

Author, year, country, designType of injurySettingStudy sampleInstrumentAssessmentFocus of pre-injury and follow-up assessmentsAnalysis
CohortInclusion /Exclusion N (response); age; % men; severityMethodTimingComparison groups
Alghnam, 2014, US [18] A Motor vehicle injury vs no MVC Medical expenditure panel survey (MEPS) 18 + y N = 993; MVC: 18-45y 68%; 46% No MVC: 18-45y 51%; 47% SF-12 Questionnaires Pre: prospective Post: max 9 m NR MVC vs no MVC
Andrew, 2012, Australia [26] A Orthopedic injury (sport/recreation)Trauma services/Hospital (VOTOR)18-75y N = 317 (73%); 40y (13); 73%ISS > 15 19%SF-36 (v2)Telephone interviewsPre: 1-2wPost: 12 mPre: 4w before injuryPost: NRType of sport/recreation
Beaupre, 2012, Canada [30] A Hip fractureNursing home facilities65 + y; Previously ambulatory nursing home residents N = 60 (65%); 87y (8), 62–104; 30%EQ-5D(Telephone) InterviewsPre: NRPost: 3 m, 6 m, 12 mPre: just before injuryPost: NRSurvival status
Brussoni, 2013, Canada [31] D General injuryPediatric ED/hospital0-16y N = 232 (67%); 0-4y 33%, 5-16y 67%; 61% boysEQ-5D (3 L, VAS)Questionnaires (child/proxy)Pre: 1d before injuryPost: NRLength of hospital stay
Buecking, 2014, Germany [35] A Hip fracture (Proximal femoral)Hospital/Surgical fracture treatment>60y; No ISS ≥ 16; No malignancy-related fractures N = 350 (65%); 81y (8), 60–99; 73%EQ-5D (3 L, VAS)German normsQuestionnairesPre: at admissionPost: at dischargePre: before injuryPost: current status
Busse, 2012, Canada [32] E Tibia fractureMulticenter (SPRINT)Operative fixation intramedullary nail N = 1319; 39y (16); 74%SF-36QuestionnairesPre: at the time of enrollmentPost: 2w, 12 mPre: before injuryPost: NR
Ding, 2006, US [19] A Extremity fracture (Long bone or pelvic)Pediatric hospital5-15y, Hospitalized ≥1d; No TBI N = 100 (85%); 10y (3); 66%; NISS: 8 (5)PedsQLTelephone interviewsPre: soon after injury (median 9d)Post: 3 m, 12 mPre: before injuryPost: post-injuryUpper/lower extremity; HRQL domains
Dvorak, 2005, Canada [33] B,C Vertebral fracture (C1, Jefferson)Databases18 + y; No neurological injury; Disruption of anterior and posterior atlantal arches N = 34 (60%); 48y (21); 68%SF-36Canadian normsQuestionnaire (by mail/phone)Not reportedPre: before injuryPost: current statusCanadian norms
Fauerbach, 1999, US [20] A Burn injuryBurn centerAdults N = 86; 42y (15); 78SF-36QuestionnairePre: first 73 h after admissionPost: 2 m after dischargePre: month before injuryPost: past monthPost Traumatic Distress (PTD) vs no PTD; HRQL domains; US norms
Gabbe, 2007, Australia [6] A Orthopedic injuryHospital (VOTOR)18 + y; New orthopedic injury N = 1839 (77%); 45y, 21–65; 60%SF-12Interviews/QuestionnairesPre: in-hospital/soon after dischargePost: NAPre: week before injuryPost: NAMen vs womenAustralian norms
Greenspan, 2002, US [21] A Gunshot injuryHospital18-64y; <24 h after injury N = 60 (38%); 30y (9); 92%ISS 1–9 57%; MAIS 3 48%SF-36(Telephone) InterviewsPre: in-hospital/soon after dischargePost: 8 m after dischargePre: pre-injury statusPost: current statusHRQL domains;UK norms
Griffin, 2015, UK [36] A Hip fractureHospital60 + y; operatively managed N = 741 (83%); 80 + y 67%; 25%EQ-5D (3 L)(Telephone) InterviewsNo response: questionnaires (post)Pre: in-hospital/soon after dischargePost: 4w, 4 m, 12 mPre: pre-injury statusPost: NRAge
Gross, 2012, Switzerland [44]A TBI vs no TBIICU≥2 AIS regions, ISS > 16; GCS < 14, AISH > 2No secondarily admissions N = 170 (65%); 40y (21); 75%ISS 28 (8); GCS 11 (5)EQ-5D (3 L, VAS)German normsSF-36 (v1)Postal questionnairesPre & post: 2yPre: pre-injury statusPost: post-injury statusTBI vs non-TBI
Hagino, 2009, Japan [37]A Hip fractureVertebral fractureWrist fractureHospitalWomen; 45 + y; No malignancy-related fractures; Lower-energy; Minor trauma N = 122; Hip 76 (10), 49–91; Vertebral 73 (10), 48–91; Wrist 69 (10), 49-88EQ-5DJapanese normsQuestionnairesPre: first visit/admissionPost: 2w, 3 m, 6 m, 12 mPre: period before injuryPost: NRHip vs vertebral vs wrist
Innocenti, 2015, Italy [43] A General injuryED-HDU N = 153 (51%); 54y (22); 67%ISS 12 (9)SF-12Italian normsTelephone interviewsPre & post: 6 m after ED dischargePre: before injuryPost: current statusChange HRQL domainsItalian norms
Jaglal, 2000, Canada [34] E Hip fractureHospitalLiving independently; No cognitive impairment N = 43; 81y (8); 19%SF-36(Telephone) InterviewsPre: in-hospitalPost: 6w, 6 m after injuryPre: before injuryPost: NRHRQL domains
Jimenez, 2013, US [22] A TBIHospital (CHAI)<18y; discharged alive from EDHispanic or non-Hispanic white N = 531 (73%); 0–9 50%; 65% boys; MAIS 1 46%PedsQL (Spanish)(Telephone) InterviewsPre: soon after injury (median 37d)Post: 3 m, 12 m, 24 m, 36 mPre: period before injuryPost: NRHispanic vsnon-Hispanic white
Lyrtzis, 2012, Greece [41] A Ankle sprain (2nd degree)Not reportedInjury at 1 limb; No previous ankle injury; No fracture; <24 h after injury; no analgesic N = 78 (98%); 36y (13); 74%SF-36QuestionnairesPre: day of injuryPost: 10dPre: before injuryPost: 10d since injuryHRQL domains
McGuine, 2014, US [23] A Knee injurySports medicine center/clinicWomen; 13-23y; Injury during regular fitness or sport activities N = 255 (91%); 17y (2), 13–23; 0%SF-12 (v2)QuestionnairesPre: initial visit (median 12d)Post: diagnosis, 3 m, 6 m, 12 mPre: 1w before injuryPost: since injuryUS norms
Ottosson, 2007, Sweden [45] A Musculoskeletal injuryED15 + y N = 318 (39%); 39y (15); 46%SF-36QuestionnairesPre: at inclusionPost: 1 m, 6 mPre: week before injuryPost: NRSwedish norms
Peterson, 2008, US [24] E Hip fractureHospitalHip fracture surgery>65y; Not mentally impaired; Living independently N = 105 (NR); alive – 79 (8); NRSF-36 (v1)QuestionnairesPre: NRPost: 1stw after operationPre: 4w before injuryPost: NRSurvival status;HRQL domains
Pieper, 2014, US [25] Related: [60] A TBI vs no TBIPediatric ED (Self-selected sample)5-17y; discharge <24 h N = 40 mBTI, 40 no TBITBI: 12y (3); 80%; no TBI: 10y (3); 63%PedsQL (4.0 Generic)(Telephone) InterviewsPre: initial contactPost: 1 m, 3 m, 6 m, 12 mPre: week before injuryPost: NRmTBI vs no TBI vs no injury; Children vs parents (proxy); HRQL domains
Ponsford, 2011,Australia [27] A Related: [61]TBI vs no TBIHospital18 + y; <24 h after injury N = 123 (63%) mTBI, 100 (30%) no TBImTBI: 35y (13); 74%; no TBI: 35y (11); 64%SF-36QuestionnairesPre: within 48 h after injuryPost: 1w, 3 mPre: before injuryPost: current, past 4wmTBI vs no TBI
Pons-Villanueva, 2011, Spain [46] A Motor vehicle injury vs no MVC University graduates (SUN) N = 64 MVC, 3297 no MVC (91%) 40y; 38% SF-36 Questionnaires Pre: prospective Post: 4y, 8y NR MVC vs no MVC; HRQL domains
Skoog, 2001, Sweden [40]Tibia shaft fractureHospitalNo pathologic fractures or fractures adjacent to implant N = 64; 45y (19), 14–93; 56%SF-36Interviews/QuestionnairesPre: during hospitalizationPost: 4 m, mean 13 mPre: before injuryPost: not reportedSwedish norms
Sugeno, 2008, Japan [38] A Hip fractureHospitalNo severe cognitive decline N = 50 (44%); 77y (10); 20%EQ-5D (3 L, VAS)InterviewsPre: 1/2d after admissionPost: discharge, 3 m, 6 m, 12 m after admissionNR
Tidermark, 2002, Sweden [39] A Hip fracture (Falls)ED65 + y; Living independently N = 90; 80y (7), 66–92; 37%EQ-5D (3 L, VAS)UK normsInterviews/Questionnaires (post)Pre: first days after injuryPost: 1w, 4 m, mean 17 m (2))Pre: week before injuryPost: NRAge (60–88); Gender; Fracture outcome; Survival status;Swedish norms
Ulvik, 2008, Norway [42] A General injuryClosed ICU (neurosurgery)>18y N = 210 (92%); 39y (17), 18–83; 81%ISS (median) 25; 4-54EQ-5DTelephone interviewsPre & post: 2-7y (median 4y)Pre: before injuryPost: current status
Wasiak, 2014, Australia [28] A Burn injuryBurn center18 + y; TBSA > 10% N = 99 (79%); 42y (2); 75%SF-36 (v2)QuestionnairesPre: not reportedPost: 12 mNRAustralian norms
Watson, 2005, Australia [29] A Related: [7]General injuryHospital18-74y; No self-inflicted injury;No neurological deficit N = 221 (88%); 38y; 72%SF-36InterviewsPre: in hospital / 1stwPost: 6w, 3 m, 6 m, 12 mPre: previous weekPost: previous weekAge; Gender; Work status; Employment; Australian norms
Wilson, 2012, New Zealand [8] A Related: [6264]General injuryAccident Compensation Corporation entitlement claims register18-64y; No self-harm or sexual assault N = 2.842; 18-34y 35%, 35-64y 47%; 61%EQ-5DNew Zealand normsInterviewsPre: 3.2 mPost: 4.6 m, 12.3 mPre: before injuryPost: current statusRecovery status;New Zealand norms

(Bold author names are studies of children; Studies in bold and italics prospectively measured pre-injury HRQL)

Design: a Prospective cohort, b Retrospective cohort, c Cross-sectional, d Validation study, e Randomized controlled trial

h hour, d day, w week, m month, y year, AIS abbreviated injury scale, ED emergency department, GCS Glasgow Coma Scale, NR not reported, MVC injury due to motor-vehicle crash, Ortho orthopedic injury, TBI traumatic brain injury

Study characteristics (Bold author names are studies of children; Studies in bold and italics prospectively measured pre-injury HRQL) Design: a Prospective cohort, b Retrospective cohort, c Cross-sectional, d Validation study, e Randomized controlled trial h hour, d day, w week, m month, y year, AIS abbreviated injury scale, ED emergency department, GCS Glasgow Coma Scale, NR not reported, MVC injury due to motor-vehicle crash, Ortho orthopedic injury, TBI traumatic brain injury

Methodological quality

Over half (n = 19) of the 31 articles included in our review reported on attrition. Most studies faced several problems in the participation of eligible patients, as patients refused to participate (n = 15), could not be contacted (n = 6), did not complete the HRQL assessment (n = 6), had died (n = 5), or were not able to respond to the questionnaires (e.g., due to the consequences of the trauma, n = 3). Overall, response rates ranged from 60 to 98% in 17 of the 22 studies that reported on response rates. Limited variation existed in the selection of samples between the studies. Most patients were recruited during or after a treatment in a (pediatric) hospital (n = 21), while others were selected from a specialized burn center (n = 2) [20, 28], sports center (n = 1) [23], or nursing home facility (n = 1) [30]. In four out of the 31 studies, the measurement of pre-injury HRQL was one of the primary aims [8, 18, 46], while in all other studies pre-injury HRQL scores were used to assess the change in HRQL after the injury or to validate HRQL instruments.

Methods to measure pre-injury HRQL

The 36-item Short-Form (SF-36, n = 14) [21, 24, 26–29, 32–34, 40, 41, 45–47] was the most frequently used instrument to assess the pre-injury HRQL of injury patients, followed by the EuroQol-5 Dimension Questionnaire (EQ-5D, n = 9) [8, 30, 31, 35–39, 42], and the SF-12 (n = 4) [6, 18, 23, 43] (Table 1). The remaining studies used the Pediatric Quality of Life Inventory (PedsQL, n = 3) [19, 22, 25], or a combination of the EQ-5D and SF-36 (n = 1) [44]. The majority of the studies assessed the participants’ pre-injury HRQL by using a questionnaire (n = 16) [18, 20, 22–24, 27, 28, 31–33, 35, 37, 41, 44–46] or a face-to-face interview (n = 11) [8, 21, 25, 29, 30, 34, 36, 38–40]. At follow-up, most studies used questionnaires (n = 17) [18, 23, 24, 27, 28, 31–33, 35, 37, 39–41, 44–47] followed by the use of telephone interviews (n = 10) [19, 21, 22, 25, 26, 30, 34, 36, 42, 43]. All but two studies in this review retrospectively assessed the pre-injury HRQL of patients, by asking them to recall their HRQL before the injury occurred. Only two studies provided prospectively collected pre-injury health status of participants [18, 46] (articles in bold and italics in Table 1): the Medical Expenditure Panel Survey (MEPS) [18] and the Seguimiento Universidad de Navarra (SUN) [46] cohort. These studies used data from longitudinal cohort studies in which participants who were initially non-injured were followed for several years, by means of questionnaires comprising the SF-36 [46] or SF-12 [18]. In addition, only one of the included studies measured the recalled pre-injury health status of trauma patients and not their post-injury HRQL [6], while all other studies measured both pre- and post-injury HRQL. Pre-injury scores were often reported as assessed “soon after” injury or admission (n = 12), in-hospital or “soon after” discharge (n = 5) [21, 29, 34, 36], at inclusion or initial contact/visit (n = 5) [23, 25, 32, 37, 45], within six months after ED discharge (n = 2) [8, 43], or years after injury (n = 2) [42, 44]. The focus of the questionnaire and/or interviews (i.e., a specified period prior to the injury) was often not specifically defined (e.g., “before the injury,” n = 15) or not reported (n = 2) [28, 38]. The studies that specified the period of their pre-injury assessment used a day before injury (n = 1) [31], “just” before injury (n = 1) [30], a week before injury (n = 4) [25, 39, 45], the previous week (n = 2) [23, 29], or the month or four weeks before injury (n = 3) [20, 24, 26]. Most studies (n = 16) made a comparison of pre-injury HRQL between injury patients or with controls (e.g., TBI vs. no TBI) [18, 19, 25, 27, 37, 44, 46], between subgroups (e.g., by age, gender, ethnicity) [6, 22, 29, 36, 39], or between survival or recovery status (e.g., survived vs. dead, recovered vs. not recovered) [8, 24, 30, 39]. In addition, twelve studies compared the participants’ pre-injury health status with general population norms [8, 20, 21, 23, 28, 29, 33, 39, 40, 43, 45].

Comparison of pre-injury HRQL between injury patients and with population norms

Within-study comparisons between retrospectively collected pre-injury HRQL and general population norms indicated that self-reported pre-injury HRQL scores were consistently higher than population norm scores (n = 3) [8, 29, 48]. Three studies found that scores were higher in either the physical domains (n = 3) [20, 21, 28] or mental domains (n = 1) [20] or in certain age or sex groups (n = 1) [6]. Five studies found no differences between the recalled pre-injury HRQL and population norms (n = 5) [33, 39, 40, 43, 45] (Table 2).
Table 2

Pre- and post-injury HRQL

Author, year, countryInstrumentPre-injury HRQLPost-injury HRQLChangeFindings
Post-injury vs pre-injury
General injury
Brussoni, 2013, Canada [31]EQ-5DNot admitted: 0.971-3d: 0.944 + d: 0.93Not admitted: 0.901-3d: 0.764 + d: 0.61Not admitted: −0.071-3d: −0.184 + d: −0.32All categories of length of stay in hospital had significantly lower HRQL at follow-up than at baseline
Ulvik, 2008, Norway [42]EQ-5D0.970.70−0.27a Significant decrease in HRQL in all dimensions
Wilson, 2012, New Zealand [8]EQ-5D0.945 m: 0.7512 m: 0.785 m: −0.1912 m: −0.16Significantly higher pre-injury HRQL than New Zealand norms. Recovered had significantly higher post-injury HRQL than norms. Non-recovered had significantly lower HRQL than norms.
Watson, 2005, Australia [29]SF-36PCS 55; MCS 551w: PCS 25; MCS 466w: PCS 34; MCS 5312w: PCS 38; MCS 5526w: PCS 43; MCS 5252w: PCS 44; MCS 521w: PCS −30; MCS −96w: PCS −21; MCS −212w: PCS −17; MCS 026w: PCS −12; MCS −352w: PCS −11; MCS −3Consistently higher pre-injury scores than Australian norms. Males had higher pre-injury PCS and MCS than females. 18-24y and 65-74y had highest pre-injury MCS. Those with pre-injury paid-employment had significantly higher pre-injury PCS than those without.
Innocenti, 2015, Italy [43]SF-12PCS 53 (7), 24–64MCS 55 (7), 28-636 m: PCS 41 (12), 14–646 m: MCS 46 (13), 16-67PCS −12a MCS −9a 93% pre-injury PCS and MCS in normal range according to Italian norms. Significant worse HRQL after 6 m.
Traumatic brain injury
Gross, 2012, Switzerland [44]EQ-5DSF-36TBI: 99 (4); no TBI: 95 (14) TBI PCS 57 (6); MCS 50 (11) no TBI PCS 56 (7); MCS 51 (12)TBI: 65 (28); no TBI: 76 (21)TBI - PCS: 44 (12); MCS: 39 (13) no TBI - PCS: 45 (11); MCS: 48 (13)TBI: −34; no TBI: −19 TBI PCS −13; MCS −11 no TBI PCS −11; MCS −3TBI had significantly worse HRQL compared with no TBI (on EQ VAS, EQ-5D, MCS, but not on PCS)
Ponsford, 2011, Australia [27]SF-36 mTBI PCS 54 (6); MCS 49 (8) no TBI PCS 54 (6); MCS 53 (7)1w: mTBI PCS: 38 (10); MCS: 44 (11)1w: no TBI PCS:36 (10); MCS: 49 (11)3 m: mTBI PCS: 52 (9); MCS: 48 (10)3 m: no TBI PCS: 50 (9); MCS: 53 (7)1w: mTBI PCS: −16; MCS: −51w: no TBI PCS: −18; MCS: −43 m: mTBI PCS: −2; MCS: −13 m: no TBI PCS: −4; MCS: 0mTBI had significantly poorer mental HRQL pre-injury. Significant change in PCS in mTBI and no TBI, MCS only in mTBI. Scores dropped dramatically at 1w, returned to pre-injury levels at 3 m.
Jimenez, 2013, US [22]PedsQLNHW: 86Hispanic: 90NR0-3 m: NHW −5; Hispanic −160-12 m: NHW −5; Hispanic −130-24 m: NHW −5; Hispanic −130-36 m: NHW −5; Hispanic −16Pre-injury scores were higher for Hispanic than NHW. Post-injury scores were significantly lower for Hispanic compared with NHW.
Pieper, 2014, US [25]PedsQLmTBI: 82 (13)no TBI: 81 (14)mTBI: 82 (15)no TBI: 82 (16)mTBI 0no TBI: 1No significant differences were identified among mTBI, NBI, and uninjured groups. Cognitive HRQL after mTBI trended lower from 3–12 months post-injury.
Hip fracture
 Beaupre, 2012, Canada [30]EQ-5D0.62 (0.20) Survived 0.63 (0.20) Deceased 0.61 (0.20) Survivors 3 m: 0.42 (0.25)6 m: 0.46 (0.24)12 m: 0.42 (0.30)3 m: −0.216 m: −0.1712 m: −0.21At 1y, those alive had higher pre-injury HRQL than those that died. Significant loss in HRQL at 3 m that remained relatively unchanged 6 m and 12 m postoperatively.
 Buecking, 2014, Germany [35]EQ-5D0.71Discharge: 0.46Discharge: −0.25Significantly reduced HRQL during hospitalization.
 Griffin, 2015, UK [36]EQ-5Db 0.564w: 0.284 m: 0.3212 m: 0.364w: −0.284 m: −0.2412 m: −0.2Significantly lower HRQL at one year than pre-injury. HRQL significantly improved after 4w in those aged ≤80y, but not in >80y.
 Hagino, 2009, Japan [37]EQ-5D0.80 (0.17)2w: 0.37 (0.27)3 m: 0.64 (0.16)6 m: 0.63 (0.18)12 m: 0.68 (0.24)Hip fracture had lower pre-injury HRQL than wrist facture (significant) or vertebral fracture.
 Sugeno, 2008, Japan [38]EQ-5D0.77 (0.24)Discharge: 0.67 (0.21)12 m: 0.81 (0.17)Discharge: −0.1012 m: 0.04HRQL decreased post-injury, but recovered to pre-facture levels 1y following hospitalization.
 Tidermark, 2002, Sweden [39]EQ-5D0.78 (0.21) Survived 0.79 (0.21) Deceased 0.73 (0.22) Survivors 1w: 0.44 (0.33)4 m: 0.55 (0.37)12 m: 0.51 (0.36)1w: −0.344 m: −0.2312 m: −0.27Similar pre-injury HRQL compared to Swedish population norms. Decrease in HRQL from pre- to post-injury. Patients did not regain their pre-injury HRQL.
 Jaglal, 2000, Canada [34]SF-36PF 74 (24); RP 68 (46); BP 92 (16); GH 79 (20); VT 63 (22); SF 86 (21); RE 86 (34); MH 73 (20)6w: PF 44 (18); RP 2 (7); BP 68 (20); GH 75 (19); VT 54 (18); SF 75 (23); RE 85 (36); MH 79 (16)6 m: PF 59 (22); RP 63 (48); BP 78 (24); GH 77 (25); VT 59 (23); SF 77 (25); RE 96 (21); MH 82 (13)6w: PF −30a; RP −66a; BP −24a; GH −4;VT −9; SF −11a; RE −1a; MH 66 m: PF −15a; RP −5a; BP −14a; GH −2;VT −4; SF −9; RE 10; MH 9a Significant decrease in HRQL from pre- to post-injury in all domains (ex GH, VT, MH). Significantly lower PF, RP, BP but higher MH at 6 m than pre-injury.
 Peterson, 2008, US [24]SF-36 Survived PF 56 (36); RP 81 (33);BP 84 (24); GH 75 (21); VT 65 (22); SF 86 (23); RE 93 (26); MH 76 (20) Died PF 41 (29); RP 60 (43); BP: 82 (24); GH 62 (26); VT 55 (23); SF 84 (24); RE 85 (32); MH 79 (22)NAAt recruitment, no differences in domain scores between those living at 5 years and those dead (though small N, large SD). At 5y, significantly higher PF, RP and GH in those alive than those that died.
Extremity injury
Ding, 2006, US [19] (Extremity) PedSQL893 m: 7312 m: 803 m: −1612 m: −9Similar pre-injury HRQL for upper- and lower- extremity fractures. Significantly lower HRQL post-injury than pre-injury.
 Busse, 2012, Canada [32] (Tibia)SF-36PCS 53 (9)MCS 54 (9)2w: PCS 28 (8); MCS 46 (13)12 m: PCS 43 (11); MCS 52 (12)2w: PCS −25; MCS −812 m: PCS −10; MCS −2Decrease in HRQL from pre- to post-injury. Patients did not regain their pre-injury HRQL.
 Skoog, 2001, Sweden [40] (Tibia)SF-36b PF 72; RP 83; BP 80; GH 80; VT 75;SF 83; RE 88; MH 824 m: PF 60; RP 45; BP 63; GH 74; VT 62; SF 70; RE 58; MH 7712 m: PF 68; RP 58; BP 66; GH 70; VT 57;SF 70; RE 76; MH 734 m: PF −12a; RP −38a; BP −17; GH −6;VT −13; SF −13a; RE −30a; MH −512 m: PF −4; RP −25; BP −14a; GH −10a; VT −18a; SF −13; RE −12; MH −9Pre-injury HRQL was comparable to Swedish healthy population. SF-36 domain scores were lower at 4 m and 12 m, compared to pre-injury HRQL.
 Lyrtzis, 2012, Greece [41] (Ankle)SF-3689 (6); 68–97PF 96; RP 95; BP 91; GH 76; VT 79;SF 92; RE 93; MH 8710d: 68 (11); 52–82PF: 64; RP: 72; BP: 71; GH: 54; VT: 78;SF: 77; RE: 82; MH: 6810d: −21PF −32; RP −23; BP −20; GH −22; VT −1;SF −15; RE −11; MH −19Significant worsening of HRQL 10d after injury, compared to pre-injury HRQL.
 McGuine, 2014, US [23] (Knee)SF-12PCS 56 (5)MCS 56 (7)Diagnosis: PCS 41 (11); MCS 51 (12)3 m: PCS 48 (9); MCS 53 (10)6 m: PCS 53 (7); MCS 53 (9)12 m: PCS 54 (6); MCS 54 (8)Diagnosis: PCS −15; MCS −53 m: PCS −8; MCS −36 m: PCS −3; MCS −312 m: PCS −2; MCS −2Pre-injury HRQL was higher than population norms in all domains. HRQL change from preinjury through an entire 12 m after injury.
 Hagino, 2009, Japan [37] (Wrist)EQ-5D0.93 (0.13)2w: 0.72 (0.14)3 m: 0.81 (0.18)6 m: 0.87 (0.15)12 m: 0.88 (0.15)2w: −0.213 m: −0.126 m: −0.0612 m: −0.05Hip fracture had lower pre-injury HRQL than wrist facture (significant) or vertebral fracture. Scores showed recovery after 6 m. After 1y, scores were not significantly different from pre-fracture.
Other injury
Pons-Villanueva, 2011, Spain [46] (MVC) SF-36 MVC PCS 53; MCS 47PF 95; RP 87; BP 74; GH 73; VT 65;SF 89; RE 80; MH 71 No MVC PCS 53; MCS 49PF 95; RP 91; BP 79; GH 76;VT 66; SF 92; RE 87; MH 76 MVC PCS 51; MCS 48PF 93; RP 83; BP 69; GH 71; VT 63; SF 91; RE 82; MH 73 No MVC PCS 53; MCS 50PF 95; RP 92; BP 78; GH 77; VT 66; SF 94; RE 90; MH 77 MVC PCS −2; MCS 1PF −2; RP −4; BP −5; GH −2; VT −2; SF −2; RE 2; MH 2 No MVC - PCS 0; MCS 1PF 0; RP 1; BP −1; GH 1; VT 0; SF 2; RE 3; MH 1All physical scales declined in participants reporting a MVC, while mental health dimensions increased. Patients who did not have any MVC had significantly higher HRQL than those who suffered a MVC on RP, BP, GH, RE, MH, MCS and PCS.
Alghnam, 2014, US [18] (MVC) SF-12 MVC PCS 50; MCS 49 No MVC PCS 50; MCS 51 MVC PCS 47; MCS 49 No MVC PCS 50; MCS 51 MVC PCS −3; MCS 0 No MVC PCS 0; MCS 0Similar baseline PCS in MVC and no MVC. Significant lower baseline MCS in MVC than no MVC.
 Ottosson, 2007, Sweden [45] (Muscosk)SF-36b Recovered 1 m: PF 93; RP 93; BP 92; GH 85; VT 75; SF 92; RE 94; MH 85Not recovered: PF 85; RP 83; BP 80; GH 83; VT 73; SF 91; RE 83; MH 851 m: Rec 1 m PF 95; RP 93; BP 89;GH 85; VT 73; SF 95; RE 93; MH 85 No rec PF 63; RP 30; BP 43; GH 68; VT 45; SF 68; RE 85; MH 676 m: No rec PF 70; RP 45; BP 53; GH 65; VT 51; SF 76; RE 60; MH 701 m: Rec 1 m PF 2; RP 0; BP −3; GH 0; VT −2;SF 3; RE −1; MH 0 No rec PF −22; RP −53; BP −37; GH −15;VT −28; SF −23; RE −30; MH −186 m: No rec PF −15; RP −38; BP −27; GH −18; VT −22; SF −15; RE −23; MH −15Pre-injury HRQL was comparable to Swedish norm population. At 1 m patients who reported no recovery had significantly lowerscores on all domains, compared to thosereporting recovery.
 Andrew, 2012, Australia [26] (Ortho)SF-36PCS 59 (4); MCS 55 (7)PF 57 (3); RP 56 (4); BP 60 (6);GH 60 (6); VT 60 (8); SF 56 (5);RE 55 (5); MH 55 (7)PCS 52 (10); MCS 53 (10)PF 52 (8); RP 50 (10); BP 52 (10);GH 55 (10); VT 52 (10); SF 52 (10);RE 53 (7); MH 52 (9)PCS −7; MCS −2PF −5; RP −6; BP −7; GH −5;VT −7; SF −4; RE −2; MH −3Significant reductions in all SF-36 subscale scores, with RP and BP reporting the most reductions.
 Gabbe, 2007, Australia [6] (Ortho)SF-12PCS 51; Men 53; Women 48MCS 55; Men 55; Women 54NASignificantly higher PCS (stratified men 25-54y) and MCS (men 18-24y, women 18-24y, 25-34y or 45-54y) than Australian norms.
 Dvorak, 2005, Canada [33] (Spine)SF-36PCS 49 (13)MCS 52 (10)PCS 43 (13)MCS 49 (14)PCS −6MCS −3No significant differences between patients’ recalled PCS and MCS and Canadian norms.
 Hagino, 2009, Japan [37] (Spine)EQ-5D0.88 (0.17)2w: 0.53 (0.17)3 m: 0.76 (0.18)6 m: 0.75 (0.16)12 m: 0.84 (0.17)2w: −0.353 m: −0.126 m: −0.1312 m: −0.04Hip fracture had lower pre-injury HRQL than wrist (significant) or vertebral fracture. Scores at 6 m were significantly lower than pre-injury. After 1y, scores were not significantly different from pre-fracture values.
 Fauerbach, 1999, US [20] (Burn)SF-36 PTD PF 87 (24); RP 85 (34);BP 87 (28); GH 77 (25); VT 66 (20); SF 88 (24); RE 85 (32); MH 77 (14) No PTD PF: 92 (20); RP 91 (22);BP 81 (30); GH 87 (11); VT: 73 (20); SF 94 (19); RE 97 (16); MH 88 (9)2 m: PTD PF 66 (27); RP 29 (39);BP 41 (19); GH 68 (24); VT 52 (24);SF 75 (30); RE 76 (38); MH 67 (22) No PTD PF 85 (22); RP 56 (49);BP 47 (21); GH 83 (15); VT 69 (23);SF 92 (18); RE 92 (34); MH 87 (12)2 m: PTD PF −21; RP −56; BP −46;GH −9; VT −14; SF −13; RE −9; MH −10 No PTD PF −7; RP −35; BP −34; GH −4;VT −4; SF −2; RE −5; MH −1Higher pre-injury HRQL in PTD (BP) and non-PTD (MH, VT, RE, SF, GH) than US norms.
 Wasiak, 2014, Australia [28] (Burn)SF-36PCS 56 (9)MCS 52 (12)PCS 52 (13)MCS 52 (11)PCS −4 (1)MCS 0 (1)Pre-burn PCS was higher than Australian norms, MCS was comparable. HRQL at 12 m were consistent with the Australian norms. Significant lower PCS at 12 m compared with pre-injury.
 Greenspan, 2002, US [21] (Gunshot)SF-36PF 96 (14); RP 89 (29);BP 93 (19); GH 85 (20); VT 70 (21);SF 86 (27); RE 83 (34); MH 76 (24)8 m: PF 71 (28); RP 43 (42);BP 63 (32); GH 58 (27); VT 52 (28);SF 67 (31); RE 64 (43); MH 68 (25)PF −25; RP −46; BP −30; GH −27;VT −18; SF −19; RE −19; MH −8Pre-injury scores were similar to population norms, except for PF and GH (higher). Significant declines in PCS and MCS, and across all domains compared to pre-injury (especially PF, RP, BP, GH, and VT).

(Bold author names are studies of children; Studies in bold and italics prospectively measured pre-injury HRQL)

aSignificant change between pre- and post-injury HRQL scores

bScores obtained from graph(s) (not reported in text or tables)

Pre- and post-injury HRQL (Bold author names are studies of children; Studies in bold and italics prospectively measured pre-injury HRQL) aSignificant change between pre- and post-injury HRQL scores bScores obtained from graph(s) (not reported in text or tables) The self-reported pre-injury HRQL scores also exceeded the calculated age- and gender-adjusted population norm scores on the EQ-5D [8, 37–39, 42, 44] (Fig. 2), as well as the physical and mental domains of the SF-36 and SF-12 (Fig. 3). Exceptions were injury types of higher severity, including elderly hip fracture patients (aged 80+ years) [30, 35, 36], or patients with a motor vehicle injury [18, 46], vertebral fracture [33], or TBI [27].
Fig. 2

Pre-injury EQ-5D scores by injury type and in comparison to population norm scores. 1Adjusted by the age and sex distribution in the study population, based on the weighted health state index by age and sex [12]. 2Final post-injury measurement: at discharge [35], 1 year post-injury [8, 30, 36–39], 2 years post-injury, or 2–7 years post-injury [42]

Fig. 3

Pre-injury SF-36 and SF-12 scores by injury type and in comparison to population norm scores. . 1 Adjusted by the age and sex distribution in the study population, based on the weighted health state index by age and sex [13, 14]. 2 Final post-injury measurement: at 3 [27], 6 [43] or [18], 1 year post-injury [26, 28, 29, 32, 33, 48], 2 years post-injury [44], or – [46]. Heterogeneity: PCS Chi2 = 12.48, df = 11, (p = 0.33), I2 = 12%; MCS Chi2 = 11.88, df = 11, (p = 0.37), I2 = 7%. MVC: injury due to motor vehicle crash; Ortho: orthopedic injury; TBI: traumatic brain injury

Pre-injury EQ-5D scores by injury type and in comparison to population norm scores. 1Adjusted by the age and sex distribution in the study population, based on the weighted health state index by age and sex [12]. 2Final post-injury measurement: at discharge [35], 1 year post-injury [8, 30, 36–39], 2 years post-injury, or 2–7 years post-injury [42] Pre-injury SF-36 and SF-12 scores by injury type and in comparison to population norm scores. . 1 Adjusted by the age and sex distribution in the study population, based on the weighted health state index by age and sex [13, 14]. 2 Final post-injury measurement: at 3 [27], 6 [43] or [18], 1 year post-injury [26, 28, 29, 32, 33, 48], 2 years post-injury [44], or – [46]. Heterogeneity: PCS Chi2 = 12.48, df = 11, (p = 0.33), I2 = 12%; MCS Chi2 = 11.88, df = 11, (p = 0.37), I2 = 7%. MVC: injury due to motor vehicle crash; Ortho: orthopedic injury; TBI: traumatic brain injury Within-study comparisons of pre-injury HRQL between injury patients or with controls showed that patients who were injured due to a motor vehicle injury or who sustained a TBI had significantly lower mental health at baseline [18, 27, 44, 46] and lower scores across all HRQL domains [46] compared to those without a motor-vehicle injury or TBI (Table 2). Higher pre-injury HRQL was found in those who survived than those who eventually died during follow-up (significant differences found on the SF-36 PF, RP and GH [24], no significant differences found between EQ-5D scores [30]) and in those recovered than those not recovered at follow-up (not significant) [8].

Pre-injury HRQL scores per HRQL instrument and injury type

There was a large variation in the presentation of the pre-injury HRQL of patients (Table 2). Most studies reported the total scale scores on the EQ-5D (n = 10) [8, 30, 31, 35–39, 42, 44] or PedsQL (n = 3) [19, 22, 25]. The studies that used the SF-36 or SF-12 often presented the physical (PCS) and mental component scores (MCS) (n = 10) [18, 27–29, 32, 33, 43, 44, 48], while some studies provided an oversight of all domain scores without summary scores [20, 21, 24, 34, 41]. Pre-injury HRQL scores varied between patients with a hip fracture, ranging from 0.56 in an operatively managed sample of primarily 80 + −year-old females [36] to 0.80 in a hospitalized sample of women aged 45+ [37]. Highest pre-injury EQ-5D scores were seen in study populations who experience a TBI [44], major trauma [42], unintentional injury [8], or wrist or vertebral fracture [37] (mean EQ-5D 0.94, SD 0.04) while lowest pre-injury EQ-5D scores were reported in hip fracture populations [30, 35–39] (mean EQ-5D 0.71, SD 0.10); two-sample t(9) = 5.01, 95% confidence interval (CI) [0.13–0.34], p = 0.001. Overall, pre-injury EQ-5D scores decreased with age, from 0.99 in populations with a mean age of 40 years (SD 21) [44] to 0.56 in those aged 80+ years [30, 35, 36]. Patients with a vertebral injury reported lowest pre-injury PCS (SF-36, PCS 49) [33], while those with orthopedic injury reported highest pre-injury PCS scores (SF-36, PCS 59) [26]. Lowest pre-injury MCS on both the SF-36 (MCS 47) [46] and SF-12 (MCS 49) [18] was reported in the two studies that prospectively assessed the pre-injury HRQL of participants before the occurrence of a motor-vehicle injury. Overall, rather similar pre-injury HRQL scores were reported in all studies, showing low heterogeneity (PCS: I2 = 12%, MCS: I2 = 7%), with generally better pre-injury PCS than MCS (mean 54.6 vs 52.9).

Change between pre- and post-injury HRQL

Most studies used a longitudinal design (n = 23) with multiple follow-up measurements over time (n = 18), often measuring post-injury HRQL at three months, six months and/or 12 months. All studies showed a decrease in post-injury HRQL compared to their pre-injury levels of HRQL (Table 2). Looking at the EQ-5D, only one out of the 12 studies showed full recovery to pre-injury HRQL at one year after the injury [38], while the other studies still reported reduced levels of HRQL post-injury. Looking at the SF-36 and SF-12, injuries showed to have the highest impact on the physical component of HRQL (reduction in PCS with 15 to 30 points from pre-injury to first post-injury assessment) compared to the mental component of HRQL (reduction in MCS with 5 to 9 points) [23, 27, 29, 32]. At the final follow-up measurement, both prospective studies showed almost full recovery to pre-injury HRQL levels on the PCS and full recovery on the MCS [18, 46], while only one retrospective study showed such recovery on the PCS [48] or MCS [28].

Discussion

This systematic review summarized the methods that were used to assess pre-injury health status and to estimate the change from pre- to post-injury HRQL. All but two of the 31 studies in our review used retrospective assessment (recall) to assess pre-injury HRQL. The studies most often applied the SF-36, followed by the EQ-5D or SF-12, by means of questionnaires or face-to-face interviews. Recalled pre-injury HRQL scores consistently exceeded general population norms, except in a limited number of studies on injury types of higher severity (e.g., traumatic brain injury and hip fractures). All studies reported reduced post-injury HRQL compared to pre-injury HRQL. Both prospective studies reported that patients had recovered to their pre-injury levels of physical and mental health, while in all but one retrospective study patients had not returned to their reported pre-injury levels of HRQL, even years after the injury. Prospective assessment is the preferred method to determine pre-injury HRQL as it is not subject to bias that may occur due to experiencing an injury. In our review, only two out of the 31 studies used prospective assessment of pre-injury HRQL. These studies used longitudinal data from the Medical Expenditure Panel Survey (MEPS) among the US general population [18] and the Seguimiento Universidad de Navarra (SUN) cohort comprising university graduates in Navarra, Spain [46]. Both prospective studies reported lowest pre-injury mental health on the SF-36 (MCS 47) [46] as well as SF-12 (MCS 49) [18] of all studies in our review, which otherwise all used retrospective assessment. These prospective studies indicate that the retrospective assessment and population norm approach are highly likely to be biased. Our review shows that the retrospectively assessed pre-injury HRQL systematically differed from the age- and gender-adjusted norms we calculated based on population data on the EQ-5D, SF-36, and SF-12. Despite the use of different HRQL instruments, recalled pre-injury HRQL scores in our review consistently exceeded these adjusted population norms. An exception to this were samples including patients with a hip fracture [30, 35, 36, 39], motor vehicle injury [18, 46], vertebral fracture [33] or TBI [27], that reported poorer pre-injury HRQL than our calculated adjusted norms. These injury patients are likely to be less healthy than their counterparts [18, 27, 44, 46], in terms of socioeconomic status [18], comorbidity [18, 49], or frailty and older age [12, 49, 50]. The difference between retrospectively assessed pre-injury HRQL and population norm scores might be caused by several reasons. Recall bias may have influenced the outcomes of the retrospective assessment, as patients may have remembered their pre-injury HRQL differently than it actually was [2, 51, 52]. Patients may, for example, have overestimated their health status before the injury, resulting in higher recalled pre-injury HRQL than seen in the general population. Response shift might have occurred, as patients’ perception of HRQL may have changed due to the injury and a change in health [4]. After having had experience with poor HRQL, patients may have inflated the rating of their health status before the injury [53]. Nevertheless, some researchers argue for the use of retrospective assessment of pre-injury HRQL, as this method applies one internal standard of HRQL values (reference point) in the assessment of both pre-injury HRQL and post-injury HRQL [4, 53]. According to them, such a reference point is essential for the interpretation of the change from pre- to post-injury HRQL, since patients may have changed their judgement of HRQL due to new insights since the injury (e.g., although a patient has a serious injury, he/she has seen others who are far worse off), or patients have become used to their new health state. However, both recall bias and response shift might result in an overestimation of the pre-injury HRQL by patients. This is underpinned by our finding that, even years after the injury, in all but one retrospective study patients had not returned to their reported levels of pre-injury PCS and MCS, while recovery to pre-injury HRQL levels was seen in both prospective studies. Moreover, selection bias may have threatened the validity of the findings from the studies included in our review, as the study populations were often not randomly selected from the injury population for which the findings are reported [54]. For example, studies had excluded patients with pre-existing morbidities (e.g., physical illness, cognitive impairment), as it was anticipated that these patients would be difficult to follow up. Exclusion of patients with impairments before the injury may have increased the overall pre-injury HRQL scores of these study samples, as healthier participants were recruited. In contrast, attrition bias may have decreased the overall pre-injury HRQL scores measured in the studies, as a higher proportion of the non-participants were less educated [26], cognitively impaired [38], victim of intentional injury [6], shorter hospitalized [21] and had lower injury severity [28, 29, 44], less pain [34], better mental health [34]. These factors are all expected to be associated with better HRQL and incorporation of these patients may have resulted in higher pre-injury HRQL scores. Additionally, pre-injury HRQL levels may have increased after loss of follow up, resulting in higher pre-injury HRQL in the final study sample with complete response compared to the eligible study sample [32]. Finally, retrospectively assessed pre-injury HRQL scores may differ from the population norms as injury populations may differ from the general population. The findings of the retrospective assessments (recall) in our review suggest that injured populations are generally healthier than the general population. Previous studies reported that, as injured populations might be healthier, they are more likely to participate in activities, exposing them to a higher risk of injuries [6]. However, the comparisons of injury patients with matched controls in our review showed injury patients to be less healthy than their counterparts, as they reported significantly lower pre-injury mental health than controls [18, 27, 44, 46] and lower scores across all HRQL domains [46]. Previous research showed that injury patients had a higher occurrence of comorbidity, higher admission rates to the hospital, higher health service utilization, and a lower socioeconomic status prior to their injury in comparison to uninjured people [5, 18]. It is argued that the general population has not been exposed to a similar injury experience as the injury population, which emphasizes the use of retrospective assessments over the application of general population norms to estimate the impact of injury on HRQL [7].

Strengths and limitations

Our review included studies on the pre-injury HRQL from children, adolescents, and adult patients, with various injury types, using a range of HRQL instruments. Moreover, this review compared the reported pre-injury HRQL scores with general population norms, calculated for each study based on the reported mean age and gender distribution of the study sample, to identify bias that may occur from the different methods to assess pre-injury HRQL. There are limitations to this review that need to be addressed. First, there was no restriction in the methods of patient selection used in the studies. Therefore, the studies in this review included samples retrieved from a variety of injury settings (e.g., hospital or outpatient programs). Their conclusion may not be applicable to injury patients from other injury settings. However, most studies selected their patients during or after treatment in a (pediatric) hospital or specialized treatment center, which may enhance the generalizability of their results to patient populations with similar case mix. Second, the review included studies with patient samples from a broad range of injury types and injury severity levels, which may have complicated the comparability of the results between studies. Nonetheless, this way we were able to provide a full oversight of the pre-injury health status of injury patients and the differences in pre-injury HRQL between injury types. In addition, there are limitations to the studies included in our review. First, more than half of the included studies had difficulties in recruiting research participants, as patients often could not be contacted, had died, refused to participate, or did/could not complete questionnaires. The studies often reported limited generalizability of their results due to differences between the eligible patients and study participants, loss to follow-up, their limited number of subjects, and recruitment of participants from a single center. In some studies pre-injury HRQL was assessed after a long period of time since the injury, for example several months up to years after the injury [8, 42, 44]. This longer time frame may have increased the recalled pre-injury HRQL scores [31], as these studies also reported the highest pre-injury HRQL scores on the EQ-5D (0.94–0.99) compared to the studies that used shorter time frames. However, these three studies assessed the HRQL of a relatively young injury population. Moreover, no differences were found between the time frame and pre-injury HRQL in studies that used the SF-36 or SF-12. Finally, unfortunately not all studies reported the HRQL scores in the text or tables (e.g., only in graphs). After contacting the authors, in three publications HRQL scores had to be manually obtained from the graphs presented in the article [36, 40, 45]. This may have resulted in some small differences in the levels of pre- and/or post-injury HRQL.

Recommendations for future research

Our review clearly showed that recalled pre-injury HRQL systematically exceeded population norms. These differences in pre-injury HRQL may generate different estimates of the change in HRQL from pre- to post-injury due to an injury. Researchers should use prospectively derived pre-injury HRQL scores wherever possible to estimate the impact of injury on HRQL. If it is not feasible to prospectively assess the pre-injury health status of trauma patients, researchers should be aware of the bias that may arise when pre-injury HRQL is assessed retrospectively or when population norms are applied. Overall, more research is needed to examine the effect of recall bias and response shift on the reported levels of pre-injury HRQL among trauma patients, in which different methods to assess pre-injury HRQL are compared and within-study comparisons between reported pre-injury HRQL and population norms are made. The results of our review imply that there are a number of methodological advances regarding pre-injury HRQL interpretation left. Researchers should be aware of the different purposes the information on pre-injury HRQL of patients may have. For instance, pre-injury HRQL may be seen as a baseline health status to which patients are expected to return after the injury. On the other hand, pre-injury HRQL may be used to measure total loss in health, or may be used to offer insight into inter-patient differences in recovery after an injury. In general, when assessing pre-injury HRQL, researchers should carefully consider and specify the timing of the assessment of pre-injury HRQL and the period of the pre-injury assessment. The time period shows to be one of the essential factors influencing patient recall, as recall bias is generally worse when asking for a recall over longer periods [55]. A short time frame within the injury and retrospective assessment of pre-injury HRQL may increase recall and may increase the correlation between pre- and post-injury measures [31]. This implies that pre-injury HRQL should be assessed as soon as possible after the injury, preferably within the first week after the injury [56]. Whether or not the measurement of pre-injury HRQL is the primary purpose of studies, publications on the measurement of HRQL should include information on the applied methods to measure HRQL. Levels of pre-injury HRQL also may have been influenced by the use of telephone interviews. In our review, the highest or one of the highest pre-injury HRQL on the EQ-5D [42], SF-36 (PCS and MCS) [26], or SF-12 [43] were reported by studies that had conducted telephone interviews to assess the pre-injury levels of HRQL. Previous research indicated that telephone-administered questionnaires provide higher HRQL scores than self-administered questionnaires [57-59]. Preferably, the same method should be used for the assessment of both pre-injury and post-injury HRQL throughout the study, at all post-injury HRQL measurements and among all individuals. Researchers should choose a validated HRQL instrument that has shown good performance in the type of injury under study, and that is sensitive to changes in HRQL and differentiate well between health states. In order to assess the change from pre- to post-injury HRQL, the same HRQL instrument should be applied throughout the study. Preferably, a HRQL instrument should be chosen for which national age- and gender-adjusted population norms are available. In order to enable comparison of the impact of injuries on HRQL between studies, injury types and other diseases, it is recommended to report the pre- and post-injury HRQL scores for specific age and sex groups, which correspond to the age and sex distribution of the norm groups for the applied instrument. Finally, to examine the change in HRQL due to the injury, a longitudinal design is recommended with multiple follow-up measurements over time (e.g., at 1–3 months, 3–6 months, and 6–24 months post-injury) [56].

Conclusions

So far, primarily retrospective research has been conducted to assess pre-injury HRQL. This research shows consistently higher pre-injury HRQL scores than population norms and a recovery that lags behind that of prospective assessments, implying a systematic overestimation of the change in HRQL from pre- to post-injury due to an injury. More prospective research is necessary to examine the effect of recall bias and response shift. Researchers should be aware of the bias that may arise when pre-injury HRQL is assessed retrospectively or when population norms are applied, and should use prospectively derived HRQL scores wherever possible to estimate the impact of injury on HRQL.
Table 3

Date: July 6, 2015

DatabaseRecordsUnique records
Embase13601343
MEDLINE (Ovid)1151289
Web of Science882117
SCOPUS100188
CINAHL (EBSCO)511143
PsycINFO (Ovid)24053
Cochrane Library440
PubMed1311
LILACS00
SciELO00
ScienceDirect9178
ProQuest5814
Google Scholar250150
Total56012286
  55 in total

1.  Measuring quality of life: Is quality of life determined by expectations or experience?

Authors:  A J Carr; B Gibson; P G Robinson
Journal:  BMJ       Date:  2001-05-19

2.  Differences in prevalence of pre-existing morbidity between injured and non-injured populations.

Authors:  Cate M Cameron; David M Purdie; Erich V Kliewer; Roderick J McClure
Journal:  Bull World Health Organ       Date:  2005-06-24       Impact factor: 9.408

3.  Disparities in disability after traumatic brain injury among Hispanic children and adolescents.

Authors:  Nathalia Jimenez; Beth E Ebel; Jin Wang; Thomas D Koepsell; Kenneth M Jaffe; Andrea Dorsch; Dennis Durbin; Monica S Vavilala; Nancy Temkin; Frederick P Rivara
Journal:  Pediatrics       Date:  2013-05-06       Impact factor: 7.124

4.  Reliability, validity, and responsiveness of the lower extremity measure for patients with a hip fracture.

Authors:  S Jaglal; Z Lakhani; J Schatzker
Journal:  J Bone Joint Surg Am       Date:  2000-07       Impact factor: 5.284

5.  Recovery of function following a hip fracture in geriatric ambulatory persons living in nursing homes: prospective cohort study.

Authors:  Lauren A Beaupre; C Allyson Jones; D William C Johnston; Donna M Wilson; Sumit R Majumdar
Journal:  J Am Geriatr Soc       Date:  2012-06-15       Impact factor: 5.562

6.  One-year outcome after tibial shaft fractures: results of a prospective fracture registry.

Authors:  A Skoog; A Söderqvist; H Törnkvist; S Ponzer
Journal:  J Orthop Trauma       Date:  2001 Mar-Apr       Impact factor: 2.512

7.  Preinjury psychiatric illness and postinjury adjustment in adult burn survivors.

Authors:  J A Fauerbach; J Lawrence; J Haythornthwaite; M McGuire; A Munster
Journal:  Psychosomatics       Date:  1996 Nov-Dec       Impact factor: 2.386

8.  Sequential change in quality of life for patients with incident clinical fractures: a prospective study.

Authors:  H Hagino; T Nakamura; S Fujiwara; M Oeki; T Okano; R Teshima
Journal:  Osteoporos Int       Date:  2008-10-03       Impact factor: 4.507

9.  Meta-analyses and Forest plots using a microsoft excel spreadsheet: step-by-step guide focusing on descriptive data analysis.

Authors:  Jeruza L Neyeloff; Sandra C Fuchs; Leila B Moreira
Journal:  BMC Res Notes       Date:  2012-01-20

10.  Validity and reliability of the EQ-5D-3L™ among a paediatric injury population.

Authors:  Mariana Brussoni; Sami Kruse; Kerry Walker
Journal:  Health Qual Life Outcomes       Date:  2013-09-17       Impact factor: 3.186

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Authors:  Francisco Javier Amarilla-Donoso; Raul Roncero-Martin; Jesus Maria Lavado-Garcia; Rosaura Toribio-Felipe; Jose Maria Moran-Garcia; Fidel Lopez-Espuela
Journal:  PeerJ       Date:  2020-06-16       Impact factor: 2.984

2.  Routine incorporation of longer-term patient-reported outcomes into a Dutch trauma registry.

Authors:  Quirine M J van der Vliet; Abhiram R Bhashyam; Falco Hietbrink; R Marijn Houwert; F Cumhur Öner; Luke P H Leenen
Journal:  Qual Life Res       Date:  2019-05-16       Impact factor: 4.147

3.  Associations between self-rated health and the assessments of anchoring vignettes in cardiovascular patients.

Authors:  Andreas Hinz; Jan Karoff; Jörg Kittel; Elmar Brähler; Markus Zenger; Bjarne Schmalbach; Rüya-Daniela Kocalevent
Journal:  Int J Clin Health Psychol       Date:  2020-05-29

Review 4.  A systematic review of studies measuring health-related quality of life of general injury populations: update 2010-2018.

Authors:  A J L M Geraerds; Amy Richardson; Juanita Haagsma; Sarah Derrett; Suzanne Polinder
Journal:  Health Qual Life Outcomes       Date:  2020-05-29       Impact factor: 3.186

5.  Impact of a Postoperative Intervention Educational Program on the Quality of Life of Patients with Hip Fracture: A Randomized, Open-Label Controlled Trial.

Authors:  Francisco Javier Amarilla-Donoso; Raúl Roncero-Martín; Jesus Lavado-García; María de la Luz Canal-Macías; María Pedrera-Canal; Carlos Chimpén-López; Rosaura Toribio-Felipe; Sergio Rico-Martin; Sabina Barrios-Fernández; Fidel López-Espuela
Journal:  Int J Environ Res Public Health       Date:  2020-12-13       Impact factor: 3.390

6.  Psychological risk factors that characterize the trajectories of quality of life after a physical trauma: a longitudinal study using latent class analysis.

Authors:  Eva Visser; Brenda Leontine Den Oudsten; Taco Gosens; Paul Lodder; Jolanda De Vries
Journal:  Qual Life Res       Date:  2021-01-14       Impact factor: 4.147

7.  Prognostic factors for recovery of health status after injury: a prospective multicentre cohort study.

Authors:  Leonie de Munter; Suzanne Polinder; Roos J M Havermans; Ewout W Steyerberg; Mariska A C de Jongh
Journal:  BMJ Open       Date:  2021-01-06       Impact factor: 2.692

8.  Quality of life of patients with 3D-printed arm prostheses in a rural area of Sierra Leone.

Authors:  A J Sterkenburg; M Van der Stelt; A R Koroma; M D Van Gaalen; M J Van der Pols; M P Grobusch; C H Slump; T J J Maal; L Brouwers
Journal:  Heliyon       Date:  2021-07-02

9.  Burden of illness of hip fractures in elderly Dutch patients.

Authors:  T A Kanters; C L P van de Ree; M A C de Jongh; T Gosens; L Hakkaart-van Roijen
Journal:  Arch Osteoporos       Date:  2020-01-03       Impact factor: 2.617

10.  Individual recovery of health-related quality of life during 18 months post-burn using a retrospective pre-burn measurement: an exploratory study.

Authors:  Elise Boersma-van Dam; Rens van de Schoot; Helma W C Hofland; Iris M Engelhard; Nancy E E Van Loey
Journal:  Qual Life Res       Date:  2020-10-22       Impact factor: 4.147

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