Literature DB >> 30038491

A novel pain assessment tool incorporating automated facial analysis: interrater reliability in advanced dementia.

Mustafa Atee1, Kreshnik Hoti1,2, Richard Parsons1, Jeffery D Hughes1.   

Abstract

OBJECTIVES: Regardless of its severity, dementia does not negate the experience of pain. Rather, dementia hinders self-reporting mechanisms in affected individuals because they lose the ability to do so. The primary aim of this study was to examine the interrater reliability of the electronic Pain Assessment Tool (ePAT) among raters when assessing pain in residents with moderate-to-severe dementia. Secondly, it sought to examine the relationship between total instrument scores and facial scores, as determined by automated facial expression analysis. STUDY
DESIGN: A 2-week observational study.
SETTING: An accredited, high-care, and dementia-specific residential aged care facility in Perth, Western Australia. PARTICIPANTS: Subjects were 10 residents (age range: 63.1-84.4 years old) predominantly with severe dementia (Dementia Severity Rating Scale score: 46.3±8.4) rated for pain by 11 aged care staff. Raters (female: 82%; mean age: 44.1±12.6 years) consisted of one clinical nurse, four registered nurses, five enrolled nurses, and one care worker. MEASUREMENTS: ePAT measured pain using automated detection of facial action codes and recordings of pain behaviors.
RESULTS: A total of 76 assessments (rest =38 [n=19 pairs], movement =38 [n=19 pairs]) were conducted. At rest, raters' agreement was excellent on overall total scores (coefficient of concordance =0.92 [95% CI: 0.85-0.96]) and broad category scores (κ=1.0). Agreement was moderate (κ=0.59) on categorical scores upon movement, while it was exact in 68.4% of the cases. Agreement in actual pain category scores gave κw=0.72 (95% CI: 0.58-0.86) at rest and κw=0.69 (95% CI: 0.50-0.87) with movement. All raters scored residents with higher total scores post-mobilization compared to rest. More facial action unit codes were also detected during pain (mean: 2.5 vs 1.9; p<0.0012) and following mobilization (mean: 2.5 vs 1.7; p<0.0001) compared to no pain and rest, respectively.
CONCLUSIONS: ePAT, which combines automated facial expression analysis and clinical behavioral indicators in a single observational pain assessment tool, demonstrates good reliability properties, which supports its appropriateness for use in residents with advanced dementia.

Entities:  

Keywords:  PainChek®; automated facial expression analysis; dementia; ePAT; facial action units; interrater reliability; pain; pain assessment; total pain scores

Mesh:

Year:  2018        PMID: 30038491      PMCID: PMC6052926          DOI: 10.2147/CIA.S168024

Source DB:  PubMed          Journal:  Clin Interv Aging        ISSN: 1176-9092            Impact factor:   4.458


Introduction

In residential aged care facilities (RACFs), dementia is common in >50% of residents.1–3 Up to 97% of individuals with advanced dementia exhibit behavioral (eg, aggression) and psychological (eg, anxiety) symptoms that lead to poor quality of life in this setting.4 More than 90% of aged care staff had been exposed to physical or emotional aggression from residents.5 This problem is in part due to lack of self-report and inadequate identification of pain resulting in its subsequent poor management in this vulnerable population.6 There is strong evidence to suggest that behavioral and psychological symptoms of dementia (BPSD) are often associated with uncontrolled underlying pain from clinical and observational studies.7–9 Moreover, in a large Swedish cohort (n=120,067) study of older adults (≥75 years) with advanced dementia, 38.6% received at least one medication of questionable benefit including psychotropic drugs in their final year of life.10 Delayed identification of pain may also influence drug-prescribing patterns. In a recent Italian study of nursing home patients, psychotropic drugs were among the top 10 most commonly prescribed drugs (quetiapine ranked fifth).11 Pain has also been reported to be significantly associated with BPSD, higher number of antipsychotic prescriptions, reduced quality of life, and premature mortality.12 Regardless of its severity, dementia does not negate the experience of pain although there is evidence that pain processing may be altered.13–15 It is inferred that pain experience might be increased in individuals with Alzheimer’s dementia as evident in pain responses recorded from brain activity and facial expressions.13,16–19 Of particular importance, patients with dementia are more facially expressive than healthy subjects when they display pain.20 In the absence or lack of self-rating report, facial expressions become an essential component of communicating the existence of pain, particularly for those with dementia.20 Facial expressions provide instant and brief signals to alert the onlooker. Facial descriptors are also valid indicators in observational pain scales for nonverbal patients with dementia.21 However, reliability of observers in identifying these descriptors is often low because included items are generic, vague, and not able to be consistently recorded.22 Further, these descriptors such as “grimacing” in the Pain Assessment Checklist for Seniors with Limited Ability to Communicate (PACSLAC) and Abbey Pain Scale (APS) are not specific to pain as they could overlap with other emotions such as sadness.23–25 Thus, it has been suggested that objective and comprehensive criteria, such as the Facial Action Coding System (FACS), should be considered among these tools to improve their reliability.22,26–28 FACS is an anatomical catalog of facial expressions that annotates each individual facial action unit (AU) with a unique numerical label and specific description.29 Pain-related AUs include eyelid tightening (AU7) and lips parting (AU25). Proficiency in the manual decoding of these AUs requires at least 100 hours of training, while each minute of video requires generally 1 hour of expert’s observations.29 It is, hence, preferred to use automated facial decoding because it reduces the reliance on human rating, which may introduce subjectivity and is likely to be associated with judgment bias. To address the suboptimal management of pain in people with dementia, novel means of detecting pain in clinical practice are urgently needed. This is because none of the currently available observational pain assessment tools used for people with dementia possess sufficient evidence of validation and reliability to be considered the gold standard.30 Attempts to integrate computer vision (eg, artificial intelligence or AI) and facial recognition technologies into clinical tools have been made possible with the introduction of smart devices that provide agile platforms for software applications or apps. These intricacies have inspired us to develop the electronic Pain Assessment Tool (ePAT).30,31,61 In this study, we aimed to examine interrater reliability of ePAT as a means of evaluating pain in aged care residents with moderate-to-severe dementia. Further, we examined the relationship between facial scores (which are determined using automated facial analysis) and total pain scores.

Materials and methods

Ethics

This study is part of a larger clinical trial (Australian New Zealand Clinical Trials Registry Number: ACTRN12616001003460), which was approved by the ethics review board of the participating aged care facility and the Human Research Ethics Committee (HR 10/2014) of Curtin University, Bentley, Western Australia. The study was conducted according to the Declaration of Helsinki, Alzheimer’s Australia Guidelines and the Australian National Statement for Ethical Conduct in Human Research. All participating staff provided written informed consent. For residents, the capacity to consent was determined by the level of cognitive impairment. All residents had moderate-to-severe dementia or cognitive impairment, which makes them incapable of providing consent. Therefore, proxy informed written consent was obtained for each participant (resident) through their authorized and legal representatives. Consent was also given to the publication of images displayed in this manuscript.

Pain measure

The ePAT

The ePAT was designed by Curtin University researchers after reviewing the literature of pain, dementia, geriatric care, and pain facial expressions.30,31,61 ePAT is a smart device application (App) that uses a combination of a selected set of facial AU codes and common pain behaviors reported in the literature (eg, items included in the American Geriatric Society [AGS] Indicators of Persistent Pain [2002]) to assess pain at the point of care.29,32 A predefined set of facial AUs were included in the tool because they were associated with pain.17,20,33–35 The tool uses digitization, real-time automated facial recognition and decoding using a deep learning (AI) approach, as a means of identifying and evaluating pain.61 Digitization and smart device technology serve as a platform to facilitate documentation, while automated FACS decoding is integrated in the tool with the view to improve objectivity through reducing human observation errors.61 Automated facial analysis identifies subtle facial muscle movements called AUs, which represent the smallest building blocks responsible for exerting microexpressions, each of which lasts for 100–500 milliseconds.36 The automated facial assessment consists of three steps (Figure 1):
Figure 1

Steps of automated facial analysis in the Face domain of the ePAT to identify pain-related facial action units in patients with dementia.

Abbreviation: ePAT, electronic Pain Assessment Tool.

Face detection and tracking (Figure 2)
Figure 2

Face detection using the ePAT (step 1).

Abbreviation: ePAT, electronic Pain Assessment Tool.

Localization and extraction of facial features (Figure 3)
Figure 3

Automated facial recognition and extraction of facial action units (step 2) using active appearance model and facial landmarking.

Detection of facial AUs (Figure 4).
Figure 4

Detection of facial actions using AU descriptors of FACS (step 3).

Abbreviation: AU, action unit; FACS, Facial Action Coding System.

We have tested the ePAT application on Samsung Note 3 (SM-N9005) operating on Android 4.4 KitKat using the lowest available frame per second mode (ie, 30 fps). However, a frame rate of ≤5 fps is adequate for the application to perform its facial analysis. The duration of automated facial analysis to process the detection of pain-related facial AUs is ~10 seconds. The output of the processing is a list of numerical values that represent the confidence level for each AU that we detect. The application will then combine an “x” number of reports obtained for a processed grabbed image to create a consolidated report for the 10 second recordings. Once detected, facial AUs related to pain are then used in conjunction with other observation-based clinical data (eg, vocalization parameters) recorded by the user to obtain a pain intensity score. The ePAT is composed of six domains (Face, Voice, Movement, Behavior, Activity, and Body), which contains a total of 42 items.31,61 Table 1 describes the ePAT domains and the corresponding items along with their operational definitions and primary conceptual basis. Each domain contains a number of items. For example, the Face domain (Domain 1) consists of nine descriptors, which correspond to AUs 4, 6, 7, 9, 10, 12, 20, 25, and 43, automatically recognized by the App. Other domains (Domains 2–6) are based around descriptors drawn from the literature (eg, the AGS Indicators, other observational pain scales, recommendations by Herr et al, and Pasero and McCaffrey’s Hierarchy of Pain Assessment Techniques).32,37,38 The latter is also supported by American Society for Pain Management Nursing recommendations about patients unable to self-report.37,39
Table 1

The six domains, corresponding items, and conceptual basis of the ePAT

DomainItem numberItem descriptionOperational definition of itemPrimary conceptual basis of selected items
Domain 1: The Face1Brow loweringFacial action unit and the corresponding descriptor AU4: brow lowererMuscular basis Depressor glabellae, depressor supercilii, and corrugatorAnatomical changes in upper Face (lower central forehead) • Lowering down of both eyebrows • Movement of eyebrows toward each other • Appearance of vertical or oblique wrinkles between eyebrows in the lower central part of the foreheadFACS29
2Cheek raisingFacial action unit and the corresponding descriptor AU6: cheek raiserMuscular basis Outer portion of orbicularis oculi (pars orbitalis)Anatomical changes in central face (infraorbital region) • Pulling of skin toward the eye • Pulling the cheeks upward by lifting of the infraorbital triangle • Narrowing the eye aperture and wrinkling the skin below the eye • Appearance of Crow’s feet lines or wrinkles • Deepening of the lower eyelid furrow
3Tightening of eyelidsFacial action unit and the corresponding descriptor AU7: lid tightenerMuscular basis Inner portion of orbicularis oculi (pars palpebralis)Anatomical changes in upper face (orbital region) • Tightening of the eyelids • Narrowing of the eye aperture • Raising of lower lid
4Wrinkling of noseFacial action unit and the corresponding descriptor AU9: nose wrinklerMuscular basis Levator labii superioris alaeque nasiAnatomical changes in central face • Pulling of skin upward along the side of the nose toward the root of the nose • Appearance of wrinkles along the side and root of nose • Wrinkling of infraorbital furrow • Lowering the medial portion of the eyebrows • Pulling the center of the upper lip upward
5Raising of upper lipFacial action unit and the corresponding descriptor AU10: upper lip raiserMuscular basis Levator labii superiorisAnatomical changes in central-lower face (infraorbital, nasolabial, infranasal and upper lip regions) • Prominent deepening or wrinkling of infraorbital furrow • Deepening of nasolabial furrow • Pouching at upper lip and nasal passages • Widening and raising of the nostril wings
6Pulling at corner lipFacial action unit and the corresponding descriptor AU12: lip corner pullerMuscular basis Zygomatic majorAnatomical changes in lower face (mouth/lips region) Drooping or oblique movement of lateral corners of the lips
7Horizontal mouth stretchFacial action unit and the corresponding descriptor AU20: lip stretcherMuscular basis RisoriusAnatomical changes in lower face (mouth/lips region) Bilateral stretch of lips
8Parting lipsFacial action unit and the corresponding descriptor AU25: lips partMuscular basis Depressor Labii, or relaxation of Mentalis or Orbicularis orisAnatomical changes in lower face (mouth/lips region) Relaxed opening of the mouth, that is jaw drop
9Closing eyesFacial action unit and the corresponding descriptor AU43: eye closureMuscular basis Relaxation of levator palpebrae superiorisAnatomical changes in upper face (orbital region) Shutting both eyes for at least half a second
Domain 2: The Voice10Noisy pain sounds, for example, ouch, ah, mmSounds or utters related to pain, for example, ouch, ah, mmAGS (verbalizations and vocalizations)32
11Requesting help repeatedlyInclude one or more of the following: • Expressing numerous verbal requests of help within short periods of time, for example, “help me, help me” • Constant talking • Repetitive use of words or phrases (eg, echophrasia) • Verbal nonsense • Vocalizations with/without discernible meaningExclude verbal requests for ADL purposes
12GroaningUsing a deep, creaking, or incoherent sound
13MoaningProducing a long, low-pitched, and inarticulate sound
14CryingWeeping, sobbing, or whimpering
15ScreamingUsing excessively loud voice when communicating (as in shouting or yelling)
16Loud talkMaking louder than normal pitched voice
17HowlingProducing a long wailing cry sound
18SighingBreathing in followed by long audible sound upon breathing out
Domain 3: The Movement19Altered or random leg/arm movementChanged or random movement of any of the limbsAGS (body movements)
20RestlessnessUnable to relax, that is fidgeting
21FreezingSudden stiffening, avoiding movement, holding breath
22Guarding/touching body partsAn abnormally stiff, rigid, or interrupted movement while changing positionProtecting affected area by holding body part
23Moving awayAvoiding being touched or staying away from the interaction
24Abnormal (altered) sitting/standing/walkingDistorted, asymmetrical or changed sitting, standing (eg, posture), and/or imbalanced gait (eg, limping)
25Pacing/wanderingRoaming restlessly and aimlessly back and forth
Domain 4: The Behavior26Introvert (unsocial) or altered behaviorBeing unsocial or socially isolated, that is reluctant to be involved in social activitiesAGS (changes in interpersonal interactions, mental status changes)
27Verbally offensiveVerbally abusive or aggressive, cursing, swearing, or using foul/insulting language
28AggressiveInvolved in combative or violent behavior
29Fear or extreme dislike of touch, peoplePhobias of being touched or interaction with people including family members, other residents, and/or aged care staff
30Inappropriate behaviorAberrant or socially unacceptable behavior, for example, fiddling
31ConfusedUnclear in thinking or understanding, for example, unable to follow instructions or repetitive questioning
32DistressedAnxious, worried, and agitated
Domain 5: The Activity33Resisting careUnable to cooperate or become compliant, or refuse to receive care, for example, food, medicineAGS (changes in activity patterns or routine)
34Prolonged restingLong resting periods without apparent reasons
35Altered sleep cycleChanged sleep–wake cycle, for example, long sleeps during the day
36Altered routinesChanged the order or timing of activities from the norm
Domain 6: The Body37Profuse sweatingExcessive sweating in various parts of the body excluding circumstances due to environmental factors such as no air conditioning or lack of proper ventilationAGS
38Pale/flushed (red) faceColor faded or red-colored face
39Feverish/coldChanges in body temperature either too hot or too cold
40Rapid breathingFast rate of breathing
41Painful injuriesInjuries are known to induce pain, for example, falls, bed sores, active wounds
42Painful medical conditionsConditions known to cause pain including currently presented, for example, dental infections, urinary tract infections, or previously documented chronic conditions in medical history, for example, arthritis

Abbreviations: ADL, activities of daily living; AGS, American Geriatric Society; AU, action unit; ePAT, electronic Pain Assessment Tool; FACS, Facial Action Coding System.

Each domain provides a checklist of pain indicators from which the user makes binary selections (ie, present yes/no) for each indicator on the smart device touch screen based on clinical observations of the patient.31,61 Domain scores are automatically calculated to provide a final pain score. Based on the published results of the validation study where ePAT scores were compared to APS cutoff scores (no pain: 0–2; mild pain: 3–7, moderate pain: 8–13, severe pain: 14 or more), the following categorical ratings have been derived: no pain: 0–6; mild pain: 7–11; moderate pain: 12–15; severe pain: 16 or more.31 Each domain also has a blank field at the bottom of the screen for the user to record any additional and/or relevant observation(s).31,61 The Face domain (AU score) of ePAT was blindly evaluated against self-reporting (gold standard) measures (visual analog scale [VAS], numerical rating scale [NRS], and verbal rating scale [VRS]) of cognitively intact people with chronic pain (n=43 [21 male, 22 female], mean age=54±14 years) in unpublished study.40 When the AU score was classified into two groups (0–2 vs 3 or more), it was highly correlated with the gold standard measures of pain (t-tests or Wilcoxon: p<0.0001 for each measure). These measures were then classified into two groups (low or high pain) as follows: VAS: 0–50 vs 51–100; VRS: 0–3 vs 3.5–5; NRS: 0–4 vs 5–10. Cross tabulations of the categorized AU score against these binary variables showed that a high AU score had over 95% sensitivity to identify high pain scores and high specificities (69%, 90%, and 95% for each measure, respectively). Participants were classified into those recording high pain on any of the three validated measures vs low pain on all measures. The AU score was able to identify high pain with 95.7% sensitivity and 95% specificity.40 In a published study by Atee et al, the complete ePAT tool was tested in 40 residents (aged 60–98 years) with moderate-to-severe dementia (Psychogeriatric Assessment Scale–Cognitive Impairment Scale scores: 10–21) from three RACFs in Western Australia. Based on 353 paired pain assessments, the tool demonstrated excellent concurrent validity (r =0.882, 95% CI: 0.857–0.903), good discriminant validity (random regression model is not timing-dependent, p=0.795), good interrater reliability (weighted κ= 0.74, 95% CI: 0.68–0.80), and excellent internal consistency (Cronbach’s alpha (α)=0.925).31 This observational study assessed the psychometric properties of ePAT compared to the APS, which is the widely used observational pain scale for people with dementia in Australia.31 These findings were also confirmed in another cohort of people (n=34, 68.0–93.2 years old) with similar demographics.41

Setting

Single-site, accredited, high-care, and dementia-specific RACF. The facility has a capacity of 65 beds and is located in Perth, Western Australia.

Participants

Pain raters (users)

Raters were aged care staff working in the facility using the ePAT as an assessment scale of pain. Staff were recruited if they had been working for 3 months or more in the facility, were familiar with residents, able to converse in English, and keen to participate in the study. Staff were excluded if they had fears associated with using technologies or were likely to be absent for any period during the study.

Residents (subjects)

Residents were included in the study if they had moderate-to-severe dementia as indicated by Dementia Severity Rating Scale (DSRS) scores >18, and had documented behavioral problems and a history of painful conditions. Patients were excluded from the study if they were deemed medically unfit for participation.

Protocol

This substudy was a 2-week observational study, in which a convenience sampling technique was employed. Staff who consented to participate attended an education and training program prior to the study. The program involved a single session, which was conducted by the principal investigator over 4.5 hours at the study site. Attendees received education about pain, pain and dementia, pain assessment, and pain management. The contents of the program were developed after reviewing the International Association for the Study of Pain Curricula42 and current literature with modifications made appropriate to the setting and demographics of raters. The session also included a demonstration of the ePAT and practical training on its use. Staff rater data were collected using a 14-item questionnaire, which included a mix of open- and closed-ended questions. The questionnaire was piloted using five test subjects prior to administration to ensure readability and ease of completion. Testing of the ePAT was undertaken indoors at the RACF in September 2016. Testing involved the use of the ePAT by pairs of independent staff raters who were blinded to each other’s assessments, scores, and to the use of analgesics. Raters were instructed to conduct their assessments independently using own ePAT device without consulting or conversing with the other rater involved in the study. No discussions were made regarding each assessment, and scores obtained were not shared nor exchanged between paired raters. One of the study authors monitored the data collection process to ensure that this was being followed throughout the study. Automated facial analyses were conducted consecutively to allow each rater access to a full frontal view of the resident and prevent any possible discrepancies (eg, physical hindrance) that might arise during the process. Paired ratings were scheduled randomly to reduce learning bias and subsequent systematic error. Ratings also occurred within a time frame of 2–3 minutes to ensure that the results obtained were comparable. As far as possible, recording conditions of automated facial analyses (eg, lighting, distance from subject) were essentially the same for all cases. Residents with dementia were assessed for pain during routine nursing activities or activities of daily living (ADL) that involved mobilization and during periods of rest. Over the study period (ie, 2 weeks), each resident was assessed by two different raters on four separate occasions: on each of the 2 days ~1 week apart, the assessors rated the resident’s pain while at rest and shortly afterward while receiving care activities. Raters were instructed to observe the resident under the assessment for pain-induced behaviors for at least 5 minutes before commencing pain scoring on the ePAT.

Statistical analyses

Descriptive statistics (eg, mean, range, standard deviation) were used to summarize the profiles of the raters, residents, and pain scores including automated facial scores. Agreement on categorical pain data was evaluated using kappa statistics. The kappa coefficient measures interrater reliability or the agreement between two observers and takes into account the agreement expected by chance. It is, therefore, a more robust measure than percentage agreement.43 A value of 0.6 or above indicates moderate agreement or good interrater reliability.43 Cohen’s kappa (κ) statistic was used to assess agreement between raters on the presence or absence of pain, whereas weighted kappa (κw) was employed to evaluate agreement when pain was divided into >2 categories. Agreement on continuous pain data (ie, total pain scores) was measured by Lin’s concordance correlation coefficient (CCC).44 Values of CCC range from 0 to ±1 where +1 is perfect concordance and −1 is perfect discordance. To assess the strength of agreement, we used Altman’s criteria as a guide to interpret CCC values: <0.20=“poor” and >0.80=“excellent”.45 Using a published chart of the score range of the ePAT, total pain scores were allocated into broad pain categories: no pain (0–6), mild pain (7–11), moderate pain (12–15), and severe pain (16–42).31 Further, a regression model was used to examine the relationship between automated facial scores and total instrument scores (pain vs no pain) of ePAT under various testing conditions. Level of significance was expressed by 95% CI range or p-value <0.05. All data were analyzed using the Statistical Package for the Social Sciences (SPSS), Version 24 Software (SPSS Inc., Apache Software Foundation, Chicago, IL, USA).

Results

Demographic data

Demographics of resident sample

Ten residents with an age range of 63.1–84.4 years (mean: 74.4±5.9 years) were recruited into the study. The gender ratio of residents was 50:50 and the vast majority (90%) were Caucasians. Half of the residents had Alzheimer’s dementia and 80% were classified as having severe dementia (mean DSRS score: 46.3±8.4). Table 2 provides demographic characteristics of resident sample.
Table 2

Demographic characteristics of resident sample at baseline (n=10)

CharacteristicsNumber (%)Mean (SD)
Age (years) (range: 63.1–84.4)
 Female78.2 (5.2)
 Male70.6 (5.0)
 Overall74.4 (5.9)
Gender
 Female5 (50)
 Male5 (50)
Ethnicity
 Caucasian9 (90)
 Other1 (10)
Primary language
 English10 (100)
Mobility
 Limited4 (40)
 Immobile4 (40)
 Bedridden2 (20)
Dementia severity (DSRS range: 30–54)46.3 (8.4)
Diagnosis of dementia
 Alzheimer’s disease5 (50%)
 Alcoholic-related dementia2 (20%)
 Frontotemporal dementia1 (10%)
 Parkinson’s dementia1 (10%)
 Vascular dementia1 (10%)

Abbreviations: DSRS, Dementia Severity Rating Scale; SD, standard deviation.

Movement-based activities ranged from independent (eg, walking) to assisted (eg, transfer) events.

Demographics of rater cohort

A cohort of 11 staff with a mean age of 45.3±13.4 years were recruited into the study, two of whom were male. Working hours in the facility ranged from 20 to 38 hours per week with five staff employed as fulltime (ie, 38 hours/week). The average length of staff employment in the facility was 10.6±9.1 years. The cohort included 10 nurses of various hierarchical roles (one clinical nurse, four registered nurses, and five enrolled nurses), plus a trained carer. Range of nursing or caring experience among staff varied from 1 to 30 years, while aged care experience was 1–33 years. The mean years of experience in cognitive impairment or dementia care were 11.5±7.9 years. All staff reported receiving pain education in the past. Demographics of raters are shown in Table 3.
Table 3

Demographic characteristics of rater cohort (n=11)

CharacteristicsNumber (%)Mean (SD)
Age (years)45.3 (13.4)
Gender (female)9 (81.8)
Ethnicity
 Caucasian6 (54.5)
 Asian3 (27.3)
 Other2 (18.2)
Primary language
 English8 (72.7)
 Other3 (27.3)
Employment status (hours)33.3 (7.2)
 Part time (range: 20–26)6 (54.5)
 Full time (38 hours)5 (45.5)
Years of experience
 Nursing/caregiving15.5 (11.8)
 Aged care15.1 (11.1)
 Cognitive impairments/dementia care11.5 (7.9)
 Employment in facility10.6 (9.1)
Role in facility
 Enrolled nurse5 (45.4)
 Registered nurse4 (36.4)
 Clinical nurse1 (9.1)
 Personal care worker1 (9.1)
Past pain education
 Yes11 (100)
 No0 (0)
Last received pain education
 <3 months1 (9.1)
 <12 months1 (9.1)
 >12 months1 (9.1)
 >3 years1 (9.1)
 Not specified7 (63.6)

Abbreviations: SD, standard deviation.

Pain data

All residents had four pairs of ePAT ratings over the 2-week study period except one resident who had only two pairs during the same period. This resulted in a total of 76 assessments for the sample. Of these, almost two-thirds (65.8%) were scored as “no pain” while less than a third (29%) scored “mild pain” as shown in Table 4. Pain-associated conditions documented for residents were diverse with 80% of the sample having two or more chronic painful conditions. Residents had a mean pain score of 5.6±3.5 (median=5) with a range of 1–18. Table 4 provides a description of pain-related data in residents who underwent pain assessment using the ePAT.
Table 4

Pain-related data of residents (n=10) who underwent pain assessment using the ePAT

VariablesNumber (%)Mean (SD)
Pain assessments76 (100)7.6 (1.3)
 Rest38 (50)3.8 (0.6)
 Movement38 (50)3.8 (0.6)
Pain scores (median: 5, range: 1–18)5.6 (3.5)
Pain categories
 No pain50 (65.8)
 Mild pain22 (29)
 Moderate pain2 (2.6)
 Severe pain2 (2.6)
Number of documented chronic painful diagnoses (median: 3, range 1–5)3.0 (1.6)
 12 (20)
 24 (40)
 31 (10)
 41 (10)
 52 (20)
Prescribed analgesia
 Regular2.0 (1.5)
 PRN0.4 (0.8)
Non-opioid analgesics
 Regular
  Celecoxib capsules 100 mg1 (10)
  Diclofenac gel 11.6 mg/g1 (10)
  Paracetamol tablets 500 mg5 (50)
  Paracetamol tablets SR 665 mg1 (10)
  Paracetamol oral liquid 240 mg/5 mL1 (10)
 PRN
  Paracetamol tablets 500 mg2 (20)
Opioid analgesics
 Regular
  Fentanyl patches 12 mcg/hour3 (30)
  Oxycodone tablets 5 mg2 (20)
 PRN
  Oxycodone tablets 5 mg1 (10)

Abbreviations: ePAT, electronic Pain Assessment Tool; PRN, pro re nata [when necessary]; SD, standard deviation.

Interrater reliability data of the ePAT instrument

Kappa statistics

Rater agreement in broad categories of pain (no pain, mild, moderate, or severe pain) using kappa statistics was classified as excellent (κ=1.0) at rest, where both raters agreed on the absence of pain on 17 occasions, and mild pain on two occasions (Table 5). With movement, agreement was moderate (κ=0.59), but assessments were in complete agreement for 13 (68.4%) out of the 19 paired assessments; the remaining six pairs differed only by one category.
Table 5

Agreement between raters in their assessments of total pain: kappa statistics for total pain scores within pain categories, and using raw pain scores

ActivityBroad pain categories Cohen’s kappa (κ)95% CIRaw total pain scores weighted kappa (κw)95% CI
Rest1.0Not applicable0.720.58–0.86
Movement0.590.27–0.910.690.50–0.87

Note: The figures are based on the 19 pairs of measurements with movement and 19 pairs without (ie, at rest).

Lin’s concordance analysis

Lin’s concordance correlation coefficient (CCC) was used to calculate agreement between total score values produced by the paired raters. The value of CCC was calculated to be 0.92 (95% CI: 0.85–0.96), which is classified as an excellent agreement.46

Means and standard deviations of total pain scores and facial scores of ePAT at various occasions

The difference between the pairs of measurements in producing raw total pain scores while performed at rest and with movement appeared to be small, as suggested by the kappa statistics (Table 5). A linear model confirmed that the agreement was very good, and that the agreement did not depend on the conditions (rest vs movement; p=0.91). In this model, the resident identifier was named as a random effect, the dependent variable was the difference in measurements made by the two raters on each occasion, and the independent variable was the condition (rest/movement). Because the p-value associated with “condition” was not significant, this suggested that the agreement between raters was similar for both conditions. In addition, the intercept obtained from the model (overall mean) was close to zero (0.05; p=0.87), suggesting that there was no consistent bias between raters. The mean of the pain assessments made on each occasion by the two raters was calculated (n=38 occasions), and these were entered into a random-effects model to compare the measurements made at rest with those taken with movement. The model showed that the mean scores seen with movement (7.3±3.7) were significantly higher than those observed at rest (4.0±2.2; p<0.0001; standard error [SE] estimated from the regression model: 0.81). Similarly, the scores on the Face domain were significantly different (p<0.0001; SE: 0.17) between those taken with movement (mean: 2.5±0.6) and those at rest (mean: 1.7±0.7). These data are presented in Table 6.
Table 6

Means and standard deviations of total pain scores and facial scores of ePAT at various occasions

N (%)Total ePAT scores (mean±SD)Automated facial (AU) scores (mean±SD)
Episode
 No pain50 (65.8)3.6±1.7a1.9±0.8b
 Pain26 (34.2)9.3±2.9a2.5±0.6b
Occasion
 Rest38 (50%)4.0±2.2c1.7±0.7c
 Movement38 (50%)7.3±3.7c2.5±0.6c

Notes:

The two-tailed p-value is <0.0001.

The two-tailed p-value equals 0.0012.

The two-tailed p-value is <0.0001.

Abbreviations: AU, action unit; ePAT, electronic Pain Assessment Tool; SD, standard deviation.

Discussion

Our study aimed to investigate the reliability of a new tool, named the ePAT in individuals with moderate-to-severe dementia living in RACFs. The tool takes advantage of advanced computational capabilities together with the cameras in smart devices and automated facial recognition technology to identify the presence and severity of pain.31,61 Our findings suggested that agreement between raters was greater during rest (Table 5) because fewer behaviors were observed and hence recorded. In contrast, during movement, pain-induced behaviors are likely to increase because of the experienced nociceptive stimuli associated with movement-related activities (eg, turning).47,48 Some pain behaviors incorporated in ePAT are subtle and difficult to identify by raters, which may contribute to some degree of interrater variability.49 This variation in agreement between rest and movement is consistent with other observational pain assessment tools as indicated by these kappa value ranges: The Checklist of Nonverbal Pain Indicators (CNPI): 0.625–0.819, Mahoney Pain Scale (MPS): 0.55–0.77, Mobilization-Observation-Behavior-Intensity-Dementia-2 (MOBID-2): 0.44–0.90 for observed behaviors.50 With regard to automated facial scores produced by the ePAT, the mean values were significantly higher (p<0.001) for “pain” events compared to those recorded under “no pain” (Table 6). This indicates that the facial AUs are sensitive to aversive events that trigger painful stimuli. This was also supported by Lints-Martindale et al in a study investigating facial reactions to experimentally induced pain stimuli.35 They found that noxious electrical stimuli produce much greater FACS activity with “pain” compared to “no pain” events.35 Automated software scoring is also a reliable way of recognizing expressions in comparison with human observation. In a study by Peter Lewinski, automated facial coding software (eg, FaceReader) outperformed human observers in recognizing neutral faces by 31%.51 Bartlett et al also found that automated decoding of facial expressions was far superior (85% accuracy) in identifying genuine from fake pain compared to untrained and trained observers (50% and 55%, respectively).52 A significantly higher mean facial score using automated facial analysis was also observed on movement compared to that during rest (Table 6). Research suggests that joint movements generate shear forces on the axolemma of the “free” nerve endings resulting in nociceptive signals as pain.53 Our results are similar to those of Hadjistavropoulos et al who found that more facial activity was produced in movement activities.17 They reported that the FACS score was significantly greater during walking compared to reclining or transferring.17 In addition, the difference in the average number of AUs detected for residents after movement was significantly greater (p<0.0001) than for those at rest. Current research suggests that integrating automated FACS descriptors with observational tools is psychometrically sound and clinically useful.27,54 Beach et al also support this endeavor, reporting that pain-relevant FACS scores and modified PAINAD scale scores were highly correlated in older adults with Alzheimer’s dementia.54 Pain-related FACS was also found to be clinically relevant for inclusion in observational pain assessment scales designed for people with dementia.54 Observational tools with pain-related AUs have also shown higher sensitivity and better psychometric properties than those that contain generic facial expression descriptors.21 Lin’s CCC is a relative index of reliability where agreements on total pain numerical scores are compared. Our statistical analysis showed an excellent agreement (CCC=0.92). As far as we know, there are no CCC values of pain assessment scales in dementia reported in the literature. CCC values were previously reported for observational pain scales in other noncommunicative populations such as the Nonverbal Pain Assessment Tool (NPAT): 0.21–0.72 (95% CI).55 Our results demonstrated higher values than NPAT. Our study has tested the interrater reliability of a novel tool that integrates pain-relevant FACS items (ie, facial AU codes) with other communicative (eg, vocalization items), protective (eg, guarding), and subtle (eg, resistance to care) pain behaviors. This approach has emerging support in the literature.27,54,56 The total number of pain behaviors is also significantly related to self-reported pain intensity in older adults.57 It is essential to highlight that using an observational pain assessment tool improves detection of presence and severity of pain in people with cognitive impairment.58 Further, ePAT uses automated facial recognition and analysis to detect pain-relevant AU codes.31,61 Given that patients with dementia have an enhanced facial activity as illustrated in previous studies16,20,35 and that observational tools improve pain recognition in this population,58 we believe that ePAT can facilitate the process of pain detection in these patients.

Strengths and limitations

This study had several merits and limitations. Generalizations to other settings and populations are limited by the sampling method (ie, convenience, purposive sampling) and sample size. Therefore, the risk of committing Type II errors in this study remains a possibility. Despite the small sample size, an equal number of pain assessments were performed on most (ie, 9 out of 10) residents. The resident cohort was homogenous although it lacked ethnic diversity. Gender and cultural disparities were only evident in the rater group. This group had a diverse range of skills representative of the hierarchical workforce in the residential aged care setting. Learning effect associated with repeated use of the tool on the same subject is inevitable in agreement studies. The short time frame of the study may have influenced how raters remembered pain-related behaviors and how they may carry forward this information to the following week because of memory bias. Pain assessments were delivered during clinical rounds while residents were receiving their standard care, in order to minimize interference to work-flow. As such, this perhaps contributed to variations in pain scores, which are associated with consecutive delivery of the assessments, individual observation skills of a rater to record nonfacial pain-related behaviors, and the general subjective nature of pain. In addition, assessments were delivered during ADL, such as walking, to provide a real-world context of actual use of the tool in clinical scenarios. In the current study, we tested the interrater reliability by comparing two ePAT users. Head-to-head comparative studies of observational pain assessment scales can provide valuable data to guide the process of tool development and refinement.56 Further, interrater reliability is one of the key psychometric properties of observational scales because arriving at similar pain scores by different clinicians provides confidence in the tested tool.27 In our study, there was a small number (26 out of 76) of “pain” cases detected, perhaps due to the adequate pain management in the sample. Although we acknowledge this limitation, we believe the testing discussed here is sufficient to address the objectives of the study. In fact, identifying “pain” from “no pain” or neutral cases consistently is considered a useful criterion of reliability in judgment studies.27 Our findings were based on clinical validation (ie, clinical pain from ADL) and, therefore, results obtained from experimental studies (pressure or temperature pain-induced modalities) may vary. Notwithstanding, there is some evidence that experimental pain response is different from clinical pain response and that the predictive value of experimental pain for clinically induced pain is weak and not reliable.59 Lichtner et al in their systematic meta-review and Closs et al in their meta-review recommended that validation work should be conducted in clinical settings, so that it informs the applicability of the tool and its potential value in everyday clinical practice.50,60 This is because pain assessment tools that are experimentally tested in research do not necessarily transfer easily and effectively in clinical settings.60 In the study design, we allowed access of raters to all available information (except for analgesics) to minimize the chances of underestimating pain. An equal access to medical profiles by both raters means that raters were well informed about the patients’ diagnoses of possible painful chronic conditions. This strategy may have strengthened raters’ evaluation when conducting clinical pain assessments. Another strength of the study is that various reliability measures were used including kappa, weighted kappa, and CCC. Reliability statistics that consider chance agreement between raters will account for the variation in frequency of AUs distribution. This is important because it will assist in extrapolating the findings into other populations. However, measurement errors are still possible because of confounding effects linked to uncontrolled conditions inside the aged care facility such as lighting, shadowing, and random movement that might have affected the performance of the tool.

Conclusion

Facial scores were significantly higher during “pain” compared to those scores clinically recorded as “no pain”. Similarly, automated scoring of facial AUs was higher for residents with movement compared to rest. This indicates that the Face domain of the ePAT has a good sensitivity to the presence of pain. Combining automated facial expression analysis and clinical behavioral indicators in a single observational pain assessment scale affords ePAT good reliability properties. This supports its appropriateness for use in nonverbal residents with advanced dementia. Reliable clinical tools particularly for pain assessment are desired to improve therapeutic outcomes. It should be stressed, however, that currently there is no gold standard pain assessment tool available for noncommunicative people with dementia, and any attempt to work toward this goal must be encouraged. Innovative approaches of pain assessment such as those included in the ePAT can assist clinicians to more objectively assess pain in challenging populations, such as those with dementia.
  49 in total

Review 1.  The management of persistent pain in older persons.

Authors: 
Journal:  J Am Geriatr Soc       Date:  2002-06       Impact factor: 5.562

2.  Prevalence of dementia in nursing home and community-dwelling older adults in Germany.

Authors:  Falk Hoffmann; Hanna Kaduszkiewicz; Gerd Glaeske; Hendrik van den Bussche; Daniela Koller
Journal:  Aging Clin Exp Res       Date:  2014-03-20       Impact factor: 3.636

3.  Addressing workplace violence among nurses who care for the elderly.

Authors:  John Rodwell; Defne Demir
Journal:  J Nurs Adm       Date:  2014-03       Impact factor: 1.737

4.  A concordance correlation coefficient to evaluate reproducibility.

Authors:  L I Lin
Journal:  Biometrics       Date:  1989-03       Impact factor: 2.571

5.  Pain assessment in the patient unable to self-report: position statement with clinical practice recommendations.

Authors:  Keela Herr; Patrick J Coyne; Margo McCaffery; Renee Manworren; Sandra Merkel
Journal:  Pain Manag Nurs       Date:  2011-12       Impact factor: 1.929

Review 6.  Pain assessment in elderly adults with dementia.

Authors:  Thomas Hadjistavropoulos; Keela Herr; Kenneth M Prkachin; Kenneth D Craig; Stephen J Gibson; Albert Lukas; Jonathan H Smith
Journal:  Lancet Neurol       Date:  2014-11-10       Impact factor: 44.182

7.  Pain sensitivity and fMRI pain-related brain activity in Alzheimer's disease.

Authors:  Leonie J Cole; Michael J Farrell; Eugene P Duff; J Bruce Barber; Gary F Egan; Stephen J Gibson
Journal:  Brain       Date:  2006-09-02       Impact factor: 13.501

8.  Observer-rated pain assessment instruments improve both the detection of pain and the evaluation of pain intensity in people with dementia.

Authors:  A Lukas; J B Barber; P Johnson; S J Gibson
Journal:  Eur J Pain       Date:  2013-06-04       Impact factor: 3.931

9.  Epidemiology of Pain in People With Dementia Living in Care Homes: Longitudinal Course, Prevalence, and Treatment Implications.

Authors:  Anto P Rajkumar; Clive Ballard; Jane Fossey; Martin Orrell; Esme Moniz-Cook; Robert T Woods; Joanna Murray; Rhiannon Whitaker; Jane Stafford; Martin Knapp; Renee Romeo; Barbara Woodward-Carlton; Zunera Khan; Ingelin Testad; Anne Corbett
Journal:  J Am Med Dir Assoc       Date:  2017-03-18       Impact factor: 4.669

10.  Efficacy of treating pain to reduce behavioural disturbances in residents of nursing homes with dementia: cluster randomised clinical trial.

Authors:  Bettina S Husebo; Clive Ballard; Reidun Sandvik; Odd Bjarte Nilsen; Dag Aarsland
Journal:  BMJ       Date:  2011-07-15
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  10 in total

1.  Moving beyond categorization to understand affective influences on real world health decisions.

Authors:  Rebecca A Ferrer; Erin M Ellis
Journal:  Soc Personal Psychol Compass       Date:  2019-11-25

2.  Differences in Staff-Assessed Pain Behaviors among Newly Admitted Nursing Home Residents by Level of Cognitive Impairment.

Authors:  Reynolds A Morrison; Bill M Jesdale; Catherine E Dubé; Anthony P Nunes; Carol A Bova; Shao-Hsien Liu; Kate L Lapane
Journal:  Dement Geriatr Cogn Disord       Date:  2020-07-01       Impact factor: 2.959

3.  Effectiveness of nurse-led volunteer support and technology-driven pain assessment in improving the outcomes of hospitalised older adults: protocol for a cluster randomised controlled trial.

Authors:  Rosemary Saunders; Kate Crookes; Karla Seaman; Seng Giap Marcus Ang; Caroline Bulsara; Max K Bulsara; Beverley Ewens; Olivia Gallagher; Renee M Graham; Karen Gullick; Sue Haydon; Jeff Hughes; Mustafa Atee; Kim-Huong Nguyen; Bev O'Connell; Debra Scaini; Christopher Etherton-Beer
Journal:  BMJ Open       Date:  2022-06-20       Impact factor: 3.006

4.  Could negative behaviors by patients with dementia be positive communication? Seeking ways to understand and interpret their nonverbal communication.

Authors:  Huey-Ming Tzeng; Glenn Knight
Journal:  Nurs Forum       Date:  2021-11-23

5.  Commentary on Pain Behaviors in Dementia: Letter to the Editor with Reference to the Article by Morrison et al. (2020).

Authors:  Mustafa Atee; Thomas Morris; Stephen Macfarlane; Jeffery D Hughes; Colm Cunningham
Journal:  Dement Geriatr Cogn Dis Extra       Date:  2021-02-16

6.  Prevalence of frailty and pain in hospitalised adult patients in an acute hospital: a protocol for a point prevalence observational study.

Authors:  Rosemary Saunders; Kate Crookes; Mustafa Atee; Caroline Bulsara; Max K Bulsara; Christopher Etherton-Beer; Beverley Ewens; Olivia Gallagher; Renee M Graham; Karen Gullick; Sue Haydon; Kim-Huong Nguyen; Bev O'Connell; Karla Seaman; Jeff Hughes
Journal:  BMJ Open       Date:  2021-03-23       Impact factor: 2.692

Review 7.  Nursing procedures for advanced dementia: Traditional techniques versus autonomous robotic applications (Review).

Authors:  Liliana David; Stefan L Popa; Maria Barsan; Lucian Muresan; Abdulrahman Ismaiel; Luminita C Popa; Lacramioara Perju-Dumbrava; Mihaela Fadgyas Stanculete; Dan L Dumitrascu
Journal:  Exp Ther Med       Date:  2021-12-07       Impact factor: 2.447

8.  Faces of Pain in Dementia: Learnings From a Real-World Study Using a Technology-Enabled Pain Assessment Tool.

Authors:  Mustafa Atee; Kreshnik Hoti; Paola Chivers; Jeffery D Hughes
Journal:  Front Pain Res (Lausanne)       Date:  2022-02-22

9.  Automatic Coding of Facial Expressions of Pain: Are We There Yet?

Authors:  Stefan Lautenbacher; Teena Hassan; Dominik Seuss; Frederik W Loy; Jens-Uwe Garbas; Ute Schmid; Miriam Kunz
Journal:  Pain Res Manag       Date:  2022-01-11       Impact factor: 3.037

10.  Predicting neuropsychiatric symptoms of persons with dementia in a day care center using a facial expression recognition system.

Authors:  Liang-Yu Chen; Tsung-Hsien Tsai; Andy Ho; Chun-Hsien Li; Li-Ju Ke; Li-Ning Peng; Ming-Hsien Lin; Fei-Yuan Hsiao; Liang-Kung Chen
Journal:  Aging (Albany NY)       Date:  2022-02-03       Impact factor: 5.682

  10 in total

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