Literature DB >> 33211104

Association Between Wearable Device-Based Measures of Physical Frailty and Major Adverse Events Following Lower Extremity Revascularization.

Bijan Najafi1, Narek Veranyan2, Alejandro Zulbaran-Rojas1, Catherine Park1, Hung Nguyen1, Quinn Kaleikaumaka Nakahara2, Hector Elizondo-Adamchik1, Jayer Chung1, Joseph L Mills1, Miguel Montero-Baker1, David G Armstrong2, Vincent Rowe2.   

Abstract

Importance: Physical frailty is a key risk factor associated with higher rates of major adverse events (MAEs) after surgery. Assessing physical frailty is often challenging among patients with chronic limb-threatening ischemia (CLTI) who are often unable to perform gait-based assessments because of the presence of plantar wounds. Objective: To test a frailty meter (FM) that does not rely on gait to determine the risk of occurrence of MAEs after revascularization for patients with CLTI. Design, Setting, and Participants: This cohort study included 184 consecutively recruited patients with CLTI at 2 tertiary care centers. After 32 individuals were excluded, 152 participants were included in the study. Data collection was conducted between May 2018 and June 2019. Exposures: Physical frailty measurement within 1 week before limb revascularization and incidence of MAEs for as long as 1 month after surgery. Main Outcomes and Measures: The FM works by quantifying weakness, slowness, rigidity, and exhaustion during a 20-second repetitive elbow flexion-extension exercise using a wrist-worn sensor. The FM generates a frailty index (FI) ranging from 0 to 1; higher values indicate progressively greater severity of physical frailty.
Results: Of 152 eligible participants (mean [SD] age, 67.0 [11.8] years; 59 [38.8%] women), 119 (78.2%) were unable to perform the gait test, while all could perform the FM test. Overall, 53 (34.9%), 58 (38.1%), and 41 (27.0%) were classified as robust (FI <0.20), prefrail (FI ≥0.20 to <0.35), or frail (FI ≥0.35), respectively. Within 30 days after surgery, 24 (15.7%) developed MAEs, either major adverse cardiovascular events (MACE; 8 [5.2%]) or major adverse limb events (MALE; 16 [10.5%]). Baseline demographic characteristics were not significantly different between frailty groups. In contrast, the FI was approximately 30% higher in the group that developed MAEs (mean [SD] score, 0.36 [0.14]) than those who were MAE free (mean [SD] score, 0.26 [0.13]; P = .001), with observed MAE rates of 4 patients (7.5%), 7 patients (12.1%), and 13 patients (31.7%) in the robust, prefrail and frail groups, respectively (P = .004). The FI distinguished individuals who developed MACE and MALE from those who were MAE free (MACE: mean [SD] FI score, 0.38 [0.16]; P = .03; MALE: mean [SD] FI score, 0.35 [0.13]; P = .004) after adjusting by body mass index. Conclusions and Relevance: In this cohort study, measuring physical frailty using a wrist-worn sensor during a short upper extremity test was a practical method for stratifying the risk of MAEs following revascularization for CLTI when the administration of gait-based tests is often challenging.

Entities:  

Mesh:

Year:  2020        PMID: 33211104      PMCID: PMC7677765          DOI: 10.1001/jamanetworkopen.2020.20161

Source DB:  PubMed          Journal:  JAMA Netw Open        ISSN: 2574-3805


Introduction

Frailty is a geriatric syndrome of decreased physiologic reserve and resistance to stressors, which leaves patients more susceptible to poor health outcomes following surgical interventions.[1,2,3,4] Although recent American College of Surgeons guidelines recommend determining a baseline frailty score for optimal perioperative management of geriatric surgical patients,[5] such scoring is not routinely performed as part of the preoperative assessment in the hospital setting mainly because of the impracticality and inherent limitations of the current screening tools. Frailty is often characterized by assessing physical fitness, called physical frailty. Multiple tools have been developed to objectively determine physical frailty.[6,7] The Fried frailty phenotype has been the criterion standard for clinical assessment of physical frailty.[8] This method determines physical frailty based on 5 phenotypes, including exhaustion, inactivity, shrinking, slowness, and weakness. The first 3 phenotypes are subjectively assessed with surveys, whereas the last 2 are objectively measured with a grip force test and a 4.5-m walk test. The administration of these tests, specifically the walking test, is challenging in patients with limited mobility, including those with lower extremity peripheral artery disease (PAD) presenting with rest pain, foot ulcers, or amputation.[9] However, the lack of ability to walk does not necessarily indicate physical frailty and, in addition to incomplete phenotype assessment, compromises the predictive power of the tool.[10,11] The Frailty Index (FI), proposed by Rockwood et al,[12] is another validated tool that is based on deficit accumulation. However, because it is not representative of physical frailty, it has limitations for informing or tracking potential benefits of preventive solutions to improve resilience and physical fitness among frail patients, such as prerehabilitation before surgery.[7] To address the limitations of the Fried criteria and the Rockwood FI, we proposed an alternative tool for measuring physical frailty using a wrist-worn sensor called the frailty meter (FM). The FM quantifies physical frailty phenotypes such as weakness, slowness, range of motion (rigidity), and exhaustion, measured during a 20-second repetitive elbow flexion-extension task, into a continuous scale ranging from 0 to 1 using an optimized linear regression model described by Lee et al.[9] This model was developed based on previous studies, which showed a strong correlation between the FM FI and the modified Rockwood FI and estimated unfavorable hospital discharge among geriatric trauma patients.[1,13,14] The FM facilitates measuring physical frailty in both ambulatory and nonambulatory patients.[15,16,17] We tested the feasibility of using FM in the inpatient setting as well as its ability to determine the risk of occurrence of major adverse events (MAEs) during the first 30 postoperative days in patients with PAD undergoing lower extremity revascularization for chronic limb-threatening ischemia (CLTI). Our hypotheses were as follows: (1) FM is a feasible tool for assessing frailty in patients with CLTI in the inpatient setting and (2) the preoperative FI, generated by FM, enables distinguishing revascularized patients with and without occurrence of MAEs during the first 30 postoperative days.

Methods

Study Design and Setting

A consecutive sample of 184 patients with PAD who underwent revascularization with open bypass surgery (OBPS) or endovascular therapy (EVT) at St Luke’s Medical Center of Baylor College of Medicine (BCM; Houston, Texas) from September 2016 to May 2018 and at 2 teaching hospitals of University of Southern California (USC; Keck Medical Center of USC and Los Angeles County–USC Medical Center, Los Angeles) from September 2018 to June 2019 were recruited into the study. All surgeons at BCM site (M.M., J.C, and J.M) were masked to the outcomes of the FM test. The surgeon at USC site (V.R.) was not masked, but the decision for revascularization was not based on the outcome of the test.

Participants

The inclusion and exclusion criteria were selected according to previously reported data,[18,19,20,21,22] which included any adult patient undergoing lower extremity revascularization for PAD. Patients were excluded if they presented with acute limb ischemia; were unable to fully comply with the follow-up protocol (eg, long-distance travel) or to provide informed consent; had any acute illness such as myocardial infarction or stroke; had nonatherosclerotic vascular disease; or had undergone any major surgery within the preceding 30 days. Patients with claudication (ie, Rutherford score <4)[23] were excluded because of the different risk profiles and treatment strategies compared with CLTI (Rutherford score ≥4). Rutherford classes were used because wound, ischemia, foot infection (WIfI) stratification[24] was not uniformly done at the time of the study in all enrolling institutions. Participants were provided written informed consent, approved by the institutional review boards of BCM or USC. This study followed the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) reporting guideline.

Measurement Procedure

The FM test was performed within 1 week before the revascularization procedure. The FM consists of 1 wearable sensor and a wirelessly connected tablet (Figure 1). It records the angular velocity during a 20-second repetitive elbow flexion-extension task and then displays an FI. Participants were tested on their dominant arm, similar to the previously established protocol.[9,16]
Figure 1.

Frailty Assessment by Upper Extremity Motion Using Frailty Meter

The system, which consists of a sensor worn on the wrist and a wirelessly connected tablet, records angular velocity during a 20-second repetitive elbow flexion-extension task, and then displays a frailty score. All measurements were done in the clinics or in the preprocedure holding area of the catheterization laboratory within 1 week before the revascularization.

Frailty Assessment by Upper Extremity Motion Using Frailty Meter

The system, which consists of a sensor worn on the wrist and a wirelessly connected tablet, records angular velocity during a 20-second repetitive elbow flexion-extension task, and then displays a frailty score. All measurements were done in the clinics or in the preprocedure holding area of the catheterization laboratory within 1 week before the revascularization. Participants were classified, based on their FI, as robust (FI <0.20), prefrail (FI ≥0.20 to <0.35), or frail (FI ≥0.35) using the benchmark proposed by Rockwood et al[25] and the density function suggested by Li et al.[20] Research coordinators (N.V. at USC and A.Z. at BCM) reviewed institutional electronic medical records for patient medical history and demographic data including ethnicity to differentiate whether MAE occurrence was associated with any race. The initial protocol also included assessing physical frailty using the Fried frailty phenotype criteria.[19] However, after recruiting the first 10 patients, it became evident that most participants were unable to perform a gait test and/or answer the physical activity questionnaire, 2 important phenotypes of the Fried criteria. We therefore decided to remove this test from the protocol.

Definition of MAEs

MAEs were defined according to the criteria proposed by Conte et al[18] and were further subcategorized as major adverse cardiovascular events (MACEs) and major adverse limb events (MALEs). MACEs included myocardial infarction, stroke, and a death from any cause. MALEs included unplanned major amputations or major reinterventions (eg, thrombectomy, thrombolysis, or bypass graft placement). These MAEs were documented up to 30 days following the procedure.

Statistical Analysis

All continuous data are presented as means and SDs. All categorical data are expressed as counts and percentages. One-way analysis of variance for normally distributed variables or Kruskal-Wallis H test for nonnormally distributed variables were used to estimate differences of means between frailty groups (ie, robust, prefrail, and frail), followed by Games-Howell post hoc test for pairwise analysis. The Mann-Whitney U test was used to determine significant difference between groups with and without MAEs. If a categorical variable had more than 2 levels, the χ2 test was used to determine significant level. The effect size was measured using odds ratios (ORs) and 95% CIs in case of categorical variables and Cohen d for continuous variables. Generalized estimating equations were conducted to assess the association between FI and either frailty or MAE status by adjusting continuous variables proven to be associated with frailty.[26,27,28] Statistical significance was set at a 2-sided P < .05. All statistical analyses were performed using SPSS statistical software version 24 (IBM) and MATLAB version R2018b (MathWorks).

Results

The study initially recruited 184 potentially eligible patients; however, 18 (9.7%) were subsequently excluded for presenting with claudication alone, 8 (4.3%) because of FM technical failure (lack of communication between sensor and tablet or not saving data after test), and 3 (1.6%) were lost to follow-up. Three participants (1.6%) were excluded after consent and enrollment, including 2 patients because of cancellation of the procedure and 1 because of severe cognitive impairment and the inability to undergo the full protocol. The remaining 152 eligible patients with CLTI were monitored for 30 days after surgery.

Clinical and Demographic Characteristics

Participants had a mean (SD) age of 67.8 (11.8) years and mean (SD) body mass index (BMI; calculated as weight in kilograms divided by height in meters squared) of 27.6 (6.3). Overall, 59 women (38.8%) were in the sample. The median (range) Rutherford score was 5 (4-6). PAD risk factors, such as diabetes (64 of 75 [85.3%]), hypertension (64 of 152 [42.1%]), and history of tobacco use (92 of 152 [61.3%]) were highly prevalent. In addition, 119 patients (78.2%) had a foot ulcer at the time of assessment, and thus, the walking test was discouraged. In this cohort, 115 patients (75.6%) underwent EVT (eg, atherectomy, balloon or stent angioplasty), while 37 (24.3%) underwent OBPS. The mean (SD) hospital length of stay was 11.8 (18.1) days including both inpatient and outpatient settings. Characteristics and specific sites of anatomic lesions were not included in this study.

Robust, Prefrail, and Frail Groups

Based on the FM test, 53 participants (34.9%) were classified as robust, 58 (38.1%) as prefrail, and 41 (27%) as frail (Table 1 and Figure 2A). Mean (SD) age was significantly different among the robust (65.2 [11.5] years), prefrail (67.2 [11.8] years) and frail (71.9 [11.2] years) groups (P = .02). Sex, height, weight, and BMI did not differ between groups. The mean (SD) FI was not significantly different between patients with open (0.26 [0.13]) and endovascular (0.28 [0.14]) revascularizations.
Table 1.

Demographic Characteristics, Frail Meter Parameters, and Risk Factors of Participants Undergoing Revascularization

CharacteristicPatients, No./total No. (%), by groupP value
Robust (n = 53)Prefrail (n = 58)Frail (n = 41)
Demographic characteristics
Age, mean (SD), y65.2 (11.5)67.2 (11.8)71.9 (11.2).02
Women17/53 (32.1)22/57 (38.6)20/41 (48.8).26
Height, mean (SD), cm165 (9)167 (18)165 (11).40
Weight, mean (SD), kg73.7 (13.3)83.7 (27.1)72.7 (19.7).14
BMI, mean (SD)27.3 (5.2)28.7 (7.0)26.5 (6.4).47
Mobility aid7/13 (53.8)22/35 (62.9)21/26 (80.8).17
Race/ethnicity
White18/53 (34.0)23/57 (40.4)14/41 (34.1).26
African American6/53 (11.3)11/57 (19.3)10/41 (24.4)
Hispanic or Latino29/53 (54.7)22/57 (38.6)17/41 (41.5)
Asian01/57 (1.8)0
Peripheral artery disease risk factors
History of foot ulcer8/13 (61.5)29/36 (80.6)17/26 (65.4).28
Diabetes11/13 (84.6)31/36 (86.1)22/26 (84.6).98
Hypertension33/53 (62.3)19/58 (32.8)12/41 (29.3).001
Heart disease17/53 (32.1)25/58 (43.1)15/41 (36.6).48
Stroke3/53 (5.7)7/58 (12.1)10/41 (24.4).03
Renal disease18/53 (34)11/58 (19)9/41 (22).17
History of tobacco use28/53 (52.8)36/56 (64.3)28/41 (68.3).27
Prescription medications, mean (SD), No.7.9 (4.0)8.8 (4.2)8.9 (4.1).75
History of fall3/11 (27.3)6/30 (20.0)12/23 (52.2).04
Comorbidities, mean (SD), No.3.2 (1.7)2.8 (2.9)3.0 (1.5).57
Rutherford score, mean (SD)5.3 (0.8)5.3 (1.5)5.2 (0.9).97
Length of hospital stay, mean (SD), d10.92 (7.75)9.65 (16.52)16.32 (20.41).20
Type of intervention
Open13/53 (24.5)16/58 (27.6)8/41 (19.5).65
Endovascular40/53 (75.4)42/58 (72.4)33/41 (80.5)
Frail meter parameters and phenotypes, mean (SD)a
Overall frailty index score0.13 (0.05)0.27 (0.04)0.45 (0.08)<.001
Speed, ie, slowness, deg/s1101 (364)665 (210)327 (176)<.001
Speed reduction, ie, exhaustion, %10.74 (24.36)−3.38 (12.08)−15.03 (20.87)<.001
ROM, ie, flexibility, deg107 (33)80 (27)40 (24)<.001
Power, ie, weakness, deg2/s3 x 1052.63 (1.91)0.84 (0.75)0.23 (0.33)<.001
Flexion time, ms336 (77)425 (133)600 (360)<.001
Flexions, No.30 (8)24 (8)20 (9)<.001

Abbreviations: BMI, body mass index (calculated as weight in kilograms divided by height in meters squared); ROM, range of motion.

Associated Fried phenotypes were determined according to the study by Toosizadeh et al.[16]

Figure 2.

Overall Frailty Index and Risk of Major Adverse Events (MAEs)

A and C, Whiskers indicate standard errors. BMI indicates body mass index.

aP ≤ .001.

bP ≤ .01.

cP < .05.

Abbreviations: BMI, body mass index (calculated as weight in kilograms divided by height in meters squared); ROM, range of motion. Associated Fried phenotypes were determined according to the study by Toosizadeh et al.[16]

Overall Frailty Index and Risk of Major Adverse Events (MAEs)

A and C, Whiskers indicate standard errors. BMI indicates body mass index. aP ≤ .001. bP ≤ .01. cP < .05. Rates of diabetes, history of tobacco use, Rutherford score, length of hospital stay, total number of prescription medications, and total number of comorbidities demonstrated no significant differences among groups. However, hypertension, stroke history, and history of fall were significantly different between groups (hypertension: robust, 33 [62.3%]; prefrail, 19 [32.8%]; frail, 12 [29.3%]; P = .001; history of stroke: robust, 3 [5.7%]; prefrail, 7 [12.1%]; frail, 10 [24.4%]; P = .03; history of fall: robust, 3 of 11 [27.3%]; prefrail, 6 of 30 [20.0%]; frail, 12 of 23 [52.2%]; P = .04). During the 30-day postoperative period, MAEs occurred in 13 patients in the frail group (31.7%), 7 patients in the prefrail group (12.1%), and 4 patients in the robust group (7.5%; P = .004) (Table 2, Figure 2B). The frail group developed MAEs 2.1 times more frequently than the robust group (OR, 5.69; 95% CI, 1.69-19.13; P = .003), and 1.8 times more frequently than the prefrail group (OR, 3.38; 95% CI, 1.21-9.46; P = .02).
Table 2.

Comparison of MAEs Among the 3 Groups

OutcomeGroups, No. (%)
Robust (n = 53)Prefrail (n = 58)Frail (n = 41)P value
MACE1 (1.9)3 (5.2)4 (9.8).24
MALE3 (5.7)4 (6.9)9 (22.0).02
Total MAE4 (7.5)7 (12.1)13 (31.7).004

Abbreviations: MACE, major adverse cardiovascular event; MAE, major adverse event; MALE, major adverse limb event.

Abbreviations: MACE, major adverse cardiovascular event; MAE, major adverse event; MALE, major adverse limb event. The rate of open surgeries was higher in the prefrail group (robust, 13 [24.5%]; prefrail, 16 [27.6%]; frail, 8 [19.5%]), while the rate of endovascular procedures was higher in the frail group (robust, 40 [75.4%]; prefrail, 42 [72.4%]; frail, 33 [80.5%]). However, there was no significant difference for type of surgery among groups (P = .65).

MAEs, MACEs, and MALEs

Of the 152 participants who were observed for 30 days after surgery, 24 (15.7%) developed MAEs (Table 3). Except BMI, none of the demographic factors were statistically significantly different between the MAE and non-MAE groups. Common PAD risk factors, such as history of foot ulcer, diabetes, hypertension, heart disease , stroke, and history of tobacco use, also showed no significant differences between these 2 groups. The MAE group had a relatively higher rate of history of tobacco use (OR, 2.10; 95% CI, 0.78-5.67; P = .13), but the differences failed to achieve a statistical significance in our sample. The MAE rate during the postoperative 30 days was not different between patients who underwent an open (7 of 37 [18.9%]) or endovascular (17 of 115 [14.7%]) revascularization. Overall, the frail group had the most deaths (3 of 4 [75.0%]) and limb loss (5 of 9 [55.5%]) reported.
Table 3.

Demographic Characteristics, Risk Factors, and Frail Meter Parameter of Patients With and Without MAEs

CharacteristicNo./total No. (%), by groupP valueOR (95% CI)
Non-MAE (n = 128)MAE (n = 24)
Demographic characteristics
Age, mean (SD), y67.4 (11.7)70.2 (12.0).30NA
Women51/127 (40.2)8/24 (33.3).530.74 (0.29 to 1.86)
Height, mean (SD), cm165 (14)168 (11).57NA
Weight, mean (SD), kg78.1 (21.7)72.8 (20.3).23NA
BMI, mean (SD)28.0 (6.2)25.7 (6.6).04NA
Use of mobility aid44/65 (67.7)6/9 (66.7).950.95 (0.21-4.19)
Race/ethnicity
White41/127 (32.3)14/24 (58.3).01NA
African American24/127 (18.9)3/24 (12.5).46NA
Hispanic or Latino61/127 (48.0)7/24 (29.2).09NA
Asian1/127 (0.8)0.19NA
Peripheral artery disease risk factor
History of foot ulcer48/66 (72.7)6/9 (66.7).700.75 (0.16-3.32)
Diabetes56/66 (84.8)8/9 (88.9).751.42 (0.16-12.70)
Hypertension53/128 (41.4)11/24 (45.8).691.19 (0.49-2.87)
Stroke18/128 (14.1)2/24 (8.3).450.55 (0.12-2.56)
Heart disease48/128 (37.5)6/24 (25.0).240.55 (0.20-1.49)
Renal disease32/128 (25.0)6/24 (25.0)>.991.00 (0.36-2.73)
History of tobacco use74/126 (58.7)18/24 (75.0).132.10 (0.78-5.67)
Prescription medication, mean (SD), No.8.7 (4.1)8.4 (4.4).89NA
History of fall17/55 (30.9)4/9 (44.4).421.78 (0.42-7.50)
Comorbidities, mean (SD), No.3.0 (1.6)3.0 (1.4).73NA
Rutherford score, mean (SD)5.3 (0.8)5.4 (0.8).48NA
Frail meter parameters and phenotypes, mean (SD)a
Frailty index0.26 (0.13)0.36 (0.14).001NA
Speed, ie, slowness, deg/s755 (412)592 (379).08NA
Speed reduction, ie, exhaustion, %1.0 (21.7)−13.2 (21.1).02NA
ROM, ie, flexibility, deg82 (38)62 (42).02NA
Power, ie, weakness deg2/s3 × 1051.38 (1.63)0.99 (1.43).13NA
Flexion time, ms423 (198)536 (367).26NA
Flexions, No.25 (9)23 (9).62NA

Abbreviations: BMI, body mass index (calculated as weight in kilograms divided by height in meters squared); MAE, major adverse event; NA, not applicable; OR, odds ratio; ROM, range of motion.

Associated Fried phenotypes were determined according to the study by Toosizadeh et al.[16]

Abbreviations: BMI, body mass index (calculated as weight in kilograms divided by height in meters squared); MAE, major adverse event; NA, not applicable; OR, odds ratio; ROM, range of motion. Associated Fried phenotypes were determined according to the study by Toosizadeh et al.[16] Analysis of FM parameters demonstrated that the mean (SD) FI was higher in the MAE group compared with the non-MAE group (0.36 [0.14] vs 0.26 [0.13]; P = .001; d = 0.76). Except for mean [SD] scores on speed reduction (ie, exhaustion; mean [SD], −13.2% [21.1%] vs 1.0% [21.7%]; P = .02; d = 0.66) and flexibility (62° [42°] vs 82° [38°]; P = .02; d = 0.52), the remainder of the measured metrics, while worse in the MAE group than in the non-MAE group, did not reach statistical significance. After adjusting for BMI, the mean (SD) FI score was still found to be significantly higher in the MAE than in non-MAE group (0.36 [0.14] vs 0.26 [0.13]; P = .001) (Figure 2C). Patients who experienced MAEs were further subdivided into MACE (n = 8) and MALE (n = 16) groups to conduct a pairwise comparison for the FI after adjusting for BMI. The results revealed a significantly lower mean (SE) FI in non-MAE (0.25 [0.13]) compared with MACE (0.38 [0.16]; P = .03) and MALE (0.35 [0.13]; P = .004) groups, but there was no significant difference of FI between MACE and MALE groups.

Discussion

Assessment of physical frailty is important for comprehensive perioperative care, especially in the geriatric population. However, a quick, accurate, and simple tool to assess physical frailty is not widely available yet. This issue is particularly challenging for patients with CLTI, who frequently present with ischemic rest pain, foot ulcers, or lower extremity amputation and are thus often unable to perform the gait-based assessments that are part of current well-established physical frailty assessment tools. In this study, we proposed the use of an alternative digital tool to assess physical frailty during a 20-second repetitive elbow flexion-extension test using a wrist-worn sensor called FM. All participants in this cohort study were able to perform the FM test, indicating high feasibility. In contrast, 119 patients (78.2%) were unable to perform gait-based protocols because of the presence of chronic ulcers or tissue loss. The preoperative sensor-derived FI could allow for the identification of patients with CLTI who are more likely to experience postoperative MAEs, supporting the potential ability of FM to estimate the risk of MAEs after lower extremity revascularization. More recently, to integrate frailty screening as a component of routine preoperative assessment, the focus has shifted toward developing a quick and objective assessment tool to evaluate physical frailty based on a single frailty phenotype. Grip strength, which is often associated with sarcopenia (weight loss phenotype) and reduced muscle strength (weakness phenotype), has been shown to be a robust surrogate measure of frailty,[21,22] predicting disability, morbidity, and mortality[22,29,30] as well as high cardiovascular risk[31] in geriatric patients. However, in the study by Dudzinska-Griszek et al,[32] 30% of patients were unable to fulfil the frailty criterion of weakness, suggesting that it can be difficult to measure grip strength on a frail hospitalized patient. Another study by Theou et al,[11] which examined more than 27 000 participants, found that 9.7% of the participants were missing a grip strength score and 61.1% of participants were unable to perform the test. In our study, of all measured physical frailty phenotypes, exhaustion and flexibility were the significant parameters able to distinguish MAE with medium effect sizes, comparable with the large effect size observed for FI. This indicates that both exhaustion and weakness are important frailty phenotypes in distinguishing MAEs, although measuring the other mentioned phenotypes may improve the capacity of distinguishing MAE. Based on current literature, the type of intervention could also be associated with the risk of postoperative adverse events following lower extremity revascularization for PAD. Results of the randomized controlled BASIL study showed that there were no differences in the early, overall mortality rates between OBPS and EVT, but OBPS was associated with increased early morbidity.[33] Conversely, Mehaffey et al[34] showed that, compared with EVT, lower extremity OBPS resulted in lower rates of MALEs but similar rates of MACEs. In our study, there was no significant difference of MAE rates between patients who received OBPS and those who received EVT. The mean (SD) FI also was not significantly different between patients with open (0.26 [0.13]) and endovascular (0.28 [0.14]) revascularizations. Previous studies have shown that patients with CLTI have higher mortality[35] and increased risk of an amputation following a revascularization[36,37] especially in frail patients.[38] In our study, 4 patients (2.6%) died and 9 patients (5.9%) had limb loss within 30 days of revascularization. Interestingly, 3 of these deaths as well as 5 of these amputations belonged to patients in the frail group, suggesting that higher FI scores might be able to distinguish worse outcomes after revascularization. Another important observation is the association of FM with MAEs regardless of the type of intervention.[39] For instance, even a minor intervention (eg, balloon angioplasty) could have fatal consequences for a patient at high risk of morbidity or mortality (ie, considered frail).[26] Although MACEs have been associated with supra-inguinal lesions,[24] in our study, all frail patients who died (n = 3) within 30 days of revascularization underwent infra-inguinal percutaneous angioplasties. Thus, the FM may be a patient-risk assessment tool useful for estimating the likelihood of MAE, regardless of the anatomic site of the lesion treated. On the other hand, the FM might be able to distinguish whether robust patients could tolerate high-risk interventions (eg, OBPS) without risk of postintervention MAEs. In this study, 13 patients (24.5%) from the robust group underwent open interventions, and only 1 patient developed an MACE (nonmortal event) and 1 patient developed an MALE (non–limb loss event), suggesting that FI could be a predictive tool independent of the type of surgery. A demographic shift of geriatric surgical patients has spurred the need for a routine assessment tool to accurately distinguish postoperative outcomes.[40] In this study, age as well as the number of comorbidities were not significantly different between the MAE and non-MAE groups. However, the likelihood of an MAE increased with the increase in the sensor-derived FI score. The prefrail group had 1.3 times higher risk of developing an MAE compared with the robust group, although this difference was statistically nonsignificant. The frail group developed MAEs 2.1 times more frequently than the robust group and 1.3 times more frequently than the prefrail group. Furthermore, patients who experienced an MACE had the highest FI score.

Limitations

This study has limitations. It did not focus on the specific type of intervention for EVT (eg, scaffolding, balloon angioplasty, or atherectomy), OBPS (eg, autologous, prosthetic), or vascular lesion anatomy. Similarly, MACE and MALE breakdown were not reported. The primary outcome was to test the feasibility of the FM regardless of specific MAE or type of intervention. Thus, we generalized both outcomes to report homogeneous MAEs. This study was not designed to estimate the rate of MAEs and thus may be underpowered for estimating MAEs after lower extremity revascularization. Future studies to explore the association of revascularization with reversing frailty status are warranted.

Conclusions

In this cohort study, a wrist-worn sensor and a 20-second repetitive elbow flexion-extension exercise were feasible for determining preoperative physical frailty and its ability to distinguish between those with and without postoperative MAEs in patients with PAD undergoing open or endovascular revascularization. This quick and low-risk test could facilitate the integration of physical frailty measurement into routine preoperative patient assessment and supports surgeons’ decision-making in evaluating the ratio of risk from revascularization in older adults.
  39 in total

1.  Toward Using a Smartwatch to Monitor Frailty in a Hospital Setting: Using a Single Wrist-Wearable Sensor to Assess Frailty in Bedbound Inpatients.

Authors:  Hyoki Lee; Bellal Joseph; Ana Enriquez; Bijan Najafi
Journal:  Gerontology       Date:  2017-11-25       Impact factor: 5.140

2.  Assessing Upper-Extremity Motion: An Innovative, Objective Method to Identify Frailty in Older Bed-Bound Trauma Patients.

Authors:  Nima Toosizadeh; Bellal Joseph; Michelle R Heusser; Tahereh Orouji Jokar; Jane Mohler; Herb A Phelan; Bijan Najafi
Journal:  J Am Coll Surg       Date:  2016-05-04       Impact factor: 6.113

3.  Amputation Rates, Mortality, and Pre-operative Comorbidities in Patients Revascularised for Intermittent Claudication or Critical Limb Ischaemia: A Population Based Study.

Authors:  E Baubeta Fridh; M Andersson; M Thuresson; B Sigvant; B Kragsterman; S Johansson; P Hasvold; M Falkenberg; J Nordanstig
Journal:  Eur J Vasc Endovasc Surg       Date:  2017-08-07       Impact factor: 7.069

Review 4.  Frailty and functional outcomes after open and endovascular procedures for patients with peripheral arterial disease: A systematic review.

Authors:  Fabienne M van Aalst; Lisa Verwijmeren; Eric P A van Dongen; Jean-Paul P M de Vries; Esther de Groot; Peter G Noordzij
Journal:  J Vasc Surg       Date:  2019-07-19       Impact factor: 4.268

5.  Upper-Extremity Function Predicts Adverse Health Outcomes among Older Adults Hospitalized for Ground-Level Falls.

Authors:  Bellal Joseph; Nima Toosizadeh; Tahereh Orouji Jokar; Michelle R Heusser; Jane Mohler; Bijan Najafi
Journal:  Gerontology       Date:  2016-12-10       Impact factor: 5.140

6.  Preoperative Frailty Increases Risk of Nonhome Discharge after Elective Vascular Surgery in Home-Dwelling Patients.

Authors:  Shipra Arya; Chandler A Long; Reshma Brahmbhatt; Susan Shafii; Luke P Brewster; Ravi Veeraswamy; Theodore M Johnson; Jason M Johanning
Journal:  Ann Vasc Surg       Date:  2016-06-02       Impact factor: 1.466

7.  Screening for frailty: criteria and predictors of outcomes.

Authors:  C H Winograd; M B Gerety; M Chung; M K Goldstein; F Dominguez; R Vallone
Journal:  J Am Geriatr Soc       Date:  1991-08       Impact factor: 5.562

8.  Endovascular Therapy in an "All-Comers" Risk Group for Chronic Limb-Threatening Ischemia Demonstrates Safety and Efficacy When Compared with the Established Performance Criteria Proposed by the Society for Vascular Surgery.

Authors:  Miguel Montero-Baker; Alejandro Zulbaran-Rojas; Jayer Chung; Neal R Barshes; Hector Elizondo-Adamchik; Mohammad Shahbazi; Jeffrey Ross; Hadi Rahemi; Bijan Najafi; Joseph L Mills
Journal:  Ann Vasc Surg       Date:  2020-03-21       Impact factor: 1.466

9.  Frailty Is Associated with an Increased Risk of Major Adverse Cardiac Events in Patients with Stable Claudication.

Authors:  Melinda S Schaller; Joel L Ramirez; Warren J Gasper; Greg J Zahner; Nancy K Hills; S Marlene Grenon
Journal:  Ann Vasc Surg       Date:  2018-03-26       Impact factor: 1.466

Review 10.  Global variation in grip strength: a systematic review and meta-analysis of normative data.

Authors:  Richard M Dodds; Holly E Syddall; Rachel Cooper; Diana Kuh; Cyrus Cooper; Avan Aihie Sayer
Journal:  Age Ageing       Date:  2016-01-19       Impact factor: 10.668

View more
  7 in total

1.  Harnessing Digital Health to Objectively Assess Functional Performance in Veterans with Chronic Obstructive Pulmonary Disease.

Authors:  He Zhou; Catherine Park; Olia Poursina; Mohsen Zahiri; Hung Nguyen; Ilse Torres Ruiz; Christina K Nguyen; Mon S Bryant; Amir Sharafkhaneh; Venkata D Bandi; Bijan Najafi
Journal:  Gerontology       Date:  2021-11-29       Impact factor: 5.597

2.  Mediating Effect of Physical Activity in the Association between Low 25-Hydroxyvitamin D and Frailty Trajectories: The English Longitudinal Study of Ageing.

Authors:  Zaixing Shi; Kanglin Shi; Zeyun Zhang; Jianlin Lin; Ya Fang
Journal:  Nutrients       Date:  2022-05-30       Impact factor: 6.706

3.  Major Adverse Events in Patients with Peripheral Artery Disease after Endovascular Revascularization: A Retrospective Study.

Authors:  Mihui Kim; Yong Sook Yang; Young-Guk Ko; Mona Choi
Journal:  J Clin Med       Date:  2022-05-01       Impact factor: 4.964

4.  Incorporating Outcomes that Matter to Older Adults into Surgical Research.

Authors:  Carling Cheung; Matthew A Meissner; Tullika Garg
Journal:  J Am Geriatr Soc       Date:  2021-01-18       Impact factor: 5.562

5.  Remote Physical Frailty Monitoring-The Application of Deep Learning-Based Image Processing in Tele-Health.

Authors:  Mohsen Zahiri; Changhong Wang; Manuel Gardea; Hung Nguyen; Mohammad Shahbazi; Amir Sharafkhaneh; Ilse Torres Ruiz; Christina K Nguyen; Monthaporn S Bryant; Bijan Najafi
Journal:  IEEE Access       Date:  2020-12-04       Impact factor: 3.367

6.  SCAI/ACR/APMA/SCVS/SIR/SVM/SVS/VESS Position Statement on Competencies for Endovascular Specialists Providing CLTI Care.

Authors:  Beau M Hawkins; Jun Li; Luke R Wilkins; Teresa L Carman; Amy B Reed; David G Armstrong; Philip Goodney; Christopher J White; Aaron Fischman; Marc L Schermerhorn; Dmitriy N Feldman; Sahil A Parikh; Mehdi H Shishehbor
Journal:  Vasc Med       Date:  2022-04-25       Impact factor: 4.739

7.  A Wrist-Worn Sensor-Derived Frailty Index Based on an Upper-Extremity Functional Test in Predicting Functional Mobility in Older Adults.

Authors:  Gu Eon Kang; Aanand D Naik; Ravi K Ghanta; Todd K Rosengart; Bijan Najafi
Journal:  Gerontology       Date:  2021-04-01       Impact factor: 5.597

  7 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.