Literature DB >> 26824053

Quality and Quantity of Rehabilitation Exercises Delivered By A 3-D Motion Controlled Camera: A Pilot Study.

Ravi Komatireddy1, Anang Chokshi2, Jeanna Basnett3, Michael Casale4, Daniel Goble4, Tiffany Shubert4.   

Abstract

INTRODUCTION: Tele-rehabiliation technologies that track human motion could enable physical therapy in the home. To be effective, these systems need to collect critical metrics without PT supervision both in real time and in a store and forward capacity. The first step of this process is to determine if PTs (PTs) are able to accurately assess the quality and quantity of an exercise repetition captured by a tele-rehabilitation platform. The purpose of this pilot project was to determine the level of agreement of quality and quantity of an exercise delivered and assessed by the Virtual Exercise Rehabilitation Assistant (VERA), and seven PTs.
METHODS: Ten healthy subjects were instructed by a PT in how to perform four lower extremity exercises. Subjects then performed each exercises delivered by VERA which counted repetitions and quality. Seven PTs independently reviewed video of each subject's session and assessed repetitions quality. The percent difference in total repetitions and analysis of the distribution of rating repetition quality was assessed between the VERA and PTs.
RESULTS: The VERA counted 426 repetitions across 10 subjects performing the four different exercises while the mean repetition count from the PT panel was 426.7 (SD = 0.8). The VERA underestimated the total repetitions performed by 0.16% (SD = 0.03%, 95% CI 0.12 - 0. 22). Chi square analysis across raters was χ2 = 63.17 (df = 6, p<.001), suggesting significant variance in at least one rater.
CONCLUSION: The VERA count of repetitions was accurate in comparison to a seven member panel of PTs. For exercise quality the VERA was able to rate 426 exercise repetitions across 10 patients and four different exercises in a manner consistent with five out of seven experienced PTs.

Entities:  

Keywords:  Exercise; Home exercise Program; Rehabilitation; Therapy; Virtual reality

Year:  2014        PMID: 26824053      PMCID: PMC4727753          DOI: 10.4172/2329-9096.1000214

Source DB:  PubMed          Journal:  Int J Phys Med Rehabil        ISSN: 2329-9096


Introduction

Recovery from musculoskeletal trauma, stroke, and joint surgery is strongly correlated to total dose of exercise and therapy [1]. It is estimated the optimal dose of exercise to protect against a fall is a minimum of 50 hours [2]. Stroke patients have better outcomes when they receive a home exercise program for six to twelve months post-stroke, and those recovering from knee replacement demonstrate better out comes with greater total doses of therapy [1]. These research findings support greater patient engagement in the progress of their strength and endurance. However, systems to support patients in this endeavor are lacking. There are 24 million episodes of physical therapy care performed each year [3]. Over 90% of each episode of musculoskeletal physical therapy care is done by the patient in the home, typically as the “home exercise program” (HEP). The HEP is performed outside the purview of the physical therapist (PT). Aside from periodic visits with the PT to assess and progress, patients are expected to use non-interactive, low-quality paper handouts for guidance to perform a prescribed home exercise program and to track their own rehabilitation progress. The majority of time spent during a physical therapy treatment is devoted to correcting a musculoskeletal impairment problem, allowing limited time for patient education. Not surprisingly, this system results in poor adherence and compliance rates with home exercise programs which are designed to maintain or improve the patient’s function. Researchers report adherence rates with HEPs of only 15–40% [4,5], contributing to prolonged recovery time, medical complications, and increased costs of care [6]. There is a lack of robust tools to observe the quality of home exercise performance outside of periodic in-clinic visits. PTs have little insight into patient progress through a home therapy plan. The inability to monitor performance in the home results in missed opportunities to provide corrective feedback, identify if a patient needs additional help, and provide motivation if necessary. Telemedicine software applications for rehabilitation show potential to bridge this gap. Telemedicine can enhance the real time information provided to the patient on their progress and enable communication between providers and patients in the home [7]. Using the latest innovations in motion tracking sensors, originally designed for consumer video game consoles, tele-rehabilitation platforms have the potential to measure important physical therapy metrics related to patient motion. These metrics can be used by a PT to remotely assess patient progress and guide treatment in a more cost-effective, engaging, and efficient way [8]. Indeed, previous efforts aimed at using motion tracking systems associated with video game consoles such as the Nintendo™ Wii, and others, have shown promise in guiding patients through stroke and musculoskeletal rehabilitation in supervised, in-clinic environments [9,10]. To explore the clinical utility of commercial gaming systems as tele-rehabilitation platforms, the basic ability of the system to capture performance metrics should be demonstrated. Currently, self-report is the most common way to document progress outside of the clinic. However, tracking the number and quality of exercises may not be accurately reported by the patient to the PT. Assessment of exercise quality, or “correctness”, is critical to promoting proper exercise form and timely recovery from injury. Exercise quality is typically evaluated during physical therapy as part of the plan of care. This may lack carryover into the real world setting. Also of concern is that adherence to poor exercise form may delay therapy-based healing and/or place patients at greater risk for re-injury [11,12]. The Virtual Exercise Rehabilitation Assistant, VERA, (Reflexion Health Inc., San Diego CA) is a tele-rehabiliation application that uses the Kinect™ motion tracking camera (Microsoft® Inc., Redmond, WA) to guide a patient through a home exercise program without direct PT supervision. Using the Kinect™ camera and custom software the VERA is able to track the movement of over 20 joints simultaneously while guiding patients through a series of lower extremity exercises using an on-screen avatar. The VERA software automatically tracks patients’ exercise repetitions, and provides real-time, corrective feedback depending on whether repetitions are performed “correctly” according to pre-defined movement criteria. Repetition counts (i.e. quantity) and the number of optimal and sub-optimal repetitions (i.e. quality) are summarized for review by patients and PTs, either in real time or “store and forward” for later review. The purpose of this pilot study was to determine the VERA’s accuracy for two clinical metrics, quantity and quality of an exercise repetition. These variables were calculated by examining 10 subjects performing repetitions of four different lower extremity exercises. The results from the VERA were subsequently compared to assessments from seven PTs who determined total repetition count and quality scores after reviewing videos of each subject’s exercise session. It was hypothesized that there would be acceptable agreement between VERA and the PTs.

Methods

Figure 1 illustrates the general study flow.
Figure 1

Diagram illustrating the study flow including the order and type of exercises performed.

Subjects

Ten healthy subjects age range (18–36) were recruited from the San Diego State University campus via flyer and word of mouth. Subjects contacted the study personnel who conducted an over the phone screen. Subjects were included that had no history of physical disability, lower extremity surgery, or limitation of lower extremity range of motion. This study was approved by the local Institutional Review Board. On the day of testing, each subject was brought onsite, the study was explained and they signed informed consent acknowledging they would be videotaped during the study. Each participant was given a 10 minute training session on how to use the VERA (v1.0.77 Reflexion Health Inc. San Diego, CA). The training session included: how to perform the exercises optimally for camera detection, how to navigate the VERA, and interpretation of error messages displayed. Once subjects demonstrated independent ability to use the system they were instructed in the specific exercises. A PT researcher provided instruction for four exercises - sitting knee extension, standing knee flexion, deep lunge, and squat in that order. These exercises were chosen for two reasons: They represent significant diversity in overall patterns of body configuration; Patients typically use additional objects such as chairs while performing these exercises and we wanted to determine if that would impact accuracy of measurement The PT researcher demonstrated the exercises and then instructed the subject in how to perform the exercise. Once the subject demonstrated mastery of the exercise per the PT, then they were oriented to the VERA system.

Orientation to VERA

A Windows 7 laptop computer, a Kinect™ camera, and a connection to a flat screen television that mirrored the laptop display were used to deploy the VERA software. The subject was oriented to the flat screen television where they could see an image of themselves. They were then instructed in how to follow the onscreen avatar and the image of themselves to perform the exercises. Subjects were oriented to corrective feedback provided by the VERA system. Once the subject indicated they were comfortable with system navigation and following exercise instruction, they started the first exercise.

Exercise session

Upon completion of each exercise repetition the VERA recorded the repetition as “acceptable” or “unacceptable”. If a repetition was considered acceptable the onscreen repetition counter visible to the participant increased by one whole number. Examples of unacceptable repetitions included poor body positioning or sub-optimal exercise form as determined by the programmed parameters of the exercise. When a repetition was considered unacceptable the on-screen counter did not increase and the subject was given visual corrective feedback from the VERA. Examples of feedback include: 1) corrections of overall body position; and 2) correction of a specific body part. The onscreen repetition counter only counted “acceptable” repetitions. However, all repetitions were marked for review by the therapists. The session was simultaneously video recorded using standard RGB video by the Kinect™ camera. An exercise session was considered complete after patients achieved 10 acceptable repetitions for each of the four exercises as judged by the VERA.

PT review

Given the inherent variability in PT assessment of exercise quality we chose a panel of seven PTs to observe retrospective videos of the participants and determine the total repetition count and assess of repetition quality [13]. Video review of physical therapy exercises has been previously shown to be an accurate and reliable method of exercise assessment [14]. Research suggests a minimum of seven raters provides both a large enough sample to get a proper representation of licensed PTs (varied levels of education, years of practice, specialization, etc.) as well as provide substantial power for tests of agreement [15]. PTs recruited held current licenses and had at least two years of clinical experience. Each PT worked in an outpatient setting and had experience instructing patients in the four selected exercises. The PTs were scheduled for an observation session. Prior to observing the videos, they were provided a brief orientation to the study and signed informed consent. To minimize bias, each PT was instructed to watch each subject perform 4 different exercises via video recording. The recordings of each subject were presented in a random order. Each PT watched each video recording twice. During the first video review each PT was asked to count the number of repetitions from each subject for each of the four exercises. During the second video review each PT was asked to evaluate each repetition as “acceptable” or “unacceptable” in terms of repetition “correctness.” PTs recorded findings on a blank page. PTs were not given any additional information about the subjects (demographics, healthy, injured, etc.) and were blinded to VERA analysis. To mimic as much as possible the natural variability present in clinical setting, the PTs were not given any specific criteria a priori on acceptable or unacceptable parameters.

Statistical data analysis

Data was analyzed using Matlab version R2011a (Mathworks, Natick MA)

Total repetition count

The number of exercise attempts recorded by the VERA was compared to the number of attempts recorded by all PTs using a one-sided t-test with a Type 1 (alpha) error rate of 0.05. The 10 subjects were instructed to reach 10 acceptable repetitions for four different exercises for a target of at least 400 repetitions total across all subjects. We defined an acceptable threshold for agreement between the VERA and PT panel as a 5% over or underestimation for counting total exercise repetitions across all subjects.

Repetition quality

The quality of VERA repetitions was compared to the PTs. There was the potential for high variability in exercise quality among PT raters. This was difficult to predict prior to data analysis. To account for this variability, we first performed a Chi-square statistic with a type I error of 0.05 to compare results from the VERA and each PT. This approach was chosen because of the variance in evaluation of exercise form that exists in clinical practice. The purpose was to assess if the frequency of categorical judgments could be treated the same among all raters, including the VERA. The Chi-square expected value was set as the average rating of acceptable or unacceptable repetitions across all repetitions for all seven PT raters. An a priori rejection of the null hypothesis across all raters would prompt a closer inspection of the data for PT outliers. The analysis would be repeated on the remaining raters and the VERA to assess consistency with regard to repetition quality. If the null hypothesis was accepted, then all of the raters, including the VERA, agreed upon the parameters of the exercise. However, if the null hypothesis was rejected, all pairwise comparisons among the PTs would be performed to identify which raters had different metrics to evaluate an exercise.

PT Inter-rater analysis

Upon completion of the data analysis to determine agreement between raters a pairwise analysis using a Chi square statistic was obtained for all raters including the VERA.

Results

The 10 subjects were able to complete 10 acceptable repetitions, as determined by the VERA. Similarly, all seven PTs were able to review the video during two passes, as described above, to determine total repetition counts and assess repetition quality.

Quantification of repetitions

The total repetition count for the PTs compared to VERA is shown in Table 1. The VERA counted 426 repetitions while PTs 1–6 counted 427 repetitions and PT 7 counted a total of 425 repetitions. Compared to each of the PTs the VERA underestimated the total repetition count on an average of 0.16% (SD = 0.03%, 95% CI 0.12 – 0.22). A one-sided t-test comparing both groups was significant (t (6) - = −72.05, p < 0.05), leading us to reject the null hypothesis that the VERA overestimated the repetition count of the PTs by more than 5%.
Table 1

Total repetition count and number of acceptable vs. unacceptable repetitions by the VERA and each PT.

VERAPT1PT2PT3PT4PT5PT6PT7Mean Counts (PTs)
Acceptable Repetitions400374402397405407411423403 (SD = 15)
Unacceptable Repetitions26532530222016224 (SD = 16)
Total Repetitions426427427427427427427425426.7 (SD = 0.8)
In Table 1, out of a total count of 426 repetitions across all subjects and exercises the VERA counted 400 as acceptable and 26 as unacceptable. PT 7 underestimated the repetition count compared to PTs 2–6 by two repetitions and by 1 repetition compared to PT1 and the VERA. PTs 1–7 exhibited a range of acceptable repetitions, from 374 to 423 with a mean of 403 and SD = 15. The PT assessment of unacceptable repetitions ranged from 2 to 53 with a mean of 24 and SD of 16.

Rating movement quality

The initial chi square test for independence performed for all raters, including the VERA, was = 63.17 (df = 6, p<.001). This result suggested at least one of the raters incorporated different metrics to evaluate quality. A pair-wise chi square (Table 2) and scatter plot of acceptable repetitions across all raters was reviewed (figure 2). This data revealed that PT1 and PT7 rated exercise repetitions inconsistent with the VERA as well as PTs 2–6.
Table 2

Pair wise analysis between PTs and the VERA using Chi Square. Bold digits represent significant results.

VERAPT1PT2PT3PT4PT5PT6PT7
VERA0
PT110.101233110
PT20.02459537411.061591330
PT30.2970066327.0596158950.4858345660
PT40.36438923414.04696620.2026417781.310569730
PT50.84332740716.312174420.5864579042.1243781090.1001642040
PT62.53015090121.584528752.0752407524.5034438230.9914860680.4640043470
PT721.2141989250.3034561420.1271380525.3243902417.0579710115.0357064611.061550760
Figure 2

Scatter plot of acceptable exercise repetitions by rater.

Discussion

In this study we compared the results between a potential tele-rehabiliation tool using the Kinect™ motion tracking camera to a group of PTs assessing exercise repetitions and quality for ten healthy volunteers performing 4 different lower extremity exercises. The results suggests the VERA’s ability to assess the number of repetitions and the acceptability of exercise repetitions is comparable to a group of PTs. This supports potential to track patient progress through home physical therapy. Importantly, as video of each session was collected by the Kinect™ camera, the results support that Kinect™ video can be reliably used for patient assessment. The VERA was used in a way similar to an actual clinical use case for home physical therapy: subjects were taught how to perform four different exercises by a PT, oriented to the VERA system, and then asked to perform the exercises unsupervised. Tools like the VERA could ensure the optimal dose of rehabilitation exercise is achieved by providing guidance to patients at home, while at the same time logging adherence and performance metrics for review. Presenting exercise metrics to patients and providers will likely promote increased patient engagement and adherence to the physical therapy process. To our knowledge this is the first evaluation of an automated tele-rehabiliation system using the Microsoft Kinect™ camera to assess important rehabilitation metrics compared to experienced PTs. Across four diverse lower extremity exercises the VERA provided a repetition count with an acceptable level of accuracy compared to a seven member PT panel, underestimating the total count by less than 1%. The data reflected the variance in seven PTs with similar backgrounds and practice settings assessed exercise “correctness.” The majority of the variance observed in the sample of raters was contributed not by the VERA but by PT1 and PT7 as these two raters did not exhibit consistency with the VERA or fellow PT raters. In practice, PT1 could be “strict” rater, rating fewer repetitions to be acceptable. In contrast, PT7 could be considered more lenient than the other raters, rating more repetitions as acceptable. These represent both ends of the spectrum, 1) a ‘normative’ cluster where most PTs converge, 2) a ‘strict’ outlier, and 3) a ‘lenient’ outlier. To further explore the inter-rater variability, we performed a secondary chi square analysis after removing the more extreme raters PT1 and PT7. The results of the new chi square analysis were non-significant, = 5.53 (df = 4, p>0.1), indicating consistency and interchangeability with respect to the quality of repetition ratings produced by the VERA and PTs 2–6. For the purpose of the VERA, the ability to capture the general parameters of acceptable was the goal. Results of the subgroup analysis including the VERA and PTs 2–6 supported a high degree of consistency in repetition quality assessment. Essentially, all raters in this group – the VERA and PTs 2–6 – represent a distinct cluster that can represent a standardized parameter of acceptable exercise in the manner in which they rated the quality of exercise repetitions. Improper exercise form can be associated with teaching proper patterns of neuromuscular activation leading to greater injury. Additionally, lack of adherence to a structured home exercise program can result in delayed healing and prolonged return to functional activities or sports. In current practice methods to capture these metrics include patient self-report and periodic assessment in the physical therapy clinic. Unfortunately, these metrics are difficult to acquire in the home, where the majority of physical therapy takes place. Considering the high burden of functional disability and injury requiring rehabilitation, the supply-demand mismatch with physical therapy services, and high costs associated with prolonged physical therapy services, systems like the VERA may play an important role in providing cost-effective and efficient tele-rehabiliation services to patients at home.

Limitations

There are several limitations to the present investigation. The consistency in how each group rated exercise repetitions was compared. An assessment of agreement between both groups per exercise and per exercise repetitions may be more appropriate using a larger sample of repetitions. Four lower extremity exercises were tested, additional exercises involving upper extremity joints and the use of exercise aids such as weights or resistance bands were not tested. Subjects in this study were healthy and without musculoskeletal injury. Future studies will include individuals with cognitive and physical impairments as well as those who are classified as obese to determine the feasibility of using the device on a wide range of body types and abilities. Additionally, unique patient characteristics such as demographics, injury type, and rehabilitation goals can influence assessment of exercise quality. This contextual information was not provided to the PTs as part of the study and may have altered the acceptability of repetitions. Finally, our protocol did not intentionally instruct subjects to perform repetitions with poor form resulting in the majority of repetitions characterized as acceptable. A larger number of intentionally unacceptable repetitions would have allowed for characterization of consistency between both the VERA and PT panel assessed unacceptable repetitions.

Conclusion

The VERA was able to count exercise repetitions accurately in comparison to a group of PTs. The VERA tele-rehabilitation platform shows promise in serving as a clinically useful tool to collect important rehabilitation metrics for outpatient physical therapy without the need for PT supervision.
Table 3

Chi square analysis of VERA and PT raters.

All Raters63.17 (df=6, p<.001)
VERA and PTs 2–65.53 (df=4, p>0.1)
  13 in total

1.  Agreement between physiotherapists on quality of movement rated via videotape.

Authors:  V M Pomeroy; A Pramanik; L Sykes; J Richards; E Hill
Journal:  Clin Rehabil       Date:  2003-05       Impact factor: 3.477

2.  Telerehabilitation: current perspectives.

Authors:  Deborah Theodoros; Trevor Russell
Journal:  Stud Health Technol Inform       Date:  2008

Review 3.  Exercise to prevent falls in older adults: an updated meta-analysis and best practice recommendations.

Authors:  Catherine Sherrington; Anne Tiedemann; Nicola Fairhall; Jacqueline C T Close; Stephen R Lord
Journal:  N S W Public Health Bull       Date:  2011-06

4.  Determinants of utilization and expenditures for episodes of ambulatory physical therapy among adults.

Authors:  Steven R Machlin; Julia Chevan; William W Yu; Marc W Zodet
Journal:  Phys Ther       Date:  2011-05-12

5.  A pilot study of Wii Fit exergames to improve balance in older adults.

Authors:  Maayan Agmon; Cynthia K Perry; Elizabeth Phelan; George Demiris; Huong Q Nguyen
Journal:  J Geriatr Phys Ther       Date:  2011 Oct-Dec       Impact factor: 3.381

6.  Wii-based movement therapy to promote improved upper extremity function post-stroke: a pilot study.

Authors:  Marie R Mouawad; Catherine G Doust; Madeleine D Max; Penelope A McNulty
Journal:  J Rehabil Med       Date:  2011-05       Impact factor: 2.912

7.  The relation between therapy intensity and outcomes of rehabilitation in skilled nursing facilities.

Authors:  Diane U Jette; Reg L Warren; Christopher Wirtalla
Journal:  Arch Phys Med Rehabil       Date:  2005-03       Impact factor: 3.966

8.  Patient motivation and adherence to postsurgery rehabilitation exercise recommendations: the influence of physiotherapists' autonomy-supportive behaviors.

Authors:  Derwin K Chan; Chris Lonsdale; Po Y Ho; Patrick S Yung; Kai M Chan
Journal:  Arch Phys Med Rehabil       Date:  2009-12       Impact factor: 3.966

9.  How do care-provider and home exercise program characteristics affect patient adherence in chronic neck and back pain: a qualitative study.

Authors:  Pilar Escolar-Reina; Francesc Medina-Mirapeix; Juan J Gascón-Cánovas; Joaquina Montilla-Herrador; Francisco J Jimeno-Serrano; Silvana L de Oliveira Sousa; M Elena del Baño-Aledo; Rafael Lomas-Vega
Journal:  BMC Health Serv Res       Date:  2010-03-10       Impact factor: 2.655

10.  Home-based physical therapy intervention with adherence-enhancing strategies versus clinic-based management for patients with ankle sprains.

Authors:  Sandra F Bassett; Harry Prapavessis
Journal:  Phys Ther       Date:  2007-07-03
View more
  10 in total

1.  Metrics for Performance Evaluation of Patient Exercises during Physical Therapy.

Authors:  Aleksandar Vakanski; Jake M Ferguson; Stephen Lee
Journal:  Int J Phys Med Rehabil       Date:  2017-04-20

2.  Mathematical Modeling and Evaluation of Human Motions in Physical Therapy Using Mixture Density Neural Networks.

Authors:  A Vakanski; J M Ferguson; S Lee
Journal:  J Physiother Phys Rehabil       Date:  2016-10-11

3.  Autonomous modeling of repetitive movement for rehabilitation exercise monitoring.

Authors:  Prayook Jatesiktat; Guan Ming Lim; Christopher Wee Keong Kuah; Dollaporn Anopas; Wei Tech Ang
Journal:  BMC Med Inform Decis Mak       Date:  2022-07-03       Impact factor: 3.298

4.  Generative Adversarial Networks for Generation and Classification of Physical Rehabilitation Movement Episodes.

Authors:  Longze Li; Aleksandar Vakanski
Journal:  Int J Mach Learn Comput       Date:  2018-10

Review 5.  A review of computational approaches for evaluation of rehabilitation exercises.

Authors:  Yalin Liao; Aleksandar Vakanski; Min Xian; David Paul; Russell Baker
Journal:  Comput Biol Med       Date:  2020-03-04       Impact factor: 4.589

6.  A Deep Learning Framework for Assessing Physical Rehabilitation Exercises.

Authors:  Yalin Liao; Aleksandar Vakanski; Min Xian
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2020-01-13       Impact factor: 3.802

7.  Assessment of physical rehabilitation movements through dimensionality reduction and statistical modeling.

Authors:  Christian Williams; Aleksandar Vakanski; Stephen Lee; David Paul
Journal:  Med Eng Phys       Date:  2019-10-25       Impact factor: 2.242

8.  Are Virtual Rehabilitation Technologies Feasible Models to Scale an Evidence-Based Fall Prevention Program? A Pilot Study Using the Kinect Camera.

Authors:  Tiffany E Shubert; Jeanna Basnett; Anang Chokshi; Mark Barrett; Ravi Komatireddy
Journal:  JMIR Rehabil Assist Technol       Date:  2015-11-05

9.  A Data Set of Human Body Movements for Physical Rehabilitation Exercises.

Authors:  Aleksandar Vakanski; Hyung-Pil Jun; David Paul; Russell Baker
Journal:  Data (Basel)       Date:  2018-01-11

10.  Would a thermal sensor improve arm motion classification accuracy of a single wrist-mounted inertial device?

Authors:  Jordan Lui; Carlo Menon
Journal:  Biomed Eng Online       Date:  2019-05-07       Impact factor: 2.819

  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.