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Biosensors for Gait Measurements and Patient Rehabilitation

A special issue of Sensors (ISSN 1424-8220). This special issue belongs to the section "Biosensors".

Deadline for manuscript submissions: 30 April 2024 | Viewed by 15291

Special Issue Editors


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Guest Editor
Department of Development and Regeneration, KU Leuven, 3000 Leuven, Belgium
Interests: gait; orthopedic surgery; knee; knee joint; kinematics; biomedical imaging; 3D motion analysis; biomechanics

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Guest Editor
Human Movement Biomechanics Research Group, Department of Biomedical Kinesiology, KU Leuven, Leuven, Belgium
Interests: biomechanics; mechanobiology; cartilage; multi-scale modeling; bioreactor; motion capture; osteoarthritis; physics-based modeling; musculoskeletal loading

Special Issue Information

Dear Colleagues,

Musculoskeletal care is gradually but steadily evolving from a primary focus on structural aspects of the musculoskeletal system towards a more comprehensive approach that integrates and targets optimal function of the musculoskeletal system in every step of the care pathway. In other words, we are moving away from “targeting the best possible X-ray” and towards “targeting the best possible functional outcome”. Nevertheless, this evolution is inherently data-hungry, and its success relies on reliable, patient-friendly technology that allows accurately capturing the key biomechanical drivers for, and biomarkers of, an optimally functioning musculoskeletal system during daily-life activities, including gait as an example. Furthermore, the associated data are preferentially continuously captured in a patient’s natural setting, as recent findings suggest that collecting such data at discrete moments in a hospital or laboratory setting may not accurately reflect the patient’s true functional status.

Therefore, this Special Issue welcomes original research articles, experimental studies, and systematic reviews covering all types of biosensors that contribute to the above evolution and target capturing biomechanical data of the musculoskeletal system during gait and/or other daily-life motor tasks with the goal of better informing musculoskeletal care, from diagnosis, through conservative or surgical treatment and the associated rehabilitation, up to post-treatment follow-up.

Prof. Dr. Lennart Scheys
Prof. Dr. Ilse Jonkers
Guest Editors

Manuscript Submission Information

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Published Papers (6 papers)

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Research

12 pages, 1589 KiB  
Article
Four Days Are Enough to Provide a Reliable Daily Step Count in Mild to Moderate Parkinson’s Disease through a Commercial Smartwatch
by Edoardo Bianchini, Silvia Galli, Marika Alborghetti, Lanfranco De Carolis, Alessandro Zampogna, Clint Hansen, Nicolas Vuillerme, Antonio Suppa and Francesco E. Pontieri
Sensors 2023, 23(21), 8971; https://doi.org/10.3390/s23218971 - 04 Nov 2023
Cited by 1 | Viewed by 1043
Abstract
Daily steps could be a valuable indicator of real-world ambulation in Parkinson’s disease (PD). Nonetheless, no study to date has investigated the minimum number of days required to reliably estimate the average daily steps through commercial smartwatches in people with PD. Fifty-six patients [...] Read more.
Daily steps could be a valuable indicator of real-world ambulation in Parkinson’s disease (PD). Nonetheless, no study to date has investigated the minimum number of days required to reliably estimate the average daily steps through commercial smartwatches in people with PD. Fifty-six patients were monitored through a commercial smartwatch for 5 consecutive days. The total daily steps for each day was recorded and the average daily steps was calculated as well as the working and weekend days average steps. The intraclass correlation coefficient (ICC) (3,k), standard error of measurement (SEM), Bland–Altman statistics, and minimum detectable change (MDC) were used to evaluate the reliability of the step count for every combination of 2–5 days. The threshold for acceptability was set at an ICC ≥ 0.8 with a lower bound of CI 95% ≥ 0.75 and a SAM < 10%. ANOVA and Mann–Whitney tests were used to compare steps across the days and between the working and weekend days, respectively. Four days were needed to achieve an acceptable reliability (ICC range: 0.84–0.90; SAM range: 7.8–9.4%). In addition, daily steps did not significantly differ across the days and between the working and weekend days. These findings could support the use of step count as a walking activity index and could be relevant to developing monitoring, preventive, and rehabilitation strategies for people with PD. Full article
(This article belongs to the Special Issue Biosensors for Gait Measurements and Patient Rehabilitation)
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14 pages, 1713 KiB  
Article
Sensitivity of Model-Based Predictions of Post-TKA Kinematic Behavior to Residual Errors in Ultrasound-Based Knee Collateral Ligament Strain Assessment
by Félix Dandois, Orçun Taylan, Jacobus H. Müller and Lennart Scheys
Sensors 2023, 23(19), 8268; https://doi.org/10.3390/s23198268 - 06 Oct 2023
Viewed by 823
Abstract
Ultrasound-based ligament strain estimation shows promise in non-invasively assessing knee joint collateral ligament behavior and improving ligament balancing procedures. However, the impact of ultrasound-based strain estimation residual errors on in-silico arthroplasty predictions remains unexplored. We investigated the sensitivity of post-arthroplasty kinematic predictions to [...] Read more.
Ultrasound-based ligament strain estimation shows promise in non-invasively assessing knee joint collateral ligament behavior and improving ligament balancing procedures. However, the impact of ultrasound-based strain estimation residual errors on in-silico arthroplasty predictions remains unexplored. We investigated the sensitivity of post-arthroplasty kinematic predictions to ultrasound-based strain estimation errors compared to clinical inaccuracies in implant positioning.Two cadaveric legs were submitted to active squatting, and specimen-specific rigid computer models were formulated. Mechanical properties of the ligament model were optimized to reproduce experimentally obtained tibiofemoral kinematics and loads with minimal error. Resulting remaining errors were comparable to the current state-of-the-art. Ultrasound-derived strain residual errors were then introduced by perturbing lateral collateral ligament (LCL) and medial collateral ligament (MCL) stiffness. Afterwards, the implant position was perturbed to match with the current clinical inaccuracies reported in the literature. Finally, the impact on simulated post-arthroplasty tibiofemoral kinematics was compared for both perturbation scenarios. Ultrasound-based errors minimally affected kinematic outcomes (mean differences < 0.73° in rotations, 0.1 mm in translations). Greatest differences occurred in external tibial rotations (−0.61° to 0.73° for MCL, −0.28° to 0.27° for LCL). Comparatively, changes in implant position had larger effects, with mean differences up to 1.95° in external tibial rotation and 0.7 mm in mediolateral translation. In conclusion, our study demonstrated that the ultrasound-based assessment of collateral ligament strains has the potential to enhance current computer-based pre-operative knee arthroplasty planning. Full article
(This article belongs to the Special Issue Biosensors for Gait Measurements and Patient Rehabilitation)
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15 pages, 1712 KiB  
Article
The Validity of Hawkin Dynamics Wireless Dual Force Plates for Measuring Countermovement Jump and Drop Jump Variables
by Andrew J. Badby, Peter D. Mundy, Paul Comfort, Jason P. Lake and John J. McMahon
Sensors 2023, 23(10), 4820; https://doi.org/10.3390/s23104820 - 17 May 2023
Cited by 6 | Viewed by 4997
Abstract
Force plate testing is becoming more commonplace in sport due to the advent of commercially available, portable, and affordable force plate systems (i.e., hardware and software). Following the validation of the Hawkin Dynamics Inc. (HD) proprietary software in recent literature, the aim of [...] Read more.
Force plate testing is becoming more commonplace in sport due to the advent of commercially available, portable, and affordable force plate systems (i.e., hardware and software). Following the validation of the Hawkin Dynamics Inc. (HD) proprietary software in recent literature, the aim of this study was to determine the concurrent validity of the HD wireless dual force plate hardware for assessing vertical jumps. During a single testing session, the HD force plates were placed directly atop two adjacent Advanced Mechanical Technology Inc. in-ground force plates (the “gold standard”) to simultaneously collect vertical ground reaction forces produced by 20 participants (27 ± 6 years, 85 ± 14 kg, 176.5 ± 9.23 cm) during the countermovement jump (CMJ) and drop jump (DJ) tests (1000 Hz). Agreement between force plate systems was determined via ordinary least products regression using bootstrapped 95% confidence intervals. No bias was present between the two force plate systems for any of the CMJ and DJ variables, except DJ peak braking force (proportional bias) and DJ peak braking power (fixed and proportional bias). The HD system may be considered a valid alternative to the industry gold standard for assessing vertical jumps because fixed or proportional bias was identified for none of the CMJ variables (n = 17) and only 2 out of 18 DJ variables. Full article
(This article belongs to the Special Issue Biosensors for Gait Measurements and Patient Rehabilitation)
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12 pages, 1900 KiB  
Article
Peak Tibiofemoral Contact Forces Estimated Using IMU-Based Approaches Are Not Significantly Different from Motion Capture-Based Estimations in Patients with Knee Osteoarthritis
by Giacomo Di Raimondo, Miel Willems, Bryce Adrian Killen, Sara Havashinezhadian, Katia Turcot, Benedicte Vanwanseele and Ilse Jonkers
Sensors 2023, 23(9), 4484; https://doi.org/10.3390/s23094484 - 04 May 2023
Cited by 2 | Viewed by 2770
Abstract
Altered tibiofemoral contact forces represent a risk factor for osteoarthritis onset and progression, making optimization of the knee force distribution a target of treatment strategies. Musculoskeletal model-based simulations are a state-of-the-art method to estimate joint contact forces, but they typically require laboratory-based input [...] Read more.
Altered tibiofemoral contact forces represent a risk factor for osteoarthritis onset and progression, making optimization of the knee force distribution a target of treatment strategies. Musculoskeletal model-based simulations are a state-of-the-art method to estimate joint contact forces, but they typically require laboratory-based input and skilled operators. To overcome these limitations, ambulatory methods, relying on inertial measurement units, have been proposed to estimated ground reaction forces and, consequently, knee contact forces out-of-the-lab. This study proposes the use of a full inertial-capture-based musculoskeletal modelling workflow with an underlying probabilistic principal component analysis model trained on 1787 gait cycles in patients with knee osteoarthritis. As validation, five patients with knee osteoarthritis were instrumented with 17 inertial measurement units and 76 opto-reflective markers. Participants performed multiple overground walking trials while motion and inertial capture methods were synchronously recorded. Moderate to strong correlations were found for the inertial capture-based knee contact forces compared to motion capture with root mean square error between 0.15 and 0.40 of body weight. The results show that our workflow can inform and potentially assist clinical practitioners to monitor knee joint loading in physical therapy sessions and eventually assess long-term therapeutic effects in a clinical context. Full article
(This article belongs to the Special Issue Biosensors for Gait Measurements and Patient Rehabilitation)
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16 pages, 1606 KiB  
Article
Video-based Goniometer Applications for Measuring Knee Joint Angles during Walking in Neurological Patients: A Validity, Reliability and Usability Study
by Monica Parati, Matteo Gallotta, Beatrice De Maria, Annalisa Pirola, Matteo Morini, Luca Longoni, Emilia Ambrosini, Giorgio Ferriero and Simona Ferrante
Sensors 2023, 23(4), 2232; https://doi.org/10.3390/s23042232 - 16 Feb 2023
Cited by 1 | Viewed by 2597
Abstract
Easy-to-use evaluation of Range Of Motion (ROM) during walking is necessary to make decisions during neurological rehabilitation programs and during follow-up visits in clinical and remote settings. This study discussed goniometer applications (DrGoniometer and Angles - Video Goniometer) that measure knee joint ROM [...] Read more.
Easy-to-use evaluation of Range Of Motion (ROM) during walking is necessary to make decisions during neurological rehabilitation programs and during follow-up visits in clinical and remote settings. This study discussed goniometer applications (DrGoniometer and Angles - Video Goniometer) that measure knee joint ROM during walking through smartphone cameras. The primary aim of the study is to test the inter-rater and intra-rater reliability of the collected measurements as well as their concurrent validity with an electro-goniometer. The secondary aim is to evaluate the usability of the two mobile applications. A total of 22 patients with Parkinson’s disease (18 males, age 72 (8) years), 22 post-stroke patients (17 males, age 61 (13) years), and as many healthy volunteers (8 males, age 45 (5) years) underwent knee joint ROM evaluations during walking. Clinicians and inexperienced examiners used the two mobile applications to calculate the ROM, and then rated their perceived usability through the System Usability Scale (SUS). Intraclass correlation coefficients (ICC) and correlation coefficients (corr) were calculated. Both applications showed good reliability (ICC > 0.69) and validity (corr > 0.61), and acceptable usability (SUS > 68). Smartphone-based video goniometers could be used to assess the knee ROM during walking in neurological patients, because of their acceptable degree of reliability, validity and usability. Full article
(This article belongs to the Special Issue Biosensors for Gait Measurements and Patient Rehabilitation)
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34 pages, 2005 KiB  
Article
Detecting Gait Events from Accelerations Using Reservoir Computing
by Laurent Chiasson-Poirier, Hananeh Younesian, Katia Turcot and Julien Sylvestre
Sensors 2022, 22(19), 7180; https://doi.org/10.3390/s22197180 - 21 Sep 2022
Cited by 4 | Viewed by 1927
Abstract
Segmenting the gait cycle into multiple phases using gait event detection (GED) is a well-researched subject with many accurate algorithms. However, the algorithms that are able to perform accurate and robust GED for real-life environments and physical diseases tend to be too complex [...] Read more.
Segmenting the gait cycle into multiple phases using gait event detection (GED) is a well-researched subject with many accurate algorithms. However, the algorithms that are able to perform accurate and robust GED for real-life environments and physical diseases tend to be too complex for their implementation on simple hardware systems limited in computing power and memory, such as those used in wearable devices. This study focuses on a numerical implementation of a reservoir computing (RC) algorithm called the echo state network (ESN) that is based on simple computational steps that are easy to implement on portable hardware systems for real-time detection. RC is a neural network method that is widely used for signal processing applications and uses a fast-training method based on a ridge regression adapted to the large quantity and variety of IMU data needed to use RC in various real-life environment GED. In this study, an ESN was used to perform offline GED with gait data from IMU and ground force sensors retrieved from three databases for a total of 28 healthy adults and 15 walking conditions. Our main finding is that despite its low complexity, ESN is robust for GED, with performance comparable to other state-of-the-art algorithms. Our results show the ESN is robust enough to obtain good detection results in all conditions if the algorithm is trained with variable data that match those conditions. The distribution of the mean absolute errors (MAE) between the detection times from the ESN and the force sensors were between 40 and 120 ms for 6 defined gait events (95th percentile). We compared our ESN with four different state-of-the-art algorithms from the literature. The ESN obtained a MAE not more than 10 ms above three other reference algorithms for normal walking indoor and outdoor conditions and yielded the 2nd lowest MAE and the 2nd highest true positive rate and specificity when applied to outdoor walking and running conditions. Our work opens the door to using the ESN as a GED for applications in wearable sensors for long-term patient monitoring. Full article
(This article belongs to the Special Issue Biosensors for Gait Measurements and Patient Rehabilitation)
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