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Feasibility testing of a novel prosthetic socket sensor system

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Taylor & Francis Group2023-06-20 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Feasibility_testing_of_a_novel_prosthetic_socket_sensor_system/20263977/1
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Poorly fitting prosthetic sockets contribute to decreased quality of life, health, and well-being for persons with amputations. Therefore, improved socket fit is a high clinical priority. In this study, we describe the design and testing of a novel sensor system that can be incorporated into a prosthetic socket to measure distal end weight bearing in the socket and can alert a prosthesis user if poor socket fit is suspected. We present the results of testing this device with three Veterans who were new prosthesis users and three Veterans who were experienced prosthesis users. We collected sensor data during walking trials while participants wore varying numbers of sock plies and qualitative feedback on the design of the socket fit sensor system. For analysis, peak sensor measurements during walking cycles were identified and combined with socket fit data (i.e., a clinician-determined level of “good,” “too tight,” or “too loose” and the number of sock ply worn each trial). We found consistent relationships between peak sensor measurements and socket fit in our sample. Also, all users expressed an interest in the device, highlighting its potential benefits during early prosthesis training.Implications for RehabilitationEnsuring socket fit is challenging for many prosthesis users.A novel wearable sensor system can be used to identify socket fit issues for some prosthesis users.This type of system could be most helpful for new prosthesis users and those with sensory and cognitive challenges. Ensuring socket fit is challenging for many prosthesis users. A novel wearable sensor system can be used to identify socket fit issues for some prosthesis users. This type of system could be most helpful for new prosthesis users and those with sensory and cognitive challenges.
提供机构:
Brielmaier, Steven; Matsumoto, Mary; Fairhurst, Stuart; Hansen, Andrew H.; Koester, Karl; Netoff, Theoden I.; Rich, Tonya L.; Ferguson, John E.; Voss, Greg
创建时间:
2022-07-07
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