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Please use this identifier to cite or link to this item: http://hdl.handle.net/11375/32009
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dc.contributor.advisorKobsar, Dylan-
dc.contributor.authorRuder, Matthew-
dc.date.accessioned2025-07-21T17:04:11Z-
dc.date.available2025-07-21T17:04:11Z-
dc.date.issued2025-
dc.identifier.urihttp://hdl.handle.net/11375/32009-
dc.description.abstractLate-stage knee osteoarthritis (OA) is a growing musculoskeletal disease affecting millions of older adults. Objective clinical assessments may be a means to improve surgical outcomes but often requires dedicated laboratory equipment and space. Wearable sensors may be easier to collect but are limited by more complex analysis and interpretation of results. This thesis introduces a modular, open-source framework that for collecting gait with bilateral shank inertial measurement units (IMUs). The processing pipeline automates data alignment, incorporates deep learning gait segmentation, stride event detection, and metric extraction, enabling seamless analysis across laboratory and free-living settings. Three studies establish the framework’s value. Study 1 retrained an existing ResNet + BiLSTM using healthy and OA datasets. The model reached ~97 % classification accuracy and decreased walking bout fragmentation compared to a heuristic frequency method, especially at slower walking speeds. Study 2 demonstrated strong in-lab agreement between motion capture- and sensor-derived spatiotemporal and kinematic variables. However, week-long free-living recordings revealed systematically slower and more variable gait, confirming that laboratory snapshots may overestimate real-world mobility. Notably, peak mediolateral shank angular velocity, a native IMU metric, remained well-correlated with Oxford Knee Score, highlighting its clinical promise. Study 3 delivered the first longitudinal, head-to-head sensitivity comparison between measurement systems in 42 arthroplasty patients. Metrics from motion capture were able to capture early postoperative gains, whereas data from IMUs tracked day-to-day function. Collectively, these findings show that pairing laboratory precision with ecological breadth from inertial sensors could yield a richer picture of OA gait than either modality alone, while also demonstrating strengths and weaknesses of both measures. The framework’s sensor-agnostic design, evidence for clinically relevant native IMU variables, and demonstration of complementary sensitivity advance the field toward scalable, data-driven monitoring and personalised rehabilitation.en_US
dc.language.isoenen_US
dc.subjectwearable sensorsen_US
dc.subjectosteoarthritisen_US
dc.subjectmotion captureen_US
dc.subjectmachine learningen_US
dc.subjectgaiten_US
dc.subjectsensitivityen_US
dc.subjectfree-livingen_US
dc.titleINTEGRATING WEARABLE GAIT ANALYSIS FOR INFORMED DECISION MAKING IN LATE-STAGE OSTEOARTHRITIS: A FRAMEWORK FOR FREE-LIVING ASSESSMENTen_US
dc.typeThesisen_US
dc.contributor.departmentKinesiologyen_US
dc.description.degreetypeDissertationen_US
dc.description.degreeDoctor of Philosophy (PhD)en_US
dc.description.layabstractOsteoarthritis of the knee is on the rise and often changes the way people walk, yet these changes are hard to measure outside a laboratory. To better understand how to best measure walking inside and outside of a laboratory, this thesis used a combination of camera-based and sensor-based measurement systems to understand how people move before and after surgery. First, it builds a new computer model that finds walking within sensor signals more accurately. Next, it shows that data from motion capture and sensors agree on how someone moves in the lab and how that relates to what happens during walking in the real world. Finally, both tools track patients before and after knee replacement surgery, revealing the strong points and limits of each method. Together, they could give doctors and patients a clearer, real world picture of recovery and can be adapted to monitor other injuries, sports, or daily activities.en_US
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