Towards nation-wide analytical healthcare infrastructures: A privacy-preserving augmented knee rehabilitation case study
Boris Ba\v{c}i\'c, Claudiu Vasile, Chengwei Feng, Marian G. Ciuc\u{a}

TL;DR
This paper presents a privacy-preserving, open-source framework for analyzing knee rehabilitation videos using augmented reality and timeseries data, aiming to support nationwide healthcare systems.
Contribution
It introduces a novel privacy-preserving algorithm for knee exercise analysis using pose estimation and adaptive visual analysis, enhancing interpretability and deployment in healthcare.
Findings
Achieved 91.67%-100% exercise recognition accuracy
Developed transparent, interpretable AI algorithms
Demonstrated feasibility of privacy-preserving healthcare analytics
Abstract
The purpose of this paper is to contribute towards the near-future privacy-preserving big data analytical healthcare platforms, capable of processing streamed or uploaded timeseries data or videos from patients. The experimental work includes a real-life knee rehabilitation video dataset capturing a set of exercises from simple and personalised to more general and challenging movements aimed for returning to sport. To convert video from mobile into privacy-preserving diagnostic timeseries data, we employed Google MediaPipe pose estimation. The developed proof-of-concept algorithms can augment knee exercise videos by overlaying the patient with stick figure elements while updating generated timeseries plot with knee angle estimation streamed as CSV file format. For patients and physiotherapists, video with side-to-side timeseries visually indicating potential issues such as excessive…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Health and mHealth Applications · Artificial Intelligence in Healthcare and Education
MethodsSparse Evolutionary Training
