Enhancing ALS Progression Tracking with Semi-Supervised ALSFRS-R Scores Estimated from Ambient Home Health Monitoring
Noah Marchal, William E. Janes, Mihail Popescu, Xing Song

TL;DR
This study develops semi-supervised models using in-home sensor data to improve continuous ALS progression monitoring, outperforming traditional methods in predicting functional decline with personalized and cohort-level approaches.
Contribution
The paper introduces novel semi-supervised regression models that leverage ambient sensor data and transfer learning to enhance ALSFRS-R score predictions over existing methods.
Findings
Transfer learning improved prediction error in 28 of 32 subscale contrasts.
Self-attention interpolation achieved the lowest error for subscale models.
Linear interpolation was more stable for composite scale predictions.
Abstract
Clinical monitoring of functional decline in ALS relies on periodic assessments that may miss critical changes occurring between visits. To address this gap, semi-supervised regression models were developed to estimate rates of decline in a case series cohort by targeting ALSFRS- R scale trajectories with continuous in-home sensor monitoring data. Our analysis compared three model paradigms (individual batch learning and cohort-level batch versus incremental fine-tuned transfer learning) across linear slope, cubic polynomial, and ensembled self-attention pseudo-label interpolations. Results revealed cohort homogeneity across functional domains responding to learning methods, with transfer learning improving prediction error for ALSFRS-R subscales in 28 of 32 contrasts (mean RMSE=0.20(0.04)), and individual batch learning for predicting the composite scale (mean RMSE=3.15(1.25)) in 2 of…
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Taxonomy
TopicsRespiratory Support and Mechanisms
