2021
DOI: 10.21203/rs.3.rs-1021257/v1
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Similarity Matrix-Based Anomaly Detection for Clinical Intervention

Abstract: The use of digital phenotyping methods in clinical care has allowed for improved investigation of spatiotemporal behaviors of patients. Moreover, detecting abnormalities in mobile sensor data patterns can be instrumental in identifying potential changes in symptomology. We propose a method that temporally aligns sensor data in order to achieve interpretable measures of similarity. These computed measures can then be used for anomaly detection, baseline routine computation, and trajectory clustering. In additio… Show more

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