Cross-platform Prediction of Depression Treatment Outcome Using Location Sensory Data on Smartphones
- URL: http://arxiv.org/abs/2503.07883v1
- Date: Mon, 10 Mar 2025 22:00:07 GMT
- Title: Cross-platform Prediction of Depression Treatment Outcome Using Location Sensory Data on Smartphones
- Authors: Soumyashree Sahoo, Chinmaey Shende, Md. Zakir Hossain, Parit Patel, Yushuo Niu, Xinyu Wang, Shweta Ware, Jinbo Bi, Jayesh Kamath, Alexander Russel, Dongjin Song, Qian Yang, Bing Wang,
- Abstract summary: We explore using location sensory data collected passively on smartphones to predict treatment outcome.<n>Our results show that using location features and baseline self-reported questionnaire score can lead to F1 score up to 0.67, comparable to that obtained using periodic self-reported questionnaires.
- Score: 55.992010576087424
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Currently, depression treatment relies on closely monitoring patients response to treatment and adjusting the treatment as needed. Using self-reported or physician-administrated questionnaires to monitor treatment response is, however, burdensome, costly and suffers from recall bias. In this paper, we explore using location sensory data collected passively on smartphones to predict treatment outcome. To address heterogeneous data collection on Android and iOS phones, the two predominant smartphone platforms, we explore using domain adaptation techniques to map their data to a common feature space, and then use the data jointly to train machine learning models. Our results show that this domain adaptation approach can lead to significantly better prediction than that with no domain adaptation. In addition, our results show that using location features and baseline self-reported questionnaire score can lead to F1 score up to 0.67, comparable to that obtained using periodic self-reported questionnaires, indicating that using location data is a promising direction for predicting depression treatment outcome.
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