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  5. Wearable Data From Subjects Playing Super Mario, Taking University Exams, or Performing Physical Exercise Help Detect Acute Mood Disorder Episodes via Self-Supervised Learning: Prospective, Exploratory, Observational Study

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Article
en
2024

Wearable Data From Subjects Playing Super Mario, Taking University Exams, or Performing Physical Exercise Help Detect Acute Mood Disorder Episodes via Self-Supervised Learning: Prospective, Exploratory, Observational Study

0 Datasets

0 Files

en
2024
Vol 12
Vol. 12
DOI: 10.2196/55094

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Eduard Vieta
Eduard Vieta

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Filippo Corponi
Bryan M. Li
Gerard Anmella
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Abstract

We showed that SSL, a paradigm where a model is pretrained on unlabeled data with no need for human annotations before deployment on the supervised target task of interest, helps overcome the annotation bottleneck; the choice of the pretraining surrogate task and the size of unlabeled data for pretraining are key determinants of SSL success. We introduced E4mer, which can be used for SSL, and shared the E4SelfLearning collection, along with its preprocessing pipeline, which can foster and expedite future research into SSL for personal sensing.

How to cite this publication

Filippo Corponi, Bryan M. Li, Gerard Anmella, Clàudia Valenzuela‐Pascual, Ariadna Mas, Isabella Pacchiarotti, Marc Valentí, Iría Grande, Antoni Benabarre, Marina Garriga, Eduard Vieta, Allan H. Young, Stephen M. Lawrie, Heather C. Whalley, Diego Hidalgo‐Mazzei, Antonio Vergari (2024). Wearable Data From Subjects Playing Super Mario, Taking University Exams, or Performing Physical Exercise Help Detect Acute Mood Disorder Episodes via Self-Supervised Learning: Prospective, Exploratory, Observational Study. , 12, DOI: https://doi.org/10.2196/55094.

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Publication Details

Type

Article

Year

2024

Authors

16

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.2196/55094

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