Using machine learning for wearables to understand the association of sleep with future morbidity
<p>Sleep is essential to life and is structurally complex. Our understanding of how sleep is associated with health and morbidity primarily draws on studies that use self-report sleep diaries, which capture the subjective experience. However, sleep diaries are limited because they are measured...
Main Author: | Yuan, H |
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Other Authors: | Doherty, A |
Format: | Thesis |
Language: | English |
Published: |
2024
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Subjects: |
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