rs115291013 - ACTR3B - LINC01287
Magnitude 2.2 · 1 study on file
Reported associations
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Automated feature extraction from population wearable device data identified novel loci associated with sleep and circadian rhythms - Unknown journal (n.d.) · Unknown authors · PubMed 33075057
ABSTRACT: Wearable devices have been increasingly used in research to provide continuous physical activity monitoring, but how to effectively extract features remains challenging for researchers. To analyze the generated actigraphy data in large-scale population studies, we developed computationally efficient methods to derive sleep and activity features through a Hidden Markov Model-based sleep/wake identification algorithm, and circadian rhythm features through a Penalized Multi-band Learning approach adapted from machine learning. Unsupervised feature extraction is useful when labeled data are unavailable, especially in large-scale population studies. We applied these two methods to the UK Biobank wearable device data and used the derived sleep and circadian features as phenotypes in ge
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