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volume 2 issue 1 publication number 37

General feature selection technique supporting sex-debiasing in chronic illness algorithms validated using wearable device data

Jamison H. Burks 1
Lauryn Keeler Bruce 2, 3
Patrick Kasl 1
Severine Soltani 3
Varun Viswanath 4
Wendy Hartogensis 5
Stephan Dilchert 6
Frederick M. Hecht 5
Subhasis Dasgupta 7
Ilkay Altintas 7, 8
Amarnath Gupta 7, 8
Ashley E. Mason 5
Benjamin L. Smarr 1, 8
Publication typeJournal Article
Publication date2024-11-06
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ISSN29481716
Abstract

In tasks involving human health condition data, feature selection is heavily affected by data types, the complexity of the condition manifestation, and the variability in physiological presentation. One type of variability often overlooked or oversimplified is the effect of biological sex. As females have been chronically underrepresented in clinical research, we know less about how conditions manifest in females. Innovations in wearable technology have enabled individuals to generate high temporal resolution data for extended periods of time. With millions of days of data now available, additional feature selection pipelines should be developed to systematically identify sex-dependent variability in data, along with the effects of how many per-person data are included in analysis. Here we present a set of statistical approaches as a technique for identifying sex-dependent physiological and behavioral manifestations of complex diseases starting from longitudinal data, which are evaluated on diabetes, hypertension, and their comorbidity.

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Burks J. H. et al. General feature selection technique supporting sex-debiasing in chronic illness algorithms validated using wearable device data // npj Women s Health. 2024. Vol. 2. No. 1. 37
GOST all authors (up to 50) Copy
Burks J. H., Bruce L. K., Kasl P., Soltani S., Viswanath V., Hartogensis W., Dilchert S., Hecht F. M., Dasgupta S., Altintas I., Gupta A., Mason A. E., Smarr B. L. General feature selection technique supporting sex-debiasing in chronic illness algorithms validated using wearable device data // npj Women s Health. 2024. Vol. 2. No. 1. 37
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RIS Copy
TY - JOUR
DO - 10.1038/s44294-024-00041-z
UR - https://www.nature.com/articles/s44294-024-00041-z
TI - General feature selection technique supporting sex-debiasing in chronic illness algorithms validated using wearable device data
T2 - npj Women s Health
AU - Burks, Jamison H.
AU - Bruce, Lauryn Keeler
AU - Kasl, Patrick
AU - Soltani, Severine
AU - Viswanath, Varun
AU - Hartogensis, Wendy
AU - Dilchert, Stephan
AU - Hecht, Frederick M.
AU - Dasgupta, Subhasis
AU - Altintas, Ilkay
AU - Gupta, Amarnath
AU - Mason, Ashley E.
AU - Smarr, Benjamin L.
PY - 2024
DA - 2024/11/06
PB - Springer Nature
IS - 1
VL - 2
SN - 2948-1716
ER -
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Cite this
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@article{2024_Burks,
author = {Jamison H. Burks and Lauryn Keeler Bruce and Patrick Kasl and Severine Soltani and Varun Viswanath and Wendy Hartogensis and Stephan Dilchert and Frederick M. Hecht and Subhasis Dasgupta and Ilkay Altintas and Amarnath Gupta and Ashley E. Mason and Benjamin L. Smarr},
title = {General feature selection technique supporting sex-debiasing in chronic illness algorithms validated using wearable device data},
journal = {npj Women s Health},
year = {2024},
volume = {2},
publisher = {Springer Nature},
month = {nov},
url = {https://www.nature.com/articles/s44294-024-00041-z},
number = {1},
pages = {37},
doi = {10.1038/s44294-024-00041-z}
}