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Microbiome preterm birth DREAM challenge: crowdsourcing machine learning approaches to advance preterm birth research

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Title: Microbiome preterm birth DREAM challenge: crowdsourcing machine learning approaches to advance preterm birth research
Authors: Golob, JL
Oskotsky, TT
Tang, AS
Roldan, A
Chung, V
Ha, CWY
Wong, RJ
Flynn, KJ
Parraga-Leo, A
Wibrand, C
Minot, SS
Oskotsky, B
Andreoletti, G
Kosti, I
Bletz, J
Nelson, A
Gao, J
Wei, Z
Chen, G
Tang, Z-Z
Novielli, P
Romano, D
Pantaleo, E
Amoroso, N
Monaco, A
Vacca, M
De Angelis, M
Bellotti, R
Tangaro, S
Kuntzleman, A
Bigcraft, I
Techtmann, S
Bae, D
Kim, E
Jeon, J
Joe, S
Theis, KR
Ng, S
Lee, YS
Diaz-Gimeno, P
Bennett, PR
MacIntyre, DA
Stolovitzky, G
Lynch, SV
Albrecht, J
Gomez-Lopez, N
Romero, R
Stevenson, DK
Aghaeepour, N
Tarca, AL
Costello, JC
Sirota, M
Item Type: Journal Article
Abstract: Every year, 11% of infants are born preterm with significant health consequences, with the vaginal microbiome a risk factor for preterm birth. We crowdsource models to predict (1) preterm birth (PTB; <37 weeks) or (2) early preterm birth (ePTB; <32 weeks) from 9 vaginal microbiome studies representing 3,578 samples from 1,268 pregnant individuals, aggregated from public raw data via phylogenetic harmonization. The predictive models are validated on two independent unpublished datasets representing 331 samples from 148 pregnant individuals. The top-performing models (among 148 and 121 submissions from 318 teams) achieve area under the receiver operator characteristic (AUROC) curve scores of 0.69 and 0.87 predicting PTB and ePTB, respectively. Alpha diversity, VALENCIA community state types, and composition are important features in the top-performing models, most of which are tree-based methods. This work is a model for translation of microbiome data into clinically relevant predictive models and to better understand preterm birth.
Issue Date: 16-Jan-2024
Date of Acceptance: 1-Dec-2023
URI: http://hdl.handle.net/10044/1/108362
DOI: 10.1016/j.xcrm.2023.101350
ISSN: 2666-3791
Publisher: Elsevier
Journal / Book Title: Cell Reports Medicine
Volume: 5
Issue: 1
Copyright Statement: © 2023 The Authors. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
Publication Status: Published
Article Number: 101350
Online Publication Date: 2023-12-21
Appears in Collections:Department of Metabolism, Digestion and Reproduction
Faculty of Medicine



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