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Lee, Semin
Computational Biology Lab.
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Predicting preterm birth using machine learning techniques in oral microbiome

Author(s)
Hong, You MiLee, JaewoongCho, Dong HyuJeon, Jung HunKang, JihoonKim, Min-GulLee, SeminKim, Jin Kyu
Issued Date
2023-11
DOI
10.1038/s41598-023-48466-x
URI
https://scholarworks.unist.ac.kr/handle/201301/67555
Citation
SCIENTIFIC REPORTS, v.13, no.1, pp.21105
Abstract
Preterm birth prediction is essential for improving neonatal outcomes. While many machine learning techniques have been applied to predict preterm birth using health records, inflammatory markers, and vaginal microbiome data, the role of prenatal oral microbiome remains unclear. This study aimed to compare oral microbiome compositions between a preterm and a full-term birth group, identify oral microbiome associated with preterm birth, and develop a preterm birth prediction model using machine learning of oral microbiome compositions. Participants included singleton pregnant women admitted to Jeonbuk National University Hospital between 2019 and 2021. Subjects were divided into a preterm and a full-term birth group based on pregnancy outcomes. Oral microbiome samples were collected using mouthwash within 24h before delivery and 16S ribosomal RNA sequencing was performed to analyze taxonomy. Differentially abundant taxa were identified using DESeq2. A random forest classifier was applied to predict preterm birth based on the oral microbiome. A total of 59 women participated in this study, with 30 in the preterm birth group and 29 in the full-term birth group. There was no significant difference in maternal clinical characteristics between the preterm and the full-birth group. Twenty-five differentially abundant taxa were identified, including 22 full-term birth-enriched taxa and 3 preterm birth-enriched taxa. The random forest classifier achieved high balanced accuracies (0.765 ± 0.071) using the 9 most important taxa. Our study identified 25 differentially abundant taxa that could differentiate preterm and full-term birth groups. A preterm birth prediction model was developed using machine learning of oral microbiome compositions in mouthwash samples. Findings of this study suggest the potential of using oral microbiome for predicting preterm birth. Further multi-center and larger studies are required to validate our results before clinical applications. © 2023, The Author(s).
Publisher
Nature Publishing Group
ISSN
2045-2322
Keyword
EPIDEMIOLOGYGINGIVALISWOMENLABOR

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