Predicting preterm birth using machine learning techniques in oral microbiome

被引:0
|
作者
You Mi Hong
Jaewoong Lee
Dong Hyu Cho
Jung Hun Jeon
Jihoon Kang
Min-Gul Kim
Semin Lee
Jin Kyu Kim
机构
[1] Asan Medical Center,Department of Obstetrics and Gynecology, University of Ulsan College of Medicine
[2] Ulsan National Institute of Science and Technology (UNIST),Department of Biomedical Engineering
[3] Jeonbuk National University Medical School,Department of Obstetrics and Gynecology
[4] Research Institute of Jeonbuk National University Hospital,Research Institute of Clinical Medicine of Jeonbuk National University–Biomedical
[5] Helixco Inc.,Department of Pharmacology
[6] Jeonbuk National University Medical School,Department of Pediatrics
[7] Jeonbuk National University Medical School,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
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 24 h 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.
引用
收藏
相关论文
共 50 条
  • [1] Predicting preterm birth using machine learning techniques in oral microbiome
    Hong, You Mi
    Lee, Jaewoong
    Cho, Dong Hyu
    Jeon, Jung Hun
    Kang, Jihoon
    Kim, Min-Gul
    Lee, Semin
    Kim, Jin Kyu
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [2] Predicting preterm birth using machine learning methods
    Kloska, Anna
    Harmoza, Alicja
    Kloska, Sylwester M.
    Marciniak, Tomasz
    Sadowska-Krawczenko, Iwona
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [3] Can We Predict Preterm Birth by Analyzing the Vaginal Microbiome Using Machine Learning Techniques?
    Park, Sunwha
    You, Young-Ah
    Moon, Jeongsup
    Kang, Nayeon
    Hur, Young Min
    Kim, Soo Min
    Lee, Gain
    Kim, Young-Han
    Jung, Yun Ji
    Kwon, Eunjin
    Ansari, AbuZar
    Park, Taesung
    Kim, Young Ju
    REPRODUCTIVE SCIENCES, 2022, 29 (SUPPL 1) : 200 - 200
  • [4] Oral microbiome and preterm birth
    Simic, Marijana Vidmar
    Maver, Ales
    Zimani, Ana Nyasha
    Hocevar, Keli
    Peterlin, Borut
    Kovanda, Anja
    Premru-Srsen, Tanja
    FRONTIERS IN MEDICINE, 2023, 10
  • [5] Predicting risk of preterm birth in singleton pregnancies using machine learning algorithms
    Yu, Qiu-Yan
    Lin, Ying
    Zhou, Yu-Run
    Yang, Xin-Jun
    Hemelaar, Joris
    FRONTIERS IN BIG DATA, 2024, 7
  • [6] Microbiome preterm birth DREAM challenge Crowdsourcing machine learning approaches to advance preterm birth research
    Golob, Jonathan L.
    Oskotsky, Tomiko T.
    Tang, Alice S.
    Roldan, Alennie
    Chung, Verena
    Ha, Connie W. Y.
    Wong, Ronald J.
    Flynn, Kaitlin J.
    Parraga-Leo, Antonio
    Wibrand, Camilla
    Minot, Samuel S.
    Oskotsky, Boris
    Andreoletti, Gaia
    Kosti, Idit
    Bletz, Julie
    Nelson, Amber
    Gao, Jifan
    Wei, Zhoujingpeng
    Chen, Guanhua
    Tang, Zheng-Zheng
    Novielli, Pierfrancesco
    Romano, Donato
    Pantaleo, Ester
    Amoroso, Nicola
    Monaco, Alfonso
    Vacca, Mirco
    De Angelis, Maria
    Bellotti, Roberto
    Tangaro, Sabina
    Kuntzleman, Abigail
    Bigcraft, Isaac
    Techtmann, Stephen
    Bae, Daehun
    Kim, Eunyoung
    Jeon, Jongbum
    Joe, Soobok
    Theis, Kevin R.
    Ng, Sherriann
    Lee, Yun S.
    Diaz-Gimeno, Patricia
    Bennett, Phillip R.
    MacIntyre, David A.
    Stolovitzky, Gustavo
    Lynch, Susan V.
    Albrecht, Jake
    Gomez-Lopez, Nardhy
    Romero, Roberto
    Stevenson, David K.
    Aghaeepour, Nima
    Tarca, Adi L.
    CELL REPORTS MEDICINE, 2024, 5 (01)
  • [7] Predicting in-hospital length of stay for very-low-birth-weight preterm infants using machine learning techniques
    Lin, Wei-Ting
    Wu, Tsung-Yu
    Chen, Yen-Ju
    Chang, Yu-Shan
    Lin, Chyi-Her
    Lin, Yuh-Jyh
    JOURNAL OF THE FORMOSAN MEDICAL ASSOCIATION, 2022, 121 (06) : 1141 - 1148
  • [8] Deep Learning in Predicting Preterm Birth: A Comparative Study of Machine Learning Algorithms
    Zhang Fangchao
    Tong Lingling
    Shi Chen
    Zuo Rui
    Wang Liwei
    Wang Yan
    母胎医学杂志(英文), 2024, 06 (03)
  • [9] Deep Learning in Predicting Preterm Birth: A Comparative Study of Machine Learning Algorithms
    Zhang, Fangchao
    Tong, Lingling
    Shi, Chen
    Zuo, Rui
    Wang, Liwei
    Wang, Yan
    MATERNAL-FETAL MEDICINE, 2024, 6 (03) : 141 - 146
  • [10] Establishment of a model for predicting preterm birth based on the machine learning algorithm
    Zhang, Yao
    Du, Sisi
    Hu, Tingting
    Xu, Shichao
    Lu, Hongmei
    Xu, Chunyan
    Li, Jufang
    Zhu, Xiaoling
    BMC PREGNANCY AND CHILDBIRTH, 2023, 23 (01)