@article{e4f89c5291ff40ef824f7696354f2611,
title = "Machine learning approaches to predict gestational age in normal and complicated pregnancies via urinary metabolomics analysis",
abstract = "The elucidation of dynamic metabolomic changes during gestation is particularly important for the development of methods to evaluate pregnancy status or achieve earlier detection of pregnancy-related complications. Some studies have constructed models to evaluate pregnancy status and predict gestational age using omics data from blood biospecimens; however, less invasive methods are desired. Here we propose a model to predict gestational age, using urinary metabolite information. In our prospective cohort study, we collected 2741 urine samples from 187 healthy pregnant women, 23 patients with hypertensive disorders of pregnancy, and 14 patients with spontaneous preterm birth. Using gas chromatography-tandem mass spectrometry, we identified 184 urinary metabolites that showed dynamic systematic changes in healthy pregnant women according to gestational age. A model to predict gestational age during normal pregnancy progression was constructed; the correlation coefficient between actual and predicted weeks of gestation was 0.86. The predicted gestational ages of cases with hypertensive disorders of pregnancy exhibited significant progression, compared with actual gestational ages. This is the first study to predict gestational age in normal and complicated pregnancies by using urinary metabolite information. Minimally invasive urinary metabolomics might facilitate changes in the prediction of gestational age in various clinical settings.",
author = "Takafumi Yamauchi and Daisuke Ochi and Naomi Matsukawa and Daisuke Saigusa and Mami Ishikuro and Taku Obara and Yoshiki Tsunemoto and Satsuki Kumatani and Riu Yamashita and Osamu Tanabe and Naoko Minegishi and Seizo Koshiba and Hirohito Metoki and Shinichi Kuriyama and Nobuo Yaegashi and Masayuki Yamamoto and Masao Nagasaki and Satoshi Hiyama and Junichi Sugawara",
note = "Funding Information: We thank all past and present members of Tohoku Medical Megabank Organization at Tohoku University (present members are listed at https://www.megabank.tohoku.ac.jp/english/a200601/). We also thank Ryan Chastain-Gross, Ph.D., from Edanz Group (https://en-author-services.edanz.com/ac) for editing a draft of this manuscript. This study was supported by NTT DOCOMO, Inc., with a collaborative research agreement among NTT DOCOMO, Tohoku Medical Megabank Organization, and Tohoku University. The Tohoku Medical Megabank is supported by grants from the Reconstruction Agency, the Ministry of Education, Culture, Sports, Science and Technology (MEXT), and the Japan Agency for Medical Research and Development (AMED). This study was supported in part by AMED under grant numbers JP19km0105001 and JP19km0105002. This work was also partially supported by JSPS KAKENHI Grant Number JP18KT0015 and JP18H03326. The Radiation Effects Research Foundation (RERF) is a public interest foundation funded by the Japanese Ministry of Health, Labour and Welfare (MHLW) and the United States Department of Energy. Publisher Copyright: {\textcopyright} 2021, The Author(s).",
year = "2021",
month = dec,
doi = "10.1038/s41598-021-97342-z",
language = "English",
volume = "11",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "Nature Publishing Group",
number = "1",
}