Indrio Flavia, Masciari Elio, Marchese Flavia, Rinaldi Matteo, Maffei Gianfranco, Gangai Ilaria, Grillo Assunta, De Benedetto Roberta, Napolitano Enea Vincenzo, Beghetti Isadora, Corvaglia Luigi, Di Mauro Antonio, Aceti Arianna
Department of Experimental Medicine School of Medicine University of Salento, Lecce, Italy.
Dipartimento di Ingegneria Elettrica e delle Tecnologie dell'Informazione, University Federico II, Naples, Italy.
Heliyon. 2024 Dec 27;11(1):e41516. doi: 10.1016/j.heliyon.2024.e41516. eCollection 2025 Jan 15.
Functional Gastrointestinal Disorders (FGIDs) can pose a great burden on affected children, their families, and the healthcare system. Due to the lack of knowledge about the precise pathophysiology of FGIDs, a proper identification of children at risk to develop FGIDs has never been attempted. The research aims to identify early-life risk factors for FGIDs such as infantile colic, regurgitation, and functional constipation, within the first year of life.
This prospective observational cohort study enrolled both term and preterm infants from a tertiary care university hospital between January 1, 2020, and December 31, 2022. The study employed both traditional statistical methods and artificial intelligence (AI) techniques, specifically a random forest classification model, to identify key risk factors associated with the development of FGIDs. Based on these findings, an AI-based predictive model will be developed, along with a user-friendly, web-based interface designed for practical risk assessment.
6060 infants were enrolled. 8.1 % were born preterm. According to random forest classification model by AI, birth weight (BW), cord blood pH, and maternal age were the most relevant variables linked to development of FGIDs in the first year of life. Some discrepancies between potential risk factors identified through conventional statistics and AI were detected.
For the first time machine learning allowed to identify BW, cord blood pH and maternal age as important variable for risk prediction of FGIDs in the first year of life. This practical risk assessment tool would help clinicians to identify infants at risk of FGIDs who would benefit from a tailored preventive approach.
功能性胃肠疾病(FGIDs)会给患病儿童、其家庭及医疗系统带来巨大负担。由于对FGIDs确切病理生理学缺乏了解,从未有人尝试过准确识别有患FGIDs风险的儿童。本研究旨在确定生命第一年中FGIDs的早期风险因素,如婴儿腹绞痛、反流和功能性便秘。
这项前瞻性观察性队列研究纳入了2020年1月1日至2022年12月31日期间来自一家三级护理大学医院的足月儿和早产儿。该研究采用了传统统计方法和人工智能(AI)技术,特别是随机森林分类模型,以确定与FGIDs发生相关的关键风险因素。基于这些发现,将开发一个基于AI的预测模型,以及一个为实际风险评估设计的用户友好型网络界面。
共纳入6060名婴儿。8.1%为早产儿。根据AI的随机森林分类模型,出生体重(BW)、脐血pH值和母亲年龄是与生命第一年FGIDs发生最相关的变量。通过传统统计和AI识别出的潜在风险因素之间存在一些差异。
机器学习首次使我们能够确定BW、脐血pH值和母亲年龄是生命第一年FGIDs风险预测的重要变量。这种实用的风险评估工具将帮助临床医生识别有FGIDs风险的婴儿,这些婴儿将受益于量身定制的预防方法。