Transfer learning prediction of surgical necrotizing enterocolitis in preterm infants without pneumoperitoneum on abdominal X-ray.

IF 1.7 4区 医学 Q2 PEDIATRICS
Translational pediatrics Pub Date : 2026-03-23 Epub Date: 2026-02-27 DOI:10.21037/tp-2025-1-867
Dayan Sun, Chuanping Xie, Yong Zhao, Junmin Liao, Yanan Zhang, Kaiyun Hua, Yichao Gu, Jingbin Du, Shuangshuang Li, Dingding Wang, Jinshi Huang
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引用次数: 0

Abstract

Background: Necrotizing enterocolitis (NEC) remains a leading cause of mortality in preterm infants, with 30-39% requiring surgical intervention. However, existing models for predicting surgical NEC lack accuracy and clinical utility, especially for infants without pneumoperitoneum on abdominal X-ray (AXR). In this study, we aimed to develop a prediction model to earlier identify NEC requiring surgical intervention.

Methods: All preterm infants diagnosed with NEC (modified Bell's stage ≥ II) without pneumoperitoneum on AXR from Beijing Children's Hospital between January 2016 to December 2022 were retrospectively reviewed. Demographic, perinatal, clinical, laboratory, and imaging findings were analyzed. Six machine learning (ML) algorithms-logistic regression, decision tree, random forest, support vector machine, multilayer perceptron, and extreme gradient boosting-were trained and optimized via ten-fold cross-validation. The best-performing support vector machine model was further enhanced using transfer learning. The optimal algorithm was deployed into a web-based graphical user interface (GUI) for real-time risk stratification.

Results: A total of 144 preterm infants with NEC without pneumoperitoneum on AXR were included in our study, including the surgical NEC group (n=31) and the medical NEC group (n=113). Multivariate analysis identified lower gestational age (P=0.010), pregnancy vaginitis (P=0.014), respiratory support (P=0.005), positive abdominal examinations (P<0.001), elevated C-reactive protein (P=0.003), and turbid peritoneal fluid on abdominal ultrasonography (P<0.001), as independent risk factors for surgical NEC. Then we constructed six ML models to predict surgical NEC by utilizing five variables derived from clinical, laboratory, and imaging findings in NEC-afflicted infants. Of all the models, support vector machine achieved perfect discrimination and superior reproducibility across training and validation sets. The transfer-learning model, built on the support vector machine base, achieved superior performance in the training set [area under the receiver operating characteristic curve (AUC) =0.964, 95% confidence interval (CI): 0.921-0.995] and validation set (AUC =0.937, 95% CI: 0.829-1.000). SHapley Additive exPlanations analysis highlighted positive abdominal examinations, turbid fluid on abdominal ultrasound, and bowel sounds grades as the top predictors. Furthermore, we developed a transfer-learning based GUI for the predictive model to facilitate clinical application.

Conclusions: This study pioneered an interpretable ML framework integrating multimodal data to predict surgical NEC with near-perfect discrimination. Furthermore, the transfer-learning based GUI represented a transformative approach to optimizing surgical timing.

无气腹的早产儿手术坏死性小肠结肠炎的x线转移学习预测。
背景:坏死性小肠结肠炎(NEC)仍然是早产儿死亡的主要原因,其中30-39%需要手术干预。然而,现有的预测手术NEC的模型缺乏准确性和临床实用性,特别是对于没有腹部x线气腹的婴儿(AXR)。在这项研究中,我们旨在建立一个预测模型,以早期识别需要手术干预的NEC。方法:回顾性分析2016年1月至2022年12月北京儿童医院所有经AXR诊断为NEC(改良贝尔≥II期)且无气腹的早产儿。分析了人口统计学、围产期、临床、实验室和影像学结果。六种机器学习(ML)算法-逻辑回归,决策树,随机森林,支持向量机,多层感知器和极端梯度增强-通过十倍交叉验证进行训练和优化。使用迁移学习进一步增强了表现最好的支持向量机模型。将最优算法部署到基于web的图形用户界面(GUI)中进行实时风险分层。结果:我们的研究共纳入144例未在AXR上气腹的NEC早产儿,包括手术NEC组(n=31)和医学NEC组(n=113)。多因素分析发现,低胎龄(P=0.010)、妊娠阴道炎(P=0.014)、呼吸支持(P=0.005)、腹部检查阳性(P)。结论:本研究开创了一个可解释的ML框架,整合多模态数据,以近乎完美的区分预测手术NEC。此外,基于迁移学习的GUI代表了优化手术时机的变革性方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Translational pediatrics
Translational pediatrics Medicine-Pediatrics, Perinatology and Child Health
CiteScore
4.50
自引率
5.00%
发文量
108
期刊介绍: Information not localized
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