应用机器学习方法检测小儿先天性胆总管畸形患者胰胆管畸形。

IF 1.8 3区 医学 Q2 SURGERY
Yifeng Shao, Chengyang Jiang, Runmin Zhang, Kunpeng Yang, Chuanyu Yang, Chengji Dong, Yang Hong, Long Li, Mei Diao
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引用次数: 0

摘要

目的:小儿先天性胆总管畸形患者胰胆管畸形(PBM)的存在对临床处理和手术决策有重要影响。目前术前对儿童PBM共存的评估仍然具有挑战性,而术中胆管造影也不能始终如一地提供诊断质量的成像。本研究旨在开发基于机器学习的算法模型,用于检测先天性胆总管畸形儿童的胰胆管畸形(PBM)。方法:利用2019年1月至2024年1月在我中心治疗的先天性胆总管畸形患者的资料进行回顾性研究。通过严格的数据管理和特征工程管道处理人口统计学特征、临床特征和术前实验室参数。通过随机抽样将病例分配到训练组(80%)和保留测试组(20%),严格区分训练组和测试组。七种机器学习算法-逻辑回归(LR),支持向量机(SVM),随机森林(RF),极端梯度增强(XGBoost),自适应增强(AdaBoost),光梯度增强机(LightGBM)和k -近邻(KNN) -通过五倍交叉验证实现。利用这些模型专门构造了一个集成投票分类器。模型性能通过综合指标进行量化,包括ROC曲线下面积(AUC)、敏感性、特异性、阳性/阴性预测值、准确性、精密度、召回率和f1评分。本研究采用非参数自举法估计接收者工作特征曲线下面积的置信区间。模型可解释性采用SHapley加性解释(SHAP),特征重要性排序由SHapley加性解释的绝对值大小决定。结果:在803例先天性胆总管畸形患儿队列中,628例(78.2%)表现为并发胰胆管畸形。我们开发了一个包含43个临床特征的检测模型,其中随机森林表现出最佳性能。集成了7种机器学习算法的集成投票分类器取得了更好的判别性能(AUC: 0.87 (0.81, 0.92);召回率:0.91 (0.85,0.95);F1-score: 0.91(0.87, 0.94))。有助于PBM检测的关键特征包括:实验室标记物和临床参数。结论:通过整合术前临床症状和实验室参数,机器学习算法在识别儿童先天性胆总管畸形患者的PBM方面表现出显著的检测能力,RF模型在所有基础模型中表现优异。所开发的集成投票分类器为手术计划和临床管理提供了有价值的术前指导,可以在先天性胆总管畸形病例术前检测PBM合并症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detecting pancreaticobiliary maljunction in pediatric congenital choledochal malformation patients using machine learning methods.

Detecting pancreaticobiliary maljunction in pediatric congenital choledochal malformation patients using machine learning methods.

Detecting pancreaticobiliary maljunction in pediatric congenital choledochal malformation patients using machine learning methods.

Detecting pancreaticobiliary maljunction in pediatric congenital choledochal malformation patients using machine learning methods.

Objective: The presence of pancreaticobiliary maljunction (PBM) in pediatric patients with congenital choledochal malformation significantly impacts clinical management and surgical decision-making. Current preoperative evaluation of PBM coexistence remains challenging in children, while intraoperative cholangiography does not consistently provide diagnostic-quality imaging. This study aims to develop machine learning-based algorithm models for detecting pancreaticobiliary maljunction (PBM) in children with congenital choledochal malformation.

Methods: We conducted a retrospective study utilizing data from patients with congenital choledochal malformation treated at our center between January 2019 and January 2024. Demographic characteristics, clinical features, and preoperative laboratory parameters were processed through rigorous data curation and feature engineering pipelines. Cases were allocated via random sampling into training (80%) and hold-out test (20%) cohorts, maintaining strict separation between training and test cohorts. Seven machine learning algorithms - Logistic Regression (LR), Support Vector Machine (SVM), Random Forest (RF), eXtreme Gradient Boosting (XGBoost), Adaptive Boosting (AdaBoost), Light Gradient Boosting Machine (LightGBM), and K-Nearest Neighbors (KNN) - were implemented with five-fold cross-validation. An ensemble voting classifier was specifically constructed using these models. Model performance was quantified through comprehensive metrics including area under the ROC curve (AUC), sensitivity, specificity, positive/negative predictive values, accuracy, precision, recall, and F1-score. This study employed the nonparametric bootstrap method to estimate the confidence interval for the area under the receiver operating characteristic curve (AUC). SHapley Additive exPlanations (SHAP) was employed for model interpretability, with feature importance rankings determined by absolute SHAP value magnitudes.

Results: In a cohort of 803 pediatric patients with congenital choledochal malformation, 628 (78.2%) demonstrated concurrent pancreaticobiliary maljunction. We developed a detection model incorporating 43 clinical features, with Random Forest showing optimal performance. An ensemble voting classifier integrating seven machine learning algorithms achieved enhanced discriminative performance (AUC: 0.87 (0.81, 0.92); Recall: 0.91 (0.85, 0.95); F1-score: 0.91 (0.87, 0.94)). Key features contributing to PBM detection included: laboratory markers and clinical parameters.

Conclusion: By integrating preoperative clinical symptoms and laboratory parameters, machine learning algorithms demonstrated significant detection capability in identifying PBM among pediatric congenital choledochal malformation patients, with the RF model achieving superior performance metrics among all base models. The developed ensemble voting classifier provides valuable preoperative guidance for surgical planning and clinical management, enabling detection of PBM comorbidity before surgery in congenital choledochal malformation cases.

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来源期刊
BMC Surgery
BMC Surgery SURGERY-
CiteScore
2.90
自引率
5.30%
发文量
391
审稿时长
58 days
期刊介绍: BMC Surgery is an open access, peer-reviewed journal that considers articles on surgical research, training, and practice.
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