Machine learning to predict the decision to perform surgery in hepatic echinococcosis.

IF 2.7 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Hpb Pub Date : 2024-12-19 DOI:10.1016/j.hpb.2024.12.014
Raffaella Lissandrin, Ottavia Cicerone, Ambra Vola, Gianluca D'Alessandro, Simone Frassini, Tommaso Manciulli, Simone Famularo, Annalisa De Silvestri, Jacopo Viganò, Pietro Quaretti, Luca Ansaloni, Enrico Brunetti, Marcello Maestri
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引用次数: 0

Abstract

Background: Cystic echinococcosis (CE) is a significant public health issue, primarily affecting the liver. While several management strategies exist, there is a lack of predictive tools to guide surgical decisions for hepatic CE. This study aimed to develop predictive models to support surgical decision-making in hepatic CE, enhancing the precision of patient allocation to surgical or non-surgical management pathways.

Methods: This retrospective analysis included 406 hepatic CE patients treated at our center (2009-2021). Clinical, imaging, and treatment data were used to develop a Cox regression and a decision tree model to identify factors influencing surgical intervention, with model performance validated using K-fold cross-validation, train/test split, bootstrapping.

Results: Imaging findings and symptomatology emerged as the most significant predictors. The Cox model demonstrated a concordance index of 0.94 and an AUC of 0.96, while the decision tree model identified imaging, cyst stage, and symptoms as critical factors, achieving strong performance across validation techniques (mean AUC 0.950; 95% CI: [0.889, 0.978]).

Conclusion: This study presents validated predictive models for assessing surgical risk in hepatic CE. Integrating these models into clinical practice offers a dynamic tool that surpasses static guidelines, optimizing patient allocation to surgical or non-surgical pathways and potentially improving outcomes.

机器学习预测肝包虫病手术的决定。
背景:囊性包虫病(CE)是一个重要的公共卫生问题,主要影响肝脏。虽然存在几种管理策略,但缺乏预测工具来指导肝CE的手术决策。本研究旨在建立预测模型,以支持肝CE的手术决策,提高患者分配到手术或非手术治疗途径的准确性。方法:回顾性分析本中心2009-2021年收治的406例肝CE患者。临床、影像学和治疗数据用于建立Cox回归和决策树模型,以确定影响手术干预的因素,并使用K-fold交叉验证、训练/测试分割和自举来验证模型的性能。结果:影像学表现和症状学是最重要的预测因素。Cox模型的一致性指数为0.94,AUC为0.96,而决策树模型将影像学、囊肿分期和症状确定为关键因素,在验证技术中表现出色(平均AUC为0.950;95% ci:[0.889, 0.978])。结论:本研究提出了评估肝CE手术风险的有效预测模型。将这些模型整合到临床实践中,提供了一种超越静态指南的动态工具,优化了手术或非手术途径的患者分配,并有可能改善结果。
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来源期刊
Hpb
Hpb GASTROENTEROLOGY & HEPATOLOGY-SURGERY
CiteScore
5.60
自引率
3.40%
发文量
244
审稿时长
57 days
期刊介绍: HPB is an international forum for clinical, scientific and educational communication. Twelve issues a year bring the reader leading articles, expert reviews, original articles, images, editorials, and reader correspondence encompassing all aspects of benign and malignant hepatobiliary disease and its management. HPB features relevant aspects of clinical and translational research and practice. Specific areas of interest include HPB diseases encountered globally by clinical practitioners in this specialist field of gastrointestinal surgery. The journal addresses the challenges faced in the management of cancer involving the liver, biliary system and pancreas. While surgical oncology represents a large part of HPB practice, submission of manuscripts relating to liver and pancreas transplantation, the treatment of benign conditions such as acute and chronic pancreatitis, and those relating to hepatobiliary infection and inflammation are also welcomed. There will be a focus on developing a multidisciplinary approach to diagnosis and treatment with endoscopic and laparoscopic approaches, radiological interventions and surgical techniques being strongly represented. HPB welcomes submission of manuscripts in all these areas and in scientific focused research that has clear clinical relevance to HPB surgical practice. HPB aims to help its readers - surgeons, physicians, radiologists and basic scientists - to develop their knowledge and practice. HPB will be of interest to specialists involved in the management of hepatobiliary and pancreatic disease however will also inform those working in related fields. Abstracted and Indexed in: MEDLINE® EMBASE PubMed Science Citation Index Expanded Academic Search (EBSCO) HPB is owned by the International Hepato-Pancreato-Biliary Association (IHPBA) and is also the official Journal of the American Hepato-Pancreato-Biliary Association (AHPBA), the Asian-Pacific Hepato Pancreatic Biliary Association (A-PHPBA) and the European-African Hepato-Pancreatic Biliary Association (E-AHPBA).
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