预测直肠癌术后高综合并发症指数的机器学习模型。

IF 2.2 3区 医学 Q2 SURGERY
Zhen Wang, Lei Huang, Liang He, Shuang Li, Siyu Peng, Yang Gong, Dongmei Mu, Quan Wang
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引用次数: 0

摘要

直肠癌术后并发症严重影响患者的健康和预后。有报道称,综合并发症指数(CCI)是一种比Clavien-Dindo分级(CDC)系统更敏感的严重并发症评估工具。本研究旨在利用机器学习方法构建高术后CCI预测模型,指导临床实践。本研究共纳入1029例行直肠切除术的中低位直肠癌患者。收集术前、术中临床病理特征及盆腔测量资料。利用机器学习方法构建随机森林(Random Forest, RF)、LightGBM、Logistic回归(Logistic Regression, LR)、朴素贝叶斯模型(Naive Bayes Model, NBM)和XGBoost 5种预测模型,并对其性能进行比较。最后,使用Shapley加性解释(SHAP)对最佳模型的预测变量进行可视化解释。模型构建包括手术时间、棘间距离、骨盆深度、年龄、糖尿病、肿瘤距离等6个预测变量。在5个模型中,LightGBM是最优模型,其训练集AUC为0.746,测试集AUC为0.760,验证集AUC为0.709。对于大多数阈值,它具有最佳的DCA曲线,表明在预测高CCI方面具有出色的性能。本研究建立了评估直肠癌前切除术后高CCI风险的预测模型。它可以为严重并发症高风险患者提供个性化的治疗策略,改善患者预后,并通过在线网络工具(https://mypredict.shinyapps.io/CDC_CCI/)促进其使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning model for predicting a high comprehensive complication index following rectal cancer surgery.

Postoperative complications following rectal cancer surgery can significantly affect patient's health and prognosis. It has been reported that the comprehensive complication index (CCI) is a more sensitive assessment tool for severe complications than the Clavien-Dindo classification (CDC) system. This study aims to construct a predictive model for high postoperative CCI using machine learning methods to guide clinical practice. A total of 1029 patients with mid and low rectal cancer who underwent rectal resection were included. Preoperative, intraoperative clinicopathological characteristics and pelvic measurement data were collected. Five predictive models were constructed using machine learning methods, including Random Forest (RF), LightGBM, Logistic Regression (LR), Naive Bayes Model (NBM) and XGBoost, and their performances were compared. Finally, the Shapley Additive exPlanations (SHAP) was used to visually interpret the predictive variables of the best model. Six predictive variables, including surgical time, interspinous distance, pelvic depth, age, diabetes, and tumor distance, were included in the model construction. Among the five models, LightGBM was the optimal model, with an AUC of 0.746 in the training set, 0.760 in the testing set and 0.709 in the validation set. It had the best DCA curve for most thresholds, indicating excellent performance in predicting high CCI. This study developed a predictive model for assessing the risk of high CCI following anterior resection for rectal cancer. It could provide personalized treatment strategies for patients at high risk of severe complications, improves patient prognosis, and promotes its use through an online web tool ( https://mypredict.shinyapps.io/CDC_CCI/ ).

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来源期刊
Updates in Surgery
Updates in Surgery Medicine-Surgery
CiteScore
4.50
自引率
7.70%
发文量
208
期刊介绍: Updates in Surgery (UPIS) has been founded in 2010 as the official journal of the Italian Society of Surgery. It’s an international, English-language, peer-reviewed journal dedicated to the surgical sciences. Its main goal is to offer a valuable update on the most recent developments of those surgical techniques that are rapidly evolving, forcing the community of surgeons to a rigorous debate and a continuous refinement of standards of care. In this respect position papers on the mostly debated surgical approaches and accreditation criteria have been published and are welcome for the future. Beside its focus on general surgery, the journal draws particular attention to cutting edge topics and emerging surgical fields that are publishing in monothematic issues guest edited by well-known experts. Updates in Surgery has been considering various types of papers: editorials, comprehensive reviews, original studies and technical notes related to specific surgical procedures and techniques on liver, colorectal, gastric, pancreatic, robotic and bariatric surgery.
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