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基于机器学习的肝内胆管癌预后预测及手术指导

Machine learning-based prognostic prediction and surgical guidance for intrahepatic cholangiocarcinoma.

作者信息

Huang Long, Li Jianbo, Zhu Shuncang, Wang Liang, Li Ge, Pan Junyong, Zhang Chun, Lai Jianlin, Tian Yifeng, Chen Shi

机构信息

Shengli Clinical Medical College of Fujian Medical University, Fuzhou, Fujian, China.

Department of Hepatobiliary Pancreatic surgery, Fujian Provincial Hospital, Fuzhou University Affiliated Provincial Hospital, Fuzhou, Fujian, China.

出版信息

Biosci Trends. 2025 Jan 14;18(6):545-554. doi: 10.5582/bst.2024.01312. Epub 2024 Dec 8.

Abstract

The prognosis following radical surgery for intrahepatic cholangiocarcinoma (ICC) is poor, and optimal follow-up strategies remain unclear, with ongoing debates regarding anatomic resection (AR) versus non-anatomic resection (NAR). This study included 680 patients from five hospitals, comparing a combination of eight feature screening methods and 11 machine learning algorithms to predict prognosis and construct integrated models. These models were assessed using nested cross-validation and various datasets, benchmarked against TNM stage and performance status. Evaluation metrics such as area under the curve (AUC) were applied. Prognostic models incorporating screened features showed superior performance compared to unselected models, with AR emerging as a key variable. Treatment recommendation models for surgical approaches, including DeepSurv, neural network multitask logistic regression (N-MTLR), and Kernel support vector machine (SVM), indicated that N-MTLR's recommendations were associated with survival benefits. Additionally, some patients identified as suitable for NAR were within groups previously considered for AR. In conclusion, three robust clinical models were developed to predict ICC prognosis and optimize surgical decisions, improving patient outcomes and supporting shared decision-making for patients and surgeons.

摘要

肝内胆管癌(ICC)根治性手术后的预后较差,最佳随访策略仍不明确,关于解剖性切除(AR)与非解剖性切除(NAR)的争论仍在继续。本研究纳入了来自五家医院的680例患者,比较了八种特征筛选方法和十一种机器学习算法的组合,以预测预后并构建综合模型。这些模型使用嵌套交叉验证和各种数据集进行评估,并以TNM分期和体能状态作为基准。应用了曲线下面积(AUC)等评估指标。与未选择特征的模型相比,纳入筛选特征的预后模型表现更优,AR成为关键变量。包括深度生存模型(DeepSurv)、神经网络多任务逻辑回归(N-MTLR)和核支持向量机(SVM)在内的手术方法治疗推荐模型表明,N-MTLR的推荐与生存获益相关。此外,一些被确定适合NAR的患者属于先前考虑进行AR的群体。总之,开发了三种强大的临床模型来预测ICC预后并优化手术决策,改善患者预后,并支持患者和外科医生的共同决策。

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