构建和解释基于机器学习的预后模型,用于预测肠型和弥漫型胃癌患者的生存期。

IF 2.5 3区 医学 Q3 ONCOLOGY
Kunxiang Ji, Lei Shi, Yan Feng, Linna Wang, HuanNan Guo, Hui Li, Jiacheng Xing, Siyu Xia, Boran Xu, Eryu Liu, YanDan Zheng, Chunfeng Li, Mingyang Liu
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引用次数: 0

摘要

背景:胃癌是全球最常见的恶性肿瘤之一,发病率和死亡率都很高,病因复杂,病理特征复杂。根据肿瘤类型的不同,胃癌可分为肠型胃癌和弥漫型胃癌,各自具有不同的发病机制和临床表现。近年来,机器学习技术被广泛应用于医学领域,为胃癌患者的诊断、治疗和预后提供了新的视角:本研究招募了 2158 名胃癌患者,并构建了肠型胃癌和弥漫型胃癌的预后预测模型。研究收集了患者的临床病理数据,并使用机器学习算法进行特征选择和模型构建。模型的性能通过训练和测试数据集进行了验证。沙普利加性解释(SHAP)值用于解释模型预测,并确定影响患者生存的主要因素:结果:在肠型胃癌的预后模型中,梯度提升决策树(GBDT)模型表现最佳,其主要特征包括pTNM、CA125、肿瘤大小、CA199和PALB。同样,在弥漫型胃癌的预后模型中,也使用了 GBDT 模型,其关键特征包括 pTNM、Borrmann IV 型疾病、淋巴细胞(LYM)、乳酸脱氢酶(LDH)、钾(K)、神经周围浸润(PNI)、肿瘤大小和全胃位置。风险分层分析显示,高危患者的预后明显差于低危患者:机器学习在预测胃癌患者生存预后方面显示出巨大潜力,为制定个性化治疗方案提供了有力支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction and interpretation of machine learning-based prognostic models for survival prediction among intestinal-type and diffuse-type gastric cancer patients.

Background: Gastric cancer is one of the most common malignant tumors worldwide, with high incidence and mortality rates, and it has a complex etiology and complex pathological features. Depending on the tumor type, gastric cancer can be classified as intestinal-type and diffuse-type gastric cancer, each with distinct pathogenic mechanisms and clinical presentations. In recent years, machine learning techniques have been widely applied in the medical field, offering new perspectives for the diagnosis, treatment, and prognosis of gastric cancer patients.

Methods: This study recruited 2158 gastric cancer patients and constructed prognostic prediction models for both intestinal-type and diffuse-type gastric cancer. Clinical pathological data were collected from patients, and machine learning algorithms were used for feature selection and model construction. The performance of the models was validated with training and testing datasets. The Shapley additive explanations (SHAP) values were used to interpret the model predictions and identify the main factors that influence patient survival.

Results: In the prognostic model for intestinal-type gastric cancer, the gradient boosting decision tree (GBDT) model demonstrated the best performance, with key features including pTNM, CA125, tumor size, CA199, and PALB. Similarly, in the prognostic model for diffuse-type gastric cancer, the GBDT model was utilized, with key features comprising pTNM, Borrmann type IV disease, lymphocyte (LYM), lactate dehydrogenase (LDH), potassium (K), perineural invasion (PNI), tumor size, and whole stomach location. Risk stratification analysis revealed that the prognosis of high-risk patients was significantly worse than that of low-risk patients.

Conclusion: Machine learning shows great potential in predicting survival outcomes of gastric cancer patients, providing strong support for the development of personalized treatment plans.

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来源期刊
CiteScore
4.70
自引率
15.60%
发文量
362
审稿时长
3 months
期刊介绍: World Journal of Surgical Oncology publishes articles related to surgical oncology and its allied subjects, such as epidemiology, cancer research, biomarkers, prevention, pathology, radiology, cancer treatment, clinical trials, multimodality treatment and molecular biology. Emphasis is placed on original research articles. The journal also publishes significant clinical case reports, as well as balanced and timely reviews on selected topics. Oncology is a multidisciplinary super-speciality of which surgical oncology forms an integral component, especially with solid tumors. Surgical oncologists around the world are involved in research extending from detecting the mechanisms underlying the causation of cancer, to its treatment and prevention. The role of a surgical oncologist extends across the whole continuum of care. With continued developments in diagnosis and treatment, the role of a surgical oncologist is ever-changing. Hence, World Journal of Surgical Oncology aims to keep readers abreast with latest developments that will ultimately influence the work of surgical oncologists.
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