Construction and interpretation of machine learning-based prognostic models for survival prediction among intestinal-type and diffuse-type gastric cancer patients

被引:1
作者
Ji, Kunxiang [1 ]
Shi, Lei [1 ]
Feng, Yan [1 ]
Wang, Linna [1 ]
Guo, HuanNan [1 ]
Li, Hui [1 ]
Xing, Jiacheng [1 ]
Xia, Siyu [1 ]
Xu, Boran [2 ]
Liu, Eryu [2 ]
Zheng, YanDan [3 ]
Li, Chunfeng [4 ]
Liu, Mingyang [1 ]
机构
[1] Beidahuang Ind Grp Gen Hosp, Dept Oncology 4, Harbin, Peoples R China
[2] Beidahuang Ind Grp Gen Hosp, Dept Oncology 3, Harbin, Peoples R China
[3] Anda City Hosp, Dept Oncol, Anda, Peoples R China
[4] Harbin Med Univ, Dept Gastrointestinal Surg, Canc Hosp, Harbin, Peoples R China
关键词
Gastric cancer; Intestinal-type; Diffuse-type; Prognosis; Machine learning; RISK;
D O I
10.1186/s12957-024-03550-y
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
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.
引用
收藏
页数:9
相关论文
共 44 条
  • [21] Development of machine learning prognostic models for overall survival of epithelial ovarian cancer patients: a SEER-based study
    Fan, Jianing
    Jiang, Yu
    Wang, Xinyan
    Lyv, Juan
    EXPERT REVIEW OF ANTICANCER THERAPY, 2025, 25 (03) : 297 - 306
  • [22] CT-based radiomics nomograms for preoperative prediction of diffuse-type and signet ring cell gastric cancer: a multicenter development and validation cohort
    Tao Chen
    Jing Wu
    Chunhui Cui
    Qinglie He
    Xunjun Li
    Weiqi Liang
    Xiaoyue Liu
    Tianbao Liu
    Xuanhui Zhou
    Xifan Zhang
    Xiaotian Lei
    Wei Xiong
    Jiang Yu
    Guoxin Li
    Journal of Translational Medicine, 20
  • [23] Machine learning-based radiomics score improves prognostic prediction accuracy of stage II/III gastric cancer: A multi-cohort study
    Xiang, Ying-Hao
    Mou, Huan
    Qu, Bo
    Sun, Hui-Rong
    WORLD JOURNAL OF GASTROINTESTINAL SURGERY, 2024, 16 (02):
  • [24] CT-based radiomics nomograms for preoperative prediction of diffuse-type and signet ring cell gastric cancer: a multicenter development and validation cohort
    Chen, Tao
    Wu, Jing
    Cui, Chunhui
    He, Qinglie
    Li, Xunjun
    Liang, Weiqi
    Liu, Xiaoyue
    Liu, Tianbao
    Zhou, Xuanhui
    Zhang, Xifan
    Lei, Xiaotian
    Xiong, Wei
    Yu, Jiang
    Li, Guoxin
    JOURNAL OF TRANSLATIONAL MEDICINE, 2022, 20 (01)
  • [25] Prognostic prediction models for postoperative patients with stage I to III colorectal cancer based on machine learning
    Ji, Xiao-Lin
    Xu, Shuo
    Li, Xiao-Yu
    Xu, Jin-Huan
    Han, Rong-Shuang
    Guo, Ying-Jie
    Duan, Li-Ping
    Tian, Zi-Bin
    WORLD JOURNAL OF GASTROINTESTINAL ONCOLOGY, 2024, 16 (12)
  • [26] Integrating ultrasound radiomics and clinicopathological features for machine learning-based survival prediction in patients with nonmetastatic triple-negative breast cancer
    Wenwen, Zekun
    Jiang, Zekun
    Liu, Jingyan
    Liu, Dingbang
    Li, Yiyue
    He, Yushuang
    Zhao, Haina
    Ma, Lin
    Zhu, Yixin
    Long, Qiongxian
    Gao, Jun
    Luo, Honghao
    Jiang, Heng
    Li, Kang
    Zhong, Xiaorong
    Peng, Yulan
    BMC CANCER, 2025, 25 (01)
  • [27] Machine Learning-Based Short-Term Mortality Prediction Models for Patients With Cancer Using Electronic Health Record Data: Systematic Review and Critical Appraisal
    Lu, Sheng-Chieh
    Xu, Cai
    Nguyen, Chandler H.
    Geng, Yimin
    Pfob, Andre
    Sidey-Gibbons, Chris
    JMIR MEDICAL INFORMATICS, 2022, 10 (03)
  • [28] Machine learning-based prediction of five-year all-cause mortality in patients with mixed gastric cancer
    Cong Wang
    Hongwei Li
    Hongye Yang
    Yingwei Xue
    Holistic Integrative Oncology, 4 (1):
  • [29] Prediction of mortality among severely injured trauma patients A comparison between TRISS and machine learning-based predictive models
    Holtenius, Jonas
    Mosfeldt, Mathias
    Enocson, Anders
    Berg, Hans E.
    INJURY-INTERNATIONAL JOURNAL OF THE CARE OF THE INJURED, 2024, 55 (08):
  • [30] Comparable prognosis of early gastric cancer between intestinal type and diffuse type in patients of age 75 and older: a SEER-based cohort study
    Yin, Ping
    Cai, Rencheng
    Zhou, Xiaohua
    Yao, Xuemin
    Yang, Qiufen
    Jin, Yuehong
    Jiao, Xuehua
    Lu, Chengjie
    Qiao, Zhenguo
    TRANSLATIONAL CANCER RESEARCH, 2024, 13 (02) : 888 - 899