Determination of Survival of Gastric Cancer Patients With Distant Lymph Node Metastasis Using Prealbumin Level and Prothrombin Time: Contour Plots Based on Random Survival Forest Algorithm on High-Dimensionality Clinical and Laboratory Datasets

IF 3.2 4区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Cheng Zhang, Minmin Xie, Yi Zhang, Xiaopeng Zhang, Chong Feng, Zhijun Wu, Ying Feng, Yahui Yang, Hui Xu, Tai Ma
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引用次数: 4

Abstract

Purpose This study aimed to identify prognostic factors for patients with distant lymph node-involved gastric cancer (GC) using a machine learning algorithm, a method that offers considerable advantages and new prospects for high-dimensional biomedical data exploration. Materials and Methods This study employed 79 features of clinical pathology, laboratory tests, and therapeutic details from 289 GC patients whose distant lymphadenopathy was presented as the first episode of recurrence or metastasis. Outcomes were measured as any-cause death events and survival months after distant lymph node metastasis. A prediction model was built based on possible outcome predictors using a random survival forest algorithm and confirmed by 5×5 nested cross-validation. The effects of single variables were interpreted using partial dependence plots. A contour plot was used to visually represent survival prediction based on 2 predictive features. Results The median survival time of patients with GC with distant nodal metastasis was 9.2 months. The optimal model incorporated the prealbumin level and the prothrombin time (PT), and yielded a prediction error of 0.353. The inclusion of other variables resulted in poorer model performance. Patients with higher serum prealbumin levels or shorter PTs had a significantly better prognosis. The predicted one-year survival rate was stratified and illustrated as a contour plot based on the combined effect the prealbumin level and the PT. Conclusions Machine learning is useful for identifying the important determinants of cancer survival using high-dimensional datasets. The prealbumin level and the PT on distant lymph node metastasis are the 2 most crucial factors in predicting the subsequent survival time of advanced GC. Trial Registration ChiCTR Identifier: ChiCTR1800019978
利用白蛋白前水平和凝血酶原时间测定胃癌远处淋巴结转移患者的生存:基于高维临床和实验室数据集随机生存森林算法的等高线图
本研究旨在利用机器学习算法识别远端淋巴结累及胃癌(GC)患者的预后因素,这种方法具有相当大的优势,为高维生物医学数据探索提供了新的前景。材料和方法本研究采用289例以复发或转移为首发的远端淋巴结病变的GC患者的79个临床病理特征、实验室检查和治疗细节。结果测量为任何原因死亡事件和远处淋巴结转移后的生存月数。基于可能的结果预测因子,采用随机生存森林算法建立预测模型,并通过5×5嵌套交叉验证进行验证。单变量的影响用部分相关图来解释。采用等高线图直观地表示基于2个预测特征的生存预测。结果胃癌伴远处淋巴结转移患者的中位生存时间为9.2个月。最优模型综合了白蛋白前水平和凝血酶原时间(PT),预测误差为0.353。包含其他变量导致模型性能较差。血清白蛋白前水平较高或PTs较短的患者预后明显较好。根据白蛋白前水平和PT的综合效应,对预测的一年生存率进行分层,并以等高线图表示。结论:机器学习对于使用高维数据集识别癌症生存的重要决定因素是有用的。白蛋白前水平和远处淋巴结转移的PT是预测晚期胃癌后续生存时间的两个最关键因素。试验注册编号:ChiCTR1800019978
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来源期刊
Journal of Gastric Cancer
Journal of Gastric Cancer Biochemistry, Genetics and Molecular Biology-Cancer Research
CiteScore
4.30
自引率
12.00%
发文量
36
期刊介绍: The Journal of Gastric Cancer (J Gastric Cancer) is an international peer-reviewed journal. Each issue carries high quality clinical and translational researches on gastric neoplasms. Editorial Board of J Gastric Cancer publishes original articles on pathophysiology, molecular oncology, diagnosis, treatment, and prevention of gastric cancer as well as articles on dietary control and improving the quality of life for gastric cancer patients. J Gastric Cancer includes case reports, review articles, how I do it articles, editorials, and letters to the editor.
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