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基于人群分析的使用XGBoost算法预测分化型甲状腺癌远处转移患者10年总生存状态的模型

A Predictive Model for the 10-year Overall Survival Status of Patients With Distant Metastases From Differentiated Thyroid Cancer Using XGBoost Algorithm-A Population-Based Analysis.

作者信息

Jin Shuai, Yang Xing, Zhong Quliang, Liu Xiangmei, Zheng Tao, Zhu Lingyan, Yang Jingyuan

机构信息

School of Big Health, Guizhou Medical University, Guiyang, China.

School of Medicine and Health Administration, Guizhou Medical University, Guiyang, China.

出版信息

Front Genet. 2022 Jul 8;13:896805. doi: 10.3389/fgene.2022.896805. eCollection 2022.

Abstract

To explore clinical and non-clinical characteristics affecting the prognosis of patients with differentiated thyroid cancer with distant metastasis (DTCDM) and establish an accurate overall survival (OS) prognostic model. Study subjects and related information were obtained from the National Cancer Institute's surveillance, epidemiology, and results database (SEER). Kaplan-Meier analysis, log-rank test, and univariate and multivariate Cox analysis were used to screen for factors influencing the OS of patients with DTCDM. Nine variables were introduced to build a machine learning (ML) model, receiver operating characteristic (ROC) was used to evaluate the recognition ability of the model, calibration plots were used to obtain prediction accuracy, and decision curve analysis (DCA) was used to estimate clinical benefit. After applying the inclusion and exclusion criteria, a total of 3,060 patients with DTCDM were included in the survival analysis from 2004 to 2017. A machine learning prediction model was developed with nine variables: age at diagnosis, gender, race, tumor size, histology, regional lymph node metastasis, primary site surgery, radiotherapy, and chemotherapy. After excluding patients who survived <120 months, variables were sub-coded and machine learning was used to model OS prognosis in patients with DTCDM. Patients 6-50 years of age had the highest scores in the model. Other variables with high scores included small tumor size, male sex, and age 51-76. The AUC and calibration curves confirm that the XGBoost model has good performance. DCA shows that our model can be used to support clinical decision-making in a 10-years overall survival model. An artificial intelligence model was constructed using the XGBoost algorithms to predict the 10-years overall survival rate of patients with DTCDM. After model validation and evaluation, the model had good discriminative ability and high clinical value. This model could serve as a clinical tool to help inform treatment decisions for patients with DTCDM.

摘要

探索影响分化型甲状腺癌伴远处转移(DTCDM)患者预后的临床和非临床特征,并建立准确的总生存期(OS)预后模型。研究对象及相关信息来自美国国家癌症研究所的监测、流行病学和最终结果数据库(SEER)。采用Kaplan-Meier分析、对数秩检验以及单因素和多因素Cox分析来筛选影响DTCDM患者OS的因素。引入9个变量构建机器学习(ML)模型,采用受试者工作特征(ROC)曲线评估模型的识别能力,校准图用于获得预测准确性,决策曲线分析(DCA)用于评估临床获益。应用纳入和排除标准后,2004年至2017年共有3060例DTCDM患者纳入生存分析。利用9个变量建立了一个机器学习预测模型:诊断时年龄、性别、种族、肿瘤大小、组织学类型、区域淋巴结转移、原发部位手术、放疗和化疗。排除生存期<120个月的患者后,对变量进行重新编码,并使用机器学习对DTCDM患者的OS预后进行建模。6至50岁的患者在模型中得分最高。其他高分变量包括肿瘤体积小、男性以及51至76岁。AUC和校准曲线证实XGBoost模型具有良好的性能。DCA表明我们的模型可用于支持10年总生存期模型中的临床决策。使用XGBoost算法构建了一个人工智能模型来预测DTCDM患者的10年总生存率。经过模型验证和评估,该模型具有良好的判别能力和较高的临床价值。该模型可作为一种临床工具,帮助为DTCDM患者提供治疗决策依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/179b/9305066/a647e07a6e39/fgene-13-896805-g001.jpg

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