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基于机器学习的脑转移患者预后模型:血液检测分析的见解

Machine Learning-based Prognostic Model for Brain Metastasis Patients: Insights from Blood Test Analysis.

作者信息

Li Ruidan, Liu Zheran, Wei Zhigong, Huang Rendong, Pei Yiyan, Yang Jing, Qin Zijian, Li Huilin, Fang Fang, Peng Xingchen

机构信息

Department of Biotherapy, Cancer Center, West China Hospital, Sichuan University, Chengdu, Sichuan, China.

Hangzhou Linan Guorui Health Industry Investment Co.,Ltd, Hangzhou, Zhejiang, China.

出版信息

J Cancer. 2025 Jan 1;16(2):689-699. doi: 10.7150/jca.103847. eCollection 2025.

Abstract

Brain metastases, affecting 30% of solid tumor patients, have a substantial impact on clinical outcomes. Developing a clinically feasible and precise prognostic model is crucial for personalized and comprehensive treatment. Parameters from blood test were collected from brain metastases patients, and were used to construct the four models, including univariate Cox regression, stepwise regression, LASSO regression, and random survival forest (RSF). Model-HP (based RSF), identified as the best-performing, was chosen. Model-GPAH was formed by merging Model-HP risk scores and GPA (Graded Prognostic Assessment). AUC, IDI, and cNRI were used to evaluate different models. A cohort of 1,385 patients was included, with 970 patients assigned to the training cohort and 415 patients were to the validation cohort. Compared to the other models, the Model-HP built on the RSF demonstrated superior performance (compared with RSF: AUC = 0.71 [0.66, 0.77], Univariate Cox regression: AUC = 0.65 [0.59, 0.71], P = 0.011; Stepwise regression: AUC = 0.63 [0.57, 0.69], P = 0.001; LASSO regression: AUC = 0.64 [0.58, 0.70], P < 0.001). Compared with Model-HP and GPA, Model-GPAH significantly enhanced the performance of prognosis prediction (compared with Model-GPAH: AUC = 0.70 [0.67, 0.73], GPA: AUC = 0.61 [0.57, 0.64], P = 0.001; Model-HP: AUC = 0.67 [0.64, 0.70], P < 0.001). Model-GPAH performed favorably across patients receiving diverse treatments. Integrating hematological parameters into the GPA model significantly enhanced prognostic prediction for brain metastasis patients, highlighting blood tests' crucial role in identifying biomarkers for outcomes.

摘要

脑转移影响30%的实体瘤患者,对临床结局有重大影响。开发一种临床可行且精确的预后模型对于个性化和综合治疗至关重要。从脑转移患者中收集血液检测参数,并用于构建四个模型,包括单变量Cox回归、逐步回归、LASSO回归和随机生存森林(RSF)。被确定为表现最佳的Model-HP(基于RSF)被选中。Model-GPAH由Model-HP风险评分和GPA(分级预后评估)合并而成。使用AUC、IDI和cNRI评估不同模型。纳入了1385名患者队列,其中970名患者被分配到训练队列,415名患者被分配到验证队列。与其他模型相比,基于RSF构建的Model-HP表现出卓越性能(与RSF相比:AUC = 0.71 [0.66, 0.77],单变量Cox回归:AUC = 0.65 [0.59, 0.71],P = 0.011;逐步回归:AUC = 0.63 [0.57, 0.69],P = 0.001;LASSO回归:AUC = 0.64 [0.58, 0.70],P < 0.001)。与Model-HP和GPA相比,Model-GPAH显著提高了预后预测性能(与Model-GPAH相比:AUC = 0.70 [0.67, 0.73],GPA:AUC = 0.61 [0.57, 0.64],P = 0.001;Model-HP:AUC = 0.67 [0.64, 0.70],P < 0.001)。Model-GPAH在接受不同治疗的患者中表现良好。将血液学参数纳入GPA模型显著增强了对脑转移患者的预后预测,突出了血液检测在识别结局生物标志物方面的关键作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2b56/11685702/a491542b0f4e/jcav16p0689g001.jpg

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