删节数据的支持向量回归(SVRc):一种新的生存分析工具

F. Khan, V. Zubek
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引用次数: 132

摘要

生存分析预测建模的一个关键挑战是管理数据中的审查观察。Cox比例风险模型是分析连续删节生存数据的标准工具。我们提出了一种新的机器学习算法,即删节数据支持向量回归(SVRc),用于改进医疗生存数据的分析。SVRc利用传统SVR的高维功能,同时通过修改的非对称损失/惩罚函数使其适用于审查数据,该函数允许处理审查(左和右审查)数据。我们将新算法应用于预测前列腺癌、乳腺癌和肺癌的复发和疾病进展。与传统的Cox模型相比,SVRc在整体准确率以及识别高危和低危患者人群的能力上都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Regression for Censored Data (SVRc): A Novel Tool for Survival Analysis
A crucial challenge in predictive modeling for survival analysis is managing censored observations in the data. The Cox proportional hazards model is the standard tool for the analysis of continuous censored survival data. We propose a novel machine learning algorithm, support vector regression for censored data (SVRc) for improved analysis of medical survival data. SVRc leverages the high-dimensional capabilities of traditional SVR while adapting it for use with censored data through a modified asymmetric loss/penalty function which allows censored (left and right censored) data to be processed. We applied the new algorithm to predict the recurrence and disease progression of prostate cancer, breast cancer and lung cancer. Compared with the traditional Cox model, SVRc achieves significant improvement in overall accuracy as well as in the ability to identify high-risk and low-risk patient populations.
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