Support vector machines (SVM) have become popular among machine learning researchers, but their applications in biomedicine have been somewhat limited. A number of methods, such as grid search and evolutionary algorithms, have been utilized to optimize model parameters of SVMs. The sensitivity of the results to changes in optimization methods has not been investigated in the context of medical applications. In this study, radial-basis kernel SVM and polynomial kernel SVM mortality prediction models for percutaneous coronary interventions were optimized using (a) mean-squared error, (b) mean cross-entropy error, (c) the area under the receiver operating characteristic, and (d) the Hosmer-Lemeshow goodness-of-fit test (HL chi(2)). A threefold cross-validation inner and outer loop method was used to select the best models using the training data, and evaluations were based on previously unseen test data. The results were compared to those produced by logistic regression models optimized using the same indices. The choice of optimization parameters had a significant impact on performance in both SVM kernel types.

译文

支持向量机 (SVM) 已在机器学习研究人员中流行,但其在生物医学中的应用受到一定限制。已使用许多方法 (例如网格搜索和进化算法) 来优化svm的模型参数。在医学应用的背景下,尚未研究结果对优化方法变化的敏感性。在这项研究中,径向基核SVM和多项式核SVM死亡率预测模型使用 (a) 均方误差,(b) 平均交叉熵误差,(c) 接收器工作特性下的面积,和 (d) Hosmer-Lemeshow拟合优度检验 (HL chi(2))。采用三重交叉验证内环和外环方法,利用训练数据选择最佳模型,评估基于以前看不见的测试数据。将结果与使用相同指标优化的逻辑回归模型产生的结果进行比较。优化参数的选择对两种SVM内核类型的性能都有重大影响。

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