基于bhattacharya的支持向量机分析结肠癌特异性血清标志物。

Wenyi Yang, G. Shi, Liping Wu, Shutang Wei, Y. Huang, Lixia Tan, R. Yang, Chunxiao Yan, E. Guo, Hangyu Wang, J. Tong, Y. Dong, Dazheng Han
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引用次数: 2

摘要

我们的目的是评估12种与结肠癌相关的肿瘤标志物的特异性,找出最敏感的指标。采用巴塔查里亚距离评价该指标。然后,采用不同的指标组合,建立了支持向量机(SVM)恶性结肠癌诊断模型。对模型的准确性进行了检验。假设高准确度表明该指数的高特异性。癌胚抗原、神经元特异性烯醇化酶、甲胎蛋白和CA724的Bhattacharyya距离最大,CYFRA21-І、CA125和UGT1A83的Bhattacharyya距离次之。以上7个指标组合的特异性高于其他组合,所建立的SVM识别模型准确率较高。采用Bhattacharyya距离检测,建立基于不同血清标志物组合的SVM模型,可提高诊断准确率,为数学模型在癌症诊断中的应用提供理论依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of specific serum markers of colon carcinoma using a Bhattacharyya-based support vector machine.
We aimed to evaluate the specificity of 12 tumor markers related to colon carcinoma and identify the most sensitive index. Bhattacharyya distance was used to evaluate the index. Then, different index combinations were used to establish a support vector machine (SVM) diagnosis model of malignant colon carcinoma. The accuracy of the model was checked. High accuracy was assumed to indicate the high specificity of the index. The Bhattacharyya distances of carcinoembryonic antigen, neuron-specific enolase, alpha-feto protein, and CA724 were the largest, and those of CYFRA21-І, CA125, and UGT1A83 were the second largest. The specificity of the combination of the above seven indexes was higher than that of other combinations, and the accuracy of the established SVM identification model was high. Using Bhattacharyya distance detection and establishing an SVM model based on different serum marker combinations can increase diagnostic accuracy, providing a theoretical basis for application of mathematical models in cancer diagnosis.
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