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Selecting Biomarkers for Ovarian Cancer Detection Using SVD and Monte Carlo Methods

机译:使用SVD和Monte Carlo方法选择用于卵巢癌检测的生物标志物

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Ovarian cancer (OvCa) has become one of the most lethal gynecological cancers in the world. The identification of ovarian cancer linked biomarkers will provide the basis of diagnoses and treatment. In this study, we proposed to combine Singular Value Decomposition (SVD) and Monte Carlo method to analyze the OvCa data and predict the outcomes of samples. A supervised SVD was proposed to weight biomarkers according to their relative importance in sample clustering, and the candidate biomarkers were selected. Biomarkers were further selected with Monte Carlo method from candidate biomarkers over different classifiers. With the selected biomarkers, more than 90% classification accuracy was achieved over classifiers. These results are also supported by independent biological studies.
机译:卵巢癌(OVCA)已成为世界上最致命的妇科癌症之一。卵巢癌链接生物标志物的鉴定将提供诊断和治疗的基础。在这项研究中,我们建议将奇异值分解(SVD)和Monte Carlo方法结合起来分析OVCA数据并预测样品的结果。根据其对样品聚类的相对重要性提出了一种监督的SVD,并选择候选生物标志物。用来自不同分类器的候选生物标志物的蒙特卡罗方法进一步选择生物标志物。通过所选的生物标志物,在分类器上实现了超过90%的分类准确度。这些结果也得到了独立的生物学研究。

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