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Boosting support vector machines for cancer discrimination tasks

机译:促进支持向量机用于癌症歧视任务

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Cancer is a complex disease that is caused by rapid alteration of genes. Prediction of the state of cancer in advance contributes to a better understanding of its mechanism and improves the cancer therapy process. For example, predicting the malignancy of tumors in advance can prevent the development of cancer through the early treatment and clinical management of tumor progression. Despite generation of extensive clinical data obtained from the high-throughput technologies, it is necessary to develop machine learning algorithms to guide the prediction process. In the study, we utilize boosting and develop three computational methods to increase the performance of support vector machines (SVM). The aforementioned methods improve the performance over existing state-of-the-art algorithms, including SVM and xgboost. We evaluate the proposed boosting approach relative to the existing algorithms by using several gene expression data related to oral cancer, breast cancer, pheochromocytomas and paragangliomas, bladder cancer, and gastric cancer. The reported results using several performance measures indicate that algorithms employing the proposed approach outperform algorithms employing the baseline approach.
机译:癌症是一种复杂的疾病,是由基因的快速改变引起的。提前预测癌症状态有助于更好地理解其机制并改善癌症治疗过程。例如,预先预测肿瘤的恶性肿瘤可以通过早期治疗和肿瘤进展的临床管理来预防癌症的发展。尽管生成了从高通量技术获得的广泛临床数据,但有必要开发机器学习算法以引导预测过程。在该研究中,我们利用提升和开发三种计算方法来提高支持向量机(SVM)的性能。上述方法提高了现有最先进的算法的性能,包括SVM和XGBoost。我们通过使用与口腔癌,乳腺癌,嗜肺细胞和Paragangliomas,膀胱癌和胃癌相关的几种基因表达数据来评估相对于现有算法的提升方法。据报道的使用若干性能措施表明采用所提出的方法的算法优于采用基线方法的算法。

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