Classification of effects of drug combinations with support vector machines

Ali Cuvitoglu, Z. Işik
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Abstract

Cancer is still one of the challenging diseases to develop new therapies due to the late diagnosis and its complex progression nature. There is an urgent need for new therapy regimes for cancer patients having late stage diagnosis or recurrence. New computational approaches can help to identify more effective drug combinations as new treatment options for cancer. For this purpose, we developed a classification method to identify more effective drug pairs out of all possible combinations by using single drug treatment gene expression and biological network data. A support vector machine was trained with new features. The model was evaluated on a real drug treatment data that contains both positive (more effective) and negative (not effective) drug combinations. The classification performance reached 80% average accuracy on the test data. Although these results are promising, the model has a room for improvement with different extensions.
基于支持向量机的药物组合效果分类
癌症由于其诊断较晚、进展复杂的特点,至今仍是具有挑战性的新疗法之一。对于晚期诊断或复发的癌症患者,迫切需要新的治疗方案。新的计算方法可以帮助确定更有效的药物组合作为癌症的新治疗选择。为此,我们开发了一种分类方法,通过使用单一药物治疗基因表达和生物网络数据,从所有可能的组合中识别出更有效的药物对。用新的特征训练支持向量机。该模型在包含阳性(更有效)和阴性(无效)药物组合的真实药物治疗数据上进行评估。在测试数据上,分类性能达到80%的平均准确率。尽管这些结果很有希望,但该模型在不同的扩展中仍有改进的余地。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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