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Discriminating early- and late-stage cancers using multiple kernel learning on gene sets

机译:在基因集上使用多个内核学习来区分早期和后期癌症

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Motivation: Identifying molecular mechanisms that drive cancers from early to late stages is highly important to develop new preventive and therapeutic strategies. Standard machine learning algorithms could be used to discriminate early-and late-stage cancers from each other using their genomic characterizations. Even though these algorithms would get satisfactory predictive performance, their knowledge extraction capability would be quite restricted due to highly correlated nature of genomic data. That is why we need algorithms that can also extract relevant information about these biological mechanisms using our prior knowledge about pathways/gene sets.
机译:动机:鉴定从早期到后期癌症的分子机制非常重要,无法制定新的预防和治疗策略。 标准机器学习算法可用于使用其基因组特征来识别早期和后期癌症。 尽管这些算法将获得令人满意的预测性能,但由于基因组数据的高度相关性,他们的知识提取能力将受到严格限制。 这就是为什么我们需要算法,该算法还可以利用我们的先前知识提取有关这些生物机制的相关信息。

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