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Towards clinically more relevant dissection of patient heterogeneity via survival-based Bayesian clustering

机译:通过基于生存的贝叶斯聚类对临床更相关的患者异质性解剖

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摘要

Discovery of clinically relevant disease sub-types is of prime importance in personalized medicine. Disease sub-type identification has in the past often been explored in an unsupervised machine learning paradigm which involves clustering of patients based on available-omics data, such as gene expression. A follow-up analysis involves determining the clinical relevance of the molecular sub-types such as that reflected by comparing their disease progressions. The above methodology, however, fails to guarantee the separability of the sub-types based on their subtype-specific survival curves.
机译:发现临床相关的疾病子类型是个性化药物的主要重要性。 疾病亚型识别在过去经常在无监督的机器学习范例中探讨,这涉及基于可用的omics数据的患者的聚类,例如基因表达。 后续分析涉及确定分子亚类型的临床相关性,例如通过比较其疾病进展来反映的临床相关性。 然而,上述方法不能保证基于其亚型特异性生存曲线的子类型的可分离性。

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