Brain cancer prognosis: independent validation of a clinical bioinformatics approach.

Raffaele Fronza, Michele Tramonti, William R Atchley, Christine Nardini
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引用次数: 3

Abstract

Translational and evidence based medicine can take advantage of biotechnology advances that offer a fast growing variety of high-throughput data for screening molecular activities of genomic, transcriptional, post-transcriptional and translational observations. The clinical information hidden in these data can be clarified with clinical bioinformatics approaches. We have recently proposed a method to analyze different layers of high-throughput (omic) data to preserve the emergent properties that appear in the cellular system when all molecular levels are interacting. We show here that this method applied to brain cancer data can uncover properties (i.e. molecules related to protective versus risky features in different types of brain cancers) that have been independently validated as survival markers, with potential important application in clinical practice.

Abstract Image

脑癌预后:临床生物信息学方法的独立验证。
转化医学和循证医学可以利用生物技术的进步,为筛选基因组、转录、转录后和转化观察的分子活动提供快速增长的各种高通量数据。这些数据中隐藏的临床信息可以用临床生物信息学方法来阐明。我们最近提出了一种方法来分析不同层的高通量(组学)数据,以保存当所有分子水平相互作用时出现在细胞系统中的涌现特性。我们在这里表明,将这种方法应用于脑癌数据可以揭示特性(即不同类型脑癌中与保护性和危险特征相关的分子),这些特性已被独立验证为生存标记,在临床实践中具有潜在的重要应用。
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