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How to discriminate between potentially novel and considered biomarkers within molecular signature?

机译:如何在分子标记中区分潜在的新颖和公认的生物标记?

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摘要

The lack of consensus among reported molecular (gene, protein, regulatory marker) signatures (MSs) in the literature is often an initial concern for researchers and subsequently it discourages larger scale prospective studies, prevent the translation of such knowledge into a practical clinical setting and ultimately hindering the progress of the field of biomarker-based disease classification, prognosis and prediction. Understanding the high level of clinical and biological heterogeneity in patients' cohort distribution, (e.g. by diseases subtypes and stages, age, treatment methods etc), limitations and misbalances in the number of samples, and uncertainty in the dimensionality of potential biomarker space, are critical for getting the signature consensus and identification of novel potential biomarkers. Differences in use of technological platforms, as well as variations in experimental protocols in different studies are also often contributing factors in the lack of strong consensus among signatures. In view of these differences, it would be inappropriate to compare MSs in entirety. Here, we investigate each variable in the signature of interest, and attempt to generate computationally “a null frequency distribution” of the expected number of co-occurrences in other MSs, i.e. other published MSs, and identify both novel and common biomarker within the given MS. We demonstrated an application of proposed model to identification of clinically essential genes of our somatically mutated genes in breast cancer.
机译:文献中所报道的分子(基因,蛋白质,调节标记物)标记(MS)之间缺乏共识通常是研究人员最初关注的问题,因此不鼓励进行大规模的前瞻性研究,阻止将此类知识转化为实际的临床应用和最终阻碍了基于生物标志物的疾病分类,预后和预测领域的发展。了解患者队列分布中的高度临床和生物学异质性(例如,按疾病亚型和阶段,年龄,治疗方法等),样本数量的局限性和失衡性以及潜在生物标记物空间的维数不确定性对于获得签名共识和鉴定新的潜在生物标志物至关重要。技术平台使用上的差异以及不同研究中实验方案的差异也是造成签名缺乏共识的原因。鉴于这些差异,对整个MS进行比较是不合适的。在这里,我们研究感兴趣的签名中的每个变量,并尝试在其他MS(即其他已发布的MS)中生成预期的共现次数的计算“零频率分布”,并在给定范围内识别新颖和常见的生物标记多发性硬化症。我们证明了拟议的模型在乳腺癌中我们的体细胞突变基因的临床必不可少的基因鉴定中的应用。

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