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Identification of Biomarkers and Signatures in Protein Data

机译:鉴定蛋白质数据的生物标志物和签名

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The correct diagnosis of cancer patients conventionally depends on the pathologist's experience and ability to distinguish cancer tissue from normal tissue under a microscope. Advances in technology for measuring the abundance of, e.g., proteins and mRNAs in tissue samples make it interesting to search for an optimal subset of these for classification of samples as cancer or normal. We discuss issues of identification of biomarkers that provide distinct signatures for prediction of tissues as cancer or normal, exemplified by our recent study of cancer signalling signatures in human colon cancer characterised with regards to protein abundance using high sensitivity isoelectric focusing. We show that the optimal subset for separation of cancer tissues from normal tissues does not contain any of the proteins in the top quintile in terms of significant difference between the groups according to Mann-Whitney U-test or correlation to the diagnosis. Actually, one of the proteins belongs to the tertile with the lowest significance and correlation. This highlights the weakness of the practice of only looking for significant differences in the abundance of individual proteins and raises the question of how many lifesaving discoveries that have been missed due to it. We also demonstrate how Monte Carlo simulations of the separation with random class assignment can be used to calculate p-values for observing any specific separation by chance and selection of the optimal number of proteins in the subset based on these p-values. Both selection of the optimal number of biomarkers and calculation of p-values corrected for multiple hypothesis testing are essential to obtain a subset of biomarkers that yield robust predictions for clinical use.
机译:癌症患者的正确诊断通常取决于病理学家的经验和将癌症组织与显微镜下的正常组织区分开的能力。用于测量组织样品中的丰度的技术的进步使得有趣的是寻找这些样品分类为癌症或正常的样本的最佳子集。我们讨论鉴定生物标志物的鉴定问题,该鉴定为癌症或正常预测组织或正常的鉴定,示例是我们最近使用高灵敏度等电聚焦对蛋白质丰度的癌症信号传导鉴定的研究。我们表明,根据Mann-Whitney U-Test或与诊断相关的基团之间的显着差异,从正常组织中分离癌组织的最佳副表团不含顶级含量中的任何蛋白质。实际上,其中一种蛋白质属于具有最低显着性和相关性的Tertive。这突出了仅寻求巨大差异的实践的弱点,并提出了由于它而错过的救生发现的问题。我们还展示了与随机类分配分离的蒙特卡罗模拟如何使用基于这些p值来观察偶然的偶然的蛋白质的最佳数量的p值和选择的p值。两种选择最佳的生物标志物和用于多个假设检测的p值的计算对于获得促进临床使用的稳健预测的生物标志物的子集是必不可少的。

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