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Integrating biomarkers across omic platforms: an approach to improve stratification of patients with indolent and aggressive prostate cancer

机译:跨平台整合生物标记物:一种改善惰性和侵袭性前列腺癌患者分层的方法

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摘要

Classifying indolent prostate cancer represents a significant clinical challenge. We investigated whether integrating data from different omic platforms could identify a biomarker panel with improved performance compared to individual platforms alone. DNA methylation, transcripts, protein and glycosylation biomarkers were assessed in a single cohort of patients treated by radical prostatectomy. Novel multiblock statistical data integration approaches were used to deal with missing data and modelled via stepwise multinomial logistic regression, or LASSO. After applying leave‐one‐out cross‐validation to each model, the probabilistic predictions of disease type for each individual panel were aggregated to improve prediction accuracy using all available information for a given patient. Through assessment of three performance parameters of area under the curve (AUC) values, calibration and decision curve analysis, the study identified an integrated biomarker panel which predicts disease type with a high level of accuracy, with Multi AUC value of 0.91 (0.89, 0.94) and Ordinal C‐Index (ORC) value of 0.94 (0.91, 0.96), which was significantly improved compared to the values for the clinical panel alone of 0.67 (0.62, 0.72) Multi AUC and 0.72 (0.67, 0.78) ORC. Biomarker integration across different omic platforms significantly improves prediction accuracy. We provide a novel multiplatform approach for the analysis, determination and performance assessment of novel panels which can be applied to other diseases. With further refinement and validation, this panel could form a tool to help inform appropriate treatment strategies impacting on patient outcome in early stage prostate cancer.
机译:对惰性前列腺癌进行分类代表了重大的临床挑战。我们调查了整合来自不同omic平台的数据是否可以识别比单独使用单个平台具有更高性能的生物标志物面板。在接受前列腺癌根治术的一组患者中评估了DNA甲基化,转录本,蛋白质和糖基化生物标志物。新颖的多块统计数据集成方法用于处理丢失的数据,并通过逐步多项式逻辑回归或LASSO进行建模。在对每个模型应用免除一次交叉验证后,使用给定患者的所有可用信息汇总每个单独面板的疾病类型的概率预测,以提高预测准确性。通过评估曲线下面积(AUC)值的三个性能参数,校准和决策曲线分析,该研究确定了一个集成的生物标志物面板,可以高度准确地预测疾病类型,多重AUC值为0.91(0.89,0.94) )和0.94(0.91,0.96)的序数C指数(ORC)值,与单独的临床面板0.67(0.62,0.72)多重AUC和0.72(0.67,0.78)ORC的值相比有显着改善。跨不同omic平台的生物标志物整合显着提高了预测准确性。我们提供了一种新颖的多平台方法,可用于可应用于其他疾病的新型面板的分析,确定和性能评估。通过进一步完善和验证,该专家组可以形成工具,帮助告知对早期前列腺癌患者预后产生影响的适当治疗策略。

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