基于多组学数据决策级整合的乳腺癌患者总体生存预测的转化管道

Jonathan Mitchel, Kevin Chatlin, Li Tong, May D Wang
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引用次数: 6

摘要

乳腺癌是女性中最普遍和最致命的癌症之一。乳腺癌患者的生存率变化很大,这表明需要确定预后生物标志物。通过整合多组学数据(如基因表达、DNA甲基化、miRNA表达和拷贝数变异(CNVs)),与使用单一模式数据的预测相比,有可能提高患者生存预测的准确性。因此,我们建议开发一种机器学习管道,利用来自癌症基因组图谱(TCGA)的多组学肿瘤数据的决策级集成来预测乳腺癌患者的总体生存期。使用由基因表达、甲基化、miRNA表达和CNVs组成的多组学数据,表现最好的模型预测生存率的准确率为85%,曲线下面积(AUC)为87%。此外,该模型能够确定哪种模式最有助于预测性能,将甲基化、miRNA和基因表达确定为最佳综合分类组合。我们的方法不仅概括了以前文献中报道的几种乳腺癌特异性预后生物标志物,而且还产生了几种新的生物标志物。对这些生物标记物的进一步分析可能有助于深入了解导致生存率低下的分子机制。
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A Translational Pipeline for Overall Survival Prediction of Breast Cancer Patients by Decision-Level Integration of Multi-Omics Data.

Breast cancer is the most prevalent and among the most deadly cancers in females. Patients with breast cancer have highly variable survival rates, indicating a need to identify prognostic biomarkers. By integrating multi-omics data (e.g., gene expression, DNA methylation, miRNA expression, and copy number variations (CNVs)), it is likely to improve the accuracy of patient survival predictions compared to prediction using single modality data. Therefore, we propose to develop a machine learning pipeline using decision-level integration of multi-omics tumor data from The Cancer Genome Atlas (TCGA) to predict the overall survival of breast cancer patients. With multi-omics data consisting of gene expression, methylation, miRNA expression, and CNVs, the top performing model predicted survival with an accuracy of 85% and area under the curve (AUC) of 87%. Furthermore, the model was able to identify which modalities best contributed to prediction performance, identifying methylation, miRNA, and gene expression as the best integrated classification combination. Our method not only recapitulated several breast cancer-specific prognostic biomarkers that were previously reported in the literature but also yielded several novel biomarkers. Further analysis of these biomarkers could lend insight into the molecular mechanisms that lead to poor survival.

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