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A Multimodal Machine Learning Approach to Omics-Based Risk Stratification in Coronary Artery Disease

机译:冠状动脉疾病中常规基于常规风险分层的多式联机学习方法

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This study aims at developing a personalized model for coronary artery disease (CAD) risk stratification based on machine learning modelling of non-imaging data, i.e. clinical, molecular, cellular, inflammatory, and omics data. A multimodal architectural approach is proposed whose generalization capability, with respect to CAD stratification, is currently evaluated. Different data fusion techniques are investigated, ranging from early to late integration methods, aiming at designing a predictive model capable of representing genotype-phenotype interactions pertaining to CAD development. An initial evaluation of the discriminative capacity of the feature space with respect to a binary classification problem (No CAD, CAD), although not complete, shows that: (i) kernel-based classification provides more accurate results as compared with neural network-based and decision tree-based modelling, and (ii) appropriate input refinement by feature ranking has the potential to increase the sensitivity of the model.
机译:本研究旨在基于非成像数据的机器学习建模开发冠状动脉疾病(CAD)风险分层的个性化模型,即临床,分子,细胞,炎症和常规数据。提出了一种多模式架构方法,其泛化能力在目前评估了CAD分层。研究了不同的数据融合技术,从早期到后期积分方法,旨在设计一种能够代表与CAD发育有关的基因型表型相互作用的预测模型。初始评估特征空间对二进制分类问题的判别容量(无CAD,CAD)虽然不完整,但显示:(i)基于内核的分类提供了与基于神经网络相比的更准确的结果和基于树的模型建模和(ii)通过特征排名的适当输入细化具有增加模型的灵敏度。

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