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Generation of virtual patient data for in-silico cardiomyopathies drug development using tree ensembles: a comparative study

机译:使用树状集成生成虚拟患者心肌病药物开发的虚拟患者数据:一项比较研究

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In-silico clinical platforms have been recently used as a new revolutionary path for virtual patients (VP) generation and further analysis, such as, drug development. Advanced individualized models have been developed to enhance flexibility and reliability of the virtual patient cohorts. This study focuses on the implementation and comparison of three different methodologies for generating virtual data for in-silico clinical trials. Towards this direction, three computational methods, namely: (i) the multivariate log-normal distribution (log- MVND), (ii) the supervised tree ensembles, and (iii) the unsupervised tree ensembles are deployed and evaluated against their performance towards the generation of high-quality virtual data using the goodness of fit (gof) and the dataset correlation matrix as performance evaluation measures. Our results reveal the dominance of the tree ensembles towards the generation of virtual data with similar distributions (gof values less than 0.2) and correlation patterns (average difference less than 0.03).
机译:计算机内临床平台最近已用作虚拟患者(VP)生成和进一步分析(例如药物开发)的新革命途径。已开发出先进的个性化模型以增强虚拟患者队列的灵活性和可靠性。这项研究集中于三种不同方法的实现和比较,这些方法可为计算机内临床试验生成虚拟数据。朝着这个方向,采用了三种计算方法,即:(i)多元对数正态分布(log-MVND),(ii)有监督的树集合,和(iii)无监督的树集合,并针对它们对性能的评估。使用拟合优度(gof)和数据集相关矩阵作为性能评估手段来生成高质量的虚拟数据。我们的结果表明,树的优势集中在具有相似分布(gof值小于0.2)和相关模式(平均差异小于0.03)的虚拟数据的生成上。

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