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Application of machine learning algorithms for clinical predictive modeling: a data-mining approach in SCT.

机译:机器学习算法在临床预测建模中的应用:SCT中的数据挖掘方法。

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摘要

Data collected from hematopoietic SCT (HSCT) centers are becoming more abundant and complex owing to the formation of organized registries and incorporation of biological data. Typically, conventional statistical methods are used for the development of outcome prediction models and risk scores. However, these analyses carry inherent properties limiting their ability to cope with large data sets with multiple variables and samples. Machine learning (ML), a field stemming from artificial intelligence, is part of a wider approach for data analysis termed data mining (DM). It enables prediction in complex data scenarios, familiar to practitioners and researchers. Technological and commercial applications are all around us, gradually entering clinical research. In the following review, we would like to expose hematologists and stem cell transplanters to the concepts, clinical applications, strengths and limitations of such methods and discuss current research in HSCT. The aim of this review is to encourage utilization of the ML and DM techniques in the field of HSCT, including prediction of transplantation outcome and donor selection.
机译:由于建立了有组织的注册机构和纳入了生物学数据,从造血SCT(HSCT)中心收集的数据变得越来越丰富和复杂。通常,常规统计方法用于结果预测模型和风险评分的开发。但是,这些分析的固有属性限制了它们处理具有多个变量和样本的大型数据集的能力。机器学习(ML)是源自人工智能的一个领域,它是称为“数据挖掘(DM)”的更广泛的数据分析方法的一部分。它可以在从业人员和研究人员熟悉的复杂数据场景中进行预测。技术和商业应用无处不在,并逐渐进入临床研究。在下面的评论中,我们想向血液学家和干细胞移植者介绍这些方法的概念,临床应用,优势和局限性,并讨论HSCT的最新研究。这篇综述的目的是鼓励在HSCT领域使用ML和DM技术,包括预测移植结果和选择供体。

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