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Understanding current states of machine learning approaches in medical informatics: a systematic literature review

机译:了解医疗信息学中机器学习方法的当前状态:系统文献综述

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摘要

Knowledge mining (KM) tends to deliver the tools and associated components to extract enormous amounts of data for strategic decision-making. Numerous machine learning (ML) techniques have been applied in medical information systems. These can significantly contribute to the decision-making process, such as diagnosis, prediction, and exploring the benefits of clinical care. This study aims to determine insights into the current state of data mining applications employed by ML in the field of medical informatics (MI). We believe that this exploration would lead to many unrevealed answers in predictive modelling in medical informatics. A systematic search was performed in the most influential scientific electronic databases and one specific another database between 2016 to 2020 (April). Research questions are outlined after the researcher has studied previous research done on the subject. We identified 51 related samples out of 1224 searched articles that satisfied our inclusion criteria. There is a significant increasing pattern of ML application in MI. In addition, the most popular algorithm for classification problem is Support Vector Machine (SVM), followed by random forest (RF). In contrast, "Accuracy" and "Specificity" are the most commonly used mechanisms for performance indicators calculation. This systematic literature review provides a new paradigm for the application of ML to MI. By this investigation, the unknown areas of ML on MI were explored.
机译:知识挖掘(Knowledge mining,KM)倾向于提供工具和相关组件,为战略决策提取大量数据。许多机器学习(ML)技术已经应用于医疗信息系统中。这些可以极大地促进决策过程,例如诊断、预测和探索临床护理的益处。本研究旨在了解医学信息学(MI)领域数据挖掘应用的现状。我们相信,这一探索将为医学信息学中的预测建模带来许多未公开的答案。2016年至2020年(4月),在最具影响力的科学电子数据库和一个特定的数据库中进行了系统搜索。研究问题是在研究者研究了之前的研究之后提出的。我们从1224篇符合纳入标准的搜索文章中确定了51个相关样本。在MI中,ML的应用有显著的增长模式。此外,最流行的分类算法是支持向量机(SVM),其次是随机森林(RF)。相比之下,“准确性”和“特异性”是计算绩效指标最常用的机制。这篇系统的文献综述为ML在MI中的应用提供了一个新的范例。通过这项调查,探索了MI上ML的未知区域。

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