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Machine learning and microsimulation techniques on the prognosis of dementia : A systematic literature review

机译:机器学习和微观模拟技术对痴呆症预后的系统性文献综述

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摘要

Background Dementia is a complex disorder characterized by poor outcomes for the patients and high costs of care. After decades of research little is known about its mechanisms. Having prognostic estimates about dementia can help researchers, patients and public entities in dealing with this disorder. Thus, health data, machine learning and microsimulation techniques could be employed in developing prognostic estimates for dementia. Objective The goal of this paper is to present evidence on the state of the art of studies investigating and the prognosis of dementia using machine learning and microsimulation techniques. Method To achieve our goal we carried out a systematic literature review, in which three large databases -Pubmed, Socups and Web of Science were searched to select studies that employed machine learning or microsimulation techniques for the prognosis of dementia. A single backward snowballing was done to identify further studies. A quality checklist was also employed to assess the quality of the evidence presented by the selected studies, and low quality studies were removed. Finally, data from the final set of studies were extracted in summary tables. Results In total 37 papers were included. The data summary results showed that the current research is focused on the investigation of the patients with mild cognitive impairment that will evolve to Alzheimer's disease, using machine learning techniques. Microsimulation studies were concerned with cost estimation and had a populational focus. Neuroimaging was the most commonly used variable. Conclusions Prediction of conversion from MCI to AD is the dominant theme in the selected studies. Most studies used ML techniques on Neuroimaging data. Only a few data sources have been recruited by most studies and the ADNI database is the one most commonly used. Only two studies have investigated the prediction of epidemiological aspects of Dementia using either ML or MS techniques. Finally, care should be taken when interpreting the reported accuracy of ML techniques, given studies' different contexts. © 2017 Dallora et al.This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
机译:背景技术痴呆症是一种复杂的疾病,其特征在于患者的预后差和护理费用高。经过数十年的研究,对其机制知之甚少。对痴呆症进行预后评估可以帮助研究人员,患者和公共实体应对这种疾病。因此,健康数据,机器学习和微观模拟技术可用于开发痴呆的预后估计。目的本文的目的是通过机器学习和微仿真技术,为研究痴呆症的研究现状和预后提供证据。方法为了实现我们的目标,我们进行了系统的文献综述,在其中检索了三个大型数据库-公开数据库,Socups数据库和Web of Science数据库,以选择采用机器学习或微观模拟技术来预测痴呆的研究。进行了一次单向滚雪球运动以识别进一步的研究。还使用质量检查表来评估所选研究提供的证据的质量,并删除了低质量的研究。最后,将来自最后一组研究的数据提取到汇总表中。结果共纳入37篇论文。数据摘要结果表明,当前的研究重点是使用机器学习技术对患有轻度认知障碍的患者进行调查,这些患者将发展为阿尔茨海默氏病。微观模拟研究与成本估算有关,并且以人口为关注焦点。神经成像是最常用的变量。结论预测从MCI到AD的转化是所选研究的主要主题。大多数研究对神经影像数据使用ML技术。大多数研究仅收集了很少的数据源,而ADNI数据库是最常用的数据库。只有两项研究使用ML或MS技术研究了痴呆的流行病学方面的预测。最后,鉴于研究的不同背景,在解释所报道的机器学习技术的准确性时应格外小心。 ©2017 Dallora等人,这是根据知识共享署名许可协议的条款分发的开放获取文章,该文章允许原始作者和出处的作者不受限制地使用,分发和复制任何媒体。

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