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首页> 外文期刊>International journal of medical informatics >Machine learning in predicting graft failure following kidney transplantation: A systematic review of published predictive models
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Machine learning in predicting graft failure following kidney transplantation: A systematic review of published predictive models

机译:机器学习预测肾移植后的移植失败:对已发表的预测模型的系统评价

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摘要

Introduction: Machine learning has been increasingly used to develop predictive models to diagnose different disease conditions. The heterogeneity of the kidney transplant population makes predicting graft outcomes extremely challenging. Several kidney graft outcome prediction models have been developed using machine learning, and are available in the literature. However, a systematic review of machine learning based prediction methods applied to kidney transplant has not been done to date. The main aim of our study was to perform an in-depth systematic analysis of different machine learning methods used to predict graft outcomes among kidney transplant patients, and assess their usefulness as an aid to decision-making.Methods: A systemic review of machine learning methods used to predict graft outcomes among kidney transplant patients was carried out using a search of the Medline, the Cumulative Index to Nursing and Allied Health Literature, EMBASE, PsycINFO and Cochrane databases.Results: A total of 295 articles were identified and extracted. Of these, 18 ma the inclusion criteria. Most of the studies were published in the United States after 2010. The population size used to develop the models varied from 80 to 92,844, and the number of features in the models ranged from 6 to 71. The most common machine learning methods used were artificial neural networks, decision trees and Bayesian belief networks. Most of the machine learning based predictive models predicted graft failure with high sensitivity and specificity. Only one machine learning based prediction model had modelled time-to-event (survival) information. Seven studies compared the predictive performance of machine learning models with traditional regression methods and the performance of machine learning methods was found to be mixed, when compared with traditional regression methods.Conclusion: There was a wide variation in the size of the study population and the input variables used. However, the prediction accuracy provided mixed results when machine learning and traditional predictive methods are compared. Based on reported gains in predictive performance, machine learning has the potential to improve kidney transplant outcome prediction and aid medical decision making
机译:简介:机器学习已越来越多地用于开发预测模型以诊断不同的疾病状况。肾脏移植人群的异质性使得预测移植物的结果极具挑战性。使用机器学习已经开发了几种肾移植结果预测模型,并且在文献中可用。但是,迄今为止尚未对基于机器学习的预测方法应用于肾脏移植进行系统评价。我们研究的主要目的是对用于预测肾移植患者移植物结局的不同机器学习方法进行深入的系统分析,并评估其在决策中的有用性。方法:机器学习的系统综述通过检索Medline,护理和相关健康文献的累积索引,EMBASE,PsycINFO和Cochrane数据库,进行了用于预测肾移植患者移植物结局的方法。结果:共鉴定并提取了295篇文章。其中,纳入标准为18 ma。大多数研究在2010年之后在美国发布。用于开发模型的人口规模从80到92,844不等,模型中的特征数量从6到71不等。最常用的机器学习方法是人工的神经网络,决策树和贝叶斯信念网络。大多数基于机器学习的预测模型以高灵敏度和特异性预测移植失败。只有一个基于机器学习的预测模型对事件到达时间(生存)信息进行了建模。七项研究将机器学习模型的预测性能与传统回归方法进行了比较,与传统回归方法相比,机器学习方法的性能参差不齐。结论:研究人群的规模和使用的输入变量。但是,当将机器学习与传统预测方法进行比较时,预测准确性提供了混合结果。基于报告的预测性能的提高,机器学习有可能改善肾脏移植结果的预测并帮助医疗决策

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