用于医疗保健应用程序的预测器生成器

K. Periyasamy, A. Kaivelikkal, Venkateshwaran K. Iyer
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引用次数: 0

摘要

现在,许多医疗保健应用程序都利用机器学习算法来分析患者的病史,协助诊断,并可能预测患者的下一阶段健康状况。这种方法为医疗保健提供者提供了计算机化支持。然而,对于医疗保健提供者来说,选择合适的机器学习算法是一项艰巨的任务,部分原因是他们缺乏使用此类算法的经验。在本文中,我们描述了一个称为预测器生成器的工具,它可以帮助为医疗保健应用程序选择合适的机器学习算法并调整所选算法的参数,以便用户可以获得应用程序的预测器。该工具提供了选择具有不同参数组合的不同算法的选项,并分别保存它们,以便用户可以试验每个预测器并选择满足其要求的适当预测器。我们已经测试了该工具用于预测血液透析肾病患者死亡率的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Predictor Generator for Healthcare Applications
Many healthcare applications now utilize machine learning algorithms to analyze a patient's history, to assist in di-agnosis, and to possibly predict the next stage of patient's health. This approach gives a computerized support for healthcare providers. However, choosing an appropriate machine learning algorithm is a daunting task for a healthcare provider, partly because of their lack of experience in using such algorithms. In this paper, we describe a tool called predictor generator which helps choosing an appropriate machine learning algorithm for a healthcare application and adjusting the parameters of the selected algorithm so that the user can get a predictor for the application. The tool provides an option to select different algorithms with different combinations of parameters and saving each of them separately so that the user can experiment each predictor and choose the appropriate one that satisfies their requirements. We have tested the application of the tool for predicting mortality of kidney patients who are on hemodialysis.
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