使用IBM Auto AI Service预测心力衰竭率的方法

K. G, S. T, Vijipriya G, Nirmala Madian
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引用次数: 3

摘要

心衰是心血管疾病引起的常见事件,死亡人数最多,诊断方法也较多。但由于医学检查和使用的工具,故障率预测仍然缺乏。本文探讨了基于机器学习和人工智能的自动预测模型的精细性,该模型由IBM服务构建,用于心力衰竭率预测,其中数据集经过训练并构建模型。自动人工智能实例是在IBM Watson Studio中创建的,机器学习服务与之相关联。自动AI服务为给定数据集确定最佳算法为Gradient Boost算法,并自动将其分类为二元分类问题,其值为心力衰竭的Y/N。可以选择和部署几种算法。NodeRED服务用于将模型部署为最终应用程序。系统自动选择准确度、精密度和召回率作为最佳度量。结果的信息图决定了其他几个算法也可以合并并执行一个。此外,从结果中可以明显看出,在最小的时间跨度内,应用程序可以自动为主要威胁疾病建模和部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An approach for predicting heart failure rate using IBM Auto AI Service
Heart failure is a common event caused by Cardiovascular diseases which causes major death count and several diagnosis methods were also involved. But still the failure rate prediction is lacking because of medical examination as well as tools used. This paper explores the meticulousness of a machine learning and artificial intelligence based automatic prediction model, which is built by IBM services for heart failure rate prediction where the dataset is trained and a model is built. The auto AI instance is created in the IBM Watson Studio and machine learning services are linked with it. The auto AI service determines the best algorithm as the Gradient Boost algorithm for the given dataset here and automatically classifies it as a binary classification problem with values as Y/N for heart failure. Several algorithms can be chosen and deployed. The NodeRED service is used to deploy the model as a final application. The accuracy along with precision and recall measures and metrics were chosen automatically by the system as best ones. The infographics of the results determines that several other algorithms can also be merged and executed one. Also it is evident from the results, that with a minimum span of time, the application is automatically modeled and deployed for the major threatening disease.
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