使用邓普斯特-谢弗理论将中风风险与健康检查记录数据联系起来

Sergio Peñafiel, N. Baloian, J. Pino, Jorge Quinteros, Alvaro Riquelme, Horacio Sanson, Douglas Teoh
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引用次数: 10

摘要

从医疗病人的历史数据中预测未来的疾病是一个越来越受关注的主题,因为电子格式的数据越来越多。大多数已开发的系统都是基于机器学习技术,这有助于发现数据之间的关系,但无助于解释因果关系。特别是,对于患者的健康检查数据与患某种疾病的风险之间的关系,很难得到有意义的医学解释。另一方面,专家系统方法,如贝叶斯网络,基于医学知识,但在处理高度不确定性方面存在困难,这在这种情况下至关重要。在这项工作中,我们提出了一个基于过去医疗检查数据的患者(心脏或大脑)中风风险的预测系统。该系统基于似是而非的登普斯特-谢弗理论,有利于处理不确定性。所使用的数据属于日本冈山的一家农村医院,根据法律规定,那里的人每年都要接受健康检查。该模型还产生了能够将检查结果数据与上述风险联系起来的规则,从而从医学角度提出原因。将Dempster-Shafer方法与其他机器学习方法(如多层感知器、二次判别分析和朴素贝叶斯)的结果进行比较的实验表明,我们的方法在总体上表现最好,总体预测准确率为61%,在真阳性中风病例上具有最佳精度值。
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Associating risks of getting strokes with data from health checkup records using Dempster-Shafer Theory
Prediction of future diseases from historical data of medical patients is a topic that has gained increasing interest given the growing availability of such data in electronic format. Most of the developed systems are based on machine learning techniques, which are good to find relations between data but do not help explaining causalities. In particular, it would be difficult to get a meaningful medical explanation for the relationship between a patient's health checkup data and the risk of developing a certain disease. On the other hand, expert system approaches, like Bayesian networks, are based on medical knowledge but have trouble dealing with high levels of uncertainty, which is crucial in this kind of scenario. In this work we present a prediction system for the risk of a patient having a (heart or brain) stroke based on past medical checkup data. The system is based on the Dempster-Shafer Theory of plausibility which is good for handling uncertainty. The data used belongs to a rural hospital in Okayama, Japan, where people are compelled to undergo annual health checkups by law. The model also produces rules that are able to relate data from exam results with the aforementioned risk, thus proposing a cause from the medical point of view. Experiments comparing the results of the Dempster-Shafer method with other machine learning methods like Multilayer perceptron, Quadratic discriminant analysis and Naive Bayes show that our approach performed the best in general, with an overall prediction accuracy of 61% and with the best precision value on true positive cases of stroke.
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