基于个性化健康趋势模式的疾病风险预测——以糖尿病为例

Guo-Cheng Lan, Chao-Hui Lee, Yu-Yen Lee, V. Tseng, Jin-Shang Wu, Chu-Yu Chin, Miin-Luen Day, Shyh-Chyi Wang, Ching-Nain Chang, Shyr-Yuan Cheng
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引用次数: 10

摘要

健康检查对维护人们的健康起到了重要的作用,因为它不仅可以帮助人们清楚地了解自己的健康状况,而且可以避免错过疾病治疗的最佳时机。然而,在现有的健康检查系统中,人们只能从单一的健康检查中获得基本的报告,而没有提供高级的健康风险分析。本文提出了一种通过挖掘包含历史健康记录和个人生活方式信息的数据来预测慢性疾病风险的有效机制。数据的值变化趋势对疾病状态预测很重要,在我们的机制中,我们将显著值定义为健康风险模式。慢性病的风险可以通过我们的健康风险模式建立的机制来早期预测,并且通过对真实数据集的实验评估也证明了它的有效性。该方法在预测糖尿病风险的准确性、精密度和敏感性方面均优于传统机制。特别是,有见地的观察表明,考虑生活方式信息可以有效地提高风险预测的整体性能。此外,我们的机制结合C4.5和CBA产生的分类规则为医生提供了与疾病相关的健康风险模式,从而可以对人们进行适当的治疗以预防疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease Risk Prediction by Mining Personalized Health Trend Patterns: A Case Study on Diabetes
Health examination has played an important role for maintaining people's health since it can not only help people understand their own health conditions clearly but also avoid missing the best timing of disease treatment. However, in current health examination systems, people get only a basic report from single health examination and no advanced health risk analysis is provided. In this paper, we proposed an effective mechanism for chronic disease risk prediction by mining the data containing historical health records and personal life style information. Value change trends of the data are important for disease status prediction, and we defined significant ones as health risk patterns in our mechanism. Risks of a chronic disease can be predicted early with a mechanism built with our health risk patterns and it also proven work well through experimental evaluations on real datasets. Our method outperformed traditional mechanism in terms of accuracy, precision and sensitivity for predicting the risk of diabetes. In particular, insightful observations show that the consideration of life-style information can effectively enhance whole performance for risk prediction. Moreover, classification rules produced by our mechanism which integrates C4.5 and CBA provide physicians disease related health risk patterns such that appropriate treatments could be given to people for disease prevention.
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