Personalization of Infectious Disease Risk Prediction: Towards Automatic Generation of a Bayesian Network

R. Vinarti, L. Hederman
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引用次数: 6

Abstract

Infectious diseases are a major cause of human morbidity, but most are avoidable. An accurate and personalized risk prediction is expected to alert people to the risk of getting exposed to infectious diseases. However, as data and knowledge in the epidemiology and infectious diseases field becomes available, an updateable risk prediction model is needed. The objectives of this article are (1) to describe the mechanisms for generating a Bayesian Network (BN), as risk prediction model, from a knowledge-base, and (2) to examine the accuracy of the prediction result. The research in this paper started by encoding declarative knowledge from the Atlas of Human Infectious Diseases into an Infectious Disease Risk Ontology. Automatic generation of a BN from this knowledge uses two tools (1) a Rule Converter generates a BN structure from the ontology (2) a Joint & Marginal Probability Supplier tool populates the BN with probabilities. These tools allow the BN to be recreated automatically whenever knowledge and data changes. In a runtime phase, a third tool, the Context Collector, captures facts given by the client and consequent environmental context. This paper introduces these tools and evaluates the effectiveness of the resulting BN for a single infectious disease, Anthrax. We have compared conditional probabilities predicted by our BN against incidence estimated from real patient visit records. Experiments explored the role of different context data in prediction accuracy. The results suggest that building a BN from an ontology is feasible. The experiments also show that more context results in better risk prediction.
传染病风险预测的个性化:迈向贝叶斯网络的自动生成
传染病是人类发病的一个主要原因,但大多数是可以避免的。准确和个性化的风险预测有望提醒人们接触传染病的风险。然而,随着流行病学和传染病领域的数据和知识越来越多,需要一种可更新的风险预测模型。本文的目标是(1)描述从知识库生成贝叶斯网络(BN)作为风险预测模型的机制,以及(2)检查预测结果的准确性。本文的研究首先将人类传染病图集中的陈述性知识编码为传染病风险本体。从这些知识中自动生成BN使用两个工具(1)规则转换器从本体生成BN结构(2)联合和边际概率供应商工具用概率填充BN。这些工具允许在知识和数据发生变化时自动重新创建BN。在运行时阶段,第三个工具Context Collector捕获客户端和随后的环境上下文给出的事实。本文介绍了这些工具,并评估了产生的BN对单一传染病炭疽的有效性。我们比较了我们的BN预测的条件概率与实际患者就诊记录估计的发病率。实验探讨了不同语境数据对预测精度的影响。结果表明,从本体构建BN是可行的。实验还表明,更多的背景可以更好地预测风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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