应用概率逻辑和最大熵原理对临床脑肿瘤数据进行分析

Julian Varghese, C. Beierle, Nico Potyka, G. Kern-Isberner
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引用次数: 3

摘要

在设计医疗决策支持系统时,处理任何医疗领域固有的不确定性是主要挑战之一。本文以临床脑肿瘤数据分析为例,阐述了概率逻辑如何应用于医学知识库的设计。我们使用MECoRe,一个实现概率条件逻辑的系统,来创建一个知识库BT,其中包含来自统计数据和医学专家的医学知识。任何不完整或未确定的知识都由MECoRe采用最大熵原理以信息论最优的方式完成。使用真实记录的患者病例,对有关诊断和预后的一系列查询进行BT评估。
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Using probabilistic logic and the principle of maximum entropy for the analysis of clinical brain tumor data
Dealing with uncertainty that is inherently present in any medical domain, is one of the major challenges when designing a medical decision support system. We demonstrate how probabilistic logic can be used to design medical knowledge bases at the example of analysing clinical brain tumor data. We use MECoRe, a system implementing probabilistic conditional logic, to create a knowledge base BT that contains medical knowledge originating from both statistical data as well as from medical experts. Any incomplete or unspecified knowledge is completed by MECoRe in an information-theoretically optimal way by employing the principle of maximum entropy. BT is evaluated with respect to a series of queries regarding diagnosis and prognosis, using a real documented patient case.
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