Information theoretic quantification of diagnostic uncertainty.

The open medical informatics journal Pub Date : 2012-01-01 Epub Date: 2012-12-14 DOI:10.2174/1874431101206010036
M Brandon Westover, Nathaniel A Eiseman, Sydney S Cash, Matt T Bianchi
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引用次数: 8

Abstract

Diagnostic test interpretation remains a challenge in clinical practice. Most physicians receive training in the use of Bayes' rule, which specifies how the sensitivity and specificity of a test for a given disease combine with the pre-test probability to quantify the change in disease probability incurred by a new test result. However, multiple studies demonstrate physicians' deficiencies in probabilistic reasoning, especially with unexpected test results. Information theory, a branch of probability theory dealing explicitly with the quantification of uncertainty, has been proposed as an alternative framework for diagnostic test interpretation, but is even less familiar to physicians. We have previously addressed one key challenge in the practical application of Bayes theorem: the handling of uncertainty in the critical first step of estimating the pre-test probability of disease. This essay aims to present the essential concepts of information theory to physicians in an accessible manner, and to extend previous work regarding uncertainty in pre-test probability estimation by placing this type of uncertainty within a principled information theoretic framework. We address several obstacles hindering physicians' application of information theoretic concepts to diagnostic test interpretation. These include issues of terminology (mathematical meanings of certain information theoretic terms differ from clinical or common parlance) as well as the underlying mathematical assumptions. Finally, we illustrate how, in information theoretic terms, one can understand the effect on diagnostic uncertainty of considering ranges instead of simple point estimates of pre-test probability.

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诊断不确定性的信息论量化。
诊断测试的解释在临床实践中仍然是一个挑战。大多数医生都接受过使用贝叶斯规则的培训,该规则规定了对给定疾病进行检测的敏感性和特异性如何与检测前概率相结合,以量化新检测结果引起的疾病概率变化。然而,多项研究表明,医生在概率推理方面存在不足,特别是在意外的测试结果方面。信息论是概率论的一个分支,明确处理不确定性的量化,已被提议作为诊断测试解释的替代框架,但医生甚至不太熟悉。我们之前已经解决了贝叶斯定理实际应用中的一个关键挑战:在估计疾病的预测试概率的关键第一步中处理不确定性。本文旨在以一种易于理解的方式向医生介绍信息理论的基本概念,并通过将这种不确定性置于原则信息理论框架内,扩展先前关于测试前概率估计中的不确定性的工作。我们解决了几个阻碍医生应用信息理论概念来解释诊断测试的障碍。这些问题包括术语问题(某些信息理论术语的数学含义与临床或普通说法不同)以及潜在的数学假设。最后,我们说明了如何用信息理论的术语来理解考虑范围而不是简单的预测概率点估计对诊断不确定性的影响。
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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