Literature DB >> 2005829

Bayesian diagnostic probabilities without assuming independence of symptoms.

A Gammerman1, A R Thatcher.   

Abstract

The paper describes an application of Bayes' Theorem to the problem of estimating from past data the probabilities that patients have certain diseases, given their symptoms. The data consist of hospital records of patients who suffered acute abdominal pain. For each patient the records showed a large number of symptoms and the final diagnosis to one of nine diseases or diagnostic groups. Most current methods of computer diagnosis use the "Simple Bayes" model in which the symptoms are assumed to be independent, but the present paper does not make this assumption. Those symptoms (or lack of symptoms) which are most relevant to the diagnosis of each disease are identified by a sequence of chi-squared tests. The computer diagnoses obtained as a result of the implementation of this approach are compared with those given by the "Simple Bayes" method, by the method of classification trees (CART), and also with the preliminary and final diagnoses made by physicians.

Entities:  

Mesh:

Year:  1991        PMID: 2005829

Source DB:  PubMed          Journal:  Methods Inf Med        ISSN: 0026-1270            Impact factor:   2.176


  10 in total

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9.  An evaluation of factors influencing Bayesian learning systems.

Authors:  E L Eisenstein; F Alemi
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10.  The Multimorbidity Index: A Tool for Assessing the Prognosis of Patients from Their History of Illness.

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  10 in total

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