Haug P, Clayton P D, Shelton P, Rich T, Tocino I, Frederick P R, Crapo R O, Morrison W J, Warner H R
Department of Medical Informatics, LDS Hospital 84143.
Med Decis Making. 1989 Apr-Jun;9(2):84-90. doi: 10.1177/0272989X8900900203.
Statistical pattern-recognition techniques have been frequently applied to the problem of medical diagnosis. Sequential Bayesian approaches are appealing because of the possibility of generating the underlying sensitivities, specificities, and prevalence statistics from the estimates of medical experts. The accuracy of these estimates and the consequences of inaccuracies carry implications for the future development of this type of system. In an effort to explore these subjects, the authors used statistics derived from a clinical database to revise the diagnostic logic in a Bayesian system for generating a differential diagnostic list. Substantial changes in estimated a priori probabilities, sensitivities, and specificities were made to correct for significant under- and overestimations of these values by a group of medical experts. The system based on the derived values appears to perform better than the original system. It is concluded that the statistics used in a Bayesian diagnostic system should be derived from a database representative of the patient population for which the system is designed.
统计模式识别技术已频繁应用于医学诊断问题。序贯贝叶斯方法很有吸引力,因为有可能根据医学专家的估计得出潜在的敏感性、特异性和患病率统计数据。这些估计的准确性以及不准确的后果对这类系统的未来发展具有重要意义。为了探讨这些问题,作者使用从临床数据库得出的统计数据来修订贝叶斯系统中的诊断逻辑,以生成鉴别诊断列表。对先验概率、敏感性和特异性的估计进行了重大更改,以纠正一组医学专家对这些值的严重低估和高估。基于导出值的系统似乎比原始系统表现更好。得出的结论是,贝叶斯诊断系统中使用的统计数据应来自代表该系统所设计患者群体的数据库。