Magrini Alessandro, Luciani Davide, Stefanini Federico M
Department of Economics and Management, University of Pisa, Pisa, Italy.
IRCCS - Mario Negri Institute for Pharmacological Research, Milan, Italy.
Biom J. 2018 Jan;60(1):174-195. doi: 10.1002/bimj.201600206. Epub 2017 Oct 13.
In this paper, the development of a probabilistic network for the diagnosis of acute cardiopulmonary diseases is presented in detail. A panel of expert physicians collaborated to specify the qualitative part, which is a directed acyclic graph defining a factorization of the joint probability distribution of domain variables into univariate conditional distributions. The quantitative part, which is a set of parametric models defining these univariate conditional distributions, was estimated following the Bayesian paradigm. In particular, we exploited an original reparameterization of Beta and categorical logistic regression models to elicit the joint prior distribution of parameters from medical experts, and updated it by conditioning on a dataset of hospital records via Markov chain Monte Carlo simulation. Refinement was iteratively performed until the probabilistic network provided satisfactory concordance index values for several acute diseases and reasonable diagnosis for six fictitious patient cases. The probabilistic network can be employed to perform medical diagnosis on a total of 63 diseases (38 acute and 25 chronic) on the basis of up to 167 patient findings.
本文详细介绍了用于急性心肺疾病诊断的概率网络的开发。一组专家医生合作确定了定性部分,它是一个有向无环图,将领域变量的联合概率分布分解为单变量条件分布。定量部分是一组定义这些单变量条件分布的参数模型,按照贝叶斯范式进行估计。具体而言,我们利用了贝塔分布和分类逻辑回归模型的一种原始重新参数化方法,从医学专家那里引出参数的联合先验分布,并通过马尔可夫链蒙特卡罗模拟以医院记录数据集为条件对其进行更新。反复进行优化,直到概率网络为几种急性疾病提供令人满意的一致性指数值,并为六个虚拟患者病例提供合理的诊断。该概率网络可用于根据多达167项患者检查结果对总共63种疾病(38种急性疾病和25种慢性疾病)进行医学诊断。