Institute of Computing, Federal Fluminense University, Rua Passo da Pátria, 156, Niterói, RJ 24210-240, Brazil.
IBM Research Brazil, Av. Pasteur, 138, Rio de Janeiro, RJ 22296-903, Brazil.
Comput Biol Med. 2014 Aug;51:140-58. doi: 10.1016/j.compbiomed.2014.04.010. Epub 2014 May 28.
Population aging has been occurring as a global phenomenon with heterogeneous consequences in both developed and developing countries. Neurodegenerative diseases, such as Alzheimer׳s Disease (AD), have high prevalence in the elderly population. Early diagnosis of this type of disease allows early treatment and improves patient quality of life. This paper proposes a Bayesian network decision model for supporting diagnosis of dementia, AD and Mild Cognitive Impairment (MCI). Bayesian networks are well-suited for representing uncertainty and causality, which are both present in clinical domains. The proposed Bayesian network was modeled using a combination of expert knowledge and data-oriented modeling. The network structure was built based on current diagnostic criteria and input from physicians who are experts in this domain. The network parameters were estimated using a supervised learning algorithm from a dataset of real clinical cases. The dataset contains data from patients and normal controls from the Duke University Medical Center (Washington, USA) and the Center for Alzheimer׳s Disease and Related Disorders (at the Institute of Psychiatry of the Federal University of Rio de Janeiro, Brazil). The dataset attributes consist of predisposal factors, neuropsychological test results, patient demographic data, symptoms and signs. The decision model was evaluated using quantitative methods and a sensitivity analysis. In conclusion, the proposed Bayesian network showed better results for diagnosis of dementia, AD and MCI when compared to most of the other well-known classifiers. Moreover, it provides additional useful information to physicians, such as the contribution of certain factors to diagnosis.
人口老龄化是一个全球性现象,在发达国家和发展中国家都产生了不同的后果。神经退行性疾病,如阿尔茨海默病(AD),在老年人群中患病率很高。这种疾病的早期诊断可以实现早期治疗,提高患者的生活质量。本文提出了一种基于贝叶斯网络的决策模型,用于支持痴呆症、AD 和轻度认知障碍(MCI)的诊断。贝叶斯网络非常适合表示不确定性和因果关系,这两者在临床领域都存在。所提出的贝叶斯网络是通过结合专家知识和面向数据的建模来建模的。网络结构是基于当前的诊断标准和该领域专家医生的输入构建的。使用来自真实临床病例数据集的监督学习算法对网络参数进行了估计。该数据集包含来自美国华盛顿州杜克大学医学中心(Duke University Medical Center)和巴西里约热内卢联邦大学精神病学研究所(Institute of Psychiatry of the Federal University of Rio de Janeiro)的患者和正常对照的数据。数据集属性包括易感性因素、神经心理学测试结果、患者人口统计学数据、症状和体征。使用定量方法和敏感性分析对决策模型进行了评估。总之,与大多数其他知名分类器相比,所提出的贝叶斯网络在痴呆症、AD 和 MCI 的诊断方面表现出更好的结果。此外,它还为医生提供了一些有用的补充信息,例如某些因素对诊断的贡献。