Group of Behavioral Neurology, Neuropsychopharmacology Program, Institut Municipal d'Investigació Mèdica, Barcelona, Spain.
J Clin Exp Neuropsychol. 2012;34(2):195-208. doi: 10.1080/13803395.2011.630651. Epub 2011 Dec 14.
Mild cognitive impairment (MCI) is a transitional state between normal aging and Alzheimer disease (AD). Artificial neural networks (ANNs) are computational tools that can provide valuable support to clinical decision making, classification, and prediction of cognitive functioning. The aims of this study were to develop, train, and explore and develop the ability of ANNs to differentiate MCI and AD, and to study the relevant variables in MCI and AD diagnosis. The sample consisted of 346 controls and 79 MCI and 97 AD patients. A linear discriminant analysis (LDA) and ANNs with 12 input neurons (10 subtests of a neuropsychological test, the abbreviated Barcelona Test; age; and education), 4 hidden neurons, and output neuron (diagnosis) were used to classify the patients. The ANNs were superior to LDA in its ability to classify correctly patients (100-98.33% vs. 96.4-80%, respectively) and showed better predictive performance. Semantic fluency, working and episodic memory and education showed up as the most significant and sensitive variables for classification. Our results indicate that ANNs have an excellent capacity to discriminate MCI and AD patients from healthy controls. These findings provide evidence that ANNs can be a useful tool for the analysis of neuropsychological profiles related to clinical syndromes.
轻度认知障碍(MCI)是正常衰老和阿尔茨海默病(AD)之间的过渡状态。人工神经网络(ANNs)是一种计算工具,可以为临床决策、分类和认知功能预测提供有价值的支持。本研究的目的是开发、训练和探索人工神经网络区分 MCI 和 AD 的能力,并研究 MCI 和 AD 诊断中的相关变量。该样本包括 346 名对照者、79 名 MCI 患者和 97 名 AD 患者。采用线性判别分析(LDA)和具有 12 个输入神经元(神经心理学测试的 10 个子测试、缩写的巴塞罗那测试;年龄和教育)、4 个隐藏神经元和输出神经元(诊断)的人工神经网络对患者进行分类。人工神经网络在正确分类患者的能力(分别为 100-98.33%和 96.4-80%)方面优于 LDA,并且表现出更好的预测性能。语义流畅性、工作记忆和情景记忆以及教育显示出对分类最显著和敏感的变量。我们的结果表明,人工神经网络具有出色的能力,可以区分 MCI 和 AD 患者与健康对照者。这些发现为人工神经网络可以成为分析与临床综合征相关的神经心理学特征的有用工具提供了证据。