A Counterpropagation Network based system for screening of Mild Cognitive Impairment

J. M. Martínez-García, P. G. Báez, M. A. P. D. Pino, C. Viadero, C. P. S. Araujo
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引用次数: 3

Abstract

Alzheimer's Disease (AD) and other dementias are one of the public health challenges mainly because of the relationship between population longevity and the increase of the pathology incidence. Furthermore, first symptoms appear several years after beginning of the disease and the progression of the cognitive decline rises over time. Therefore, it is necessary to accomplish diagnosis at the earliest possible stage, since the subject shows a slight impairment in some cognitive function. The detection of this state, named Mild Cognitive Impairment (MCI), is a complex task in medicine. The difficult distinction is between normal ageing and MCI rather than between MCI and AD. In this paper, we propose a CPN based system and a scheme of data fusion to aid MCI diagnosis. We present our preliminary results on MCI detection, using as dataset structure a simple combination of cognitive and functional measurements and the educational level of patients, gathered during clinical consultations. We have tackled an imbalanced classification problem developing a novel extended over-sampling method, SNEOM. Finally, we also performed a comparative study between our intelligent clinical decision system and a clinical expert, revealing the high level of performance of our proposal.
基于反传播网络的轻度认知障碍筛查系统
阿尔茨海默病(Alzheimer's Disease, AD)和其他痴呆症是公共卫生面临的挑战之一,主要是因为人群寿命与病理发病率的增加有关。此外,最初的症状出现在疾病开始的几年之后,随着时间的推移,认知能力下降的进展会加剧。因此,有必要在尽可能早的阶段完成诊断,因为受试者在某些认知功能上表现出轻微的损害。这种状态的检测被称为轻度认知障碍(Mild Cognitive Impairment, MCI),在医学上是一项复杂的任务。很难区分的是正常衰老和轻度认知损伤,而不是轻度认知损伤和AD。本文提出了一种基于CPN的MCI诊断系统和数据融合方案。我们介绍了MCI检测的初步结果,使用在临床咨询期间收集的认知和功能测量以及患者教育水平的简单组合作为数据集结构。我们已经解决了一个不平衡分类问题,开发了一种新的扩展过采样方法,SNEOM。最后,我们还将我们的智能临床决策系统与临床专家进行了比较研究,揭示了我们的方案的高水平性能。
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