Department of Signal Theory, Networking and Communication, ETSIIT, 18071, University of Granada, Spain.
Phys Med Biol. 2011 Sep 21;56(18):6047-63. doi: 10.1088/0031-9155/56/18/017. Epub 2011 Aug 26.
In this paper, a novel technique based on association rules (ARs) is presented in order to find relations among activated brain areas in single photon emission computed tomography (SPECT) imaging. In this sense, the aim of this work is to discover associations among attributes which characterize the perfusion patterns of normal subjects and to make use of them for the early diagnosis of Alzheimer's disease (AD). Firstly, voxel-as-feature-based activation estimation methods are used to find the tridimensional activated brain regions of interest (ROIs) for each patient. These ROIs serve as input to secondly mine ARs with a minimum support and confidence among activation blocks by using a set of controls. In this context, support and confidence measures are related to the proportion of functional areas which are singularly and mutually activated across the brain. Finally, we perform image classification by comparing the number of ARs verified by each subject under test to a given threshold that depends on the number of previously mined rules. Several classification experiments were carried out in order to evaluate the proposed methods using a SPECT database that consists of 41 controls (NOR) and 56 AD patients labeled by trained physicians. The proposed methods were validated by means of the leave-one-out cross validation strategy, yielding up to 94.87% classification accuracy, thus outperforming recent developed methods for computer aided diagnosis of AD.
本文提出了一种基于关联规则 (ARs) 的新方法,旨在发现单光子发射计算机断层扫描 (SPECT) 成像中激活脑区之间的关系。从这个意义上说,这项工作的目的是发现正常受试者灌注模式特征之间的关联,并利用这些关联来早期诊断阿尔茨海默病 (AD)。首先,使用基于体素的激活估计方法来找到每个患者的三维激活脑区 ROI。这些 ROI 作为输入,用于通过使用一组对照来挖掘激活块之间具有最小支持度和置信度的 ARs。在此上下文中,支持度和置信度度量与在整个大脑中单独和相互激活的功能区域的比例有关。最后,我们通过将每个受试对象验证的 AR 数量与依赖于先前挖掘的规则数量的给定阈值进行比较来执行图像分类。为了使用由经过训练的医生标记的 41 个对照 (NOR) 和 56 个 AD 患者的 SPECT 数据库评估所提出的方法,进行了多次分类实验。通过使用留一交叉验证策略对所提出的方法进行验证,得到了高达 94.87%的分类准确性,从而优于最近开发的 AD 计算机辅助诊断方法。