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Early Diagnosis of Alzheimer's Disease by Joint Feature Selection and Classification on Temporally Structured Support Vector Machine

机译:通过关节特征选择和分类对阿尔茨海默病的早期诊断在时间结构化支持矢量机上

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The diagnosis of Alzheimer's disease (AD) from neuroimaging data at the pre-clinical stage has been intensively investigated because of the immense social and economic cost. In the past decade, computational approaches on longitudinal image sequences have been actively investigated with special attention to Mild Cognitive Impairment (MCI), which is an intermediate stage between normal control (NC) and AD. However, current state-of-the-art diagnosis methods have limited power in clinical practice, due to the excessive requirements such as equal and immoderate number of scans in longitudinal imaging data. More critically, very few methods are specifically designed for the early alarm of AD uptake. To address these limitations, we propose a flexible spatial-temporal solution for early detection of AD by recognizing abnormal structure changes from longitudinal MR image sequence. Specifically, our method is leveraged by the non-reversible nature of AD progression. We employ temporally structured SVM to accurately alarm AD at early stage by enforcing the monotony on classification result to avoid unrealistic and inconsistent diagnosis result along time. Furthermore, in order to select best features which can well collaborate with the classifier, we present as joint feature selection and classification framework. The evaluation on more than 150 longitudinal subjects from ADNI dataset shows that our method is able to alarm the conversion of AD 12 months prior to the clinical diagnosis with at least 82.5 % accuracy. It is worth noting that our proposed method works on widely used MR images and does not have restriction on the number of scans in the longitudinal sequence, which is very attractive to real clinical practice.
机译:由于巨大的社会和经济成本,在临床前阶段的神经影像症数据中的诊断来自临床前阶段的神经影像学数据。在过去的十年中,已经主动研究了纵向图像序列的计算方法,特别注意了对温和认知障碍(MCI),这是正常对照(NC)和AD之间的中间阶段。然而,由于在纵向成像数据中的扫描等等的要求,目前的最先进的诊断方法具有临床实践的有限的临床实践。更为严重的是,非常少的方法专为广告摄取的早期报警而设计。为了解决这些限制,我们提出了一种灵活的空间时间解决方案,用于通过识别纵向MR图像序列的异常结构变化来早期检测AD。具体而言,我们的方法是通过广告进展的不可逆转性的杠杆作用。我们通过执行分类结果的单调,在早期阶段进行时间结构化的SVM,以避免不切实际和不一致的诊断结果。此外,为了选择可以与分类器合作的最佳功能,我们作为联合特征选择和分类框架。来自Adni DataSet的超过150个纵向对象的评估表明,我们的方法能够在临床诊断前12个月的转换,至少82.5%的准确度。值得注意的是,我们所提出的方法在广泛使用的MR图像上工作,并且对纵向序列的扫描数量没有限制,这对真正的临床实践非常有吸引力。

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