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Application of fused lasso logistic regression to the study of corpus callosum thickness in early Alzheimers disease

机译:融合套索逻辑回归在阿尔茨海默氏病早期call体厚度研究中的应用

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摘要

We propose a fused lasso logistic regression to analyze callosal thickness profiles. The fused lasso regression imposes penalties on both the l1-norm of the model coefficients and their successive differences, and finds only a small number of non-zero coefficients which are locally constant. An iterative method of solving logistic regression with fused lasso regularization is proposed to make this a practical procedure. In this study we analyzed callosal thickness profiles sampled at 100 equal intervals between the rostrum and the splenium. The method was applied to corpora callosa of elderly normal controls (NCs) and patients with very mild or mild Alzheimer’s disease (AD) from the Open Access Series of Imaging Studies (OASIS) database. We found specific locations in the genu and splenium of AD patients that are proportionally thinner than those of NCs. Callosal thickness in these regions combined with the Mini Mental State Examination scores differentiated AD from NC with 84% accuracy.
机译:我们提出了融合的套索逻辑回归分析analyze的厚度轮廓。融合的套索回归对模型系数的l1-范数和它们的连续差都施加了惩罚,并且仅找到了少数局部不变的非零系数。提出了一种通过融合套索正则化来解决逻辑回归的迭代方法,以使其成为一种实用的过程。在这项研究中,我们分析了在讲台和脾之间以100个相等间隔采样的call厚度。该方法已应用于开放正常影像研究(OASIS)数据库中的老年正常对照(NCs)和患有轻度或轻度阿尔茨海默氏病(AD)的患者的patients体。我们发现AD患者的脾和脾中的特定位置比NC的患者成比例地变薄。这些区域的os厚度与迷你精神状态检查得分相结合,以84%的准确度区分了AD和NC。

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