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Differential diagnosis of mild cognitive impairment and Alzheimer's disease using structural MRI cortical thickness, hippocampal shape, hippocampal texture, and volumetry

机译:使用结构MRI皮质厚度,海马形状,海马纹理和容量法对轻度认知障碍和阿尔茨海默氏病进行鉴别诊断

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This paper presents a brain T1-weighted structural magnetic resonance imaging (MRI) biomarker that combines several individual MRI biomarkers (cortical thickness measurements, volumetric measurements, hippocampal shape, and hippocampal texture). The method was developed, trained, and evaluated using two publicly available reference datasets: a standardized dataset from the Alzheimer's Disease Neuroimaging Initiative (ADNI) and the imaging arm of the Australian Imaging Biomarkers and Lifestyle flagship study of ageing (AIBL). In addition, the method was evaluated by participation in the Computer-Aided Diagnosis of Dementia (CADDementia) challenge. Cross-validation using ADNI and AIBL data resulted in a multi-class classification accuracy of 62.7% for the discrimination of healthy normal controls (NC), subjects with mild cognitive impairment (MCI), and patients with Alzheimer's disease (AD). This performance generalized to the CADDementia challenge where the method, trained using the ADNI and AIBL data, achieved a classification accuracy 63.0%. The obtained classification accuracy resulted in a first place in the challenge, and the method was significantly better (McNemar's test) than the bottom 24 methods out of the total of 29 methods contributed by 15 different teams in the challenge. The method was further investigated with learning curve and feature selection experiments using ADNI and AIBL data. The learning curve experiments suggested that neither more training data nor a more complex classifier would have improved the obtained results. The feature selection experiment showed that both common and uncommon individual MRI biomarkers contributed to the performance; hippocampal volume, ventricular volume, hippocampal texture, and parietal lobe thickness were the most important. This study highlights the need for both subtle, localized measurements and global measurements in order to discriminate NC, MCI, and AD simultaneously based on a single structural MRI scan. It is likely that additional non-structural MRI features are needed to further improve the obtained performance, especially to improve the discrimination between NC and MCI. Highlights ? The algorithm that won the CADDementia challenge is described and analyzed. ? Evaluation on data from ADNI, AIBL and the CADDementia challenge. ? Hippocampal texture is shown to be an important feature in the algorithm. ? Structural MRI intensity variations may include so far unused information. ? It is conjectured that additional features are needed in order to improve diagnostic performance.
机译:本文介绍了一种脑T1加权结构磁共振成像(MRI)生物标记,该生物标记结合了几个单独的MRI生物标记(皮层厚度测量,体积测量,海马形状和海马纹理)。该方法是使用两个可公开获得的参考数据集开发,训练和评估的:来自阿尔茨海默氏病神经影像学倡议(ADNI)的标准化数据集以及澳大利亚影像生物标记和生活方式衰老旗舰研究(AIBL)的影像学部门。此外,该方法通过参与痴呆的计算机辅助诊断(CADDementia)挑战进行了评估。使用ADNI和AIBL数据进行交叉验证,对于健康正常对照(NC),轻度认知障碍(MCI)和阿尔茨海默氏病(AD)患者的区分,分类精度达到62.7%。这种性能普遍适用于CADDementia挑战,其中使用ADNI和AIBL数据训练的方法实现了63.0%的分类精度。获得的分类准确性导致挑战赛中获得第一名,该方法(McNemar检验)明显好于挑战的15个不同团队贡献的29种方法中的最后24种方法。使用ADNI和AIBL数据,通过学习曲线和特征选择实验进一步研究了该方法。学习曲线实验表明,更多的训练数据和更复杂的分类器都不会改善获得的结果。特征选择实验表明,常见的和不常见的单个MRI生物标记物均对性能有贡献;最重要的是海马体积,心室体积,海马纹理和顶叶厚度。这项研究强调了需要细微的局部测量和整体测量,以便基于单个结构MRI扫描同时区分NC,MCI和AD。可能还需要其他非结构性MRI功能,以进一步改善获得的性能,尤其是改善NC和MCI之间的区别。强调 ?描述和分析了赢得CADDementia挑战的算法。 ?对来自ADNI,AIBL和CADDementia挑战的数据进行评估。 ?海马纹理被证明是该算法的重要特征。 ?到目前为止,结构性MRI强度变化可能包括未使用的信息。 ?据推测,需要其他功能以提高诊断性能。

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