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Combining DTI and MRI for the Automated Detection of Alzheimer's Disease Using a Large European Multicenter Dataset

机译:使用大型欧洲多中心数据集结合DTI和MRI进行Alzheimer疾病的自动检测

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Diffusion tensor imaging (DTI) allows assessing neuronal fiber tract integrity in vivo to support the diagnosis of Alzheimer's disease (AD). It is an open research question to which extent combinations of different neuroimaging techniques increase the detection of AD. In this study we examined different methods to combine DTI data and structural T_1-weighted magnetic resonance imaging (MRI) data. Further, we applied machine learning techniques for automated detection of AD. We used a sample of 137 patients with clinically probable AD (MMSE 20.6 ± 5.3) and 143 healthy elderly controls, scanned in nine different scanners, obtained from the recently created framework of the European DTI study on Dementia (EDSD). For diagnostic classification we used the DTI derived indices fractional anisotropy (FA) and mean diffusivity (MD) as well as grey matter density (GMD) and white matter density (WMD) maps from anatomical MRI. We performed voxel-based classification using a Support Vector Machine (SVM) classifier with tenfold cross validation. We compared the results from each single modality with those from different approaches to combine the modalities. For our sample, combining modalities did not increase the detection rates of AD. An accuracy of approximately 89% was reached for GMD data alone and for multimodal classification when GMD was included. This high accuracy remained stable across each of the approaches. As our sample consisted of mildly to moderately affected patients, cortical atrophy may be far progressed so that the decline in structural network connectivity derived from DTI may not add additional information relevant for the SVM classification. This may be different for predementia stages of AD. Further research will focus on multimodal detection of AD in predementia stages of AD, e.g. in amnestic mild cognitive impairment (aMCI), and on evaluating the classification performance when adding other modalities, e.g. functional MRI or FDG-PET.
机译:扩散张量成像(DTI)允许评估在体内的神经元纤维束完整性,以支持阿尔茨海默氏病(AD)的诊断。这是一个开放的研究问题,其不同神经成像技术程度的组合增加AD的检测。在这项研究中,我们检查不同的方法来组合数据DTI和结构T_1加权磁共振成像(MRI)数据。此外,我们应用机器学习技术为AD的自动化检测。我们使用的137例将样品与临床上可能的AD(MMSE 20.6±5.3)和143个健康老年人对照,在九个不同的扫描仪扫描时,从上痴呆(EDSD)欧洲DTI研究的最近创建的框架获得。对于诊断分类,我们使用了DTI衍生指数各向异性分数(FA)和平均扩散率(MD)以及灰质密度(GMD)和白质密度(WMD)从解剖MRI映射。我们使用支持向量机(SVM)分类与十倍交叉验证基于体素的分类。我们比较了来自不同的每个单一的模式,结果越接近上述方式结合起来。对于我们的示例,结合方式没有增加AD的检出率。的约89%的准确度达到单独和多模态分类GMD数据当包括GMD。这种高精度跨越了每个方法的保持稳定。作为我们的样本包括轻度至中度影响的病人,皮质萎缩可能会进展程度,以便从DTI导出结构网络连接的下降可能不会增加相关的SVM分类的附加信息。这可能是AD的predementia阶段的不同。进一步的研究将集中在AD的多峰检测在AD predementia阶段,例如在遗忘轻度认知障碍(aMCI患者),并在加入其它方式评估时的分类性能,例如功能MRI或FDG-PET。

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