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Predicting primary progressive aphasias with support vector machine approaches in structural MRI data

机译:使用支持向量机方法预测结构性MRI数据中的原发性进行性失语

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摘要

Primary progressive aphasia (PPA) encompasses the three subtypes nonfluent/agrammatic variant PPA, semantic variant PPA, and the logopenic variant PPA, which are characterized by distinct patterns of language difficulties and regional brain atrophy. To validate the potential of structural magnetic resonance imaging data for early individual diagnosis, we used support vector machine classification on grey matter density maps obtained by voxel-based morphometry analysis to discriminate PPA subtypes (44 patients: 16 nonfluent/agrammatic variant PPA, 17 semantic variant PPA, 11 logopenic variant PPA) from 20 healthy controls (matched for sample size, age, and gender) in the cohort of the multi-center study of the German consortium for frontotemporal lobar degeneration. Here, we compared a whole-brain with a meta-analysis-based disease-specific regions-of-interest approach for support vector machine classification. We also used support vector machine classification to discriminate the three PPA subtypes from each other. Whole brain support vector machine classification enabled a very high accuracy between 91 and 97% for identifying specific PPA subtypes vs. healthy controls, and 78/95% for the discrimination between semantic variant vs. nonfluent/agrammatic or logopenic PPA variants. Only for the discrimination between nonfluent/agrammatic and logopenic PPA variants accuracy was low with 55%. Interestingly, the regions that contributed the most to the support vector machine classification of patients corresponded largely to the regions that were atrophic in these patients as revealed by group comparisons. Although the whole brain approach took also into account regions that were not covered in the regions-of-interest approach, both approaches showed similar accuracies due to the disease-specificity of the selected networks. Conclusion, support vector machine classification of multi-center structural magnetic resonance imaging data enables prediction of PPA subtypes with a very high accuracy paving the road for its application in clinical settings.
机译:原发性进行性失语症(PPA)包含三种亚型:非流利/语法变异性PPA,语义变异性PPA和直觉性变异性PPA,它们的特征是语言困难和区域性脑萎缩的不同模式。为了验证结构磁共振成像数据对早期个体诊断的潜力,我们在基于体素形态分析获得的灰质密度图上使用支持向量机分类,以区分PPA亚型(44例患者:16名非流利/语法变异性PPA,17例语义PPA变体,来自20个健康对照(与样本量,年龄和性别相匹配)的11个腹泻性PPA),用于德国额颞叶变性的多中心研究。在这里,我们将全脑与基于荟萃分析的特定疾病感兴趣区域方法进行了比较,以进行支持向量机分类。我们还使用支持向量机分类来区分这三种PPA子类型。全脑支持向量机分类使识别特定PPA亚型与健康对照的准确率达到91%至97%,对于语义变异与非流利/语法或低俗的PPA变异之间的区分,精确度高达78/95%。仅用于区分非流利的/语法的和低俗的PPA变体,准确性低,只有55%。有趣的是,对患者的支持向量机分类贡献最大的区域在很大程度上对应于这些患者中萎缩的区域,如通过组比较所揭示的。尽管全脑方法也考虑了感兴趣区域方法未涵盖的区域,但是由于所选网络的疾病特异性,两种方法都显示出相似的准确性。结论,多中心结构磁共振成像数据的支持向量机分类可以非常准确地预测PPA亚型,为在临床环境中的应用铺平了道路。

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