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Multimodal EEG, MRI and PET data fusion for Alzheimer's disease diagnosis

机译:多模式脑电图,MRI和PET数据融合可诊断阿尔茨海默氏病

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Alarmingly increasing prevalence of Alzheimer's disease (AD) due to the aging population in developing countries, combined with lack of standardized and conclusive diagnostic procedures, make early diagnosis of Alzheimer's disease a major public health concern. While no current medical treatment exists to stop or reverse this disease, recent dementia specific pharmacological advances can slow its progression, making early diagnosis all the more important. Several noninvasive biomarkers have been proposed, including P300 based EEG analysis, MRI volumetric analysis, PET based metabolic activity analysis, as alternatives to neuropsychological evaluation, the current gold standard of diagnosis. Each of these approaches, have shown some promising outcomes, however, a comprehensive data fusion analysis has not yet been conducted to investigate whether these different modalities carry complementary information, and if so, whether they can be combined to provide a more accurate analysis. In this effort, we provide a first look at such an analysis in combining EEG, MRI and PET data using an ensemble of classifiers based decision fusion approach, to determine whether a strategic combination of these different modalities can improve the diagnostic accuracy over any of the individual data sources when used with an automated classifier. Results show an improvement of up to 10%–20% using this approach compared to the classification performance obtained when using each individual data source.
机译:由于发展中国家人口的老龄化,令人震惊的阿尔茨海默氏病(AD)患病率上升,再加上缺乏标准化和结论性的诊断程序,使得对阿尔茨海默氏病的早期诊断成为主要的公共卫生问题。尽管目前尚无任何药物可以阻止或逆转这种疾病,但最近痴呆症特定的药理学进展可以减缓其进展,因此早期诊断就显得尤为重要。已经提出了几种非侵入性生物标志物,包括基于P300的脑电图分析,MRI容量分析,基于PET的代谢活性分析,作为神经心理学评估的替代方法,这是目前诊断的金标准。这些方法中的每一种都显示出一些有希望的结果,但是,尚未进行全面的数据融合分析来调查这些不同的方式是否携带互补信息,如果可以,是否可以将其组合以提供更准确的分析。在这项工作中,我们将首先使用基于分类器的综合决策融合方法结合脑电图,MRI和PET数据来分析这种分析方法,以确定这些不同模式的策略性组合是否可以提高诊断准确性,与自动分类器一起使用时,各个数据源。结果表明,与使用每个单独的数据源获得的分类性能相比,使用这种方法可以将性能提高10%– 20%。

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