首页> 美国卫生研究院文献>Frontiers in Aging Neuroscience >A Comparison of Magnetic Resonance Imaging and Neuropsychological Examination in the Diagnostic Distinction of Alzheimers Disease and Behavioral Variant Frontotemporal Dementia
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A Comparison of Magnetic Resonance Imaging and Neuropsychological Examination in the Diagnostic Distinction of Alzheimers Disease and Behavioral Variant Frontotemporal Dementia

机译:磁共振成像和神经心理学检查在阿尔茨海默氏病和行为变异额颞颞痴呆诊断中的区别

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摘要

The clinical distinction between Alzheimer's disease (AD) and behavioral variant frontotemporal dementia (bvFTD) remains challenging and largely dependent on the experience of the clinician. This study investigates whether objective machine learning algorithms using supportive neuroimaging and neuropsychological clinical features can aid the distinction between both diseases. Retrospective neuroimaging and neuropsychological data of 166 participants (54 AD; 55 bvFTD; 57 healthy controls) was analyzed via a Naïve Bayes classification model. A subgroup of patients (n = 22) had pathologically-confirmed diagnoses. Results show that a combination of gray matter atrophy and neuropsychological features allowed a correct classification of 61.47% of cases at clinical presentation. More importantly, there was a clear dissociation between imaging and neuropsychological features, with the latter having the greater diagnostic accuracy (respectively 51.38 vs. 62.39%). These findings indicate that, at presentation, machine learning classification of bvFTD and AD is mostly based on cognitive and not imaging features. This clearly highlights the urgent need to develop better biomarkers for both diseases, but also emphasizes the value of machine learning in determining the predictive diagnostic features in neurodegeneration.
机译:阿尔茨海默氏病(AD)和行为变异额颞痴呆(bvFTD)之间的临床区别仍然具有挑战性,并且在很大程度上取决于临床医生的经验。这项研究调查了使用支持性神经成像和神经心理学临床特征的客观机器学习算法是否可以帮助区分这两种疾病。通过朴素贝叶斯分类模型分析了166名参与者(公元54年; 55名bvFTD; 57名健康对照)的回顾性神经影像学和神经心理学数据。一小组患者(n = 22)经过病理证实的诊断。结果显示,灰质萎缩和神经心理学特征相结合,可以在临床表现中正确分类61.47%的病例。更重要的是,影像学和神经心理特征之间存在明显的分离,后者具有更高的诊断准确性(分别为51.38%对62.39%)。这些发现表明,在介绍时,bvFTD和AD的机器学习分类主要基于认知而非成像功能。这清楚地凸显了为这两种疾病开发更好的生物标志物的迫切需要,同时也强调了机器学习在确定神经退行性疾病的预测诊断特征方面的价值。

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