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Magnetic resonance imaging biomarkers for the early diagnosis of Alzheimers disease: a machine learning approach

机译:磁共振成像生物标记物用于阿尔茨海默氏病的早期诊断:一种机器学习方法

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摘要

Determination of sensitive and specific markers of very early AD progression is intended to aid researchers and clinicians to develop new treatments and monitor their effectiveness, as well as to lessen the time and cost of clinical trials. Magnetic Resonance (MR)-related biomarkers have been recently identified by the use of machine learning methods for the in vivo differential diagnosis of AD. However, the vast majority of neuroimaging papers investigating this topic are focused on the difference between AD and patients with mild cognitive impairment (MCI), not considering the impact of MCI patients who will (MCIc) or not convert (MCInc) to AD. Morphological T1-weighted MRIs of 137 AD, 76 MCIc, 134 MCInc, and 162 healthy controls (CN) selected from the Alzheimer's disease neuroimaging initiative (ADNI) cohort, were used by an optimized machine learning algorithm. Voxels influencing the classification between these AD-related pre-clinical phases involved hippocampus, entorhinal cortex, basal ganglia, gyrus rectus, precuneus, and cerebellum, all critical regions known to be strongly involved in the pathophysiological mechanisms of AD. Classification accuracy was 76% AD vs. CN, 72% MCIc vs. CN, 66% MCIc vs. MCInc (nested 20-fold cross validation). Our data encourage the application of computer-based diagnosis in clinical practice of AD opening new prospective in the early management of AD patients.
机译:确定非常早的AD进展的敏感和特异性标志物旨在帮助研究人员和临床医生开发新的治疗方法并监测其有效性,并减少临床试验的时间和成本。最近已通过使用机器学习方法对磁共振(MR)相关的生物标记物进行AD的体内差异诊断。但是,研究该主题的绝大多数神经影像学论文都侧重于AD与轻度认知障碍(MCI)患者之间的差异,而不考虑将(MCIc)或不转换(MCInc)到AD的MCI患者的影响。通过优化的机器学习算法,使用了从AD队列中选择的137 AD,76 MCIc,134 MCInc和162个健康对照(CN)的形态T1加权MRI。影响这些与AD相关的临床前阶段之间分类的体素包括海马,内嗅皮层,基底神经节,回直肌,前突神经和小脑,所有这些关键区域都与AD的病理生理机制密切相关。分类准确度分别为:AD对CN为76%,MCIc对CN为72%,MCIc对MCInc为66%(嵌套20倍交叉验证)。我们的数据鼓励基于计算机的诊断在AD临床实践中的应用,为AD患者的早期治疗开辟了新的前景。

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