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Automated classification of Alzheimers disease and mild cognitive impairment using a single MRI and deep neural networks

机译:使用单个MRI和深层神经网络对阿尔茨海默氏病和轻度认知障碍进行自动分类

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摘要

We built and validated a deep learning algorithm predicting the individual diagnosis of Alzheimer's disease (AD) and mild cognitive impairment who will convert to AD (c-MCI) based on a single cross-sectional brain structural MRI scan. Convolutional neural networks (CNNs) were applied on 3D T1-weighted images from ADNI and subjects recruited at our Institute (407 healthy controls [HC], 418 AD, 280 c-MCI, 533 stable MCI [s-MCI]). CNN performance was tested in distinguishing AD, c-MCI and s-MCI. High levels of accuracy were achieved in all the classifications, with the highest rates achieved in the AD vs HC classification tests using both the ADNI dataset only (99%) and the combined ADNI + non-ADNI dataset (98%). CNNs discriminated c-MCI from s-MCI patients with an accuracy up to 75% and no difference between ADNI and non-ADNI images. CNNs provide a powerful tool for the automatic individual patient diagnosis along the AD continuum. Our method performed well without any prior feature engineering and regardless the variability of imaging protocols and scanners, demonstrating that it is exploitable by not-trained operators and likely to be generalizable to unseen patient data. CNNs may accelerate the adoption of structural MRI in routine practice to help assessment and management of patients.
机译:我们建立并验证了一种深度学习算法,该算法可预测单个阿尔茨海默氏病(AD)和轻度认知障碍的个体诊断,这些人将基于单个横截面脑结构MRI扫描转换为AD(c-MCI)。卷积神经网络(CNN)应用于从ADNI和我们研究所招募的受试者的3D T1加权图像上(407名健康对照[HC],418 AD,280 c-MCI,533个稳定MCI [s-MCI])。在区分AD,c-MCI和s-MCI方面测试了CNN性能。在所有分类中都达到了很高的准确性,仅使用ADNI数据集(99%)和组合的ADNI +非ADNI数据集(98%)在AD与HC分类测试中达到了最高的准确率。 CNN区分s-MCI患者的c-MCI的准确性高达75%,ADNI和非ADNI图像之间没有差异。 CNN为沿AD连续区自动进行个人患者诊断提供了强大的工具。我们的方法在没有任何先验特征工程的情况下表现良好,并且不考虑成像协议和扫描仪的可变性,表明该方法可供未经培训的操作人员使用,并且很可能推广到看不见的患者数据。 CNN可能会在常规实践中加速采用结构MRI,以帮助评估和管理患者。

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