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首页> 外文期刊>PeerJ Computer Science >Deep learning prediction of mild cognitive impairment conversion to Alzheimer’s disease at 3 years after diagnosis using longitudinal and whole-brain 3D MRI
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Deep learning prediction of mild cognitive impairment conversion to Alzheimer’s disease at 3 years after diagnosis using longitudinal and whole-brain 3D MRI

机译:使用纵向和全脑3D MRI在诊断3年后3年对阿尔茨海默病的深入学习预测

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Background While there is no cure for Alzheimer’s disease (AD), early diagnosis and accurate prognosis of AD may enable or encourage lifestyle changes, neurocognitive enrichment, and interventions to slow the rate of cognitive decline. The goal of our study was to develop and evaluate a novel deep learning algorithm to predict mild cognitive impairment (MCI) to AD conversion at three years after diagnosis using longitudinal and whole-brain 3D MRI. Methods This retrospective study consisted of 320 normal cognition (NC), 554 MCI, and 237 AD patients. Longitudinal data include T1-weighted 3D MRI obtained at initial presentation with diagnosis of MCI and at 12-month follow up. Whole-brain 3D MRI volumes were used without a priori segmentation of regional structural volumes or cortical thicknesses. MRIs of the AD and NC cohort were used to train a deep learning classification model to obtain weights to be applied via transfer learning for prediction of MCI patient conversion to AD at three years post-diagnosis. Two (zero-shot and fine tuning) transfer learning methods were evaluated. Three different convolutional neural network (CNN) architectures (sequential, residual bottleneck, and wide residual) were compared. Data were split into 75% and 25% for training and testing, respectively, with 4-fold cross validation. Prediction accuracy was evaluated using balanced accuracy. Heatmaps were generated. Results The sequential convolutional approach yielded slightly better performance than the residual-based architecture, the zero-shot transfer learning approach yielded better performance than fine tuning, and CNN using longitudinal data performed better than CNN using a single timepoint MRI in predicting MCI conversion to AD. The best CNN model for predicting MCI conversion to AD at three years after diagnosis yielded a balanced accuracy of 0.793. Heatmaps of the prediction model showed regions most relevant to the network including the lateral ventricles, periventricular white matter and cortical gray matter. Conclusions This is the first convolutional neural network model using longitudinal and whole-brain 3D MRIs without extracting regional brain volumes or cortical thicknesses to predict future MCI to AD conversion at 3 years after diagnosis. This approach could lead to early prediction of patients who are likely to progress to AD and thus may lead to better management of the disease.
机译:背景技术虽然对阿尔茨海默病(AD)没有治愈,但AD的早期诊断和准确预后可以启用或鼓励生活方式变化,神经认知富集和干预,以减缓认知下降的速度。我们研究的目标是开发和评估一种新的深度学习算法,以预测使用纵向和全脑3D MRI诊断后三年来扩展的轻度认知障碍(MCI)。方法该回顾性研究由320名正常认知(NC),554mCI和237名AD患者组成。纵向数据包括在初始介绍时获得的T1加权3D MRI,其诊断为MCI和12个月的跟进。使用全脑3D MRI体积而无需先验区域结构体积或皮质厚度的分割。 AD和NC队列的MRIS用于训练深度学习分类模型,以通过转移学习来获得权重,以便在诊断后三年预测MCI患者转换为广告。评估了两个(零射和微调)转移学习方法。比较了三种不同的卷积神经网络(CNN)架构(顺序,残留瓶颈和宽残留)。数据分为75%和25%,分别具有4倍交叉验证的培训和测试。使用均衡精度评估预测精度。产生热量。结果顺序卷积方法比基于残差的架构略微更好,零拍摄传输学习方法比使用单个时间点MRI更好地执行的微调,CNN使用单个时间点MRI在预测到广告中的MCI转换时比CNN更好地执行的纵向数据而比微调更好的性能。 。在诊断后三年预测MCI转换为广告的最佳CNN模型产生了均衡精度为0.793。预测模型的热量显示与网络中最相关的区域,包括侧脑室,脑室白质和皮质灰质。结论这是第一个使用纵向和全脑3D MRI的卷积神经网络模型,而无需提取区域脑体积或皮质厚度,以预测未来MCI在诊断后3年内通过AD转化。这种方法可能导致早期预测可能进入广告的患者,因此可能导致对疾病的更好管理。

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