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Multimodal multitask deep learning model for Alzheimer's disease progression detection based on time series data

机译:基于时间序列数据的Alzheimer疾病进展检测多模式多任务深度学习模型

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摘要

Early prediction of Alzheimer's disease (AD) is crucial for delaying its progression. As a chronic disease, ignoring the temporal dimension of AD data affects the performance of a progression detection and medically unacceptable. Besides, AD patients are represented by heterogeneous, yet complementary, multi modalities. Multitask modeling improves progression-detection performance, robustness, and stability. However, multimodal multitask modeling has not been evaluated using time series and deep learning paradigm, especially for AD progression detection. In this paper, we propose a robust ensemble deep learning model based on a stacked convolutional neural network (CNN) and a bidirectional long short-term memory (BiLSTM) network. This multimodal multitask model jointly predicts multiple variables based on the fusion of five types of multimodal time series data plus a set of background (BG) knowledge. Predicted variables include AD multiclass progression task, and four critical cognitive scores regression tasks. The proposed model extracts local and longitudinal features of each modality using a stacked CNN and BiLSTM network. Concurrently, local features are extracted from the BG data using a feed forward neural network. Resultant features are fused to a deep network to detect common patterns which jointly used to predict the classification and regression tasks. To validate our model, we performed six experiments on five modalities from Alzheimer's Disease Neuroimaging Initiative (ADNI) of 1536 subjects. The results of the proposed approach achieve state-of-the-art performance for both multiclass progression and regression tasks. Moreover, our approach can be generalized in other medial domains to analyze heterogeneous temporal data for predicting patient's future status. (c) 2020 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
机译:Alzheimer疾病的早期预测(AD)对于延迟其进展至关重要。作为一种慢性疾病,忽略广告数据的时间尺寸会影响进展检测和医学上不可接受的性能。此外,AD患者由异质,又互补,多种多数表示。多任务建模可提高进展检测性能,鲁棒性和稳定性。然而,尚未使用时间序列和深度学习范例进行评估多模式多任务建模,特别是对于广告进展检测。在本文中,我们提出了一种基于堆叠的卷积神经网络(CNN)和双向长短期存储器(BILSTM)网络的强大集合深学习模型。该多模式多任务模型基于五种类型的多数制时间序列数据加一组背景(BG)知识来联合预测多个变量。预测变量包括AD多字母DROVERION任务,以及四个关键认知分数回归任务。所提出的模型使用堆叠的CNN和BILSTM网络提取每个模态的局部和纵向特征。同时,使用馈送前向神经网络从BG数据中提取本地特征。结果特征融合到深网络以检测共同模式,该模式共同用于预测分类和回归任务。为了验证我们的模型,我们对来自阿尔茨海默病神经影像序(ADNI)的五种方式进行了六种实验,为1536个受试者。建议方法的结果实现了多种多组进展和回归任务的最先进的性能。此外,我们的方法可以在其他内侧域中推广,以分析异质时间数据,以预测患者未来状态。 (c)2020作者。由elsevier b.v发布。这是CC By-NC-ND许可下的开放式访问文章(http://creativecommons.org/licenses/by-nc-nd/4.0/)。

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