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We demonstrate superior performance of this architecture in encoding the structural connectome implicated in Alzheimer’s disease (AD) and Parkinson’s disease (PD) from DTI brain scans. For decoding, we propose recursive feature elimination (RFE) algorithm based on DeepLIFT, layer-wise relevance propagation (LRP), and Integrated Gradients (IG) algorithms to remove irrelevant features and thereby identify key biomarkers associated with AD and PD. We show that the proposed architecture reduces 45.1% and 47.1% of the trainable parameters compared to a feedforward DNN with an increase in accuracy by 2.6 % and 3.1% for cognitively normal (CN) vs AD and CN vs PD classification, respectively. We also show that the proposed RFE method leads to a further increase in accuracy by 2.1% and 4% for CN vs AD and CN vs PD classification, while removing approximately 90% to 95% irrelevant features. 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引用次数: 0
摘要
在神经影像数据上应用深度学习技术进行大脑状态分类已成为近期的研究课题。然而,与数据维度低或有大量可用训练样本的领域不同,神经影像数据维度高且训练样本少。为了解决这些问题,我们提出了一种用于编码和解码人脑结构连接组的稀疏前馈深度神经架构。我们使用稀疏连接的元素相乘作为第一隐层,使用固定变换层作为输出层。与前馈网络相比,可训练参数的数量和训练时间大大减少。我们从 DTI 脑扫描中提取了与阿尔茨海默病(AD)和帕金森病(PD)有关的结构连接组,证明了这种架构在编码方面的卓越性能。在解码方面,我们提出了基于 DeepLIFT、层相关性传播(LRP)和集成梯度(IG)算法的递归特征消除(RFE)算法,以去除不相关的特征,从而识别出与 AD 和 PD 相关的关键生物标记物。我们的研究表明,与前馈 DNN 相比,所提出的架构减少了 45.1% 和 47.1% 的可训练参数,在认知正常 (CN) vs AD 和 CN vs PD 分类中的准确率分别提高了 2.6% 和 3.1%。我们还表明,在去除约 90% 到 95% 的无关特征的同时,所提出的 RFE 方法还能将 CN vs AD 和 CN vs PD 分类的准确率进一步提高 2.1% 和 4%。此外,我们还认为所识别的生物标志物(即关键脑区和连接)与之前的文献一致。我们表明,基于相关性得分的方法可以产生很高的判别能力,适用于大脑解码。我们还表明,所提出的方法减少了可训练网络参数的数量,提高了分类准确性,并发现了与先前研究一致的大脑连接和区域。
Sparse Deep Neural Network for Encoding and Decoding the Structural Connectome
Brain state classification by applying deep learning techniques on neuroimaging data has become a recent topic of research. However, unlike domains where the data is low dimensional or there are large number of available training samples, neuroimaging data is high dimensional and has few training samples. To tackle these issues, we present a sparse feedforward deep neural architecture for encoding and decoding the structural connectome of the human brain. We use a sparsely connected element-wise multiplication as the first hidden layer and a fixed transform layer as the output layer. The number of trainable parameters and the training time is significantly reduced compared to feedforward networks. We demonstrate superior performance of this architecture in encoding the structural connectome implicated in Alzheimer’s disease (AD) and Parkinson’s disease (PD) from DTI brain scans. For decoding, we propose recursive feature elimination (RFE) algorithm based on DeepLIFT, layer-wise relevance propagation (LRP), and Integrated Gradients (IG) algorithms to remove irrelevant features and thereby identify key biomarkers associated with AD and PD. We show that the proposed architecture reduces 45.1% and 47.1% of the trainable parameters compared to a feedforward DNN with an increase in accuracy by 2.6 % and 3.1% for cognitively normal (CN) vs AD and CN vs PD classification, respectively. We also show that the proposed RFE method leads to a further increase in accuracy by 2.1% and 4% for CN vs AD and CN vs PD classification, while removing approximately 90% to 95% irrelevant features. Furthermore, we argue that the biomarkers (i.e., key brain regions and connections) identified are consistent with previous literature. We show that relevancy score-based methods can yield high discriminative power and are suitable for brain decoding. We also show that the proposed approach led to a reduction in the number of trainable network parameters, an increase in classification accuracy, and a detection of brain connections and regions that were consistent with earlier studies.
期刊介绍:
The IEEE Journal of Translational Engineering in Health and Medicine is an open access product that bridges the engineering and clinical worlds, focusing on detailed descriptions of advanced technical solutions to a clinical need along with clinical results and healthcare relevance. The journal provides a platform for state-of-the-art technology directions in the interdisciplinary field of biomedical engineering, embracing engineering, life sciences and medicine. A unique aspect of the journal is its ability to foster a collaboration between physicians and engineers for presenting broad and compelling real world technological and engineering solutions that can be implemented in the interest of improving quality of patient care and treatment outcomes, thereby reducing costs and improving efficiency. The journal provides an active forum for clinical research and relevant state-of the-art technology for members of all the IEEE societies that have an interest in biomedical engineering as well as reaching out directly to physicians and the medical community through the American Medical Association (AMA) and other clinical societies. The scope of the journal includes, but is not limited, to topics on: Medical devices, healthcare delivery systems, global healthcare initiatives, and ICT based services; Technological relevance to healthcare cost reduction; Technology affecting healthcare management, decision-making, and policy; Advanced technical work that is applied to solving specific clinical needs.