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Deep Multi-modal Latent Representation Learning for Automated Dementia Diagnosis

机译:自动痴呆诊断的深度多模态潜在代表学习

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Effective fusion of multi-modality neuroimaging data, such as structural magnetic resonance imaging (MRI) and fluorodeoxyglucose positron emission tomography (PET), has attracted increasing interest in computer-aided brain disease diagnosis, by providing complementary structural and functional information of the brain to improve diagnostic performance. Although considerable progress has been made, there remain several significant challenges in traditional methods for fusing multi-modality data. First, the fusion of multi-modality data is usually independent of the training of diagnostic models, leading to sub-optimal performance. Second, it is challenging to effectively exploit the complementary information among multiple modalities based on low-level imaging features (e.g., image intensity or tissue volume). To this end, in this paper, we propose a novel Deep Latent Multi-modality Dementia Diagnosis (DLMD2) framework based on a deep non-negative matrix factorization (NMF) model. Specifically, we integrate the feature fusion/learning process into the classifier construction step for eliminating the gap between neuroimaging features and disease labels. To exploit the correlations among multi-modality data, we learn latent representations for multi-modality data by sharing the common high-level representations in the last layer of each modality in the deep NMF model. Extensive experimental results on the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset validate that our proposed method outperforms several state-of-the-art methods.
机译:多模态神经影像数据,如结构磁共振成像(MRI)和氟代正电子发射断层摄影(PET),已经吸引了越来越多在​​计算机辅助脑疾病的诊断的兴趣,通过提供脑的互补结构和功能信息的有效融合改善诊断性能。虽然已经取得了相当大的进展,但传统方法留有融合多种模式数据的传统方法几乎挑战。首先,多模态数据的融合通常与诊断模型的训练无关,导致次优性能。其次,基于低级成像特征(例如,图像强度或组织体积)有效地利用多种方式之间有效利用互补信息挑战。为此,本文提出了一种基于深度非负矩阵分解(NMF)模型的新型深层潜在多种痴呆诊断(DLMD2)框架。具体地,我们将特征融合/学习过程集成到分类器结构步骤中,以消除神经影像学特征和疾病标签之间的间隙。为了利用多种模式数据之间的相关性,我们通过在深NMF模型中共享每个模态的最后一层中的常见高级表示来学习多种模式数据的潜在表示。对阿尔茨海默病神经影像倡议(ADNI)数据集的广泛实验结果验证了我们所提出的方法优于几种最先进的方法。

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