Current neuroimaging techniques provide paths to investigate the structure and function of the brain in vivo and have made great advances in understanding Alzheimer's disease (AD). However, the group-level analyses prevalently used for investigation and understanding of the disease are not applicable for diagnosis of individuals. More recently, deep learning, which can efficiently analyze large-scale complex patterns in 3D brain images, has helped pave the way for computer-aided individual diagnosis by providing accurate and automated disease classification. Great progress has been made in classifying AD with deep learning models developed upon increasingly available structural MRI data. The lack of scale-matched functional neuroimaging data prevents such models from being further improved by observing functional changes in pathophysiology. Here we propose a potential solution by first learning a structural-to-functional transformation in brain MRI, and further synthesizing spatially matched functional images from large-scale structural scans. We evaluated our approach by building computational models to discriminate patients with AD from healthy normal subjects and demonstrated a performance boost after combining the structural and synthesized functional brain images into the same model. Furthermore, our regional analyses identified the temporal lobe to be the most predictive structural-region and the parieto-occipital lobe to be the most predictive functional-region of our model, which are both in concordance with previous group-level neuroimaging findings. Together, we demonstrate the potential of deep learning with large-scale structural and synthesized functional MRI to impact AD classification and to identify AD's neuroimaging signatures.
翻译:目前的神经成像技术为调查大脑在体内的结构和功能提供了途径,并在了解阿尔茨海默氏病(AD)方面取得了巨大进步。然而,用于调查和了解该疾病(AD)的小组一级分析却不适用于诊断个人。最近,深层次学习可以有效地分析3D大脑图像中的大规模复杂模式,有助于通过提供准确和自动化的疾病分类,为计算机辅助个人诊断铺平道路。在将AD分类方面已经取得了很大进展,根据越来越多的结构性MRI数据开发了深层次学习模型。由于缺少规模匹配的功能性神经成像数据,因此无法通过观察病理学的功能变化而使这类模型得到进一步改进。我们在这里提出了一种潜在的解决办法,首先学习大脑MRI的结构到功能转变的结构性转变,进一步将空间匹配的功能图像与大规模结构扫描结合起来。我们通过建立计算模型来区分有适应性正常科目的病人,并在将结构和综合功能化的大脑图像合并成同一模型之后展示了一种性能提升。此外,我们的区域分析确定了通过首先学习结构化的时程到最能级的阶段,我们共同的机变的机变的机变结构结构-预的机变的机变的机变的机变的机变结构区域和机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变的机变图。