We propose Deep Kronecker Network (DKN), a novel framework designed for analyzing medical imaging data, such as MRI, fMRI, CT, etc. Medical imaging data is different from general images in at least two aspects: i) sample size is usually much more limited, ii) model interpretation is more of a concern compared to outcome prediction. Due to its unique nature, general methods, such as convolutional neural network (CNN), are difficult to be directly applied. As such, we propose DKN, that is able to i) adapt to low sample size limitation, ii) provide desired model interpretation, and iii) achieve the prediction power as CNN. The DKN is general in the sense that it not only works for both matrix and (high-order) tensor represented image data, but also could be applied to both discrete and continuous outcomes. The DKN is built on a Kronecker product structure and implicitly imposes a piecewise smooth property on coefficients. Moreover, the Kronecker structure can be written into a convolutional form, so DKN also resembles a CNN, particularly, a fully convolutional network (FCN). Furthermore, we prove that with an alternating minimization algorithm, the solutions of DKN are guaranteed to converge to the truth geometrically even if the objective function is highly nonconvex. Interestingly, the DKN is also highly connected to the tensor regression framework proposed by Zhou et al. (2010), where a CANDECOMP/PARAFAC (CP) low-rank structure is imposed on tensor coefficients. Finally, we conduct both classification and regression analyses using real MRI data from the Alzheimer's Disease Neuroimaging Initiative (ADNI) to demonstrate the effectiveness of DKN.
翻译:我们提出了一种新颖的框架——深度克罗内克网络(DKN),该框架专为分析医学影像数据(如MRI、fMRI、CT等)而设计。医学影像数据至少在两个方面与普通图像不同:i) 样本量通常更为有限;ii) 与结果预测相比,模型可解释性更受关注。由于其独特性质,卷积神经网络(CNN)等通用方法难以直接应用。因此,我们提出DKN,它能够:i) 适应小样本量的限制;ii) 提供所需的模型可解释性;iii) 实现与CNN相当的预测能力。DKN具有通用性,不仅适用于矩阵和(高阶)张量表示的图像数据,还可应用于离散和连续型结果。DKN建立在克罗内克积结构之上,并隐式地对系数施加了分段平滑特性。此外,克罗内克结构可以写成卷积形式,因此DKN也类似于CNN,特别是全卷积网络(FCN)。进一步地,我们证明,即使目标函数高度非凸,通过交替最小化算法,DKN的解也能保证以几何速度收敛到真值。有趣的是,DKN与Zhou等人(2010)提出的张量回归框架高度相关,后者对张量系数施加了CANDECOMP/PARAFAC(CP)低秩结构。最后,我们使用来自阿尔茨海默病神经影像学倡议(ADNI)的真实MRI数据进行分类和回归分析,以证明DKN的有效性。