School of Physics and Information Technology, Shaanxi Normal University, Xi'an, China.
Cortical Architecture Imaging and Discovery Lab, Department of Computer Science and Bioimaging Research Center, The University of Georgia, Athens, Georgia, United States.
Comput Med Imaging Graph. 2020 Jul;83:101747. doi: 10.1016/j.compmedimag.2020.101747. Epub 2020 Jun 6.
It has been shown that deep neural networks are powerful and flexible models that can be applied on fMRI data with superb representation ability over traditional methods. However, a challenge of neural network architecture design has also attracted attention: due to the high dimension of fMRI volume images, the manual process of network model design is very time-consuming and not optimal. To tackle this problem, we proposed an unsupervised neural architecture search (NAS) framework on a deep belief network (DBN) that models volumetric fMRI data, named NAS-DBN. The NAS-DBN framework is based on Particle Swarm Optimization (PSO) where the swarms of neural architectures can evolve and converge to a feasible optimal solution. The experiments showed that the proposed NAS-DBN framework can quickly find a robust architecture of DBN, yielding a hierarchy organization of functional brain networks (FBNs) and temporal responses. Compared with 3 manually designed DBNs, the proposed NAS-DBN has the lowest testing loss of 0.0197, suggesting an overall performance improvement of up to 47.9 %. For each task, the NAS-DBN identified 260 FBNs, including task-specific FBNs and resting state networks (RSN), which have high overlap rates to general linear model (GLM) derived templates and independent component analysis (ICA) derived RSN templates. The average overlap rate of NAS-DBN to GLM on 20 task-specific FBNs is as high as 0.536, indicating a performance improvement of up to 63.9 % in respect of network modeling. Besides, we showed that the NAS-DBN can simultaneously generate temporal responses that resemble the task designs very well, and it was observed that widespread overlaps between FBNs from different layers of NAS-DBN model form a hierarchical organization of FBNs. Our NAS-DBN framework contributes an effective, unsupervised NAS method for modeling volumetric task fMRI data.
已经证明,深度神经网络是功能强大且灵活的模型,可以将其应用于 fMRI 数据,其表示能力远优于传统方法。然而,神经网络架构设计的挑战也引起了人们的关注:由于 fMRI 体积图像的高维性,网络模型设计的手动过程非常耗时且不是最优的。为了解决这个问题,我们提出了一种基于深度置信网络(DBN)的无监督神经结构搜索(NAS)框架,用于对 fMRI 体积数据进行建模,命名为 NAS-DBN。NAS-DBN 框架基于粒子群优化(PSO),其中神经网络结构的群体可以进化并收敛到可行的最优解。实验表明,所提出的 NAS-DBN 框架可以快速找到 DBN 的稳健结构,从而产生功能脑网络(FBN)和时间响应的层次结构。与 3 个手动设计的 DBN 相比,所提出的 NAS-DBN 的测试损失最低为 0.0197,表明整体性能提高了高达 47.9%。对于每个任务,NAS-DBN 确定了 260 个 FBN,包括特定于任务的 FBN 和静息状态网络(RSN),它们与广义线性模型(GLM)和独立成分分析(ICA)得出的模板具有较高的重叠率。NAS-DBN 与 20 个特定于任务的 FBN 的 GLM 的平均重叠率高达 0.536,表明在网络建模方面的性能提高了高达 63.9%。此外,我们还表明,NAS-DBN 可以同时生成非常类似于任务设计的时间响应,并且观察到来自不同 NAS-DBN 模型层的 FBN 之间存在广泛的重叠,形成了 FBN 的层次结构。我们的 NAS-DBN 框架为建模 fMRI 体积任务数据提供了一种有效、无监督的 NAS 方法。