While many neuroscience questions aim to understand the human brain, much current knowledge has been gained using animal models, which replicate genetic, structural, and connectivity aspects of the human brain. While voxel-based analysis (VBA) of preclinical magnetic resonance images is widely-used, a thorough examination of the statistical robustness, stability, and error rates is hindered by high computational demands of processing large arrays, and the many parameters involved. Thus, workflows are often based on intuition or experience, while preclinical validation studies remain scarce. To increase throughput and reproducibility of quantitative small animal brain studies, we have developed a publicly shared, high throughput VBA pipeline in a high-performance computing environment, called SAMBA. The increased computational efficiency allowed large multidimensional arrays to be processed in 1-3 days, a task that previously took ~1 month. To quantify the variability and reliability of preclinical VBA in rodent models, we propose a validation framework consisting of morphological phantoms, and four metrics. This addresses several sources that impact VBA results, including registration and template construction strategies. We have used this framework to inform the VBA workflow parameters in a VBA study for a mouse model of epilepsy. We also present initial efforts towards standardizing small animal neuroimaging data in a similar fashion with human neuroimaging. We conclude that verifying the accuracy of VBA merits attention, and should be the focus of a broader effort within the community. The proposed framework promotes consistent quality assurance of VBA in preclinical neuroimaging; facilitating the creation and communication of robust results.
翻译:虽然许多神经科学问题的目的是了解人类大脑,但目前许多知识都是利用动物模型获得的,这些模型复制了人类大脑的遗传、结构和连通性方面。虽然广泛使用基于VBA的对临床磁共振前图像的Voxel法分析(VBA),但是由于对处理大型阵列和涉及的许多参数的计算要求很高,对统计稳健性、稳定性和误差率的彻底审查受到阻碍。因此,工作流程往往以直观或经验为基础,而临床前验证研究则仍然很少。为了提高小动物大脑定量研究的通过量和再生能力,我们开发了一种公开共享的、高质量的VBA输血管管在高性计算环境中的管道,称为SAMBA。由于计算效率的提高,使得大量多面阵列能够在1至3天内处理,而这项任务过去花费了大约1个月的时间。为了量化处理大型阵列阵列阵列的模型的变异性和可靠性,我们提议了一个验证框架,由畸形软体研究组成,还有4个指标。这涉及影响VBA的微量结果,包括登记和模板模拟模拟模拟的模型的模拟研究,我们利用了目前稳定研究的模型的模型的模型的进度,我们利用了一个数据库的模型的模型的模型的模型的进度。