Banerjee Samik, Magee Lucas, Wang Dingkang, Li Xu, Huo Bing-Xing, Jayakumar Jaikishan, Matho Katherine, Lin Meng-Kuan, Ram Keerthi, Sivaprakasam Mohanasankar, Huang Josh, Wang Yusu, Mitra Partha P
Cold Spring Harbor Laboratory, NY, USA 11724.
Computer Science and Engineering Department, The Ohio State University, Columbus, OH, USA 43210.
Nat Mach Intell. 2020 Oct;2(10):585-594. doi: 10.1038/s42256-020-0227-9. Epub 2020 Sep 28.
Understanding of neuronal circuitry at cellular resolution within the brain has relied on neuron tracing methods which involve careful observation and interpretation by experienced neuroscientists. With recent developments in imaging and digitization, this approach is no longer feasible with the large scale (terabyte to petabyte range) images. Machine learning based techniques, using deep networks, provide an efficient alternative to the problem. However, these methods rely on very large volumes of annotated images for training and have error rates that are too high for scientific data analysis, and thus requires a significant volume of human-in-the-loop proofreading. Here we introduce a hybrid architecture combining prior structure in the form of topological data analysis methods, based on discrete Morse theory, with the best-in-class deep-net architectures for the neuronal connectivity analysis. We show significant performance gains using our hybrid architecture on detection of topological structure (e.g. connectivity of neuronal processes and local intensity maxima on axons corresponding to synaptic swellings) with precision/recall close to 90% compared with human observers. We have adapted our architecture to a high performance pipeline capable of semantic segmentation of light microscopic whole-brain image data into a hierarchy of neuronal compartments. We expect that the hybrid architecture incorporating discrete Morse techniques into deep nets will generalize to other data domains.
在细胞分辨率下理解大脑中的神经元回路依赖于神经元追踪方法,这需要经验丰富的神经科学家进行仔细观察和解读。随着成像和数字化技术的最新发展,对于大规模(太字节到拍字节范围)的图像,这种方法已不再可行。基于深度学习网络的机器学习技术为该问题提供了一种有效的替代方案。然而,这些方法依赖大量带注释的图像进行训练,并且错误率过高,无法用于科学数据分析,因此需要大量人工参与的校对工作。在这里,我们引入了一种混合架构,它将基于离散莫尔斯理论的拓扑数据分析方法形式的先验结构与用于神经元连接性分析的一流深度网络架构相结合。我们展示了使用我们的混合架构在检测拓扑结构(例如神经元突起的连接性以及与突触肿胀相对应的轴突上的局部强度最大值)方面的显著性能提升,与人类观察者相比,精确率/召回率接近90%。我们已将我们架构应用于一个高性能管道,该管道能够将光学显微镜全脑图像数据语义分割为神经元隔室层次结构。我们期望将离散莫尔斯技术纳入深度网络的混合架构能够推广到其他数据领域。