mEMbrain:用于在商用台式机上进行连接体分割的交互式深度学习 MATLAB 工具。

IF 3.4 3区 医学 Q2 NEUROSCIENCES Frontiers in Neural Circuits Pub Date : 2023-06-15 eCollection Date: 2023-01-01 DOI:10.3389/fncir.2023.952921
Elisa C Pavarino, Emma Yang, Nagaraju Dhanyasi, Mona D Wang, Flavie Bidel, Xiaotang Lu, Fuming Yang, Core Francisco Park, Mukesh Bangalore Renuka, Brandon Drescher, Aravinthan D T Samuel, Binyamin Hochner, Paul S Katz, Mei Zhen, Jeff W Lichtman, Yaron Meirovitch
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引用次数: 0

摘要

连接组学是我们了解神经系统组织结构的基础,它能从体积电子显微镜(EM)数据集中发现细胞和线路图。这种重建一方面得益于越来越精确的自动分割方法,这些方法利用了复杂的深度学习架构和先进的机器学习算法。另一方面,整个神经科学领域,尤其是图像处理领域,都需要用户友好的开源工具,以便社区能够进行高级分析。根据第二种思路,我们在此提出了基于 MATLAB 的交互式软件 mEMbrain,该软件将电子显微镜数据集的标记和分割算法与功能封装在一个与 Linux 和 Windows 兼容的友好用户界面中。通过与体积标注和分割工具 VAST 的应用程序接口集成,mEMbrain 包含了生成基本事实、图像预处理、深度神经网络训练以及校对和评估即时预测等功能。我们工具的最终目标是加快人工标注工作,并为 MATLAB 用户提供一系列半自动实例分割方法。我们在各种数据集上测试了我们的工具,这些数据集跨越不同物种、不同尺度、神经系统区域和发育阶段。为了进一步加快连接组学的研究,我们提供了来自四种不同动物和五个数据集的 EM 原始注释资源,专家注释时间约为 180 小时,注释的 EM 图像超过 1.2 GB。此外,我们还为上述数据集提供了一套四种预训练网络。所有工具均可从 https://lichtman.rc.fas.harvard.edu/mEMbrain/ 获取。我们希望通过我们的软件,为基于实验室的神经重建提供一种无需用户编码的解决方案,从而为经济实惠的连接组学铺平道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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mEMbrain: an interactive deep learning MATLAB tool for connectomic segmentation on commodity desktops.

Connectomics is fundamental in propelling our understanding of the nervous system's organization, unearthing cells and wiring diagrams reconstructed from volume electron microscopy (EM) datasets. Such reconstructions, on the one hand, have benefited from ever more precise automatic segmentation methods, which leverage sophisticated deep learning architectures and advanced machine learning algorithms. On the other hand, the field of neuroscience at large, and of image processing in particular, has manifested a need for user-friendly and open source tools which enable the community to carry out advanced analyses. In line with this second vein, here we propose mEMbrain, an interactive MATLAB-based software which wraps algorithms and functions that enable labeling and segmentation of electron microscopy datasets in a user-friendly user interface compatible with Linux and Windows. Through its integration as an API to the volume annotation and segmentation tool VAST, mEMbrain encompasses functions for ground truth generation, image preprocessing, training of deep neural networks, and on-the-fly predictions for proofreading and evaluation. The final goals of our tool are to expedite manual labeling efforts and to harness MATLAB users with an array of semi-automatic approaches for instance segmentation. We tested our tool on a variety of datasets that span different species at various scales, regions of the nervous system and developmental stages. To further expedite research in connectomics, we provide an EM resource of ground truth annotation from four different animals and five datasets, amounting to around 180 h of expert annotations, yielding more than 1.2 GB of annotated EM images. In addition, we provide a set of four pre-trained networks for said datasets. All tools are available from https://lichtman.rc.fas.harvard.edu/mEMbrain/. With our software, our hope is to provide a solution for lab-based neural reconstructions which does not require coding by the user, thus paving the way to affordable connectomics.

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来源期刊
CiteScore
6.00
自引率
5.70%
发文量
135
审稿时长
4-8 weeks
期刊介绍: Frontiers in Neural Circuits publishes rigorously peer-reviewed research on the emergent properties of neural circuits - the elementary modules of the brain. Specialty Chief Editors Takao K. Hensch and Edward Ruthazer at Harvard University and McGill University respectively, are supported by an outstanding Editorial Board of international experts. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics and the public worldwide. Frontiers in Neural Circuits launched in 2011 with great success and remains a "central watering hole" for research in neural circuits, serving the community worldwide to share data, ideas and inspiration. Articles revealing the anatomy, physiology, development or function of any neural circuitry in any species (from sponges to humans) are welcome. Our common thread seeks the computational strategies used by different circuits to link their structure with function (perceptual, motor, or internal), the general rules by which they operate, and how their particular designs lead to the emergence of complex properties and behaviors. Submissions focused on synaptic, cellular and connectivity principles in neural microcircuits using multidisciplinary approaches, especially newer molecular, developmental and genetic tools, are encouraged. Studies with an evolutionary perspective to better understand how circuit design and capabilities evolved to produce progressively more complex properties and behaviors are especially welcome. The journal is further interested in research revealing how plasticity shapes the structural and functional architecture of neural circuits.
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