A deep learning-enabled toolkit for the 3D segmentation of ventricular cardiomyocytes.

IF 4.4 2区 医学 Q1 NEUROSCIENCES
Joachim Greiner, Fabio Frangiamore, Frédéric Sonak, Josef Madl, Thomas Seidel, Peter Kohl, Eva A Rog-Zielinska
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引用次数: 0

Abstract

Segmentation of cardiomyocytes in microscopic 3D volumes is key to our understanding of cardiac (patho-)physiology; however, it poses substantial experimental and analytical challenges. Therefore, researchers often resort to inferring 3D information from 2D segmentations, which can lead to biased and incorrect conclusions. Deep learning-based methods are showing promise with respect to robustly segmenting objects in volumes acquired using various imaging modalities; yet, they have not been applied to high-resolution 3D cardiomyocyte segmentations, and suitable open-source tools and datasets are lacking. Here, we present a deep learning-enabled toolkit for segmentation of individual cardiomyocytes in 3D confocal microscopy volumes. We include a dataset of 73 volumes with expert annotations, covering seven species, including mouse, human, and elephant, and containing samples generated under different experimental conditions, such as post-myocardial infarction and ex vivo slice cultures. The toolkit additionally contains an image restoration workflow to address imaging-related artefacts, such as spatially varying blur. Our automatic cardiomyocyte segmentation workflow achieved an adapted Rand error of 0.063 ± 0.034 (∼94% voxel-pair agreement) on the test set. Our semi-automatic workflow reached a throughput of 3 cells min-1 on a challenging, previously unseen dataset. The toolkit and data are open-source and accessible through a dedicated graphical user interface. In summary, we provide an accessible toolkit enabling researchers to extract quantitative data on cardiomyocyte microstructure from 3D confocal image stacks of cardiac tissue. Given the size and diversity of our dataset, we expect our methods to perform well across species and experimental conditions, facilitating high-quality 3D reconstructions of large numbers of individual cardiomyocytes. KEY POINTS: 3D cardiomyocyte microstructure is a key determinant of cardiac function in health and disease. However, reliable extraction and quantification of 3D cardiomyocyte cytoarchitecture pose significant experimental and computational challenges. We present an effective experimental protocol and a deep learning-enabled toolkit for sample preparation and 3D analysis of cardiomyocyte morphology in ventricular myocardium. Our method is validated across seven species (mouse to human) and in samples prepared in diverse experimental conditions from a range of models, including myocardial infarction and ex vivo tissue culture, highlighting the robustness and versatility of our workflow. Our open-source dataset and toolkit enable large-scale analyses and extraction of realistic 3D geometries of ventricular microstructure. These can be used to explore a host of research questions and provide a new resource for modelling cardiac function at the cellular level.

用于心室心肌细胞三维分割的深度学习工具包。
在微观三维体积中分割心肌细胞是我们理解心脏(病理)生理学的关键;然而,它提出了大量的实验和分析挑战。因此,研究人员往往依靠从二维分割推断三维信息,这可能导致偏见和不正确的结论。基于深度学习的方法在使用各种成像方式获得的体积中对物体进行稳健分割方面显示出希望;然而,它们尚未应用于高分辨率的3D心肌细胞分割,并且缺乏合适的开源工具和数据集。在这里,我们提出了一个深度学习支持的工具包,用于在3D共聚焦显微镜体积中分割单个心肌细胞。我们包括一个73卷的数据集,包括7个物种,包括小鼠、人类和大象,并包含在不同实验条件下生成的样本,如心肌梗死后和离体切片培养。该工具包还包含一个图像恢复工作流,用于处理与图像相关的工件,例如空间变化的模糊。我们的自动心肌细胞分割工作流程在测试集中实现了0.063±0.034(~ 94%体素对一致性)的自适应兰德误差。我们的半自动工作流程在一个具有挑战性的、以前未见过的数据集上达到了每分钟3个单元的吞吐量。该工具包和数据是开源的,可以通过专用的图形用户界面访问。总之,我们提供了一个可访问的工具包,使研究人员能够从心脏组织的3D共聚焦图像堆栈中提取心肌细胞微观结构的定量数据。考虑到我们数据集的规模和多样性,我们希望我们的方法在物种和实验条件下都能表现良好,促进大量个体心肌细胞的高质量3D重建。重点:三维心肌细胞微观结构是健康和疾病中心脏功能的关键决定因素。然而,可靠的三维心肌细胞结构的提取和定量提出了重大的实验和计算挑战。我们提出了一个有效的实验方案和一个深度学习工具箱,用于样品制备和心室心肌细胞形态的3D分析。我们的方法在七个物种(小鼠到人类)和在不同实验条件下从一系列模型制备的样品中得到验证,包括心肌梗死和离体组织培养,突出了我们工作流程的稳健性和多功能性。我们的开源数据集和工具包能够大规模分析和提取心室微观结构的真实3D几何形状。这些可以用来探索许多研究问题,并为在细胞水平上模拟心脏功能提供新的资源。
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来源期刊
Journal of Physiology-London
Journal of Physiology-London 医学-神经科学
CiteScore
9.70
自引率
7.30%
发文量
817
审稿时长
2 months
期刊介绍: The Journal of Physiology publishes full-length original Research Papers and Techniques for Physiology, which are short papers aimed at disseminating new techniques for physiological research. Articles solicited by the Editorial Board include Perspectives, Symposium Reports and Topical Reviews, which highlight areas of special physiological interest. CrossTalk articles are short editorial-style invited articles framing a debate between experts in the field on controversial topics. Letters to the Editor and Journal Club articles are also published. All categories of papers are subjected to peer reivew. The Journal of Physiology welcomes submitted research papers in all areas of physiology. Authors should present original work that illustrates new physiological principles or mechanisms. Papers on work at the molecular level, at the level of the cell membrane, single cells, tissues or organs and on systems physiology are all acceptable. Theoretical papers and papers that use computational models to further our understanding of physiological processes will be considered if based on experimentally derived data and if the hypothesis advanced is directly amenable to experimental testing. While emphasis is on human and mammalian physiology, work on lower vertebrate or invertebrate preparations may be suitable if it furthers the understanding of the functioning of other organisms including mammals.
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