Cell Structure and Mechanobiology Group, Department of Biomedical Engineering, Melbourne School of Engineering, The University of Melbourne, Melbourne, Australia.
Advanced Microscopy Facility, Bio21 Molecular Science and Biotechnology Institute, The University of Melbourne, Melbourne, Australia.
BMC Med Inform Decis Mak. 2019 Dec 19;19(Suppl 6):272. doi: 10.1186/s12911-019-0962-1.
With the advent of new high-throughput electron microscopy techniques such as serial block-face scanning electron microscopy (SBF-SEM) and focused ion-beam scanning electron microscopy (FIB-SEM) biomedical scientists can study sub-cellular structural mechanisms of heart disease at high resolution and high volume. Among several key components that determine healthy contractile function in cardiomyocytes are Z-disks or Z-lines, which are located at the lateral borders of the sarcomere, the fundamental unit of striated muscle. Z-disks play the important role of anchoring contractile proteins within the cell that make the heartbeat. Changes to their organization can affect the force with which the cardiomyocyte contracts and may also affect signaling pathways that regulate cardiomyocyte health and function. Compared to other components in the cell, such as mitochondria, Z-disks appear as very thin linear structures in microscopy data with limited difference in contrast to the remaining components of the cell.
In this paper, we propose to generate a 3D model of Z-disks within single adult cardiac cells from an automated segmentation of a large serial-block-face scanning electron microscopy (SBF-SEM) dataset. The proposed fully automated segmentation scheme is comprised of three main modules including "pre-processing", "segmentation" and "refinement". We represent a simple, yet effective model to perform segmentation and refinement steps. Contrast stretching, and Gaussian kernels are used to pre-process the dataset, and well-known "Sobel operators" are used in the segmentation module.
We have validated our model by comparing segmentation results with ground-truth annotated Z-disks in terms of pixel-wise accuracy. The results show that our model correctly detects Z-disks with 90.56% accuracy. We also compare and contrast the accuracy of the proposed algorithm in segmenting a FIB-SEM dataset against the accuracy of segmentations from a machine learning program called Ilastik and discuss the advantages and disadvantages that these two approaches have.
Our validation results demonstrate the robustness and reliability of our algorithm and model both in terms of validation metrics and in terms of a comparison with a 3D visualisation of Z-disks obtained using immunofluorescence based confocal imaging.
随着新型高通量电子显微镜技术(如连续块面扫描电子显微镜[SBF-SEM]和聚焦离子束扫描电子显微镜[FIB-SEM])的出现,生物医学科学家能够以高分辨率和大容量研究心脏病的亚细胞结构机制。在决定心肌细胞健康收缩功能的几个关键组成部分中,有 Z 盘或 Z 线,它们位于肌节的侧面边界,肌节是横纹肌的基本单位。Z 盘起着在细胞内固定收缩蛋白的重要作用,这些收缩蛋白使心跳得以进行。其组织的变化会影响心肌细胞的收缩力,也可能影响调节心肌细胞健康和功能的信号通路。与细胞内的其他成分(如线粒体)相比,Z 盘在显微镜数据中呈现出非常薄的线性结构,与细胞的其余成分相比对比度有限。
在本文中,我们提出了一种从大型连续块面扫描电子显微镜(SBF-SEM)数据集的自动分割中生成单个成年心脏细胞内 Z 盘的 3D 模型的方法。所提出的全自动分割方案由三个主要模块组成,包括“预处理”、“分割”和“细化”。我们提出了一种简单而有效的模型来执行分割和细化步骤。对比度拉伸和高斯核用于预处理数据集,并且在分割模块中使用了著名的“Sobel 算子”。
我们通过比较像素精度的分割结果与地面实况标记的 Z 盘来验证我们的模型。结果表明,我们的模型以 90.56%的准确率正确检测到 Z 盘。我们还比较并对比了该算法在分割 FIB-SEM 数据集方面的准确性与称为 Ilastik 的机器学习程序的分割准确性,并讨论了这两种方法的优缺点。
我们的验证结果证明了我们的算法和模型在验证指标方面以及与基于免疫荧光的共聚焦成像获得的 Z 盘的 3D 可视化方面的稳健性和可靠性。