Developmental Biology Program, Sloan-Kettering Institute, New York, NY 10065, USA.
Developmental Biology Program, Sloan-Kettering Institute, New York, NY 10065, USA ; Department of Biochemistry, Cell and Molecular Biology Program, Weill Graduate School of Medical Sciences of Cornell University, New York, NY 10065, USA.
Stem Cell Reports. 2014 Mar 11;2(3):382-97. doi: 10.1016/j.stemcr.2014.01.010.
Segmentation is a fundamental problem that dominates the success of microscopic image analysis. In almost 25 years of cell detection software development, there is still no single piece of commercial software that works well in practice when applied to early mouse embryo or stem cell image data. To address this need, we developed MINS (modular interactive nuclear segmentation) as a MATLAB/C++-based segmentation tool tailored for counting cells and fluorescent intensity measurements of 2D and 3D image data. Our aim was to develop a tool that is accurate and efficient yet straightforward and user friendly. The MINS pipeline comprises three major cascaded modules: detection, segmentation, and cell position classification. An extensive evaluation of MINS on both 2D and 3D images, and comparison to related tools, reveals improvements in segmentation accuracy and usability. Thus, its accuracy and ease of use will allow MINS to be implemented for routine single-cell-level image analyses.
分割是主导微观图像分析成功的基本问题。在近 25 年的细胞检测软件开发中,当应用于早期小鼠胚胎或干细胞图像数据时,仍然没有任何商业软件能够在实践中很好地工作。为了满足这一需求,我们开发了 MINS(模块化交互式核分割),作为一个基于 MATLAB/C++的分割工具,专门用于 2D 和 3D 图像数据的细胞计数和荧光强度测量。我们的目标是开发一个准确、高效、简单易用的工具。MINS 流水线由三个主要的级联模块组成:检测、分割和细胞位置分类。对 MINS 在 2D 和 3D 图像上的广泛评估,并与相关工具进行比较,显示了分割准确性和可用性的提高。因此,其准确性和易用性将使 MINS 能够用于常规的单细胞水平图像分析。