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斑点狗:一种用于三维自动细胞检测与计数的算法。

DALMATIAN: An Algorithm for Automatic Cell Detection and Counting in 3D.

作者信息

Shuvaev Sergey A, Lazutkin Alexander A, Kedrov Alexander V, Anokhin Konstantin V, Enikolopov Grigori N, Koulakov Alexei A

机构信息

Cold Spring Harbor Laboratory, Cold Spring Harbor, NY, United States.

Brain Stem Cell Laboratory, NBIC, Moscow Institute of Physics and Technology, Moscow, Russia.

出版信息

Front Neuroanat. 2017 Dec 12;11:117. doi: 10.3389/fnana.2017.00117. eCollection 2017.

Abstract

Current 3D imaging methods, including optical projection tomography, light-sheet microscopy, block-face imaging, and serial two photon tomography enable visualization of large samples of biological tissue. Large volumes of data obtained at high resolution require development of automatic image processing techniques, such as algorithms for automatic cell detection or, more generally, point-like object detection. Current approaches to automated cell detection suffer from difficulties originating from detection of particular cell types, cell populations of different brightness, non-uniformly stained, and overlapping cells. In this study, we present a set of algorithms for robust automatic cell detection in 3D. Our algorithms are suitable for, but not limited to, whole brain regions and individual brain sections. We used watershed procedure to split regional maxima representing overlapping cells. We developed a bootstrap Gaussian fit procedure to evaluate the statistical significance of detected cells. We compared cell detection quality of our algorithm and other software using 42 samples, representing 6 staining and imaging techniques. The results provided by our algorithm matched manual expert quantification with signal-to-noise dependent confidence, including samples with cells of different brightness, non-uniformly stained, and overlapping cells for whole brain regions and individual tissue sections. Our algorithm provided the best cell detection quality among tested free and commercial software.

摘要

当前的三维成像方法,包括光学投影断层扫描、光片显微镜、块面成像和串行双光子断层扫描,能够实现对生物组织大样本的可视化。以高分辨率获取的大量数据需要开发自动图像处理技术,例如自动细胞检测算法,或者更一般地说,点状物体检测算法。当前的自动细胞检测方法存在一些困难,这些困难源于特定细胞类型的检测、不同亮度的细胞群体、染色不均匀以及细胞重叠。在本研究中,我们提出了一组用于在三维中进行稳健自动细胞检测的算法。我们的算法适用于但不限于全脑区域和单个脑切片。我们使用分水岭算法来分割代表重叠细胞的区域最大值。我们开发了一种自助高斯拟合算法来评估检测到细胞的统计显著性。我们使用42个样本(代表六种染色和成像技术)比较了我们算法与其他软件的细胞检测质量。我们算法提供的结果与专家手动定量结果相匹配,且具有与信噪比相关的置信度,包括全脑区域和单个组织切片中具有不同亮度、染色不均匀以及重叠细胞的样本。在测试的免费和商业软件中,我们的算法提供了最佳的细胞检测质量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1d33/5732941/53cd0cad73d7/fnana-11-00117-g0001.jpg

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