在荧光图像中使用不均匀背景减法自动检测表达c- fos的神经元

IF 2.2 4区 心理学 Q3 BEHAVIORAL SCIENCES
Hisayuki Osanai , Mary Arai , Takashi Kitamura , Sachie K. Ogawa
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引用次数: 0

摘要

虽然已经提出了许多自动荧光标记细胞检测方法,但并非所有方法都假设由复杂生物结构引起的高度不均匀的背景。在这里,我们提出了一种自动细胞检测算法,该算法通过在模糊滤波计算中避免高强度像素来解释和减去非均匀背景。在减背景图像中采用强度阈值法检测细胞,并在小鼠前额叶皮层和海马齿状回的NeuN-和c- fos染色图像上测试算法的性能。此外,还演示了在c-Fos阳性细胞计数和双标记细胞表达水平定量中的应用。我们的背景假设后自动检测方法(ADABA)在具有复杂生物结构且产生不均匀背景的区域提供了高通量和无偏分析的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated detection of c-Fos-expressing neurons using inhomogeneous background subtraction in fluorescent images

Automated detection of c-Fos-expressing neurons using inhomogeneous background subtraction in fluorescent images
Although many methods for automated fluorescent-labeled cell detection have been proposed, not all of them assume a highly inhomogeneous background arising from complex biological structures. Here, we propose an automated cell detection algorithm that accounts for and subtracts the inhomogeneous background by avoiding high-intensity pixels in the blur filtering calculation. Cells were detected by intensity thresholding in the background-subtracted image, and the algorithm’s performance was tested on NeuN- and c-Fos-stained images in the mouse prefrontal cortex and hippocampal dentate gyrus. In addition, applications in c-Fos positive cell counting and the quantification for the expression level in double-labeled cells were demonstrated. Our method of automated detection after background assumption (ADABA) offers the advantage of high-throughput and unbiased analysis in regions with complex biological structures that produce inhomogeneous background.
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来源期刊
CiteScore
5.10
自引率
7.40%
发文量
77
审稿时长
12.6 weeks
期刊介绍: Neurobiology of Learning and Memory publishes articles examining the neurobiological mechanisms underlying learning and memory at all levels of analysis ranging from molecular biology to synaptic and neural plasticity and behavior. We are especially interested in manuscripts that examine the neural circuits and molecular mechanisms underlying learning, memory and plasticity in both experimental animals and human subjects.
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