Sciarabba M, Serrao G, Bauer D, Arnaboldi F, Borghese N A
Department of Human Morphology and Biomedical Sciences "Città Studi", University of Milan, Via Mangiagalli 31, 20133 Milano, Italy.
J Neurosci Methods. 2009 Aug 30;182(1):123-40. doi: 10.1016/j.jneumeth.2009.05.021. Epub 2009 Jun 6.
The analysis of neuron distribution inside the cerebral cortex is getting more and more attention. It allows assessing, for instance, age-related and pathological decay and preferential connections; moreover, it complements well studies on functional morphology aimed to discovering information coding in neuron assemblies. A large obstacle to these studies is the huge amount of time required by an operator to manually mark the single neurons. We present here an innovative solution for automaticize the entire process: starting from a set of tile images of a given cortical slice, the system stitches all the tiles together, identifies the grey areas and cover them with a mesh. Neurons are automatically identified and their local distribution determined. Key element of the method is a reliable neuron identification algorithm based on a novel multilayer shape analysis of the blobs identified in the tiles images. This allows identifying on average 87+/-6% of the total neurons in the slice, with a false positive ratio of 14+/-9%, in a relatively short processing time. The algorithm was tested on Nissl-stained cortical slices of the BA4 Human area, 10 microm thick, acquired as a meander of tiles ( approximately 3000 images for a slice of medium size) at 40 x magnification, which gives a resolution of 0.264 microm/pixel. Preliminary results on cortical lamination of Human BA4 area are reported. This method is the first automated algorithm for the analysis of a large high-resolution cortical slice.
大脑皮质内神经元分布的分析越来越受到关注。例如,它有助于评估与年龄相关的和病理性的衰退以及优先连接;此外,它很好地补充了旨在发现神经元集合中信息编码的功能形态学研究。这些研究的一个巨大障碍是操作人员手动标记单个神经元所需的大量时间。我们在此提出一种创新解决方案,以实现整个过程的自动化:从给定皮质切片的一组平铺图像开始,系统将所有平铺图像拼接在一起,识别灰色区域并用网格覆盖它们。神经元被自动识别并确定其局部分布。该方法的关键要素是一种可靠的神经元识别算法,该算法基于对平铺图像中识别出的斑点进行新颖的多层形状分析。这使得在相对较短的处理时间内,平均能够识别切片中87±6%的神经元,误报率为14±9%。该算法在BA4人类区域的尼氏染色皮质切片上进行了测试,切片厚度为10微米,以40倍放大率获取为平铺图像的曲折排列(中等大小的切片约3000张图像),分辨率为0.264微米/像素。报告了关于人类BA4区域皮质分层的初步结果。该方法是第一种用于分析大型高分辨率皮质切片的自动化算法。