Prkačin Matija Vid, Petanjek Zdravko, Banovac Ivan
Department of Anatomy and Clinical Anatomy, University of Zagreb School of Medicine, Zagreb, Croatia.
Croatian Institute for Brain Research, University of Zagreb School of Medicine, Zagreb, Croatia.
Front Neuroanat. 2024 Aug 12;18:1441645. doi: 10.3389/fnana.2024.1441645. eCollection 2024.
The cytoarchitectonic boundaries between cortical regions and layers are usually defined by the presence or absence of certain cell types. However, these cell types are often not clearly defined and determining the exact boundaries of regions and layers can be challenging. Therefore, in our research, we attempted to define cortical regions and layers based on clear quantitative criteria.
We performed immunofluorescent anti-NeuN labelling on five adult human brains in three cortical regions-Brodmann areas (BA) 9, 14r, and 24. We reconstructed the cell bodies of 90,723 NeuN-positive cells and analyzed their morphometric characteristics by cortical region and layer. We used a supervised neural network prediction algorithm to classify the reconstructions into morphological cell types. We used the results of the prediction algorithm to determine the proportions of different cell types in BA9, BA14r and BA24.
Our analysis revealed that the cytoarchitectonic descriptions of BA9, BA14r and BA24 were reflected in the morphometric measures and cell classifications obtained by the prediction algorithm. BA9 was characterized by the abundance of large pyramidal cells in layer III, BA14r was characterized by relatively smaller and more elongated cells compared to BA9, and BA24 was characterized by the presence of extremely elongated cells in layer V as well as relatively higher proportions of irregularly shaped cells.
The results of the prediction model agreed well with the qualitative expected cytoarchitectonic descriptions. This suggests that supervised machine learning could aid in defining the morphological characteristics of the cerebral cortex.
皮质区域和层之间的细胞构筑边界通常由某些细胞类型的存在与否来定义。然而,这些细胞类型往往没有明确定义,确定区域和层的确切边界可能具有挑战性。因此,在我们的研究中,我们试图基于明确的定量标准来定义皮质区域和层。
我们对三个皮质区域——布罗德曼区(BA)9、14r和24的五个成人大脑进行了抗NeuN免疫荧光标记。我们重建了90723个NeuN阳性细胞的细胞体,并按皮质区域和层分析了它们的形态特征。我们使用监督神经网络预测算法将重建结果分类为形态学细胞类型。我们利用预测算法的结果来确定BA9、BA14r和BA24中不同细胞类型的比例。
我们的分析表明,BA9、BA14r和BA24的细胞构筑描述反映在预测算法获得的形态测量和细胞分类中。BA9的特征是III层中大量的大锥体细胞,与BA9相比,BA14r的特征是细胞相对较小且更长,BA24的特征是V层中存在极长的细胞以及不规则形状细胞的比例相对较高。
预测模型的结果与预期的定性细胞构筑描述非常吻合。这表明监督机器学习有助于定义大脑皮质的形态特征。