Intelligent Vision Systems Lab, The University of Auckland, Auckland, New Zealand.
Theoretical Biology Group, Department of Creative Research, Exploratory Research Center on Life and Living Systems, National Institutes of Natural Sciences, 5-1 Higashiyama, Myodaiji, Okazaki, Aichi, 444-8787, Japan.
Neuroinformatics. 2024 Oct;22(4):745-761. doi: 10.1007/s12021-024-09688-0. Epub 2024 Oct 17.
Characterizing the anatomical structure and connectivity between cortical regions is a critical step towards understanding the information processing properties of the brain and will help provide insight into the nature of neurological disorders. A key feature of the mammalian cerebral cortex is its laminar structure. Identifying these layers in neuroimaging data is important for understanding their global structure and to help understand the connectivity patterns of neurons in the brain. We studied Nissl-stained and myelin-stained slice images of the brain of the common marmoset (Callithrix jacchus), which is a new world monkey that is becoming increasingly popular in the neuroscience community as an object of study. We present a novel computational framework that first acquired the cortical labels using AI-based tools followed by a trained deep learning model to segment cerebral cortical layers. We obtained a Euclidean distance of for the cortical labels acquisition, which was in the acceptable range by computing the half Euclidean distance of the average cortex thickness ( ). We compared our cortical layer segmentation pipeline with the pipeline proposed by Wagstyl et al. (PLoS biology, 18(4), e3000678 2020) adapted to 2D data. We obtained a better mean percentile Hausdorff distance (95HD) of . Whereas a mean 95HD of was obtained from Wagstyl et al. We also compared our pipeline's performance against theirs using their dataset (the BigBrain dataset). The results also showed better segmentation quality, Jaccard Index acquired from our pipeline, while was stated in their paper.
描绘皮质区域的解剖结构和连接性是理解大脑信息处理特性的关键步骤,有助于深入了解神经紊乱的本质。哺乳动物大脑皮质的一个关键特征是其分层结构。在神经影像学数据中识别这些层对于理解其整体结构以及帮助理解大脑中神经元的连接模式非常重要。我们研究了普通狨猴(Callithrix jacchus)的尼氏染色和髓鞘染色切片图像,普通狨猴作为神经科学研究的对象,在该领域越来越受欢迎。我们提出了一种新的计算框架,该框架首先使用基于人工智能的工具获取皮质标签,然后使用经过训练的深度学习模型对大脑皮质层进行分割。我们获得了皮质标签获取的欧几里得距离为 ,通过计算平均皮质厚度的半欧几里得距离( ),该距离在可接受范围内。我们将我们的皮质层分割管道与 Wagstyl 等人提出的管道进行了比较(PLoS biology,18(4),e3000678 2020),该管道适用于 2D 数据。我们获得了更好的平均 百分位 Hausdorff 距离(95HD),为 。而 Wagstyl 等人的平均 95HD 为 。我们还使用他们的数据集(BigBrain 数据集)比较了我们的管道和他们的管道的性能。结果还表明,我们的管道的分割质量更好,从我们的管道获得的 Jaccard 指数为 ,而他们的论文中则为 。