Chen Zhiyi, Zheng Weijie, Pang Keliang, Xia Debin, Guo Lingxiao, Chen Xuejin, Wu Feng, Wang Hao
National Engineering Laboratory for Brain-Inspired Intelligence Technology and Application, School of Information Science and Technology, University of Science and Technology of China, Hefei, China.
Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei, China.
Front Neurosci. 2023 Jan 19;16:1097019. doi: 10.3389/fnins.2022.1097019. eCollection 2022.
Alzheimer's disease (AD) is a great challenge for the world and hardly to be cured, partly because of the lack of animal models that fully mimic pathological progress. Recently, a rat model exhibiting the most pathological symptoms of AD has been reported. However, high-resolution imaging and accurate quantification of beta-amyloid (Aβ) plaques in the whole rat brain have not been fulfilled due to substantial technical challenges. In this paper, a high-efficiency data analysis pipeline is proposed to quantify Aβ plaques in whole rat brain through several terabytes of image data acquired by a high-speed volumetric imaging approach we have developed previously. A novel segmentation framework applying a high-performance weakly supervised learning method which can dramatically reduce the human labeling consumption is described in this study. The effectiveness of our segmentation framework is validated with different metrics. The segmented Aβ plaques were mapped to a standard rat brain atlas for quantitative analysis of the Aβ distribution in each brain area. This pipeline may also be applied to the segmentation and accurate quantification of other non-specific morphology objects.
阿尔茨海默病(AD)是全球面临的巨大挑战,几乎无法治愈,部分原因是缺乏能完全模拟病理进展的动物模型。最近,有报道称一种大鼠模型出现了AD的大多数病理症状。然而,由于存在重大技术挑战,尚未实现对整个大鼠大脑中β淀粉样蛋白(Aβ)斑块的高分辨率成像和精确量化。本文提出了一种高效的数据分析流程,通过我们之前开发的高速容积成像方法获取的数TB图像数据,对整个大鼠大脑中的Aβ斑块进行量化。本研究描述了一种新颖的分割框架,该框架应用了高性能的弱监督学习方法,可显著减少人工标注的工作量。我们的分割框架的有效性通过不同指标得到了验证。将分割出的Aβ斑块映射到标准大鼠脑图谱上,以对每个脑区的Aβ分布进行定量分析。该流程也可应用于其他非特异性形态物体的分割和精确量化。