Lee Hyun Jee, Liang Jingting, Chaudhary Shivesh, Moon Sihoon, Yu Zikai, Wu Taihong, Liu He, Choi Myung-Kyu, Zhang Yun, Lu Hang
School of Chemical & Biomolecular Engineering, Georgia Institute of Technology, United States.
Department of Organismic and Evolutionary Biology, Harvard University, United States.
bioRxiv. 2024 Feb 13:2023.06.07.543949. doi: 10.1101/2023.06.07.543949.
Cell identification is an important yet difficult process in data analysis of biological images. Previously, we developed an automated cell identification method called CRF_ID and demonstrated its high performance in whole-brain images (Chaudhary et al, 2021). However, because the method was optimized for whole-brain imaging, comparable performance could not be guaranteed for application in commonly used multi-cell images that display a subpopulation of cells. Here, we present an advance CRF_ID 2.0 that expands the generalizability of the method to multi-cell imaging beyond whole-brain imaging. To illustrate the application of the advance, we show the characterization of CRF_ID 2.0 in multi-cell imaging and cell-specific gene expression analysis in . This work demonstrates that high accuracy automated cell annotation in multi-cell imaging can expedite cell identification and reduce its subjectivity in and potentially other biological images of various origins.
细胞识别是生物图像数据分析中一项重要但困难的过程。此前,我们开发了一种名为CRF_ID的自动细胞识别方法,并在全脑图像中证明了其高性能(乔杜里等人,2021年)。然而,由于该方法是针对全脑成像进行优化的,因此在显示细胞亚群的常用多细胞图像中的应用无法保证具有可比的性能。在这里,我们提出了先进的CRF_ID 2.0,它将该方法的通用性扩展到全脑成像之外的多细胞成像。为了说明该先进方法的应用,我们展示了CRF_ID 2.0在多细胞成像中的特征以及在……中的细胞特异性基因表达分析。这项工作表明,多细胞成像中的高精度自动细胞注释可以加快细胞识别并降低其在……以及潜在的其他各种来源生物图像中的主观性。