Irfan Melis O, González-Solares Eduardo A, Whitmarsh Tristan, Molaeinezhad Alireza, Al Sa'd Mohammad, Mulvey Claire M, Ribes Marta Páez, Fatemi Atefeh, Bressan Dario, Walton Nicholas A
Institute of Astronomy, University of Cambridge, Cambridge, United Kingdom.
Precision Breast Cancer Institute, Department of Oncology, University of Cambridge, Cambridge, United Kingdom.
Front Genet. 2025 Jul 15;16:1547788. doi: 10.3389/fgene.2025.1547788. eCollection 2025.
Cell segmentation is a crucial step in numerous biomedical imaging endeavors-so much so that the community is flooded with publicly available, state-of-the-art segmentation techniques ready for out-of-the-box use. Assessing the strengths and limitations of each method on a tissue sample set and then selecting the optimal method for each research objective and input image are time-consuming and exacting tasks that often monopolize the resources of biologists, biochemists, immunologists, and pathologists, despite not being the primary goal of their research projects. In this work, we present a segmentation software wrapper, coined CellSampler, which runs a selection of established segmentation methods and then combines their individual segmentation masks into a single optimized mask. This so-called "uber mask" selects the best of the established masks across local neighborhoods within the image, where both the neighborhood size and the statistical measure used to define what qualifies as "best" are user-defined.
细胞分割是众多生物医学成像工作中的关键步骤——以至于该领域充斥着大量可公开获取的、现成可用的先进分割技术。在一个组织样本集上评估每种方法的优缺点,然后为每个研究目标和输入图像选择最佳方法,是耗时且艰巨的任务,常常占据生物学家、生物化学家、免疫学家和病理学家的资源,尽管这并非他们研究项目的主要目标。在这项工作中,我们展示了一个分割软件包装器,名为CellSampler,它运行一系列既定的分割方法,然后将它们各自的分割掩码组合成一个单一的优化掩码。这个所谓的“超级掩码”在图像中的局部邻域内选择既定掩码中最好的,其中邻域大小和用于定义何为“最佳”的统计度量均由用户定义。