Department of Physics, University of Washington, Seattle, WA, USA.
HHMI Janelia Research Campus, Ashburn, VA, USA.
Nat Methods. 2022 Nov;19(11):1438-1448. doi: 10.1038/s41592-022-01639-4. Epub 2022 Oct 17.
Advances in microscopy hold great promise for allowing quantitative and precise measurement of morphological and molecular phenomena at the single-cell level in bacteria; however, the potential of this approach is ultimately limited by the availability of methods to faithfully segment cells independent of their morphological or optical characteristics. Here, we present Omnipose, a deep neural network image-segmentation algorithm. Unique network outputs such as the gradient of the distance field allow Omnipose to accurately segment cells on which current algorithms, including its predecessor, Cellpose, produce errors. We show that Omnipose achieves unprecedented segmentation performance on mixed bacterial cultures, antibiotic-treated cells and cells of elongated or branched morphology. Furthermore, the benefits of Omnipose extend to non-bacterial subjects, varied imaging modalities and three-dimensional objects. Finally, we demonstrate the utility of Omnipose in the characterization of extreme morphological phenotypes that arise during interbacterial antagonism. Our results distinguish Omnipose as a powerful tool for characterizing diverse and arbitrarily shaped cell types from imaging data.
显微镜技术的进步有望实现对细菌单细胞水平形态和分子现象的定量和精确测量;然而,这种方法的潜力最终受到能够独立于形态或光学特征准确分割细胞的方法的限制。在这里,我们介绍了 Omnipose,一种深度神经网络图像分割算法。独特的网络输出,如距离场的梯度,使 Omnipose 能够准确地分割当前算法(包括其前身 Cellpose)产生错误的细胞。我们表明,Omnipose 在混合细菌培养物、抗生素处理的细胞和形态拉长或分支的细胞上实现了前所未有的分割性能。此外,Omnipose 的优势还扩展到非细菌对象、不同的成像模式和三维物体。最后,我们证明了 Omnipose 在描述细菌间拮抗过程中出现的极端形态表型方面的实用性。我们的结果表明,Omnipose 是一种从成像数据中对不同形状的细胞类型进行特征描述的强大工具。