塞普汀
显微镜
生物
生物系统
深度学习
超分辨率
分辨率(逻辑)
纳米尺度
计算机科学
人工智能
模式识别(心理学)
计算生物学
纳米技术
材料科学
胞质分裂
光学
物理
图像(数学)
遗传学
细胞分裂
细胞
作者
Amin Zehtabian,Paul Markus Müller,Maximilian Goisser,Leon Obendorf,Lea Jänisch,Nadja Hümpfer,Jakob Rentsch,Helge Ewers
标识
DOI:10.1091/mbc.e22-02-0039
摘要
The combination of image analysis and superresolution microscopy methods allows for unprecedented insight into the organization of macromolecular assemblies in cells. Advances in deep learning (DL)-based object recognition enable the automated processing of large amounts of data, resulting in high accuracy through averaging. However, while the analysis of highly symmetric structures of constant size allows for a resolution approaching the dimensions of structural biology, DL-based image recognition may introduce bias. This prohibits the development of readouts for processes that involve significant changes in size or shape of amorphous macromolecular complexes. Here we address this problem by using changes of septin ring structures in single molecule localization-based superresolution microscopy data as a paradigm. We identify potential sources of bias resulting from different training approaches by rigorous testing of trained models using real or simulated data covering a wide range of possible results. In a quantitative comparison of our models, we find that a trade-off exists between measurement accuracy and the range of recognized phenotypes. Using our thus verified models, we find that septin ring size can be explained by the number of subunits they are assembled from alone. Furthermore, we provide a new experimental system for the investigation of septin polymerization.
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