Domain-specific AI segmentation of IMPDH2 rod/ring structures in mouse embryonic stem cells.

小鼠胚胎干细胞中 IMPDH2 棒状/环状结构的特定领域 AI 分割

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作者:Ball Samuel T M, Hennessy Meagan J, Tan Yuhan, Hoettges Kai F, Perkins Neil D, Wilkinson David J, White Michael R H, Zheng Yalin, Turner David A
BACKGROUND: Inosine monophosphate dehydrogenase 2 (IMPDH2) is an enzyme that catalyses the rate-limiting step of guanine nucleotides. In mouse embryonic stem cells (ESCs), IMPDH2 forms large multi-protein complexes known as rod-ring (RR) structures that dissociate when ESCs differentiate. Manual analysis of RR structures from confocal microscopy images, although possible, is not feasible on a large scale due to the quantity of RR structures present in each field of view. To address this analysis bottleneck, we have created a fully automatic RR image classification pipeline to segment, characterise and measure feature distributions of these structures in ESCs. RESULTS: We find that this model can automatically segment images with a Dice score of over 80% for both rods and rings for in-domain images compared to expert annotation, with a slight drop to 70% for datasets out of domain. Important feature measurements derived from these segmentations show high agreement with the measurements derived from expert annotation, achieving an R(2) score of over 90% for counting the number of RRs over the dataset. CONCLUSIONS: We have established for the first time a quantitative baseline for RR distribution in pluripotent ESCs and have made a pipeline available for training to be applied to other models in which RR remain an open topic of study.

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