From shape to fate: making bacterial swarming expansion predictable
Shengyou Duan, Zhaoyang Wang, Kaiyi Xiong, Jin Zhu, Pengxi Gu, Weijie Chen, Hongyi Xin, Zijie Qu

TL;DR
This paper introduces SwarmEvo, a framework combining advanced segmentation and forecasting models to predict bacterial swarming expansion dynamics from time-lapse microscopy data.
Contribution
It develops a novel geometry-aware segmentation model and a morphology-level forecasting network, enabling accurate prediction of swarming front reorganization.
Findings
Morpher outperforms existing video prediction models in maintaining front localization.
Attention-based models with structural memory best preserve dense-finger propagation.
Segmentation improvements lead to more stable and accurate forecasts.
Abstract
Microbial swarming on mucosal surfaces reshapes microbial communities and influences mucosal healing and antibiotic tolerance. Yet even with time-lapse microscopy and deep learning, analyses of swarming colonies remain descriptive and cannot forecast how their fronts reorganize in time. This limitation is significant because the advancing edge determines access to nutrients, host tissue and competing microbes. We recast the expansion of Enterobacter sp. SM3 swarms as a problem of morphological forecasting, and assemble SwarmEvo, a time-lapse dataset represented as boundary-resolved segmentations. TexPol--Net, a texture- and geometry-aware segmentation model, sharpens diffuse edges and preserves fingered fronts, creating a stable substrate for dynamics. On this representation, we develop Morpher, an autoregressive forecasting network with a ``Morphon'' memory that links local curvature…
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