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High-Throughput Low-Cost Segmentation of Brightfield Microscopy Live Cell Images

High-Throughput Low-Cost Segmentation of Brightfield Microscopy Live Cell Images

来源:Arxiv_logoArxiv
英文摘要

Live cell culture is crucial in biomedical studies for analyzing cell properties and dynamics in vitro. This study focuses on segmenting unstained live cells imaged with bright-field microscopy. While many segmentation approaches exist for microscopic images, none consistently address the challenges of bright-field live-cell imaging with high throughput, where temporal phenotype changes, low contrast, noise, and motion-induced blur from cellular movement remain major obstacles. We developed a low-cost CNN-based pipeline incorporating comparative analysis of frozen encoders within a unified U-Net architecture enhanced with attention mechanisms, instance-aware systems, adaptive loss functions, hard instance retraining, dynamic learning rates, progressive mechanisms to mitigate overfitting, and an ensemble technique. The model was validated on a public dataset featuring diverse live cell variants, showing consistent competitiveness with state-of-the-art methods, achieving 93% test accuracy and an average F1-score of 89% (std. 0.07) on low-contrast, noisy, and blurry images. Notably, the model was trained primarily on bright-field images with limited exposure to phase- contrast microscopy (<20%), yet it generalized effectively to the phase-contrast LIVECell dataset, demonstrating modality, robustness and strong performance. This highlights its potential for real- world laboratory deployment across imaging conditions. The model requires minimal compute power and is adaptable using basic deep learning setups such as Google Colab, making it practical for training on other cell variants. Our pipeline outperforms existing methods in robustness and precision for bright-field microscopy segmentation. The code and dataset are available for reproducibility 1.

Surajit Das、Gourav Roy、Pavel Zun

生物科学研究方法、生物科学研究技术细胞生物学

Surajit Das,Gourav Roy,Pavel Zun.High-Throughput Low-Cost Segmentation of Brightfield Microscopy Live Cell Images[EB/OL].(2025-08-23)[2025-09-02].https://arxiv.org/abs/2508.14106.点此复制

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