通过贝叶斯优化和深度学习实现卷曲癌球中的高分辨率单细胞分割

Isabel Mogollon, Michaela Feodoroff, Pedro Neto, Alba Montedeoca, Vilja Pietiainen, Lassi Paavolainen
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引用次数: 0

摘要

了解三维多细胞球体内的细胞功能对推进癌症研究至关重要,尤其是在研究细胞间相互作用作为新型药物疗法的潜在靶点方面。然而,在三维培养物中进行精确的单细胞分割具有挑战性,因为细胞密集成群,而且人工注释不切实际。我们介绍了一种高通量(HT)三维单细胞分析流水线,它结合了优化的湿实验室条件、基于深度学习(DL)的分割模型和贝叶斯优化来应对这些挑战。通过使用活细胞核和细胞质染料,我们实现了对肾癌和免疫 T 细胞单培养物和共培养物中细胞群的清晰而均匀的染色,提高了球形细胞中的单细胞检测能力。我们的管道集成了图像预处理和基于 3DUnet 架构的 DL 模型,能够对密集的三维结构进行稳健的分割。在自定义目标函数的指导下,我们采用贝叶斯优化法来完善分割参数,并根据生物相关标准提高质量。该管道成功地分割了各种药物治疗下的细胞,揭示了大量传统检测方法无法检测到的药物诱导变化。这种方法有望应用于更复杂的生物样本,包括类器官共培养、不同的药物处理,以及与其他免疫染色检测的整合,为单细胞反应的详细 HT 分析铺平道路。
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Achieving high-resolution single-cell segmentation in convoluted cancer spheroids via Bayesian optimization and deep-learning
Understanding cellular function within 3D multicellular spheroids is essential for advancing cancer research, particularly in studying cell-stromal interactions as potential targets for novel drug therapies. However, accurate single-cell segmentation in 3D cultures is challenging due to dense cell clustering and the impracticality of manual annotations. We present a high-throughput (HT) 3D single-cell analysis pipeline that combines optimized wet-lab conditions, deep learning (DL)-based segmentation models, and Bayesian optimization to address these challenges. By using live-cell nuclear and cytoplasmic dyes, we achieved clear and uniform staining of cell populations in renal cancer and immune T-cell monocultures and cocultures, improving single-cell detection in spheroids. Our pipeline integrates image preprocessing and DL models based on 3DUnet architecture, enabling robust segmentation of densely packed 3D structures. Bayesian optimization, guided by a custom objective function, was employed to refine segmentation parameters and improve quality based on biologically relevant criteria. The pipeline successfully segments cells under various drug treatments, revealing drug-induced changes not detectable by bulk conventional assays. This approach has potential for application to more complex biological samples, including, organoid co-cultures, diverse drug treatments, and integration with additional immunostaining assays, paving the way for detailed HT analyses of single-cell responses.
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