通过深度设计优化增强光片荧光显微镜照明光束

Chen Li, Mani R Rai, Yuheng Cai, H. Troy Ghashghaei, Alon Greenbaum
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引用次数: 0

摘要

光片荧光显微镜(LSFM)提供了光学切片的好处,加上组织清除标本成像的快速采集时间。这允许大组织体积的高分辨率3D成像。LSFM固有的特点是,成像质量很大程度上依赖于照明光束的特性,即照明光束只能照亮被成像的薄部分。因此,大量的努力致力于识别细长,非衍射光束轮廓,可以产生均匀和高对比度的图像。一个持续的争论涉及到最优照明光束的使用;高斯,贝塞尔,艾里模式和/或其他。由于其优化目标往往不同,因此对不同光束剖面进行比较具有挑战性。考虑到我们的大型成像数据集(每个样本约0.5TB图像)已经使用深度学习模型进行了分析,我们设想了一种不同的方法来解决这个问题,假设我们可以定制照明光束来提高深度学习模型的性能。我们通过将经过可变相位掩模的物理LSFM照明模型集成到细胞检测网络的训练中来实现这一点。在这里,我们报告联合优化不断更新相位掩模,提高图像质量,以获得更好的细胞检测。通过模拟和实验证明了我们的方法的有效性,与传统的高斯光片相比,我们的方法在成像质量上有了实质性的提高。我们通过一种计算方法为设计显微镜系统提供了有价值的见解,该方法展示了推进光学设计的巨大潜力,该设计依赖于深度学习模型来分析成像数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Light-Sheet Fluorescence Microscopy Illumination Beams through Deep Design Optimization
Light sheet fluorescence microscopy (LSFM) provides the benefit of optical sectioning coupled with rapid acquisition times for imaging of tissue-cleared specimen. This allows for high-resolution 3D imaging of large tissue volumes. Inherently to LSFM, the quality of the imaging heavily relies on the characteristics of the illumination beam, with the notion that the illumination beam only illuminates a thin section that is being imaged. Therefore, substantial efforts are dedicated to identifying slender, non-diffracting beam profiles that can yield uniform and high-contrast images. An ongoing debate concerns the employment of the most optimal illumination beam; Gaussian, Bessel, Airy patterns and/or others. Comparisons among different beam profiles is challenging as their optimization objective is often different. Given that our large imaging datasets (~0.5TB images per sample) is already analyzed using deep learning models, we envisioned a different approach to this problem by hypothesizing that we can tailor the illumination beam to boost the deep learning models performance. We achieve this by integrating the physical LSFM illumination model after passing through a variable phase mask into the training of a cell detection network. Here we report that the joint optimization continuously updates the phase mask, improving the image quality for better cell detection. Our method's efficacy is demonstrated through both simulations and experiments, revealing substantial enhancements in imaging quality compared to traditional Gaussian light sheet. We offer valuable insights for designing microscopy systems through a computational approach that exhibits significant potential for advancing optics design that relies on deep learning models for analysis of imaging datasets.
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