Multi-resolution analysis enables fidelity-ensured deconvolution for fluorescence microscopy

IF 27.2 Q1 OPTICS
eLight Pub Date : 2024-08-06 DOI:10.1186/s43593-024-00073-7
Yiwei Hou, Wenyi Wang, Yunzhe Fu, Xichuan Ge, Meiqi Li, Peng Xi
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引用次数: 0

Abstract

Fluorescence microscopic imaging is essentially a convolution process distorted by random noise, limiting critical parameters such as imaging speed, duration, and resolution. Though algorithmic compensation has shown great potential to enhance these pivotal aspects, its fidelity remains questioned. Here we develop a physics-rooted computational resolution extension and denoising method with ensured fidelity. Our approach employs a multi-resolution analysis (MRA) framework to extract the two main characteristics of fluorescence images against noise: across-edge contrast, and along-edge continuity. By constraining the two features in a model-solution framework using framelet and curvelet, we develop MRA deconvolution algorithms, which improve the signal-to-noise ratio (SNR) up to 10 dB higher than spatial derivative based penalties, and can provide up to two-fold fidelity-ensured resolution improvement rather than the artifact-prone Richardson-Lucy inference. We demonstrate our methods can improve the performance of various diffraction-limited and super-resolution microscopies with ensured fidelity, enabling accomplishments of more challenging imaging tasks.

Abstract Image

多分辨率分析可确保荧光显微镜的解卷积保真度
荧光显微成像本质上是一个被随机噪声扭曲的卷积过程,限制了成像速度、持续时间和分辨率等关键参数。虽然算法补偿在增强这些关键方面显示出巨大潜力,但其保真度仍受到质疑。在此,我们开发了一种以物理学为基础的计算分辨率扩展和去噪方法,以确保其保真度。我们的方法采用多分辨率分析(MRA)框架来提取荧光图像对抗噪声的两个主要特征:跨边缘对比度和沿边缘连续性。通过在模型求解框架中使用小帧和小曲线对这两个特征进行约束,我们开发出了 MRA 解卷积算法,与基于空间导数的惩罚相比,该算法可将信噪比 (SNR) 提高 10 dB,并可将保真度保证的分辨率提高两倍,而不是采用容易产生伪影的 Richardson-Lucy 推理。我们证明,我们的方法可以提高各种衍射极限和超分辨率显微镜的性能,并确保其保真度,从而完成更具挑战性的成像任务。
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CiteScore
30.40
自引率
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