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Improved super-resolution optical fluctuation imaging by multiple sparse Bayesian learning method

机译:多重稀疏贝叶斯学习方法改进的超分辨率光学涨落成像

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By exploiting the statistics of temporal fluorescent fluctuations, super-resolution optical fluctuation imaging (SOFI) can implement a fast super-resolution microscopy imaging, which is suitable for dynamic live-cell imaging. However, the main drawback of SOFI is that the imaging spatial resolution can be surpassed by the localization-based super-resolution microscopy techniques. To address this problem, we propose a new method, which is achieved by using multiple sparse Bayesian learning (M-SBL) method. Since M-SBL method can take into account simultaneously temporal fluctuations and the sparsity priors of emitter, it provides the possibility to obtain an enhancement in spatial resolution compared to standard SOFI (only considering the temporal fluctuations). To measure the performance of our proposed method, we designed three sets of simulation experiments. Firstly, we compared the performance of M-SBL and SOFT in resolving single emitter, and simulation results have demonstrated that the M-SBL method outperforms SOFI. Furthermore, the other simulation data with varying signal to noise and frame number were used to evaluate the performance of M-SBL in resolving fine structures. And the results indicate that when using the proposed M-SBL method, the imaging spatial resolution can be improved compared to the standard SOFI method. Hence, the M-SBL method provides the potential for increasing the temporal resolution of super-resolution microscopy while maintaining a desired spatial resolution.
机译:通过利用时间荧光波动的统计信息,超分辨率光学波动成像(SOFI)可以实现快速的超分辨率显微成像,适用于动态活细胞成像。但是,SOFI的主要缺点是成像空间分辨率可以被基于定位的超分辨率显微技术所超越。为了解决这个问题,我们提出了一种新的方法,该方法是通过使用多重稀疏贝叶斯学习(M-SBL)方法实现的。由于M-SBL方法可以同时考虑时间波动和辐射源的稀疏先验,因此与标准SOFI相比(仅考虑时间波动),它提供了获得空间分辨率增强的可能性。为了衡量我们提出的方法的性能,我们设计了三套模拟实验。首先,我们比较了M-SBL和SOFT在解决单发射器方面的性能,仿真结果表明M-SBL方法优于SOFI。此外,使用具有变化的信噪比和帧数的其他模拟数据来评估M-SBL在解析精细结构方面的性能。结果表明,与标准的SOFI方法相比,使用所提出的M-SBL方法可以提高成像空间分辨率。因此,M-SBL方法提供了在保持所需空间分辨率的同时提高超分辨率显微镜的时间分辨率的潜力。

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