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Colocalization Estimation Using Graphical Modeling and Variational Bayesian Expectation Maximization: Towards a Parameter-Free Approach

机译:使用图形建模和变分贝叶斯期望最大化的共定位估计:迈向无参数方法

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In microscopy imaging, colocalization between two biological entities (e.g., protein-protein or protein-cell) refers to the (stochastic) dependencies between the spatial locations of the two entities in the biological specimen. Measuring colocalization between two entities relies on fluorescence imaging of the specimen using two fluorescent chemicals, each of which indicates the presence/absence of one of the entities at any pixel location. State-of-the-art methods for estimating colocalization rely on post-processing image data using an adhoc sequence of algorithms with many free parameters that are tuned visually. This leads to loss of reproducibility of the results. This paper proposes a brand-new framework for estimating the nature and strength of colocalization directly from corrupted image data by solving a single unified optimization problem that automatically deals with noise, object labeling, and parameter tuning. The proposed framework relies on probabilistic graphical image modeling and a novel inference scheme using variational Bayesian expectation maximization for estimating all model parameters, including colocalization, from data. Results on simulated and real-world data demonstrate improved performance over the state of the art.
机译:在显微镜成像中,两个生物实体(例如,蛋白质-蛋白质或蛋白质-细胞)之间的共定位是指生物学样本中两个实体的空间位置之间的(随机)依赖性。测量两个实体之间的共定位依赖于使用两种荧光化学物质对样品进行的荧光成像,每种荧光化学物质都表明在任何像素位置都存在/不存在一个实体。估计共定位的最新方法依赖于使用一系列具有视觉自由调整的自由参数的算法的即席序列对图像数据进行后处理。这导致结果再现性的损失。本文提出了一个全新的框架,通过解决一个统一的优化问题,该问题可自动处理噪声,对象标记和参数调整,从而直接从损坏的图像数据中估计共定位的性质和强度。所提出的框架依赖于概率图形图像建模和使用变分贝叶斯期望最大化的新型推理方案,用于从数据中估计所有模型参数,包括共定位。模拟和真实数据的结果表明,与现有技术相比,性能得到了改善。

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