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A novel Bayesian graphical model and perfect Monte Carlo EM algorithm for automated colocalization estimation in multichannel fluorescence microscopy

机译:一种新型贝叶斯图形模型及完美蒙特卡罗EM算法,用于多通道荧光显微镜中的自动分层估算

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In digital fluorescence microscopy, colocalization estimate between two biological entities within a specimen is often based on subjective visual inspection of images or ad hoc sequence of algorithms with several manually-tuned parameters, leading to irreproducible and unreliable estimates. We propose a novel Bayesian Markov random field (MRF) model for colocalization estimation from dual-channel images, encoding colocalization as a model parameter, to solve a unified data-driven optimization problem that, unlike existing methods, automatically deals with common-background removal, object labeling, parameter tuning, and noise. For model fitting, we propose Monte Carlo expectation maximization (EM) with perfect sampling extended from priors to posteriors, for our MRF model, to guarantee sampler convergence. We use consistent pseudo-likelihood estimators to deal with intractability in MRF parameter estimation. Results on simulated, benchmark, and real-world data show that our method estimates colocalization more reliably than the state of the art.
机译:在数字荧光显微镜中,标本内的两个生物实体之间的分层估计通常基于具有几个手动调谐参数的图像或临时算法的主观视觉检查,导致IRREProyucible和不可靠的估计。我们提出了一种新颖的贝叶斯马尔可夫随机字段(MRF)模型,用于从双通道图像中的分层估计,将分层化为模型参数,以解决统一的数据驱动优化问题,与现有方法不同,自动处理公共背景删除,对象标记,参数调整和噪声。对于模型拟合,我们提出了Monte Carlo期望最大化(EM),完美的采样从前脚扩展到后声音,用于我们的MRF模型,以保证采样器融合。我们使用一致的伪似然估计处理MRF参数估计中的诡计。结果模拟,基准和现实世界数据表明,我们的方法估计比现有技术更可靠地均衡。

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