首页> 外文会议>Biomedical Imaging (ISBI), 2012 9th IEEE International Symposium on >A Bayesian method for 3D estimation of subcellular particle features in multi-angle TIRF microscopy
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A Bayesian method for 3D estimation of subcellular particle features in multi-angle TIRF microscopy

机译:多角度TIRF显微镜中3D估计亚细胞颗粒特征的贝叶斯方法

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Multi-angle total internal reflection fluorescence microscopy (MA-TIRFM) is a relatively new and powerful tool to study subcellular particles near cell membrane due to its unique illumination mechanism. We present a MAP-Bayesian method to automatically estimate features of individual particles in MA-TIRF images, including 3D positions, relative sizes, and relative amount of fluorophores. Using the MAP criterion, the optimal values of the features can be obtained by maximizing a nonlinear functional. Initial feature values are estimated by using image filters and clustering algorithms. The method is evaluated on synthetic data and results show that it has high accuracy. The result on real data from our initial experiments is also presented.
机译:多角度全内反射荧光显微镜(MA-TIRFM)由于其独特的照明机制,是研究细胞膜附近亚细胞颗粒的一种相对较新且功能强大的工具。我们提出了一种MAP-贝叶斯方法来自动估计MA-TIRF图像中单个粒子的特征,包括3D位置,相对大小和相对荧光团数量。使用MAP准则,可以通过最大化非线性函数来获得特征的最佳值。初始特征值通过使用图像过滤器和聚类算法进行估算。对合成数据进行了评估,结果表明该方法具有较高的准确性。还提供了来自我们最初实验的真实数据的结果。

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