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Statistical Analysis of the Relationship between Spots and Structures in Microscopy Images

机译:显微镜图像中斑点与结构之间关系的统计分析

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Fluorescence microscopy image analysis plays an important role in biomedical diagnostics and is an essential approach for researching and investigating the development and state of various diseases. In this paper we describe an approach for analyzing nanoscale microscopy images in which spots and background structures are identified and their relationship is quantified. A spatial analysis approach is used for identifying spots, then clustering of these spots is performed and those clusters are characterized using a series of here defined features. These cluster characteristics are used for comparing images via statistical hypothesis tests (using the Kolmogorov-Smirnov test for the equality of probability distributions). Moreover, to achieve a better distinction we additionally define features that quantify the relationship of clusters of spots and background structures. In the empirical section we demonstrate the use of this approach in the analysis of microscopy images of brain structures of patients potentially suffering from a neural disease (e.g., depression or schizophrenia). Using the here presented approach we will be able to investigate the development and state of various diseases in a better way and help to find more systematic medication of diseases in the future.
机译:荧光显微镜图像分析在生物医学诊断中起着重要作用,是研究和研究各种疾病发展和状态的基本方法。在本文中,我们描述了一种分析纳米级显微镜图像的方法,其中识别出斑点和背景结构并量化它们的关系。空间分析方法用于识别斑点,然后执行这些斑点的聚类,并且这些簇使用一系列定义的功能表征了这些簇。这些簇特性用于通过统计假设测试进行比较图像(使用Kolmogorov-Smirnov测试进行概率分布的平等)。此外,为了实现更好的区别,我们还包括定义量化斑点和背景结构簇关系的特征。在经验部分中,我们证明了这种方法在分析患有神经疾病的患者脑结构的显微镜图像中(例如,抑郁或精神分裂症)。使用此处提出的方法,我们将能够以更好的方式调查各种疾病的发展和状态,并有助于未来寻找更系统的疾病药物。

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