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Combining Mathematical Morphology and the Hilbert Transform for Fully Automatic Nuclei Detection in Fluorescence Microscopy

机译:结合数学形态学和HILBERT转化在荧光显微镜下全自动核检测

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Accurate and reliable nuclei identification is an essential part of quantification in microscopy. A range of mathematical and machine learning approaches are used but all methods have limitations. Such limitations include sensitivity to user parameters or a need for pre-processing in classical approaches or the requirement for relatively large amounts of training data in deep learning approaches. Here we demonstrate a new approach for nuclei detection that combines mathematical morphology with the Hilbert transform to detect the centres, sizes and orientations of elliptical objects. We evaluate this approach on datasets from the Broad Bioimage Benchmark Collection and compare it to established algorithms and previously published results. We show this new approach to outperform established classical approaches and be comparable in performance to deep-learning approaches. We believe this approach to be a competitive algorithm for nuclei detection in microscopy.
机译:准确可靠的核鉴定是显微镜中量化的重要组成部分。使用一系列数学和机器学习方法,但所有方法都有局限性。这种限制包括对用户参数的敏感性或需要在经典方法中预处理或对深度学习方法中相对大量的培训数据的要求。在这里,我们证明了一种新的核检测方法,将数学形态与希尔伯特变换相结合以检测椭圆形物体的中心,尺寸和方向。我们从广泛的BioImage基准集合中评估了对数据集的方法,并将其与已建立的算法和以前公布的结果进行比较。我们展示了这种新方法来满足了建立的经典方法,并在对深度学习方法的性能方面进行比较。我们认为这种方法是显微镜中核检测的竞争算法。

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