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首页> 外文期刊>Journal of Pathology Informatics >Approaches to automatic parameter fitting in a microscopy image segmentation pipeline: An exploratory parameter space analysis
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Approaches to automatic parameter fitting in a microscopy image segmentation pipeline: An exploratory parameter space analysis

机译:显微镜图像分割管道中自动参数拟合的方法:探索性参数空间分析

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Introduction:Research and diagnosis in medicine and biology often require the assessment of a large amount of microscopy image data. Although on the one hand, digital pathology and new bioimaging technologies find their way into clinical practice and pharmaceutical research, some general methodological issues in automated image analysis are still open.Methods:In this study, we address the problem of fitting the parameters in a microscopy image segmentation pipeline. We propose to fit the parameters of the pipeline's modules with optimization algorithms, such as, genetic algorithms or coordinate descents, and show how visual exploration of the parameter space can help to identify sub-optimal parameter settings that need to be avoided.Results:This is of significant help in the design of our automatic parameter fitting framework, which enables us to tune the pipeline for large sets of micrographs.Conclusion:The underlying parameter spaces pose a challenge for manual as well as automated parameter optimization, as the parameter spaces can show several local performance maxima. Hence, optimization strategies that are not able to jump out of local performance maxima, like the hill climbing algorithm, often result in a local maximum.
机译:简介:医学和生物学的研究和诊断通常需要评估大量的显微镜图像数据。尽管一方面,数字病理学和新的生物成像技术已进入临床实践和药物研究,但自动图像分析中的一些一般方法学问题仍然未解决。方法:在本研究中,我们解决了将参数拟合到模型中的问题。显微镜图像分割管线。我们建议使用遗传算法或协调下降等优化算法为管道模块的参数进行拟合,并展示对参数空间的视觉探索如何帮助确定需要避免的次优参数设置。在设计自动参数拟合框架方面有很大帮助,这使我们能够为大量显微照片调整管道。结论:潜在的参数空间对手动以及自动参数优化提出了挑战,因为参数空间可以显示几个局部性能最大值。因此,像爬山算法那样无法跳出局部性能最大值的优化策略通常会导致局部最大值。

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