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Towards a versatile automated cell-detection system for science and diagnostics

机译:对科学和诊断的多功能自动化细胞检测系统

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Analyzing in-situ tissue structures with complex shapes and textures such as multinuclear cells or cells without nuclei is still a challenge for currently available imageprocessing software. This work aims to provide a versatile system to solve such tasks provided that the structures of interests were detected by immunofluorescence microscopy. Images were automatically acquired using slide-based microscopy. Human domain-experts manually marked up tissue samples to evaluate the performance of the computer generated masks. From precision and recall a balanced F-score was computed to measure the correlation between experts and algorithm output. Exhaustive parameter optimization was conducted to ensure that the optimal input parameters were applied during evaluation of the developed algorithm. This procedure significantly increased the performance compared to manually chosen input parameters. We present an approach that can handle huge tissue areas and does not rely on nuclei detection. Once a markup has been created, the algorithm can be parameter-optimized on ground-truth data for the chosen tissue sample. Thereafter, the resulting settings could be applied automatically to the respective stitched image. Concluding, we provide new insights in physiological and pathopysiological cellular mechanisms by automating the in-situ analysis of proteins in intact tissues.
机译:分析具有复杂形状和纹理的原位组织结构,例如没有核的多核细胞或细胞仍然是目前可用的图像分析软件的挑战。这项工作旨在提供多功能的系统来解决这些任务,条件是通过免疫荧光显微镜检测到感兴趣的结构。使用基于幻灯片的显微镜自动获取图像。人类领域专家手动标记组织样本以评估计算机生成的掩模的性能。从精度和调用均衡的F分数计算以测量专家和算法输出之间的相关性。进行了详尽的参数优化,以确保在发达算法的评估期间应用了最佳输入参数。与手动选择的输入参数相比,此过程显着提高了性能。我们提出了一种可以处理巨大组织区域的方法,并且不依赖于核检测。一旦创建了标记,算法就可以在所选组织样本的地面真实数据上进行参数优化。此后,可以将产生的设置自动应用于相应的缝合图像。结论,我们通过自动分析完整组织中的蛋白质的原位分析,提供了新的生理和病于病理学细胞机制的新见解。

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