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Detecting spongiosis in stained histopathological specimen using multispectral imaging and machine learning

机译:使用多光谱成像和机器学习检测染色的病理组织标本中的海绵状病变

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Pathologists spend nearly 80% of their time analysing pathological tissue samples. In addition, the diagnosis is subject to inter/intra-observer variability. Thus to increase productivity and repeatability, a new field known as Computational Pathology has emerged which combines the field of pathology with computer vision, pattern recognition and machine learning. This research develops a new computational pathology framework specifically to aid with detecting a condition known as spongiosis caused by Newcastle Disease Virus infection in poultry. It combines the use of multispectral imaging with feature extraction and classification to detect areas of spongiosis in tissue of infected poultry. The success of this framework is the first step towards a completely automated diagnosis tool for histopathology.
机译:病理学家花费了将近80%的时间来分析病理组织样本。另外,诊断受观察者间/观察者内变异性的影响。因此,为了提高生产率和可重复性,出现了一个称为计算病理学的新领域,该领域将病理学领域与计算机视觉,模式识别和机器学习相结合。这项研究开发了一种新的计算病理学框架,专门用于检测禽类中由新城疫病毒感染引起的海绵体病。它将多光谱成像与特征提取和分类相结合,以检测受感染家禽组织中的海绵状变区域。该框架的成功是朝着组织病理学全自动诊断工具迈出的第一步。

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