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Lung damage analyzed by machine vision on tissue sections of mice

机译:小鼠组织切片机视力分析肺部损伤

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摘要

The inhalation of environmental toxicants can induce lung damage. Many methods are currently available to analyze lung tissue damage and are based on empirical visual judgment; however, the accuracy of the assessments are influenced by individual differences among pathologists. Here, we establish new methods of analysis for lung tissue sections based on machine vision and verify this new automatic high-flux method with the model of mice inhaling aqueous aerosol with different concentrations of CdCl2 (0, 1, 3, 5 mM 2 h/day) for 7 days through analyses of pulmonary porosity, mucus, pneumonia and co-localized staining. Additionally, the correlation analysis among the concentrations of CdCl2 in aqueous aerosol, the high-flux analyses and empirical visual judgment methods demonstrate the practicality of the new automatic method. The comparison between the high-flux analyses and the empirical visual judgment methods demonstrates the superiority of the new automatic method. In the future, these new automatic high-flux analyses based on machine vision could be conducive to pulmonary histology and pathology research.
机译:吸入环境毒性会诱导肺部损伤。目前正在使用许多方法来分析肺组织损伤,并基于经验视觉判断;但是,评估的准确性受病理学家之间个体差异的影响。在此,我们基于机器视觉建立新的肺组织切片分析方法,并验证了这种新的自动高通量方法,用不同浓度的CDCl 2(0,1,3,5mM 2 H /一天)通过分析肺孔隙,粘液,肺炎和共同局部染色7天。另外,高通量分析和经验视觉判断方法的CDCl2浓度之间的相关分析表明了新的自动方法的实用性。高通量分析与经验视觉判断方法之间的比较展示了新的自动方法的优越性。未来,基于机器视觉的这些新的自动高通量分析可能有利于肺组织学和病理研究。

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