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首页> 外文期刊>Toxicologic pathology >Using Automated Image Analysis Algorithms to Distinguish Normal, Aberrant, and Degenerate Mitotic Figures Induced by Eg5 Inhibition
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Using Automated Image Analysis Algorithms to Distinguish Normal, Aberrant, and Degenerate Mitotic Figures Induced by Eg5 Inhibition

机译:使用自动图像分析算法区分由Eg5抑制诱导的正常,异常和退化的有丝分裂形态

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摘要

Modulation of the cell cycle may underlie the toxicologic or pharmacologic responses of a potential therapeutic agent and contributes to decisions on its preclinical and clinical safety and efficacy. The descriptive and quantitative assessment of normal, aberrant, and degenerate mitotic figures in tissue sections is an important end point characterizing the effect of xenobiotics on the cell cycle. Historically, pathologists used manual counting and special staining visualization techniques such as immunohistochemistry for quantification of normal, aberrant, and degenerate mitotic figures. We designed an automated image analysis algorithm for measuring these mitotic figures in hematoxylin and eosin (H&E)-stained sections. Algorithm validation methods used data generated from a subcutaneous human transitional cell carcinoma xenograft model in nude rats treated with the cell cycle inhibitor Eg5. In these studies, we scanned and digitized H&E-stained xenografts and applied a complex ruleset of sequential mathematical filters and shape discriminators for classification of cell populations demonstrating normal, aberrant, or degenerate mitotic figures. The resultant classification system enabled the representations of three identifiable degrees of morphological change associated with tumor differentiation and compound effects. The numbers of mitotic figure variants and mitotic indices data generated corresponded to a manual assessment by a pathologist and supported automated algorithm verification and application for both efficacy and toxicity studies.
机译:细胞周期的调节可能是潜在治疗剂的毒理学或药理学反应的基础,并有助于决定其临床前和临床安全性和功效。对组织切片中正常,异常和简并的有丝分裂图的描述性和定量评估是表征异种素对细胞周期影响的重要终点。历史上,病理学家使用人工计数和特殊的染色可视化技术(例如免疫组织化学)来定量正常,异常和退化的有丝分裂图。我们设计了一种自动图像分析算法,用于测量苏木精和曙红(H&E)染色切片中的这些有丝分裂图形。算法验证方法使用的数据来自在用细胞周期抑制剂Eg5治疗的裸鼠中的皮下人类移行细胞癌异种移植模型。在这些研究中,我们对H&E染色的异种移植物进行了扫描和数字化处理,并应用了顺序数学过滤器和形状识别器的复杂规则集对显示正常,异常或简并有丝分裂图的细胞群进行分类。最终的分类系统可以表示与肿瘤分化和复合效应相关的三个可识别程度的形态变化。生成的有丝分裂图变体和有丝分裂指数数据的数量对应于病理学家的手动评估,并支持自动化算法验证以及用于功效和毒性研究。

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