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首页> 外文期刊>Cytopathology >Image analysis of hyperchromatic crowded cell groups in SurePath cervical cytology
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Image analysis of hyperchromatic crowded cell groups in SurePath cervical cytology

机译:SurePath子宫颈细胞学中过度拥挤的细胞群的图像分析

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Objective: The discrimination of hyperchromatic crowded cell groups (HCCGs) in cervical cytology is a difficult and error-prone interpretive task. While the classic features of dyskaryosis are of undoubted value, the contribution of size, shape and colour intensity of HCCGs is less certain. This study employed morphometric analysis to determine whether HCCG area, shape and colour intensity are useful in categorising them. Methods: Seventy-five digital images from each of six categories of HCCG were subjected to image analysis. Ten variables relating to HCCG size, shape and colour intensity were assessed by discriminant function analysis. A further 28 cases were employed as a test set to determine the classification accuracy of the discriminant model. All samples were SurePath liquid-based cytology preparations. Results: Nine of the 10 variables contributed significantly to the model (P<0.001) but no single variable had sufficient discriminative ability. Classification accuracy was highest for abnormal endocervical HCCGs and lowest for squamous metaplastic cells (64.0 vs. 17.3% correct classification rate). The accuracy of the model for distinguishing normal and abnormal HCCGs was 70.0%, which was significantly higher than chance (P<0.0001), but this reduced to 64.3% for the test cases, which was no better than chance (P>0.05). Conclusions: The area, shape and colour intensity of HCCGs, either alone or in combination, have little discriminative value. Practitioners and trainers should focus on the well-established features of dyskaryosis, such as chromatin pattern, nuclear membrane irregularities and group architecture. In terms of morphometric analysis, DNA ploidy and chromatin texture analysis may be more fruitful avenues of investigation.
机译:目的:在宫颈细胞学中鉴别高色拥挤细胞群(HCCG)是一项困难且容易出错的解释性任务。尽管旋风病的经典特征无疑具有价值,但HCCG的大小,形状和颜色强度的贡献尚不确定。这项研究采用形态计量分析来确定HCCG面积,形状和颜色强度是否对它们进行分类有用。方法:对六类HCCG中每类的75张数字图像进行图像分析。通过判别函数分析评估了与HCCG大小,形状和颜色强度有关的十个变量。另外28个案例用作测试集,以确定判别模型的分类准确性。所有样品均为基于SurePath液体的细胞学制剂。结果:10个变量中的9个对模型有显着贡献(P <0.001),但是没有一个变量具有足够的判别能力。异常宫颈内HCCG的分类准确度最高,鳞状化生细胞的分类准确度最低(正确分类率为64.0比17.3%)。用于区分正常和异常HCCG的模型的准确性为70.0%,显着高于偶然性(P <0.0001),但是对于测试案例,该准确性降低至64.3%,并不比偶然性更好(P> 0.05)。结论:HCCG的面积,形状和颜色强度,单独或组合使用都没有鉴别价值。从业者和培训者应着重于dyskararyosis的公认特征,例如染色质模式,核膜不规则和群体结构。在形态分析方面,DNA倍性和染色质纹理分析可能是更富有成果的研究途径。

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