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小叶型乳腺癌的自动图像形态测量法

Automated image morphometry of lobular breast carcinoma.

作者信息

Rajesh Logasundaram, Dey Pranab, Joshi Kusum

机构信息

Department of Pathology, Post Graduate Institute of Medical Education and Research, Chandigarh, India.

出版信息

Anal Quant Cytol Histol. 2002 Apr;24(2):81-4.

Abstract

OBJECTIVE

To analyze the role of automated image morphometry (AIM) in distinguishing infiltrating lobular carcinoma (ILC) of the breast from benign, borderline and infiltrating ductal carcinoma (IDC).

STUDY DESIGN

Only histopathologically proven lobular carcinoma, ductal carcinoma, borderline lesions and benign breast lesions were selected for the study. There were 19 cases of ILC and 30 cases of IDC, 20 cases of benign lesions (fibroadenoma, 18; fibrocystic disease, 1; and fibroadenosis, 1); 10 cases were borderline lesions (mild epithelial hyperplasia, 3; moderate epithelial hyperplasia, 2; florid epithelial hyperplasia 4; intraductal papillary carcinoma, 1). In all cases hematoxylin and eosin-stained slides were used for AIM. At least 100 cells from each case were subjected to analysis randomly with an image cytometer with Leica Quantimet 600 software (Cambridge, England). Nuclear area, diameter, perimeter, convex perimeter, convex area and roundness were measured in each case with random, unbiased selection of cells and 40 x objectives (one pixel = 0.46 microm). AIM data on the cases were analyzed in relation to final cytologic diagnosis.

RESULTS

All the nuclear morphometric features of ILC were much lower than those of IDC and borderline lesions, whereas nuclear morphometric data on ILC were only marginally more than those on benign cases. ANOVA showed that mophometric data were significant (P < .05) in all the variables between ILC and IDC. However, there was no significant difference between ILC, and borderline and benign cases.

CONCLUSION

Image morphometry may be useful in distinguishing ILC from IDC on cytologic smears. However, morphometric data may not be helpful in distinguishing benign and borderline lesions from ILC.

摘要

目的

分析自动图像形态测量法(AIM)在鉴别乳腺浸润性小叶癌(ILC)与良性、交界性及浸润性导管癌(IDC)中的作用。

研究设计

仅选择经组织病理学证实的小叶癌、导管癌、交界性病变及乳腺良性病变进行研究。其中有19例ILC、30例IDC、20例良性病变(纤维腺瘤18例、纤维囊性疾病1例、纤维腺病1例);10例交界性病变(轻度上皮增生3例、中度上皮增生2例、旺炽性上皮增生4例、导管内乳头状癌1例)。所有病例均使用苏木精-伊红染色玻片进行AIM分析。使用配备徕卡Quantimet 600软件(英国剑桥)的图像细胞仪对每个病例至少100个细胞进行随机分析。在每个病例中,通过随机、无偏倚地选择细胞并使用40倍物镜(1像素 = 0.46微米)测量核面积、直径、周长、凸周长、凸面积和圆形度。根据最终的细胞学诊断分析这些病例的AIM数据。

结果

ILC的所有核形态测量特征均远低于IDC和交界性病变,而ILC的核形态测量数据仅略高于良性病例。方差分析表明,ILC和IDC之间所有变量的形态测量数据均具有显著性(P < 0.05)。然而,ILC与交界性及良性病例之间无显著差异。

结论

图像形态测量法可能有助于在细胞学涂片上鉴别ILC与IDC。然而,形态测量数据可能无助于鉴别ILC与良性及交界性病变。

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