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胃活检标本全切片图像的自动化组织学分类。

Automated histological classification of whole-slide images of gastric biopsy specimens.

机构信息

Division of Pathology and Clinical Laboratories, National Cancer Center Hospital, 5-1-1 Tsukiji, Chuo-ku, Tokyo, 104-0045, Japan.

Epidemiology and Prevention Group, Center for Public Health Sciences, National Cancer Center, 5-1-1 Tsukiji, Chuo-ku, Tokyo, 104-0045, Japan.

出版信息

Gastric Cancer. 2018 Mar;21(2):249-257. doi: 10.1007/s10120-017-0731-8. Epub 2017 Jun 2.

Abstract

BACKGROUND

Automated image analysis has been developed currently in the field of surgical pathology. The aim of the present study was to evaluate the classification accuracy of the e-Pathologist image analysis software.

METHODS

A total of 3062 gastric biopsy specimens were consecutively obtained and stained. The specimen slides were anonymized and digitized. At least two experienced gastrointestinal pathologists evaluated each slide for pathological diagnosis. We compared the three-tier (positive for carcinoma or suspicion of carcinoma; caution for adenoma or suspicion of a neoplastic lesion; or negative for a neoplastic lesion) or two-tier (negative or non-negative) classification results of human pathologists and of the e-Pathologist.

RESULTS

Of 3062 cases, 33.4% showed an abnormal finding. For the three-tier classification, the overall concordance rate was 55.6% (1702/3062). The kappa coefficient was 0.28 (95% CI, 0.26-0.30; fair agreement). For the negative biopsy specimens, the concordance rate was 90.6% (1033/1140), but for the positive biopsy specimens, the concordance rate was less than 50%. For the two-tier classification, the sensitivity, specificity, positive predictive value, and negative predictive value were 89.5% (95% CI, 87.5-91.4%), 50.7% (95% CI, 48.5-52.9%), 47.7% (95% CI, 45.4-49.9%), and 90.6% (95% CI, 88.8-92.2%), respectively.

CONCLUSIONS

Although there are limitations and requirements for applying automated histopathological classification of gastric biopsy specimens in the clinical setting, the results of the present study are promising.

摘要

背景

目前在外科病理学领域已经开发出了自动化图像分析。本研究旨在评估 e-Pathologist 图像分析软件的分类准确性。

方法

连续获得了 3062 例胃活检标本并进行染色。对标本切片进行匿名化和数字化处理。至少有两名经验丰富的胃肠病理学家对每张切片进行病理诊断评估。我们比较了人类病理学家和 e-Pathologist 的三层次(癌或疑似癌阳性;腺瘤或疑似肿瘤病变警惕;或无肿瘤病变)或两层次(阴性或非阴性)分类结果。

结果

3062 例中,33.4%显示异常发现。对于三层次分类,总体一致性率为 55.6%(1702/3062)。kappa 系数为 0.28(95%CI,0.26-0.30;适度一致)。对于阴性活检标本,一致性率为 90.6%(1033/1140),但对于阳性活检标本,一致性率低于 50%。对于两层次分类,敏感性、特异性、阳性预测值和阴性预测值分别为 89.5%(95%CI,87.5-91.4%)、50.7%(95%CI,48.5-52.9%)、47.7%(95%CI,45.4-49.9%)和 90.6%(95%CI,88.8-92.2%)。

结论

尽管在临床环境中应用自动化组织病理学胃活检标本分类存在局限性和要求,但本研究的结果很有前景。

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