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首页> 外文期刊>Open Journal of Pathology >Automated Detection and Quantification of Prostate Cancer in Needle Biopsies by Digital Image Analysis
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Automated Detection and Quantification of Prostate Cancer in Needle Biopsies by Digital Image Analysis

机译:通过数字图像分析对穿刺活检中的前列腺癌进行自动检测和定量

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Introduction: Triple immunohistochemical (IHC) stains including antibodies specific for alpha-methylacyl-CoA-racemase and basal cell markers have been a valuable aid in accurate identification of prostate carcinoma. However, accurate quantification of minuscule areas of prostate carcinoma in biopsy specimens can often be a challenge. Here we assessed the diagnostic value and quantitative use of automated digital image analysis on triple IHC stained prostate needle biopsies. Methods: Twelve cases of prostate needle biopsy material including 75 needle cores were stained with triple-antibody cocktail (P504S + 34βE12 + p63). Slides were digitally scanned with the APERIO digital image analyzer and evaluated with the GENIE pattern and color recognition digital image analysis that we developed. A slide with known areas of adenocarcinoma, high grade prostatic intraepithelial neoplasia (PIN), benign glands and stroma was used as a training set for the automated digital image analysis platform. Results: Among 75 needle biopsy cores, 19 (25.33%) contained adenocarcinoma by histology. Digital image analysis recognized adenocarcinoma in 95% of these needle biopsies. The average area of the needle biopsy was 7.63 mm2 and overall the average area of tumor was 0.196 mm2. The smallest area of tumor recognized by the program was 0.0022 mm2 (0.0363% of the core) and the largest was 0.62 mm2 (8.17% of the core) among needle core biopsies. False positives resulted from areas of high grade PIN with patchy basal cells. The false negative was caused by uneven AMACR staining in one area of adenocarcinoma. Digital recognition of areas of interest was improved by three successive image analysis training which increased the sensitivity and specificity from 83% and 89% to 90% and 93%, respectively. Conclusions: Digital image analysis in concert with IHC triple staining may be useful for accurate detection and quantitative analysis of small foci of prostatic adenocarcinoma. Defining methods to increase the sensitivity and specificity of quantitative automated digital image analysis will likely evolve as an area of investigation. Future automated digital scanning and innovative pattern and color recognition technologies may open avenues for classifying a variety of prostate lesions.
机译:简介:三重免疫组化(IHC)染色剂,包括对α-甲基酰基辅酶A-消旋酶具有特异性的抗体和基底细胞标记物,已成为精确鉴定前列腺癌的宝贵帮助。然而,对活检标本中前列腺癌的微小​​区域进行准确定量通常是一个挑战。在这里,我们评估了三重IHC染色的前列腺穿刺活检的诊断价值和自动数字图像分析的定量使用。方法:用三抗体混合物(P504S +34βE12+ p63)对十二例包括75个针芯的前列腺穿刺活检材料进行染色。使用APERIO数字图像分析仪对幻灯片进行数字扫描,并使用我们开发的GENIE模式和色彩识别数字图像分析进行评估。载有腺癌,高级别前列腺上皮内瘤变(PIN),良性腺和间质的已知区域的幻灯片用作自动数字图像分析平台的训练集。结果:按组织学检查,在75个穿刺活检芯中,有19个(占25.33%)包含腺癌。数字图像分析在95%的这些针头活检中识别出了腺癌。穿刺活检的平均面积为7.63 mm2,总体肿瘤平均面积为0.196 mm2。在针芯活检中,程序识别出的最小肿瘤面积为0.0022 mm2(芯的0.0363%),最大面积为0.62mm2(芯的8.17%)。假阳性是由于高品位PIN区域的基底细胞不完整所致。假阴性是由腺癌的一个区域中不均匀的AMACR染色引起的。连续三个图像分析训练提高了对感兴趣区域的数字识别能力,使敏感性和特异性分别从83%和89%提高到90%和93%。结论:与IHC三重染色相结合的数字图像分析可能有助于准确检测和定量分析前列腺腺癌的小灶。定义方法以提高定量自动化数字图像分析的敏感性和特异性,可能会随着研究领域的发展而发展。未来的自动数字扫描以及创新的图案和颜色识别技术可能会为对各种前列腺病变进行分类开辟道路。

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