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首页> 外文期刊>Histopathology: Official Journal of the British Division of the International Academy of Pathology >Application of automated image analysis reduces the workload of manual screening of sentinel lymph node biopsies in breast cancer
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Application of automated image analysis reduces the workload of manual screening of sentinel lymph node biopsies in breast cancer

机译:自动图像分析的应用减少了乳腺癌中哨淋巴结活组织检查的手动筛选的工作量

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Aims Breast cancer is one of the most common cancer diseases in women, with 1.67 million cases being diagnosed worldwide each year. In breast cancer, the sentinel lymph node ( SLN ) pinpoints the first lymph node(s) into which the tumour spreads, and it is usually located in the ipsilateral axilla. In patients with no clinical signs of metastatic disease in the axilla, an SLN biopsy ( SLNB ) is performed. Assessment of metastases in the SLNB , when using a conventional microscope, is performed by manually observing a metastasis and measuring its size and/or counting the number of tumour cells. This is done essentially to categorize the type of metastasis as macrometastasis, micrometastasis, or isolated tumour cells, which is used to determine which treatment the breast cancer patient will benefit most from. The aim of this study was to evaluate whether digital image analysis can be applied as a screening tool for SNLB assessment without compromising the diagnostic accuracy. Materials and results Consecutive SLNB s from 135 patients with localized breast cancer receiving surgery in the period February to August 2015 were collected and included in this study. Of the 135 patients, 35 were received at the Department of Pathology, Rigshospitalet, Copenhagen University Hospital, 50 at the Department of Pathology, Zealand University Hospital, and 50 at the Department of Pathology, Odense University Hospital. Formalin‐fixed paraffin‐embedded tissue sections were analysed by immunohistochemistry with the BenchMark ULTRA Ventana platform. Rigshospitalet used a mixture of cytokeratin ( CK ) 7 and CK 19, Zealand University Hospital used pancytokeratin AE 1/ AE 3 and Odense used pancytokeratin CAM 5.2 for detection of epithelial tumour cells. Slides were stained locally. SLNB sections were assessed in a conventional microscope according to national guidelines for SLNB s in breast cancer patients. The immunohistochemically stained sections were scanned with a Hamamatsu NanoZoomer‐ XR digital whole slide scanner, and the images were analysed with Visiopharm's software by use of a custom‐made algorithm for SLNB s in breast cancer. The algorithm was optimized to the CK antibodies and the local laboratory conditions, on the basis of staining intensity and background staining. Conventional microscopy was used as the gold standard for assessment of positive tumour cells, and the results were compared with those from digital image analysis. The algorithm showed a sensitivity of 100% (that is, no false‐negative slides were observed), including 67.2%, 19.2% and 56.1% of the slides from the three pathology departments being negative, respectively. This means that, on average, the workload could have been decreased by 58.2% by use of the digital SLNB algorithm as a screening tool. Conclusions The SLNB algorithm showed a sensitivity of 100% regardless of the antibody used for immunohistochemistry and the staining protocol. No false‐negative slides were observed, which proves that the SLNB algorithm is an ideal screening tool for selecting those slides that a pathologist does not need to see. The implementation of automated digital image analysis of SLNB s in breast cancer would decrease the workload in this context for examining pathologists by almost 60%.
机译:AIMS乳腺癌是女性最常见的癌症疾病之一,>每年在全球诊断诊断167万个病例。在乳腺癌中,Sentinel淋巴结(SLN)定位肿瘤蔓延的第一个淋巴结,并且通常位于IpsilaTalal腋窝中。在腋窝中没有临床症状的患者中,进行SLN活检(SLNB)。使用常规显微镜时,通过手动观察转移并测量其尺寸和/或计数肿瘤细胞数来进行SLNB中转移的评估。这基本上是为了将转移的类型分类为宏观摩托,微转移或分离的肿瘤细胞,其用于确定哪种治疗乳腺癌患者将受益最多。本研究的目的是评估数字图像分析是否可以应用于SNLB评估的筛选工具,而不会影响诊断准确性。收集了2月至2015年2月至2015年8月的135例局部乳腺癌接受手术的135名患者的材料和结果连续SLNB患者。在135名患者中,在哥本哈根大学医院,哥本哈根大学医院,50家病理学,大学大学医院50家,50名患者,50名患者中收到了35名。通过免疫组织化学与基准超前Ventana平台分析福尔马林固定的石蜡包埋的组织切片。钻石培训利用细胞角蛋白(CK)7和CK 19,西兰大学医院的混合物使用了PancyTokeratin Ae1 / Ae 3和eDense使用的刺宫内容,用于检测上皮肿瘤细胞。幻灯片在本地染色。根据乳腺癌患者的SLNB S的国家标准,在常规显微镜中评估SLNB部分。用Hamamatsu Nanozoomer-XR数字整个幻灯片扫描仪扫描免疫组织化学染色部分,通过使用乳腺癌中的SLNB S定制算法,用visiopharm的软件分析图像。基于染色强度和背景染色,该算法针对CK抗体和局部实验室条件进行了优化。常规显微镜用作评估阳性肿瘤细胞的金标准,并将结果与​​来自数字图像分析的结果进行比较。该算法显示100%的敏感性(即,没有观察到假阴性幻灯片),其中来自三个病理部门的载玻片的67.2%,19.2%和56.1%分别为阴性。这意味着,平均而言,通过使用数字SLNB算法作为筛选工具,工作负载可能已经减少了58.2%。结论,无论用于免疫组织化学和染色方案,SLNB算法显示为100%的敏感性。没有观察到假阴性幻灯片,这证明了SLNB算法是一种理想的筛选工具,用于选择病理学家不需要看到的那些幻灯片。在乳腺癌中的SLNB S自动数字图像分析的实施将降低这种背景下的工作量,以便将病理学家缩短近60%。

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