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首页> 外文期刊>BMC research notes >Performance of a simple chromatin-rich segmentation algorithm in quantifying basal cell carcinoma from histology images
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Performance of a simple chromatin-rich segmentation algorithm in quantifying basal cell carcinoma from histology images

机译:一种简单的富含染色质的分割算法在根据组织学图像定量基底细胞癌中的性能

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Background The use of digital imaging and algorithm-assisted identification of regions of interest is revolutionizing the practice of anatomic pathology. Currently automated methods for extracting the tumour regions in basal cell carcinomas are lacking. In this manuscript a colour-deconvolution based tumour extraction algorithm is presented. Findings Haematoxylin and eosin stained basal cell carcinoma histology slides were digitized and analyzed using the open source image analysis program ImageJ. The pixels belonging to tumours were identified by the algorithm, and the performance of the algorithm was evaluated by comparing the pixels identified as malignant with a manually determined dataset. The algorithm achieved superior results with the nodular tumour subtype. Pre-processing using colour deconvolution resulted in a slight decrease in sensitivity, but a significant increase in specificity. The overall sensitivity and specificity of the algorithm was 91.0% and 86.4% respectively, resulting in a positive predictive value of 63.3% and a negative predictive value of 94.2% Conclusions The proposed image analysis algorithm demonstrates the feasibility of automatically extracting tumour regions from digitized basal cell carcinoma histology slides. The proposed algorithm may be adaptable to other stain combinations and tumour types.
机译:背景技术使用数字成像和算法辅助识别感兴趣区域正在彻底改变解剖病理学的实践。当前缺乏用于提取基底细胞癌中的肿瘤区域的自动化方法。在这份手稿中,提出了一种基于颜色反卷积的肿瘤提取算法。结果将苏木精和曙红染色的基底细胞癌组织学切片进行数字化处理,并使用开源图像分析程序ImageJ进行分析。通过算法识别属于肿瘤的像素,并通过将识别为恶性的像素与手动确定的数据集进行比较来评估算法的性能。该算法在结节性肿瘤亚型方面取得了优异的结果。使用颜色反卷积的预处理导致灵敏度略有降低,但特异性显着提高。该算法的整体敏感性和特异性分别为91.0%和86.4%,从而导致阳性预测值为63.3%,阴性预测值为94.2%结论结论所提出的图像分析算法证明了从数字化基底中自动提取肿瘤区域的可行性细胞癌组织学幻灯片。提出的算法可能适用于其他染色剂组合和肿瘤类型。

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