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Proliferation Tumour Marker Network (PTM-NET) for the identification of tumour region in Ki67 stained breast cancer whole slide images

机译:增殖肿瘤标记物网络(PTM-NET)用于识别Ki67染色的乳腺癌整个玻片图像中的肿瘤区域

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摘要

Uncontrolled proliferation is a hallmark of cancer and can be assessed by labelling breast tissue using immunohistochemistry for Ki67, a protein associated with cell proliferation. Accurate measurement of Ki67-positive tumour nuclei is of critical importance, but requires annotation of the tumour regions by a pathologist. This manual annotation process is highly subjective, time-consuming and subject to inter- and intra-annotator experience. To address this challenge, we have developed Proliferation Tumour Marker Network (PTM-NET), a deep learning model that objectively annotates the tumour regions in Ki67-labelled breast cancer digital pathology images using a convolution neural network. Our custom designed deep learning model was trained on 45 immunohistochemical Ki67-labelled whole slide images to classify tumour and non-tumour regions and was validated on 45 whole slide images from two different sources that were stained using different protocols. Our results show a Dice coefficient of 0.74, positive predictive value of 70% and negative predictive value of 88.3% against the manual ground truth annotation for the combined dataset. There were minimal differences between the images from different sources and the model was further tested in oestrogen receptor and progesterone receptor-labelled images. Finally, using an extension of the model, we could identify possible hotspot regions of high proliferation within the tumour. In the future, this approach could be useful in identifying tumour regions in biopsy samples and tissue microarray images.
机译:不受控制的增殖是癌症的标志,可以使用Ki67(一种与细胞增殖相关的蛋白质)的免疫组织化学标记乳腺组织来评估。 Ki67阳性肿瘤核的准确测量至关重要,但需要病理学家对肿瘤区域进行注释。此手动注释过程非常主观,耗时,并且受注释者之间和注释者内部经验的影响。为了应对这一挑战,我们开发了增殖肿瘤标记物网络(PTM-NET),这是一种深度学习模型,可以使用卷积神经网络客观地标注Ki67标记的乳腺癌数字病理图像中的肿瘤区域。我们定制设计的深度学习模型在45个免疫组织化学Ki67标记的完整玻片图像上进行了训练,以对肿瘤和非肿瘤区域进行分类,并在来自两个不同来源的45个完整玻片图像上进行了验证,并使用了不同的方案对其进行了染色。我们的结果显示,针对组合数据集的人工地面真相注释,Dice系数为0.74,正预测值为70%,负预测值为88.3%。来自不同来源的图像之间存在最小差异,并且在雌激素受体和孕激素受体标记的图像中进一步测试了该模型。最后,使用模型的扩展,我们可以确定肿瘤内高增殖的可能热点区域。将来,这种方法可能会有助于确定活检样本和组织微阵列图像中的肿瘤区域。

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