Laryngeal Cancer Lesion Segmentation in P63 Immunohistochemically Stained Histology Images

Ibtihaj Ahmad, Z. Islam
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引用次数: 1

Abstract

In 2017, 1.09 million active laryngeal cancer cases were reported globally, increasing 23.8% in the last three decades. Hematoxylin and eosin (H&E) stained histological analysis is used as a gold standard for diagnosing and staging H&N cancers. Recent studies showed the effectiveness of P63 stain along with H&E stain. Histological analysis of H&E and P63 stained images is performed manually by a pathologist in current medical practices. This process is tiresome and requires specialized skills. The primary factor that the process is manual is that P63 staining is a new technique, which has been developed recently. The second factor is the lack of an available dataset in the recent past. We present an automatic system for laryngeal cancer lesion segmentation in H&E and p63 stained images. The proposed method is an encoder-decoder-based UNet++. We have used MEDISP HICL dataset for training and testing of the proposed network. To our knowledge, only one attempt for this purpose exists in the literature. The proposed network has shown superior accuracy, dice score, and MeanIoU, 95.37%, 87.82, and 0.7868, respectively.
P63免疫组织化学染色组织学图像中喉癌病变的分割
2017年,全球报告了109万例活动性喉癌病例,在过去三十年中增长了23.8%。苏木精和伊红(H&E)染色组织学分析被用作诊断和分期H&N癌症的金标准。最近的研究表明P63染色与H&E染色是有效的。在目前的医疗实践中,H&E和P63染色图像的组织学分析是由病理学家手动执行的。这个过程很无聊,需要专门的技能。手工染色的主要原因是P63染色是最近才发展起来的新技术。第二个因素是最近缺乏可用的数据集。提出了一种基于H&E和p63染色图像的喉癌病灶自动分割系统。所提出的方法是一种基于UNet++的编码器-解码器。我们使用MEDISP HICL数据集对所提出的网络进行了训练和测试。据我们所知,文献中只有一次这样的尝试。该网络的准确率、骰子得分和MeanIoU分别为95.37%、87.82和0.7868。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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