Multitask Learning for Pathomorphology Recognition of Squamous Intraepithelial Lesion in Thinprep Cytologic Test

Li Liu, Yuanhua Wang, Dongdong Wu, Yongping Zhai, L. Tan, Jingjing Xiao
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引用次数: 3

Abstract

This paper presents a multitask learning network for pathomorphology recognition of squamous intraepithelial lesion in Thinprep Cytologic Test. Detecting pathological cells is a quite challenging task due to large variations in cell appearance and indistinguishable changes in pathological cells. In addition, the high resolution of scanned cell images poses a further demand for efficient detection algorithm. Therefore, we propose a multi-task learning network aims at keeping a good balance between performance and computational efficiency. First we transfer knowledge from pre-trained VGG16 network to extract low level features, which alleviate the problem caused by small training data. Then, the potential regions of interest are generated by our proposed task oriented anchor network. Finally, a fully convolutional network is applied to accurately estimate the positions of the cells and classify its corresponding labels. To demonstrate the effectiveness of the proposed method, we conducted a dataset which is cross verified by two pathologists. In the test, we compare our method to the state-of-the-art detection algorithms, i.e. YOLO [1], and Faster-rcnn [2], which were both re-trained using our dataset. The results show that our method achieves the best detection accuracy with high computational efficiency, which only takes half time compared to Faster-rcnn.
薄壁细胞学检查中鳞状上皮内病变病理形态识别的多任务学习
本文提出了一个用于薄鳞细胞学检查中鳞状上皮内病变病理形态学识别的多任务学习网络。病理细胞的检测是一项非常具有挑战性的任务,因为病理细胞的外观变化很大,难以区分。此外,扫描细胞图像的高分辨率对高效的检测算法提出了进一步的要求。因此,我们提出了一种多任务学习网络,旨在保持性能和计算效率之间的良好平衡。首先,我们从预先训练好的VGG16网络中转移知识,提取低级特征,缓解了训练数据少带来的问题。然后,我们提出的面向任务的锚点网络生成感兴趣的潜在区域。最后,利用全卷积网络准确估计细胞的位置,并对其相应的标签进行分类。为了证明所提出方法的有效性,我们进行了一个由两位病理学家交叉验证的数据集。在测试中,我们将我们的方法与最先进的检测算法进行了比较,即YOLO[1]和Faster-rcnn[2],这两种算法都是使用我们的数据集重新训练的。结果表明,该方法在较高的计算效率下达到了最佳的检测精度,与fast -rcnn相比,只需要一半的时间。
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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