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首页> 外文期刊>International journal of healthcare information systems and informatics : >A Hybrid Deep Learning and Handcrafted Feature Approach for Cervical Cancer Digital Histology Image Classification
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A Hybrid Deep Learning and Handcrafted Feature Approach for Cervical Cancer Digital Histology Image Classification

机译:宫颈癌数字组织学图像分类的混合深层学习和手工特征方法

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摘要

Cervical cancer is the second most common cancer affecting women worldwide but is curable if diagnosed early. Routinely, expert pathologists visually examine histology slides for assessing cervix tissue abnormalities. A localized, fusion-based, hybrid imaging and deep learning approach is explored to classify squamous epithelium into cervical intraepithelial neoplasia (CIN) grades for a dataset of 83 digitized histology images. Partitioning the epithelium region into 10 vertical segments, 27 handcrafted image features and rectangular patch, sliding window-based convolutional neural network features are computed for each segment. The imaging and deep learning patch features are combined and used as inputs to a secondary classifier for individual segment and whole epithelium classification. The hybrid method achieved a 15.51% and 11.66% improvement over the deep learning and imaging approaches alone, respectively, with a 80.72% whole epithelium CIN classification accuracy, showing the enhanced epithelium CIN classification potential of fusing image and deep learning features.
机译:宫颈癌是影响全世界妇女的第二次常见癌症,但如果早期诊断,可以治愈。常规,专家病理学家目视检查组织学幻灯片以评估子宫颈组织异常。探讨了局部,融合的混合成像和深度学习方法,以将鳞状上皮分类为83位数字化组织学图像的数据集。将上皮区域分成10个垂直段,27个手工制作的图像特征和矩形贴片,为每个段计算滑动窗口的卷积神经网络特征。成像和深度学习补丁功能组合并用作各个段和整个上皮分类的二级分类器的输入。混合方法分别达到了对深层学习和成像方法的提高15.51%和11.66%,整个上皮细胞分类精度为80.72%,显示了融合图像和深度学习特征的增强的上皮分类潜力。

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