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首页> 外文期刊>Machine Vision and Applications >Design of a hybrid deep learning system for discriminating between low- and high-grade colorectal cancer lesions, using microscopy images of IHC stained for AIB1 expression biopsy material
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Design of a hybrid deep learning system for discriminating between low- and high-grade colorectal cancer lesions, using microscopy images of IHC stained for AIB1 expression biopsy material

机译:用于鉴别低级结直肠癌病变的混合深层学习系统的设计,使用IHC染色的微观图像AIB1表达活检材料

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摘要

To design a hybrid deep learning system (hDL-system) for discriminating low-grade from high-grade colorectal cancer (CRC) lesions, using immunohistochemically stained biopsy specimens for AIB1 expression. AIB1 has oncogenic function in tumour genesis, and it is an important prognostic factor regarding various types of cancers, including CRC. Clinical material consisted of biopsy specimens of sixty-seven patients with verified CRC (26 low-grade, 41 high-grade cases). From each patient, we digitized images, at ×50 and × 200 lens magnifications. We designed the hDL-system, employing the VGG16 pre-trained convolution neural network for generating DL-features, the SVM classifier, and the bootstrap evaluation method for assessing the discrimination accuracy between low-grade and high-grade CRC lesions. Furthermore, we compared the hDL-system's discrimination accuracy with that of a supervised machine learning system (sML-system). We designed the sML-system by (ⅰ) generating sixty-nine (69) textural and colour features from each image, (ⅱ) employing the probabilistic neural network (PNN) classifier, and (ⅲ) using the bootstrapping method for evaluating sML-system performance. The system design was enabled by employing the CUDA platform for programming in parallel the multiprocessors of the Nvidia graphics processing unit card. The hDL-system provided the highest discrimination accuracy of 99.1 % using the × 200 lens magnification images as compared to the 92.5.% best accuracy achieved by the sML-system, employing both the × 50 and × 200 lens magnification images. Our results showed that the hDL-system was superior to the sML-system (ⅰ) in discriminating low-grade from high-grade CRC-lesions and (ⅱ) by requiring fewer images for its best design, only those at the × 200 lens magnification. The sML-system by employing textural and colour features in its design revealed that high-grade CRC lesions are characterized by (ⅰ) loss in the definition of structures, (ⅱ) coarser texture in larger structures, (ⅲ) hazy formless texture, (ⅳ) lower AIB 1 uptake, (ⅴ) lower local correlation and (ⅵ) slower varying image contrast.
机译:设计一种混合深层学习系统(HDL-SYSTEM),用于鉴别从高等级结肠直肠癌(CRC)病变的低等级,使用免疫组化染色的活组织检查试样用于AIB1表达。 AIB1在肿瘤成因中具有致癌功能,并且是关于各种类型的癌症的重要预后因素,包括CRC。临床材料包括六十七名经过验证的CRC患者的活组织检查标本(26级低级,41个高档案例)。从每个患者,我们数字化图像,在×50和×200透镜放大倍数。我们设计了HDL系统,采用VGG16预先训练的卷积神经网络,用于生成DL - 特征,SVM分类器和引导评估方法,用于评估低级和高级CRC病变之间的辨别精度。此外,我们将HDL系统的辨别精度与监督机器学习系统(SML系统)进行了比较。我们设计了SML系统(Ⅰ)从每个图像产生六十九(69)个质量和颜色特征,(Ⅱ)使用概率神经网络(PNN)分类器,(Ⅲ)使用自动启动方法进行评估SML-系统性能。通过采用CUDA平台来启用系统设计,以并行编程NVIDIA图形处理单元卡的多处理器。与92.5相比,使用×200透镜倍率图像提供了99.1%的最高辨别精度。通过SML系统实现的最佳精度,采用×50和×200透镜放大图像。我们的研究结果表明,HDL系统优于SML-System(Ⅰ),以鉴别高级CRC-病变,(Ⅱ),通过要求较少的图像,仅适用于×200透镜放大。通过在其设计中采用纹理和颜色特征的SML系统揭示了高级CRC病变的特征在于(Ⅰ)结构定义中的损失,(Ⅱ)较大的结构粗糙的质地,(Ⅲ)朦胧无形的纹理,( ⅳ)降低AIB 1摄取,(ⅴ)较低局部相关性和(ⅵ)较慢的变化图像对比度。

著录项

  • 来源
    《Machine Vision and Applications》 |2021年第3期|58.1-58.17|共17页
  • 作者单位

    Department of Medical Physics School of Health Sciences Faculty of Medicine University of Patras Rio Patras Greece;

    Medical Image and Signal Processing Laboratory Department of Biomedical Engineering University of West Attica Athens Greece;

    Medical Image and Signal Processing Laboratory Department of Biomedical Engineering University of West Attica Athens Greece;

    Medical Image and Signal Processing Laboratory Department of Biomedical Engineering University of West Attica Athens Greece;

    Medical Image and Signal Processing Laboratory Department of Biomedical Engineering University of West Attica Athens Greece;

    Department Pathology University Hospital of Patras Rio Patras Greece;

    Department Pathology University Hospital of Patras Rio Patras Greece;

    Medical Image and Signal Processing Laboratory Department of Biomedical Engineering University of West Attica Athens Greece;

    Medical Image and Signal Processing Laboratory Department of Biomedical Engineering University of West Attica Athens Greece;

    Department of Medical Physics School of Health Sciences Faculty of Medicine University of Patras Rio Patras Greece;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Deep learning; Colorectal carcinoma; Immunohistochemistry;

    机译:机器学习;深度学习;结直肠癌;免疫组织化学;

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