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Stacked sparse autoencoder and case-based postprocessing method for nucleus detection

机译:基于堆积的稀疏自动化器和基于案例的细胞核检测的后处理方法

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摘要

Accurate nucleus detection is of great importance in pathological image analyses and diagnoses, which is a critical prerequisite for tasks such as automated grading hepatocellular carcinoma (HCC) nuclei. This paper proposes an automated nucleus detection framework based on a stacked sparse autoencoder (SSAE) and a case-based postprocessing method (CPM) in a coarse-to-fine manner. SSAE, an unsupervised learning model, is first trained using image patches of breast cancer. Then, the transfer learning and sliding window techniques are applied to other cancers' pathological images (HCC and colon cancer) to extract the high-level features of image patches via the trained SSAE. Subsequently, these high-level features are fed to a logistic regression classifier (LRC) to classify whether each image patch contains a complete nucleus in a coarse detection process. Finally, CPM is developed for refining the coarse detection results which removes false positive nuclei and locates adhesive or overlapped nuclei effectively. SSAE-CPM achieves an average nucleus detection accuracy of 0.8748 on HCC pathological images, which can accurately locate almost all nuclei on the pathological images with serious differentiation. In addition, our proposed detection framework is also evaluated on a public dataset of colon cancer, with a mean F-1 score of 0.8355. Experimental results demonstrate the performance advantages of our proposed SSAE-CPM detection framework as compared with related work. While our detection framework is trained on the pathological images of breast cancer, it can be easily and effectively applied to nucleus detection tasks on other cancers without re-training. (C) 2019 Elsevier B.V. All rights reserved.
机译:精确的核检测对于病理图像分析和诊断具有重要意义,这是诸如自动分级肝细胞癌(HCC)核等任务的关键前提。本文提出了一种基于堆叠的稀疏自动阳极(SSAE)和基于壳体的后处理方法(CPM)的自动核检测框架,其粗为精细的方式。 SSAE是一个无监督的学习模型,首先使用乳腺癌的图像斑块培训。然后,将转移学习和滑动窗技术应用于其他癌症的病理图像(HCC和结肠癌),以通过训练的SSAE提取图像贴片的高级特征。随后,将这些高级特征馈送到逻辑回归分类器(LRC)以分类每个图像贴片是否在粗检测过程中包含完整的核。最后,开发了CPM以改善粗核核核,并有效地定位粘合剂或重叠的核。 SSAE-CPM在HCC病理图像上实现了0.8748的平均核检测精度,其可以准确地定位在具有严重分化的病理图像上的几乎所有核。此外,我们提出的检测框架也在结肠癌的公共数据集上进行评估,平均F-1得分为0.8355。实验结果表明,与相关工作相比,我们所提出的SSAE-CPM检测框架的性能优势。虽然我们的检测框架受到乳腺癌的病理图像培训的虽然在没有重新训练的情况下,可以容易且有效地应用于其他癌症的核查检测任务。 (c)2019 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Neurocomputing》 |2019年第24期|494-508|共15页
  • 作者单位

    Northeastern Univ Dept Software Coll Shenyang 110819 Liaoning Peoples R China;

    Northeastern Univ Dept Software Coll Shenyang 110819 Liaoning Peoples R China;

    Northeastern Univ Dept Sino Dutch Biomed & Informat Engn Sch Shenyang 110819 Liaoning Peoples R China;

    Sun Yat Sen Univ Affiliated Hosp 5 Dept Pathol 52 Meihua Dong Rd Zhuhai 519000 Guangdong Peoples R China;

    Stevens Inst Technol Dept Elect & Comp Engn Hoboken NJ 07030 USA;

  • 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

    Automated nucleus detection; Stacked sparse autoencoder; Case-based postprocessing method; Transfer learning; Coarse-to-fine manner;

    机译:自动核检测;堆叠稀疏自动化器;基于案例的后处理方法;转移学习;粗糙的方式;
  • 入库时间 2022-08-18 22:26:43

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