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Application of Deep Transfer Learning to the Classification of Colorectal Cancer Lymph Node Metastasis

机译:深度转移学习在结直肠癌淋巴结转移中的应用

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Accurate classifications of colorectal cancer (CRC) lymph node metastasis (LNM) could assist radiologists in increasing the diagnostic accuracy and help surgeons establish a correct surgical plan. This study aims to present an efficient pipeline with deep transfer learning for CRC LNM classification. Hence, 11 deep pre-trained models have been investigated on a CRC LN dataset. The dataset of this experiment is from Harbin Medical University Cancer Hospital. This dataset contains samples of 619 patients. Among these samples, 312 were positive and 307 were negative. In addition, datasets with different dimensions and various training epochs were also studied to ascertain the minimum training dataset and training times. In order to improve the interpretability of the model classification performance, a visual convolution layer feature map was first established to compute the similarity distance between the feature map and original data. The experimental results revealed that resnet_152 was the best deep pre-trained model for the classification of CRC LNM, with an accuracy of 97.2%, with 600 raw data samples being the minimum dimension of a dataset and 30 epochs the minimum training times in the CRC LNM classification. This study suggests that the proposed deep transfer learning pipeline could classify the CRC LNM with high efficiency, without requiring sophisticated computational knowledge for radiologists. (C) 2021 Society for Imaging Science and Technology.
机译:准确分类结直肠癌(CRC)淋巴结转移(LNM)可以帮助放射科医师提高诊断准确性,帮助外科医生建立正确的外科手术计划。本研究旨在提出一个有效的管道,具有对CRC LNM分类的深度转移学习。因此,在CRC LN数据集上已经研究了11个深度预先训练的模型。该实验的数据集是来自哈尔滨医科大学癌症医院。该数据集包含619名患者的样本。在这些样品中,312次为阳性,307例为阴性。此外,还研究了具有不同维度和各种培训时期的数据集,以确定最低培训数据集和培训时间。为了提高模型分类性能的可解释性,首先建立一个可视卷积层特征图以计算特征图和原始数据之间的相似距离。实验结果表明,Reset_152是CRC LNM分类的最佳深度预先训练模型,精度为97.2%,具有600个原始数据样本,是数据集的最小尺寸,30时,CRC的最低培训时间LNM分类。本研究表明,建议的深度转移学习管道可以高效率将CRC LNM分类,而无需对放射科医师的复杂计算知识。 (c)2021年成像科技协会。

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  • 来源
    《Journal of Imaging Science and Technology》 |2021年第3期|030401.1-030401.15|共15页
  • 作者单位

    Harbin Engn Univ Automat Coll Harbin 150001 Heilongjiang Peoples R China;

    Harbin Engn Univ Automat Coll Harbin 150001 Heilongjiang Peoples R China;

    Harbin Engn Univ Automat Coll Harbin 150001 Heilongjiang Peoples R China|Harbin Med Univ Dept Radiol Canc Hosp Harbin 150001 Heilongjiang Peoples R China;

    Harbin Engn Univ Automat Coll Harbin 150001 Heilongjiang Peoples R China;

    Harbin Engn Univ Automat Coll Harbin 150001 Heilongjiang Peoples R China;

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