采用颜色归一化和核分割数据的双输入型卷积神经网络用于组织病理图像分类

Osman Demirel, M. Akhtar
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引用次数: 0

摘要

卷积神经网络(CNN)的改进在组织病理学图像分类中取得了广泛的成功。然而,为了进一步提高性能、消除数据冗余和提供区分信息,还应该考虑用于数据预处理的颜色归一化和用于特征提取的核分割。众所周知,这些技术可以提高通用性。然而,需要找到使用颜色归一化和分割数据获得的数据进行训练的方法。在这项工作中,双输入CNN (DiCNN),连接输入CNN (CiCNN)和集成CNN (ECNN)使用颜色归一化和核分割数据进行训练和测试。基于相关性和结构相似性选择归一化技术。基于一致性和泛化性能最好的归一化技术选择分割方法。结果表明,经过归一化和分割后的输入比其他方法具有更好的二值分类效果。然而,对于多类分类,原始数据训练对所有方法都是有利的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual-Input Type Convolutional Neural Networks Employing Color Normalized and Nuclei Segmented Data for Histopathology Image Classification
Improvements in Convolutional Neural Network (CNN) have been widely successful for histopathology image classification. However, color normalization for data preprocessing and nuclei segmentation for feature extraction should also be considered for further performance boost, data redundancy elimination, and provision of distinguishing information. These techniques are known to improve generalizability. However, there is a need to find ways to use the data obtained from color normalized and segmented data for training. In this work, dual-input CNN (DiCNN), concatenated-input CNN (CiCNN), and ensemble CNN (ECNN) are trained and tested with color normalized and nuclei segmented data. The normalization technique is chosen based on correlation and structural similarity. The segmentation method is chosen based on the best-performing normalization technique for consistency and generalizability. The results show that normalized and segmented inputs results in better binary classification with CiCNN outperforming other methods. However, for multiclass classification raw data training is advantageous for all approaches.
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