组织病理图像分类中纹理特征的迁移学习方法

Sabri Can Cetindag, Kubilay Guran, G. Bilgin
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引用次数: 3

摘要

随着计算机硬件和机器学习技术的显著进步,深度学习模型也被用于许多不同的领域。这些领域的例子是图像识别、面部检测、自然语言处理、毒理学、建议系统、异常检测和卫生部门的疾病诊断。本研究的重点是通过组织病理学图像对疾病的预测和诊断进行研究。该研究的主要目的是应用能够对癌组织进行高精度分类的深度学习模型。此外,深度模型的实现计算成本低,可以快速训练模型。在本课题范围内,利用迁移学习技术实现了深度学习领域中非常流行的图像分类卷积神经网络模型。除了这些模型之外,还使用了一种称为CAT-Net的深度学习模型来比较和评估迁移学习方法的成功。将研究结果与每个模型的总体准确性、精密度、召回率和F1评分指标进行比较。
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Transfer Learning Methods for Using Textural Features in Histopathological Image Classification
As the technological advances in computer hardware and machine learning have increased significantly, deep learning models have also been used in many different areas. Examples of these areas are image recognition, face detection, natural language processing, toxicology, suggestion systems, anomaly detection and disease diagnosis in the health sector. This study focuses on studies on disease prediction and diagnosis through histopathological images. The main purpose of the study is to apply deep learning models that can classify cancerous tissues with high accuracy. Besides that, implementation of deep models are done with a low computational cost so that models can be trained in a fast manner. Within the scope of this subject, the convolutional neural network models, which are very popular in image classification in the deep learning world, have been realized by applying transfer learning technique. In addition to these models, a deep learning model called CAT-Net is used to compare and evaluate the success of the transfer learning method. The results of the study are compared with overall accuracy, precision, recall, and F1 score metrics for each model.
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