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Breast Ultrasound Image Classification Using a Pre-Trained Convolutional Neural Network

机译:使用预先训练的卷积神经网络进行乳房超声图像分类

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Breast ultrasound (BUS) imaging is commonly used for breast cancer diagnosis, but the interpretation of BUS images varies based on the radiologist's experience. Computer-aided diagnosis (CAD) systems have been proposed to provide the radiologist with an objective, computer-based classification of BUS images. Nevertheless, the majority of these systems are based on handcrafted features that are designed manually to quantify the tumor. Hence, the accuracy of these CAD systems depends on the capability of the handcrafted features to differentiate between benign and malignant tumors. Convolutional neural networks (CNNs) provide a promising approach to improve the classification of BUS images due to their ability to achieve data-driven extraction of objective, accurate, and generalizable image representations. However, the limited size of the available BUS image databases might restrict the capability of training the CNNs from scratch. To address this limitation, we investigate the use of two approaches, namely the deep features extraction approach and transfer learning approach, to enable the use of a pre-trained CNN model to achieve accurate classification of BUS images. The results show that the deep features extraction approach outperforms the transfer learning approach. Moreover, the results indicate that the extraction of deep features from the pre-trained CNN model, which is combined with effective features selection, has enabled accurate BUS image classification with accuracy, sensitivity, and specificity values of 93.9%, 95.3%, and 92.5%, respectively. These results suggest the feasibility of combining deep features extracted from pre-trained CNN models with effective features selection algorithms to achieve accurate BUS image classification.
机译:乳房超声(总线)成像通常用于乳腺癌诊断,但公交车图像的解释因放射科医师的经验而变化。已经提出了计算机辅助诊断(CAD)系统以提供放射科学家的客观的总线图像的分类。尽管如此,这些系统的大多数基于手工制作的功能,该功能是手动设计以量化肿瘤的。因此,这些CAD系统的准确性取决于手工特征来区分良性和恶性肿瘤的能力。卷积神经网络(CNNS)提供了一种有希望的方法来提高总线图像的分类,因为它们可以实现目标,准确和更广泛的图像表示的数据驱动的提取。但是,可用总线图像数据库的有限尺寸可能会限制从头划伤培训CNN的能力。为了解决这一限制,我们调查了两种方法的使用,即深度特征提取方法和转移学习方法,使得使用预先训练的CNN模型来实现总线图像的准确分类。结果表明,深度特征提取方法优于转移学习方法。此外,结果表明,从预训练的CNN模型中提取与有效特征选择相结合的深度特征,使精确,灵敏度和特异性值为93.9%,95.3%和92.5的精确总线图像分类。 %, 分别。这些结果表明,从预先训练的CNN模型中提取的深度特征的可行性具有有效的特征选择算法,以实现精确的总线图像分类。

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