School of Computer Science and Artificial Intelligence, Wuhan University of Technology, Wuhan 430070, China; Sanya Science and Education Innovation Park, Wuhan University of Technology, Sanya 572000, China; Wuhan University of Technology Chongqing Research Institute, Chongqing 401120, China.
School of Computer Science and Artificial Intelligence, Wuhan University of Technology, Wuhan 430070, China.
Comput Biol Med. 2023 Mar;155:106633. doi: 10.1016/j.compbiomed.2023.106633. Epub 2023 Feb 8.
For medical image retrieval task, deep hashing algorithms are widely applied in large-scale datasets for auxiliary diagnosis due to the retrieval efficiency advantage of hash codes. Most of which focus on features learning, whilst neglecting the discriminate area of medical images and hierarchical similarity for deep features and hash codes. In this paper, we tackle these dilemmas with a new Multi-scale Triplet Hashing (MTH) algorithm, which can leverage multi-scale information, convolutional self-attention and hierarchical similarity to learn effective hash codes simultaneously. The MTH algorithm first designs multi-scale DenseBlock module to learn multi-scale information of medical images. Meanwhile, a convolutional self-attention mechanism is developed to perform information interaction of the channel domain, which can capture the discriminate area of medical images effectively. On top of the two paths, a novel loss function is proposed to not only conserve the category-level information of deep features and the semantic information of hash codes in the learning process, but also capture the hierarchical similarity for deep features and hash codes. Extensive experiments on the Curated X-ray Dataset, Skin Cancer MNIST Dataset and COVID-19 Radiography Dataset illustrate that the MTH algorithm can further enhance the effect of medical retrieval compared to other state-of-the-art medical image retrieval algorithms.
针对医学图像检索任务,由于哈希码的检索效率优势,深度哈希算法被广泛应用于大规模数据集的辅助诊断中。大多数算法都专注于特征学习,而忽略了医学图像的判别区域以及深度特征和哈希码的层次相似性。在本文中,我们通过一种新的多尺度三元组哈希(MTH)算法来解决这些难题,该算法可以利用多尺度信息、卷积自注意力和层次相似性来同时学习有效的哈希码。MTH 算法首先设计了多尺度密集块模块来学习医学图像的多尺度信息。同时,开发了一种卷积自注意力机制来进行通道域的信息交互,从而可以有效地捕捉医学图像的判别区域。在这两个路径的基础上,提出了一种新的损失函数,不仅可以在学习过程中保持深度特征的类别级信息和哈希码的语义信息,还可以捕捉深度特征和哈希码的层次相似性。在经过精心策划的 X 射线数据集、皮肤癌 MNIST 数据集和 COVID-19 射线照相数据集上的广泛实验表明,与其他最先进的医学图像检索算法相比,MTH 算法可以进一步增强医学检索的效果。