Ahmad Jamil, Sajjad Muhammad, Mehmood Irfan, Baik Sung Wook
College of Software and Convergence Technology, Department of Software, Sejong University, Seoul, Republic of Korea.
Digital Image Processing Lab, Department of Computer Science, Islamia College, Peshawar, Pakistan.
PLoS One. 2017 Aug 3;12(8):e0181707. doi: 10.1371/journal.pone.0181707. eCollection 2017.
Medical image collections contain a wealth of information which can assist radiologists and medical experts in diagnosis and disease detection for making well-informed decisions. However, this objective can only be realized if efficient access is provided to semantically relevant cases from the ever-growing medical image repositories. In this paper, we present an efficient method for representing medical images by incorporating visual saliency and deep features obtained from a fine-tuned convolutional neural network (CNN) pre-trained on natural images. Saliency detector is employed to automatically identify regions of interest like tumors, fractures, and calcified spots in images prior to feature extraction. Neuronal activation features termed as neural codes from different CNN layers are comprehensively studied to identify most appropriate features for representing radiographs. This study revealed that neural codes from the last fully connected layer of the fine-tuned CNN are found to be the most suitable for representing medical images. The neural codes extracted from the entire image and salient part of the image are fused to obtain the saliency-injected neural codes (SiNC) descriptor which is used for indexing and retrieval. Finally, locality sensitive hashing techniques are applied on the SiNC descriptor to acquire short binary codes for allowing efficient retrieval in large scale image collections. Comprehensive experimental evaluations on the radiology images dataset reveal that the proposed framework achieves high retrieval accuracy and efficiency for scalable image retrieval applications and compares favorably with existing approaches.
医学图像集包含丰富的信息,可帮助放射科医生和医学专家进行诊断和疾病检测,从而做出明智的决策。然而,只有从不断增长的医学图像存储库中高效访问语义相关的病例,这一目标才能实现。在本文中,我们提出了一种有效的医学图像表示方法,该方法通过结合视觉显著性和从在自然图像上预训练的微调卷积神经网络(CNN)获得的深度特征来实现。在特征提取之前,使用显著性检测器自动识别图像中诸如肿瘤、骨折和钙化点等感兴趣区域。对来自不同CNN层的称为神经编码的神经元激活特征进行了全面研究,以确定最适合表示X光片的特征。这项研究表明,微调后的CNN最后一个全连接层的神经编码最适合表示医学图像。从整个图像及其显著部分提取的神经编码进行融合,以获得用于索引和检索的显著性注入神经编码(SiNC)描述符。最后,对SiNC描述符应用局部敏感哈希技术,以获取短二进制代码,从而在大规模图像集中实现高效检索。对放射学图像数据集的综合实验评估表明,所提出的框架在可扩展图像检索应用中实现了高检索精度和效率,并且与现有方法相比具有优势。