Abstract

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.

Highlights

  • Rapid technological advances in medical imaging devices facilitate generation, transmission, consumption, and storage of medical images in hospitals and clinics [1]

  • From the results reported in the table, it can be seen that saliency-injected neural codes (SiNC) descriptor performs better in comparison with other representations

  • Neuronal activations from the fully connected layers of a finetuned convolutional neural network (CNN) were studied for the suitability of representing medical images

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Summary

Introduction

Rapid technological advances in medical imaging devices facilitate generation, transmission, consumption, and storage of medical images in hospitals and clinics [1]. The growing dependency on recent medical diagnostic methods like radiology, histopathology, and computed tomography causes massive increase in the volume of digital images stored and processed on a regular basis. Saliency-injected neural codes for medical image retrieval (Institute for Information & communications Technology Promation)

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