Content-based medical image retrieval system for lung diseases using deep CNNs

被引:28
作者
Agrawal S. [1 ]
Chowdhary A. [1 ]
Agarwala S. [1 ]
Mayya V. [1 ,2 ]
Kamath S. [1 ]
机构
[1] Healthcare Analytics and Language Engineering (HALE) Lab, Department of Information Technology, National Institute of Technology Karnataka, Surathkal, Karnataka, Mangalore
[2] Department of Information and Communication Technology, Manipal Institute of Technology, Manipal Academy of Higher Education (MAHE), Karnataka, Manipal
关键词
Content-based image retrieval; COVID-19; Deep learning; Disease classification;
D O I
10.1007/s41870-022-01007-7
中图分类号
学科分类号
摘要
Content-based image retrieval (CBIR) systems are designed to retrieve images that are relevant, based on detailed analysis of latent image characteristics, thus eliminating the dependency of natural language tags, text descriptions, or keywords associated with the images. A CBIR system maintains high-level image visuals in the form of feature vectors, which the retrieval engine leverages for similarity-based matching and ranking for a given query image. In this paper, a CBIR system is proposed for the retrieval of medical images (CBMIR) for enabling the early detection and classification of lung diseases based on lung X-ray images. The proposed CBMIR system is built on the predictive power of deep neural models for the identification and classification of disease-specific features using transfer learning based models trained on standard COVID-19 Chest X-ray image datasets. Experimental evaluation on the standard dataset revealed that the proposed approach achieved an improvement of 49.71% in terms of precision, averaging across various distance metrics. Also, an improvement of 26.55% was observed in the area under precision-recall curve (AUPRC) values across all subclasses. © 2022, The Author(s), under exclusive licence to Bharati Vidyapeeth's Institute of Computer Applications and Management.
引用
收藏
页码:3619 / 3627
页数:8
相关论文
共 31 条
[1]  
Gudivada V.N., Raghavan V.V., Content based image retrieval systems, Computer, 28, 9, pp. 18-22, (1995)
[2]  
Qayyum A., Anwar S.M., Awais M., Majid M., Medical image retrieval using deep convolutional neural network, Neurocomputing, 266, pp. 8-20, (2017)
[3]  
Mane P.P., Bawane N.G., An effective technique for the content based image retrieval to reduce the semantic gap based on an optimal classifier technique, Pattern Recognition and Image Analysis, 26, 3, pp. 597-607, (2016)
[4]  
Selvarajah S., Kodituwakku S., Analysis and comparison of texture features for content based image retrieval, Energy, 1, 1, pp. 108-113, (2011)
[5]  
Karthik K., Kamath S., Deep neural models for automated multi-task diagnostic scan management—quality enhancement, view classification and report generation, Biomedical Physics & Engineering Express, 8, 1, (2021)
[6]  
Liu Y., Zhang D., Lu G., Ma W.-Y., A survey of content-based image retrieval with high-level semantics, Pattern recognition, 40, 1, pp. 262-282, (2007)
[7]  
Hwang K.H., Lee H., Choi D., Medical image retrieval: past and present, Healthc Inform Res, 18, 1, pp. 3-9, (2012)
[8]  
Mizotin M., Benois-Pineau J., Allard M., Catheline G., Feature-based brain mri retrieval for Alzheimer disease diagnosis, 19Th IEEE Intl. Conf. on Image Processing, (2012)
[9]  
Mayya V., Kamath Shevgoor S., Kulkarni U., Hazarika M., Barua P.D., Acharya U.R., Multi-scale convolutional neural network for accurate corneal segmentation in early detection of fungal keratitis, J Fungi, 7, 10, (2021)
[10]  
Pilevar A., Cbmir: content-based image retrieval algorithm for medical image databases, J Med Signals Sens, 1, pp. 12-18, (2011)