An Efficient Content-Based Image Retrieval System for the Diagnosis of Lung Diseases

AbstractThe main problem in content-based image retrieval (CBIR) systems is the semantic gap which needs to be reduced for efficient retrieval. The common imaging signs (CISs) which appear in the patient ’s lung CT scan play a significant role in the identification of cancerous lung nodules and many other lung diseases. In this paper, we propose a new combination of descriptors for the effective retrieval of these imaging signs. First, we construct a feature database by combining local ternary pat tern (LTP), local phase quantization (LPQ), and discrete wavelet transform. Next, joint mutual information (JMI)–based feature selection is deployed to reduce the redundancy and to select an optimal feature set for CISs retrieval. To this end, similarity measurement is performed by combining visua l and semantic information in equal proportion to construct a balanced graph and the shortest path is computed for learning contextual similarity to obtain final similarity between each query and database image. The proposed system is evaluated on a publicly available database of lung CT imaging sig ns (LISS), and results are retrieved based on visual feature similarity comparison and graph-based similarity comparison. The proposed system achieves a mean average precision (MAP) of 60% and 0.48 AUC of precision-recall (P-R) graph using only visual features similarity comparison. These results fu rther improve on graph-based similarity measure with a MAP of 70% and 0.58 AUC which shows t...
Source: Journal of Digital Imaging - Category: Radiology Source Type: research