Journal Article10.1002/ASI.23772
Mining correlations between medically dependent features and image retrieval models for query classification
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TL;DR: A list of generic and specific medical query features are defined and exploited in an association rule mining technique to discover correlations between query features and image retrieval models and shows that combining the proposed specific and generic query features is effective in query classification.
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Abstract: The abundance of medical resources has encouraged the development of systems that allow for efficient searches of information in large medical image data sets. State-of-the-art image retrieval models are classified into three categories: content-based (visual) models, textual models, and combined models. Content-based models use visual features to answer image queries, textual image retrieval models use word matching to answer textual queries, and combined image retrieval models, use both textual and visual features to answer queries. Nevertheless, most of previous works in this field have used the same image retrieval model independently of the query type. In this article, we define a list of generic and specific medical query features and exploit them in an association rule mining technique to discover correlations between query features and image retrieval models. Based on these rules, we propose to use an associative classifier (NaiveClass) to find the best suitable retrieval model given a new textual query. We also propose a second associative classifier (SmartClass) to select the most appropriate default class for the query. Experiments are performed on Medical ImageCLEF queries from 2008 to 2012 to evaluate the impact of the proposed query features on the classification performance. The results show that combining our proposed specific and generic query features is effective in query classification.
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Citations
MF-Re-Rank: A modality feature-based Re-Ranking model for medical image retrieval
TL;DR: This work proposes a novel reranking method based on medical‐image‐dependent features that exploits the defined features in a new re ranking method for medical image retrieval and shows that compared to the BM25 model, the proposed model significantly enhances image retrieval performance.
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Optimized Local Weber and Gradient Pattern-based medical image retrieval and optimized Convolutional Neural Network-based classification
TL;DR: In this paper, a content-based medical image retrieval and classification model was proposed, which combines a hybrid algorithm with the integration of two well-known meta-heuristic algorithms like Barnacle Mating Optimization and Jaya Algorithm, namely Jaya-based Barnacle Optimization, for improving the Optimized Local Weber and Gradient Pattern-based image retrieval.
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Learning to Re-rank Medical Images Using a Bayesian Network-Based Thesaurus
Hajer Ayadi,Mouna Torjmen Khemakhem,Jimmy Xiangji Huang,Mariam Daoud,Maher Ben Jemaa +4 more
- 08 Apr 2017
TL;DR: This work presents the list of specific medical features such as image modality and image dimensionality, and constructs a Bayesian network that represents the relationships among these specific features appearing in a given image collection.
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Text-based Medical Image Retrieval using Convolutional Neural Network and Specific Medical Features
Nada Souissi,Hajer Ayadi,Mouna Torjmen-Khemakhem +2 more
- 22 Feb 2019
TL;DR: This paper proposes a re-ranking method using the CNN and the SMF for text-medical image retrieval and shows that the proposed approach significantly enhances image retrieval performance compared to several state of the art models.
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