Dual-force ISOMAP: a new relevance feedback method for medical image retrieval

With great potential for assisting radiological image interpretation and decision making, content-based image retrieval in the medical domain has become a hot topic in recent years. Many methods to enhance the performance of content-based medical image retrieval have been proposed, among which the r...

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Veröffentlicht in:PloS one 2013-12, Vol.8 (12), p.e84096-e84096
Hauptverfasser: Shen, Hualei, Tao, Dacheng, Ma, Dianfu
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description With great potential for assisting radiological image interpretation and decision making, content-based image retrieval in the medical domain has become a hot topic in recent years. Many methods to enhance the performance of content-based medical image retrieval have been proposed, among which the relevance feedback (RF) scheme is one of the most promising. Given user feedback information, RF algorithms interactively learn a user's preferences to bridge the "semantic gap" between low-level computerized visual features and high-level human semantic perception and thus improve retrieval performance. However, most existing RF algorithms perform in the original high-dimensional feature space and ignore the manifold structure of the low-level visual features of images. In this paper, we propose a new method, termed dual-force ISOMAP (DFISOMAP), for content-based medical image retrieval. Under the assumption that medical images lie on a low-dimensional manifold embedded in a high-dimensional ambient space, DFISOMAP operates in the following three stages. First, the geometric structure of positive examples in the learned low-dimensional embedding is preserved according to the isometric feature mapping (ISOMAP) criterion. To precisely model the geometric structure, a reconstruction error constraint is also added. Second, the average distance between positive and negative examples is maximized to separate them; this margin maximization acts as a force that pushes negative examples far away from positive examples. Finally, the similarity propagation technique is utilized to provide negative examples with another force that will pull them back into the negative sample set. We evaluate the proposed method on a subset of the IRMA medical image dataset with a RF-based medical image retrieval framework. Experimental results show that DFISOMAP outperforms popular approaches for content-based medical image retrieval in terms of accuracy and stability.
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First, the geometric structure of positive examples in the learned low-dimensional embedding is preserved according to the isometric feature mapping (ISOMAP) criterion. To precisely model the geometric structure, a reconstruction error constraint is also added. Second, the average distance between positive and negative examples is maximized to separate them; this margin maximization acts as a force that pushes negative examples far away from positive examples. Finally, the similarity propagation technique is utilized to provide negative examples with another force that will pull them back into the negative sample set. We evaluate the proposed method on a subset of the IRMA medical image dataset with a RF-based medical image retrieval framework. 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subjects Active learning
Algorithms
Artificial Intelligence
Biology
Breast Diseases - diagnostic imaging
Classification
Computer Science
Datasets
Decision making
Embedded structures
Embedding
Engineering
Feedback
Female
Humans
Image enhancement
Image management
Image retrieval
Information Storage and Retrieval
Information technology
Isometric
Laboratories
Levels
Mammography
Manifolds (mathematics)
Mathematics
Medical imaging
Medical Informatics
Medicine
Methods
Pattern Recognition, Automated
Performance evaluation
Radiographic Image Interpretation, Computer-Assisted
Radiography
Retrieval
Semantics
Set theory
Signal Processing, Computer-Assisted
Social and Behavioral Sciences
Subtraction Technique
Visual perception driven algorithms
title Dual-force ISOMAP: a new relevance feedback method for medical image retrieval
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