| Literature DB >> 26259520 |
Marcos Vinicius Naves Bedo1, Davi Pereira Dos Santos2, Marcelo Ponciano-Silva3, Paulo Mazzoncini de Azevedo-Marques4, André Ponce de León Ferreira de Carvalho2, Caetano Traina2.
Abstract
Content-based medical image retrieval (CBMIR) is a powerful resource to improve differential computer-aided diagnosis. The major problem with CBMIR applications is the semantic gap, a situation in which the system does not follow the users' sense of similarity. This gap can be bridged by the adequate modeling of similarity queries, which ultimately depends on the combination of feature extractor methods and distance functions. In this study, such combinations are referred to as perceptual parameters, as they impact on how images are compared. In a CBMIR, the perceptual parameters must be manually set by the users, which imposes a heavy burden on the specialists; otherwise, the system will follow a predefined sense of similarity. This paper presents a novel approach to endow a CBMIR with a proper sense of similarity, in which the system defines the perceptual parameter depending on the query element. The method employs ensemble strategy, where an extreme learning machine acts as a meta-learner and identifies the most suitable perceptual parameter according to a given query image. This parameter defines the search space for the similarity query that retrieves the most similar images. An instance-based learning classifier labels the query image following the query result set. As the concept implementation, we integrated the approach into a mammogram CBMIR. For each query image, the resulting tool provided a complete second opinion, including lesion class, system certainty degree, and set of most similar images. Extensive experiments on a large mammogram dataset showed that our proposal achieved a hit ratio up to 10% higher than the traditional CBMIR approach without requiring external parameters from the users. Our database-driven solution was also up to 25% faster than content retrieval traditional approaches.Keywords: Computer-aided diagnosis; Content-based medical image retrieval; Similarity queries
Mesh:
Year: 2016 PMID: 26259520 PMCID: PMC4722033 DOI: 10.1007/s10278-015-9809-1
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.056