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Link to original content: https://unpaywall.org/10.1117/12.769858
Automatic classification and detection of clinically relevant images for diabetic retinopathy
Paper
17 March 2008 Automatic classification and detection of clinically relevant images for diabetic retinopathy
Author Affiliations +
Abstract
We proposed a novel approach to automatic classification of Diabetic Retinopathy (DR) images and retrieval of clinically-relevant DR images from a database. Given a query image, our approach first classifies the image into one of the three categories: microaneurysm (MA), neovascularization (NV) and normal, and then it retrieves DR images that are clinically-relevant to the query image from an archival image database. In the classification stage, the query DR images are classified by the Multi-class Multiple-Instance Learning (McMIL) approach, where images are viewed as bags, each of which contains a number of instances corresponding to non-overlapping blocks, and each block is characterized by low-level features including color, texture, histogram of edge directions, and shape. McMIL first learns a collection of instance prototypes for each class that maximizes the Diverse Density function using Expectation- Maximization algorithm. A nonlinear mapping is then defined using the instance prototypes and maps every bag to a point in a new multi-class bag feature space. Finally a multi-class Support Vector Machine is trained in the multi-class bag feature space. In the retrieval stage, we retrieve images from the archival database who bear the same label with the query image, and who are the top K nearest neighbors of the query image in terms of similarity in the multi-class bag feature space. The classification approach achieves high classification accuracy, and the retrieval of clinically-relevant images not only facilitates utilization of the vast amount of hidden diagnostic knowledge in the database, but also improves the efficiency and accuracy of DR lesion diagnosis and assessment.
© (2008) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Xinyu Xu and Baoxin Li "Automatic classification and detection of clinically relevant images for diabetic retinopathy", Proc. SPIE 6915, Medical Imaging 2008: Computer-Aided Diagnosis, 69150Q (17 March 2008); https://doi.org/10.1117/12.769858
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CITATIONS
Cited by 5 scholarly publications.
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KEYWORDS
Databases

Image classification

Image retrieval

Bismuth

Prototyping

Feature extraction

Diagnostics

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