Multimorbidity Content-Based Medical Image Retrieval Using Proxies
Yunyan Xing, Benjamin J. Meyer, Mehrtash Harandi, Tom Drummond,, Zongyuan Ge

TL;DR
This paper introduces a novel multi-label metric learning approach for medical image retrieval that effectively handles multimorbidity, improving diagnostic support by retrieving similar pathological images and supporting classification.
Contribution
The paper presents a multi-label proxy-based metric learning method that allows samples to be associated with multiple proxies, capturing complex disease relationships in medical imaging data.
Findings
Outperforms state-of-the-art retrieval systems.
Effective in both classification and retrieval tasks.
Validated on two multimorbidity radiology datasets.
Abstract
Content-based medical image retrieval is an important diagnostic tool that improves the explainability of computer-aided diagnosis systems and provides decision making support to healthcare professionals. Medical imaging data, such as radiology images, are often multimorbidity; a single sample may have more than one pathology present. As such, image retrieval systems for the medical domain must be designed for the multi-label scenario. In this paper, we propose a novel multi-label metric learning method that can be used for both classification and content-based image retrieval. In this way, our model is able to support diagnosis by predicting the presence of diseases and provide evidence for these predictions by returning samples with similar pathological content to the user. In practice, the retrieved images may also be accompanied by pathology reports, further assisting in the…
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Taxonomy
TopicsMachine Learning in Healthcare · Image Retrieval and Classification Techniques · AI in cancer detection
