IVAICVLGJul 7, 2025

X-ray transferable polyrepresentation learning

arXiv:2507.06264v1h-index: 4
Originality Incremental advance
AI Analysis

This incremental approach addresses feature extraction problems for medical imaging and potentially other domains, offering a resource-efficient solution.

The paper tackles the challenge of extracting meaningful features for machine learning by introducing polyrepresentation, which integrates multiple representations from distinct sources like Siamese Networks and radiomic features, achieving better performance metrics and demonstrating transferability to smaller X-ray datasets.

The success of machine learning algorithms is inherently related to the extraction of meaningful features, as they play a pivotal role in the performance of these algorithms. Central to this challenge is the quality of data representation. However, the ability to generalize and extract these features effectively from unseen datasets is also crucial. In light of this, we introduce a novel concept: the polyrepresentation. Polyrepresentation integrates multiple representations of the same modality extracted from distinct sources, for example, vector embeddings from the Siamese Network, self-supervised models, and interpretable radiomic features. This approach yields better performance metrics compared to relying on a single representation. Additionally, in the context of X-ray images, we demonstrate the transferability of the created polyrepresentation to a smaller dataset, underscoring its potential as a pragmatic and resource-efficient approach in various image-related solutions. It is worth noting that the concept of polyprepresentation on the example of medical data can also be applied to other domains, showcasing its versatility and broad potential impact.

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