The University of Southampton
University of Southampton Institutional Repository

Few-shot learning for inference in medical imaging with subspace feature representations

Few-shot learning for inference in medical imaging with subspace feature representations
Few-shot learning for inference in medical imaging with subspace feature representations

Unlike in the field of visual scene recognition, where tremendous advances have taken place due to the availability of very large datasets to train deep neural networks, inference from medical images is often hampered by the fact that only small amounts of data may be available. When working with very small dataset problems, of the order of a few hundred items of data, the power of deep learning may still be exploited by using a pre-trained model as a feature extractor and carrying out classic pattern recognition techniques in this feature space, the so-called few-shot learning problem. However, medical images are highly complex and variable, making it difficult for few-shot learning to fully capture and model these features. To address these issues, we focus on the intrinsic characteristics of the data. We find that, in regimes where the dimension of the feature space is comparable to or even larger than the number of images in the data, dimensionality reduction is a necessity and is often achieved by principal component analysis or singular value decomposition (PCA/ SVD). In this paper, noting the inappropriateness of using SVD for this setting we explore two alternatives based on discriminant analysis (DA) and non-negative matrix factorization (NMF). Using 14 different datasets spanning 11 distinct disease types we demonstrate that at low dimensions, discriminant subspaces achieve significant improvements over SVD-based subspaces and the original feature space. We also show that at modest dimensions, NMF is a competitive alternative to SVD in this setting. The implementation of the proposed method is accessible via the following link.

1932-6203
Liu, Jiahui
53a77bdd-58f3-455a-b4a8-2ee9927a0027
Fan, Keqiang
0b1613e0-0167-425e-9ab9-986054928dd2
Cai, Xiaohao
de483445-45e9-4b21-a4e8-b0427fc72cee
Niranjan, Mahesan
5cbaeea8-7288-4b55-a89c-c43d212ddd4f
Liu, Jiahui
53a77bdd-58f3-455a-b4a8-2ee9927a0027
Fan, Keqiang
0b1613e0-0167-425e-9ab9-986054928dd2
Cai, Xiaohao
de483445-45e9-4b21-a4e8-b0427fc72cee
Niranjan, Mahesan
5cbaeea8-7288-4b55-a89c-c43d212ddd4f

Liu, Jiahui, Fan, Keqiang, Cai, Xiaohao and Niranjan, Mahesan (2024) Few-shot learning for inference in medical imaging with subspace feature representations. PLoS ONE, 19 (11), [e0309368]. (doi:10.1371/journal.pone.0309368).

Record type: Article

Abstract

Unlike in the field of visual scene recognition, where tremendous advances have taken place due to the availability of very large datasets to train deep neural networks, inference from medical images is often hampered by the fact that only small amounts of data may be available. When working with very small dataset problems, of the order of a few hundred items of data, the power of deep learning may still be exploited by using a pre-trained model as a feature extractor and carrying out classic pattern recognition techniques in this feature space, the so-called few-shot learning problem. However, medical images are highly complex and variable, making it difficult for few-shot learning to fully capture and model these features. To address these issues, we focus on the intrinsic characteristics of the data. We find that, in regimes where the dimension of the feature space is comparable to or even larger than the number of images in the data, dimensionality reduction is a necessity and is often achieved by principal component analysis or singular value decomposition (PCA/ SVD). In this paper, noting the inappropriateness of using SVD for this setting we explore two alternatives based on discriminant analysis (DA) and non-negative matrix factorization (NMF). Using 14 different datasets spanning 11 distinct disease types we demonstrate that at low dimensions, discriminant subspaces achieve significant improvements over SVD-based subspaces and the original feature space. We also show that at modest dimensions, NMF is a competitive alternative to SVD in this setting. The implementation of the proposed method is accessible via the following link.

Text
journal.pone.0309368 - Version of Record
Available under License Creative Commons Attribution.
Download (2MB)

More information

Accepted/In Press date: 11 August 2024
Published date: 6 November 2024

Identifiers

Local EPrints ID: 498026
URI: http://eprints.soton.ac.uk/id/eprint/498026
ISSN: 1932-6203
PURE UUID: 6c3544b6-baac-4cef-a8cc-571ae9c5d20e
ORCID for Jiahui Liu: ORCID iD orcid.org/0009-0003-2526-423X
ORCID for Keqiang Fan: ORCID iD orcid.org/0000-0002-9411-2892
ORCID for Xiaohao Cai: ORCID iD orcid.org/0000-0003-0924-2834
ORCID for Mahesan Niranjan: ORCID iD orcid.org/0000-0001-7021-140X

Catalogue record

Date deposited: 06 Feb 2025 17:33
Last modified: 22 Aug 2025 02:29

Export record

Altmetrics

Contributors

Author: Jiahui Liu ORCID iD
Author: Keqiang Fan ORCID iD
Author: Xiaohao Cai ORCID iD
Author: Mahesan Niranjan ORCID iD

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×