Hydranet

Data augmentation for regression neural networks

Conference Paper (2019)
Author(s)

Florian Dubost (Erasmus MC)

Gerda Bortsova (Erasmus MC)

Hieab Adams (Erasmus MC)

M. Arfan Ikram (Erasmus MC)

Wiro Niessen (TU Delft - ImPhys/Quantitative Imaging, Erasmus MC)

Meike Vernooij (Erasmus MC)

Marleen de Bruijne (Erasmus MC, University of Copenhagen)

Research Group
ImPhys/Quantitative Imaging
DOI related publication
https://doi.org/10.1007/978-3-030-32251-9_48
More Info
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Publication Year
2019
Language
English
Research Group
ImPhys/Quantitative Imaging
Volume number
11767
Pages (from-to)
438-446
Publisher
Springer
ISBN (print)
9783030322502

Abstract

Deep learning techniques are often criticized to heavily depend on a large quantity of labeled data. This problem is even more challenging in medical image analysis where the annotator expertise is often scarce. We propose a novel data-augmentation method to regularize neural network regressors that learn from a single global label per image. The principle of the method is to create new samples by recombining existing ones. We demonstrate the performance of our algorithm on two tasks: estimation of the number of enlarged perivascular spaces in the basal ganglia, and estimation of white matter hyperintensities volume. We show that the proposed method improves the performance over more basic data augmentation. The proposed method reached an intraclass correlation coefficient between ground truth and network predictions of 0.73 on the first task and 0.84 on the second task, only using between 25 and 30 scans with a single global label per scan for training. With the same number of training scans, more conventional data augmentation methods could only reach intraclass correlation coefficients of 0.68 on the first task, and 0.79 on the second task.

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