3D Regression Neural Network for the Quantification of Enlarged Perivascular Spaces in Brain MRI
Florian Dubost, Hieab Adams, Gerda Bortsova, M. Arfan Ikram, Wiro, Niessen, Meike Vernooij, Marleen de Bruijne

TL;DR
This paper introduces a 3D convolutional neural network for automatic quantification of enlarged perivascular spaces in brain MRI, demonstrating high accuracy and reproducibility compared to expert visual scoring.
Contribution
The study presents a novel 3D regression network specifically designed for small object detection in brain MRI, outperforming traditional methods in EPVS quantification.
Findings
Achieved ICC of 0.74 with 1000 training scans
Reproducibility ICC of 0.93 on scan-rescan data
Outperformed conventional intensity-based methods by over 0.10
Abstract
Enlarged perivascular spaces (EPVS) in the brain are an emerging imaging marker for cerebral small vessel disease, and have been shown to be related to increased risk of various neurological diseases, including stroke and dementia. Automatic quantification of EPVS would greatly help to advance research into its etiology and its potential as a risk indicator of disease. We propose a convolutional network regression method to quantify the extent of EPVS in the basal ganglia from 3D brain MRI. We first segment the basal ganglia and subsequently apply a 3D convolutional regression network designed for small object detection within this region of interest. The network takes an image as input, and outputs a quantification score of EPVS. The network has significantly more convolution operations than pooling ones and no final activation, allowing it to span the space of real numbers. We…
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Taxonomy
MethodsConvolution
