Learning brain MRI quality control: a multi-factorial generalization
problem
- URL: http://arxiv.org/abs/2205.15898v1
- Date: Tue, 31 May 2022 15:46:44 GMT
- Title: Learning brain MRI quality control: a multi-factorial generalization
problem
- Authors: Ghiles Reguig, Marie Chupin, Hugo Dary, Eric Bardinet, St\'ephane
Leh\'ericy, Romain Valabregue
- Abstract summary: This work aimed at evaluating the performances of the MRIQC pipeline on various large-scale datasets.
We focused our analysis on the MRIQC preprocessing steps and tested the pipeline with and without them.
We concluded that a model trained with data from a heterogeneous population, such as the CATI dataset, provides the best scores on unseen data.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Due to the growing number of MRI data, automated quality control (QC) has
become essential, especially for larger scale analysis. Several attempts have
been made in order to develop reliable and scalable QC pipelines. However, the
generalization of these methods on new data independent of those used for
learning is a difficult problem because of the biases inherent in MRI data.
This work aimed at evaluating the performances of the MRIQC pipeline on various
large-scale datasets (ABIDE, N = 1102 and CATI derived datasets, N = 9037) used
for both training and evaluation purposes. We focused our analysis on the MRIQC
preprocessing steps and tested the pipeline with and without them. We further
analyzed the site-wise and study-wise predicted classification probability
distributions of the models without preprocessing trained on ABIDE and CATI
data. Our main results were that a model using features extracted from MRIQC
without preprocessing yielded the best results when trained and evaluated on
large multi-center datasets with a heterogeneous population (an improvement of
the ROC-AUC score on unseen data of 0.10 for the model trained on a subset of
the CATI dataset). We concluded that a model trained with data from a
heterogeneous population, such as the CATI dataset, provides the best scores on
unseen data. In spite of the performance improvement, the generalization
abilities of the models remain questionable when looking at the
site-wise/study-wise probability predictions and the optimal classification
threshold derived from them.
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