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Título
Validation of deep learning techniques for quality augmentation in diffusion MRI for clinical studies
Autor
Año del Documento
2023
Editorial
Elsevier
Documento Fuente
NeuroImage: Clinical, 2023, vol. 39, p. 103483
Abstract
The objective of this study is to evaluate the efficacy of deep learning (DL) techniques in improving the quality of diffusion MRI (dMRI) data in clinical applications. The study aims to determine whether the use of artificial intelligence (AI) methods in medical images may result in the loss of critical clinical information and/or the appearance of false information. To assess this, the focus was on the angular resolution of dMRI and a clinical trial was conducted on migraine, specifically between episodic and chronic migraine patients. The number of gradient directions had an impact on white matter analysis results, with statistically significant differences between groups being drastically reduced when using 21 gradient directions instead of the original 61. Fourteen teams from different institutions were tasked to use DL to enhance three diffusion metrics (FA, AD and MD) calculated from data acquired with 21 gradient directions and a b-value of 1000 s/mm2. The goal was to produce results that were comparable to those calculated from 61 gradient directions. The results were evaluated using both standard image quality metrics and Tract-Based Spatial Statistics (TBSS) to compare episodic and chronic migraine patients. The study results suggest that while most DL techniques improved the ability to detect statistical differences between groups, they also led to an increase in false positive. The results showed that there was a constant growth rate of false positives linearly proportional to the new true positives, which highlights the risk of generalization of AI-based tasks when assessing diverse clinical cohorts and training using data from a single group. The methods also showed divergent performance when replicating the original distribution of the data and some exhibited significant bias. In conclusion, extreme caution should be exercised when using AI methods for harmonization or synthesis in clinical studies when processing heterogeneous data in clinical studies, as important information may be altered, even when global metrics such as structural similarity or peak signal-to-noise ratio appear to suggest otherwise.
Palabras Clave
Deep learning
Machine learning
Artificial intelligence
Diffusion MRI
Angular resolution
Diffusion tensor
ISSN
2213-1582
Revisión por pares
SI
Patrocinador
Grant PID2021-124407NB-I00 - Ministerio de Ciencia e Innovación (Spain)
Grant TED2021-130758B-I00 - Ministerio de Ciencia e Innovación (Spain) and NextGenerationEU/PRTR
Grant PPN/BEK/2019/1/00421 - Polish National Agency for Academic Exchange
Grants M020533, R006032, R014019, EP/S021930/1, EP/V034537/1 - EPSRC
Grant MRFFAI000085 - Australia Medical Research Future Fund
Grants ME 3737/19-1 and 269953372/GRK2150 - German Research Foundation
Grants R01- EB028774 , R01-NS082436, R01-EB031169, R01-AG054328 and R01-MH118020 - National Council for Scientific and Technological Development (CNPq) and National Institute of Health
Grant 2021ZD0200202 - Ministry of Science and Technology of the People’s Republic of China
Grants 81971606, 82122032 - National Natural Science Foundation of China
Grants 202006140, 2022C03057 - Science and Technology Department of Zhejiang Province
Grant TED2021-130758B-I00 - Ministerio de Ciencia e Innovación (Spain) and NextGenerationEU/PRTR
Grant PPN/BEK/2019/1/00421 - Polish National Agency for Academic Exchange
Grants M020533, R006032, R014019, EP/S021930/1, EP/V034537/1 - EPSRC
Grant MRFFAI000085 - Australia Medical Research Future Fund
Grants ME 3737/19-1 and 269953372/GRK2150 - German Research Foundation
Grants R01- EB028774 , R01-NS082436, R01-EB031169, R01-AG054328 and R01-MH118020 - National Council for Scientific and Technological Development (CNPq) and National Institute of Health
Grant 2021ZD0200202 - Ministry of Science and Technology of the People’s Republic of China
Grants 81971606, 82122032 - National Natural Science Foundation of China
Grants 202006140, 2022C03057 - Science and Technology Department of Zhejiang Province
Idioma
eng
Tipo de versión
info:eu-repo/semantics/publishedVersion
Derechos
openAccess
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