TY - JOUR
T1 - MRI BrainAGE demonstrates increased brain aging in systemic lupus erythematosus patients
AU - Kuchcinski, Grégory
AU - Rumetshofer, Theodor
AU - Zervides, Kristoffer A.
AU - Lopes, Renaud
AU - Gautherot, Morgan
AU - Pruvo, Jean Pierre
AU - Bengtsson, Anders A.
AU - Hansson, Oskar
AU - Jönsen, Andreas
AU - Sundgren, Pia C.Maly
N1 - Funding Information:
The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This study has received funding by the French Society of Neuroradiology (SFNR), GK; the French Society of Radiology (SFR), GK; Collège des Enseignants en Radiologie de France (CERF), GK; Lille University, GK; Lille University Hospital, GK; Anna-Greta Crafoord Foundation, AJ; Greta and Johan Kock Foundation, AJ; Lund University, AJ; Stiftelsen Konung Gustaf V:80-årsfond, PS; Alfred Österlund Foundation, PS; Swedish Rheumatic Association, PS; Swedish Research Council (2016–00906), OH; the Knut and Alice Wallenberg foundation (2017–0383), OH; the Marianne and Marcus Wallenberg foundation (2015.0125), OH; the Strategic Research Area MultiPark (Multidisciplinary Research in Parkinson’s disease) at Lund University, OH; the Swedish Alzheimer Foundation (AF-939932), OH; the Swedish Brain Foundation (FO2021-0293), OH; The Parkinson foundation of Sweden (1280/20), OH; the Cure Alzheimer’s fund, OH; the Konung Gustaf V:s och Drottning Victorias Frimurarestiftelse, OH; the Skåne University Hospital Foundation (2020-O000028), OH; Regionalt Forskningsstöd (2020–0314), OH; and the Swedish federal government under the ALF agreement (2018-Projekt0279), OH. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.
Publisher Copyright:
Copyright © 2023 Kuchcinski, Rumetshofer, Zervides, Lopes, Gautherot, Pruvo, Bengtsson, Hansson, Jönsen and Sundgren.
PY - 2023/8/20
Y1 - 2023/8/20
N2 - Introduction: Systemic lupus erythematosus (SLE) is an autoimmune connective tissue disease affecting multiple organs in the human body, including the central nervous system. Recently, an artificial intelligence method called BrainAGE (Brain Age Gap Estimation), defined as predicted age minus chronological age, has been developed to measure the deviation of brain aging from a healthy population using MRI. Our aim was to evaluate brain aging in SLE patients using a deep-learning BrainAGE model. Methods: Seventy female patients with a clinical diagnosis of SLE and 24 healthy age-matched control females, were included in this post-hoc analysis of prospectively acquired data. All subjects had previously undergone a 3 T MRI acquisition, a neuropsychological evaluation and a measurement of neurofilament light protein in plasma (NfL). A BrainAGE model with a 3D convolutional neural network architecture, pre-trained on the 3D-T1 images of 1,295 healthy female subjects to predict their chronological age, was applied on the images of SLE patients and controls in order to compute the BrainAGE. SLE patients were divided into 2 groups according to the BrainAGE distribution (high vs. low BrainAGE). Results: BrainAGE z-score was significantly higher in SLE patients than in controls (+0.6 [±1.1] vs. 0 [±1.0], p = 0.02). In SLE patients, high BrainAGE was associated with longer reaction times (p = 0.02), lower psychomotor speed (p = 0.001) and cognitive flexibility (p = 0.04), as well as with higher NfL after adjusting for age (p = 0.001). Conclusion: Using a deep-learning BrainAGE model, we provide evidence of increased brain aging in SLE patients, which reflected neuronal damage and cognitive impairment.
AB - Introduction: Systemic lupus erythematosus (SLE) is an autoimmune connective tissue disease affecting multiple organs in the human body, including the central nervous system. Recently, an artificial intelligence method called BrainAGE (Brain Age Gap Estimation), defined as predicted age minus chronological age, has been developed to measure the deviation of brain aging from a healthy population using MRI. Our aim was to evaluate brain aging in SLE patients using a deep-learning BrainAGE model. Methods: Seventy female patients with a clinical diagnosis of SLE and 24 healthy age-matched control females, were included in this post-hoc analysis of prospectively acquired data. All subjects had previously undergone a 3 T MRI acquisition, a neuropsychological evaluation and a measurement of neurofilament light protein in plasma (NfL). A BrainAGE model with a 3D convolutional neural network architecture, pre-trained on the 3D-T1 images of 1,295 healthy female subjects to predict their chronological age, was applied on the images of SLE patients and controls in order to compute the BrainAGE. SLE patients were divided into 2 groups according to the BrainAGE distribution (high vs. low BrainAGE). Results: BrainAGE z-score was significantly higher in SLE patients than in controls (+0.6 [±1.1] vs. 0 [±1.0], p = 0.02). In SLE patients, high BrainAGE was associated with longer reaction times (p = 0.02), lower psychomotor speed (p = 0.001) and cognitive flexibility (p = 0.04), as well as with higher NfL after adjusting for age (p = 0.001). Conclusion: Using a deep-learning BrainAGE model, we provide evidence of increased brain aging in SLE patients, which reflected neuronal damage and cognitive impairment.
KW - aging
KW - brain
KW - deep learning
KW - magnetic resonance imaging
KW - systemic lupus erythematosus
U2 - 10.3389/fnagi.2023.1274061
DO - 10.3389/fnagi.2023.1274061
M3 - Article
C2 - 37927336
AN - SCOPUS:85175690634
SN - 1663-4365
VL - 15
JO - Frontiers in Aging Neuroscience
JF - Frontiers in Aging Neuroscience
M1 - 1274061
ER -