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Sickle Cell Anemia Impacts Brain Age in Children

Children with sickle cell anemia (SCA) are at risk for cognitive dysfunction independent of infarction, suggesting SCA impacts brain function and brain development prior to stroke occurrence. Research-only imaging sequences demonstrate microstructural differences in children with SCA. However, these...

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Bibliographic Details
Published in:Blood 2024-11, Vol.144 (Supplement 1), p.2220-2220
Main Authors: Fields, Melanie E., Germino-Watnick, Paula, Mirro, Amy, Wang, Jinli, Power, Landon C., Lewis, Josiah, Guilliams, Kristin P., Chen, Yasheng, Ford, Andria L.
Format: Article
Language:English
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Summary:Children with sickle cell anemia (SCA) are at risk for cognitive dysfunction independent of infarction, suggesting SCA impacts brain function and brain development prior to stroke occurrence. Research-only imaging sequences demonstrate microstructural differences in children with SCA. However, these sequences are not available clinically and require processing expertise. DeepBrainNet is a convolutional neural network that accurately predicts brain age across the lifespan using a single, clinically available T1 sequence (PMID 32591831). Both predicted age and brain age gap (BAG; difference between predicted brain age and chronological age) are reliable indicators of brain maturation (PMID 34892076). We utilized DeepBrainNet to calculate brain age in children with SCA and healthy controls (HC) to test the hypothesis that children with SCA would have delayed brain maturation compared to HC. Brain MRIs were collected longitudinally with laboratory evaluation from HC and children with SCA between 5-21 years of age. We excluded those with cerebral vasculopathy on MRA, history of stem cell transplant or gene therapy, disorders other than SCA associated with neurocognitive complications, and contraindications to MRI. MRIs were skull stripped, affinely registered to atlas space, and split into 80 axial slices. Each slice ran through DeepBrainNet independently, resulting in 80 brain age predictions per T1 image. Whole brain (WB) predicted age is the median of these 80 values (PMID 32591831). DeepBrainNet predicted brain age from 126 brain MRIs (34 HC, 92 SCA) acquired from 102 participants (27 HC, 75 SCA). HC and SCA cohorts were matched for age (HC 13.5 (±3.3) years, SCA 12.9 (±4.2) years, p = 0.498) and sex (p = 0.455) upon enrollment. Twenty-nine (38.7%) SCA participants had a history of silent infarcts (SCI); 5 (6.7%) had a history of overt stroke; 49 (65.3%) received hydroxyurea and 20 (26.7%) received chronic transfusion therapy. The average BAG was 3.2 (±1.9) years for HC and 2.6 (±2.6) years for SCA, indicating that DeepBrainNet overestimated brain age for all participants, including HC. We accounted for the previously reported bias of overestimating brain age of young participants (PMID 32120292) by including chronological age in all statistical models. With linear mixed effects modeling to control for repeated measures and chronological age, there was a significant difference in WB BAG between HC (3.5 (95% CI 2.7, 4.3) years) and SCA without SCI or overt s
ISSN:0006-4971
1528-0020
DOI:10.1182/blood-2024-209079