视神经脊髓炎
多发性硬化
医学
扩大残疾状况量表
光谱紊乱
复发-缓解
队列
内科学
儿科
免疫学
精神科
作者
Wei Ren,Xiaolu Xu,Yunyun Duan,Ningnannan Zhang,Jie Sun,Haiqing Li,Yuxin Li,Yongmei Li,Chun Zeng,Xuemei Han,Fuqing Zhou,Muhua Huang,Runzhi Li,Zhizheng Zhuo,Frederik Barkhof,James H. Cole,Yaou Liu
标识
DOI:10.1136/jnnp-2022-329680
摘要
Objective To evaluate the clinical significance of deep learning-derived brain age prediction in neuromyelitis optica spectrum disorder (NMOSD) relative to relapsing-remitting multiple sclerosis (RRMS). Methods This cohort study used data retrospectively collected from 6 tertiary neurological centres in China between 2009 and 2018. In total, 199 patients with NMOSD and 200 patients with RRMS were studied alongside 269 healthy controls. Clinical follow-up was available in 85 patients with NMOSD and 124 patients with RRMS (mean duration NMOSD=5.8±1.9 (1.9–9.9) years, RRMS=5.2±1.7 (1.5–9.2) years). Deep learning was used to learn ‘brain age’ from MRI scans in the healthy controls and estimate the brain age gap (BAG) in patients. Results A significantly higher BAG was found in the NMOSD (5.4±8.2 years) and RRMS (13.0±14.7 years) groups compared with healthy controls. A higher baseline disability score and advanced brain volume loss were associated with increased BAG in both patient groups. A longer disease duration was associated with increased BAG in RRMS. BAG significantly predicted Expanded Disability Status Scale worsening in patients with NMOSD and RRMS. Conclusions There is a clear BAG in NMOSD, although smaller than in RRMS. The BAG is a clinically relevant MRI marker in NMOSD and RRMS.
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