Affiliation:
1. Department of Neurology The First Hospital of China Medical University Shenyang Liaoning China
2. Department of Neurology, Xuanwu Hospital, National Center for Neurological Disorders Capital Medical University Beijing China
3. Department of Radiology The First Hospital of China Medical University Shenyang Liaoning China
4. Department of Cardiology The First Hospital of China Medical University Shenyang Liaoning China
Abstract
AbstractBackgroundTo date, most existing models for predicting neuromyelitis optica spectrum disorder (NMOSD) are based primarily on clinical characteristics. Blood‐based NMOSD severity and prognostic predictive immune‐ and inflammation‐related biomarkers are needed. We aimed to investigate the associations between plasma inflammatory biomarkers and relapse and attack severity in NMOSD.MethodsThis two‐step, single‐center prospective cohort study included discovery and validation cohorts. We quantified 92 plasma inflammatory proteins by using Olink's proximity extension assay and identified differentially expressed proteins in the relapse group (relapse within 1 year of follow‐up) and severe attack group. To define a new molecular prognostic model, we calculated the risk score of each patient based on the key protein signatures and validated the results in the validation cohort.ResultsThe relapse prediction model, including FGF‐23, DNER, GDNF, and SLAMF1, predicted the 1‐year relapse risk. The severe attack prediction model, including PD‐L1 and MCP‐2, predicted the severe clinical attack risk. Both the relapse and severe attack prediction models demonstrated good discriminative ability and high accuracy in the validation cohort.ConclusionsOur discovered biomarker signature and prediction models may complement current clinical risk stratification approaches. These inflammatory biomarkers could contribute to the discovery of therapeutic interventions and prevent NMOSD progression.
Funder
National Key Research and Development Program of China
National Natural Science Foundation of China
Natural Science Foundation of Liaoning Province