Department of Pediatrics and Adolescent Medicine, Copenhagen University Hospital, Rigshospitalet, Copenhagen, Denmark.
Department of Clinical Medicine, University of Copenhagen, Copenhagen, Denmark.
Commun Biol. 2024 Jun 5;7(1):688. doi: 10.1038/s42003-024-06370-8.
Multisystem inflammatory syndrome in children (MIS-C) is a severe disease that emerged during the COVID-19 pandemic. Although recognized as an immune-mediated condition, the pathogenesis remains unresolved. Furthermore, the absence of a diagnostic test can lead to delayed immunotherapy. Using state-of-the-art mass-spectrometry proteomics, assisted by artificial intelligence (AI), we aimed to identify a diagnostic signature for MIS-C and to gain insights into disease mechanisms. We identified a highly specific 4-protein diagnostic signature in children with MIS-C. Furthermore, we identified seven clusters that differed between MIS-C and controls, indicating an interplay between apolipoproteins, immune response proteins, coagulation factors, platelet function, and the complement cascade. These intricate protein patterns indicated MIS-C as an immunometabolic condition with global hypercoagulability. Our findings emphasize the potential of AI-assisted proteomics as a powerful and unbiased tool for assessing disease pathogenesis and suggesting avenues for future interventions and impact on pediatric disease trajectories through early diagnosis.
儿童多系统炎症综合征(MIS-C)是 COVID-19 大流行期间出现的一种严重疾病。尽管被认为是一种免疫介导的疾病,但发病机制仍未解决。此外,缺乏诊断测试可能导致免疫治疗的延迟。我们使用最先进的基于人工智能(AI)的质谱蛋白质组学,旨在为 MIS-C 确定一个诊断特征,并深入了解疾病机制。我们在患有 MIS-C 的儿童中鉴定出了一个高度特异性的 4 蛋白诊断特征。此外,我们还发现了 MIS-C 和对照组之间存在七个差异簇,表明载脂蛋白、免疫反应蛋白、凝血因子、血小板功能和补体级联之间存在相互作用。这些复杂的蛋白质模式表明 MIS-C 是一种具有全身性高凝状态的免疫代谢疾病。我们的研究结果强调了 AI 辅助蛋白质组学作为评估疾病发病机制的强大而公正的工具的潜力,并通过早期诊断为儿科疾病轨迹提供了未来干预和影响的途径。