利用细胞因子网络相关性预测传染性单核细胞增多症后ME/CFS

Jennifer Schwabe, Chelsea Hua, Emma M. Allen, Leonard A. Jason, Jacob Furst, Daniela Raciu
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引用次数: 0

摘要

我们研究了基于细胞因子网络相互依赖性的预测建模策略是否可以准确预测患者在感染传染性单核细胞增多症(IM)后是否会发展为肌痛性脑脊髓炎/慢性疲劳综合征(ME/CFS)。我们分析了西北大学(NU)学生在三个阶段的实验中收集的数据,从学年开始(第一阶段),到IM发展(第二阶段),再到IM发展六个月后(第三阶段)。在这三个阶段,参与者的血液都被储存起来用于细胞因子的测量和分析。此外,采用八种心理和行为量表将参与者确定为健康对照或ME/CFS。利用参与者测量的细胞因子表达水平,我们建立了一个基于细胞因子网络内在相关性的预测模型。我们发现,使用IM感染期间提取的细胞因子制成的相关矩阵,我们可以预测IM后6个月患者的ME/CFS,准确率为86.84%。这些结果表明,使用基于细胞因子网络相互依赖性的方法来预测IM后ME/CFS可能具有潜力。未来的工作可能会探索这些发现的有效性,以及这种方法是否可以应用于其他疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting ME/CFS After Infectious Mononucleosis Using Cytokine Network Correlations
We investigated if a predictive modeling strategy based on the interdependence of the cytokine network could accurately predict if a patient would develop Myalgic Encephalomyelitis/Chronic Fatigue Syndrome (ME/CFS) after contracting infectious mononucleosis (IM). We analyzed previously collected data from Northwestern University (NU) students in a three-stage experiment, following them from the start of the school year (Stage 1), to development of IM (Stage 2), to six months post development of IM (Stage 3). At all three stages, blood was stored from participants for cytokine measurement and analysis. Additionally, eight psychological and behavioral scales were used to identify participants as healthy controls or as ME/CFS. Using participants’ measured cytokine expression levels, we built a predictive model based on the inherent correlations within the cytokine network. We found that we could predict ME/CFS in patients 6 months after IM with 86.84% accuracy using correlation matrices made from cytokines taken during IM infection. These results suggest that there may be potential in using an approach that is based on the interdependence of the cytokine network to predict ME/CFS post IM. Future work may explore the validity of these findings and if such an approach could have applications in other diseases.
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