Department of Laboratory Medicine, the Second Xiangya Hospital of Central South University, Changsha, Hunan 410011, China.
School of Clinical Medicine, Hunan University of Chinese Medicine, Changsha, Hunan 410208, China.
Int Immunopharmacol. 2023 Nov;124(Pt A):110839. doi: 10.1016/j.intimp.2023.110839. Epub 2023 Aug 26.
Severe SARS-CoV-2 infection results in lymphopenia and impaired function of T, B, and NK (TBNK-dominant) lymphocytes. Mitochondria are essential targets of SARS-CoV-2 and the efficacy of lymphocyte mitochondrial function for immunosurveillance in COVID-19 patients has not been evaluated.
Multi-parametric flow cytometry was used to characterize mitochondrial function, including mitochondrial mass (MM) and low mitochondrial membrane potential (MMP), in TBNK-dominant lymphocytes from severe (n = 93) and moderate (n = 77) hospitalized COVID-19 patients. We compared the role of novel lymphocyte mitochondrial indicators and routine infection biomarkers as early predictors of severity and death in COVID-19 patients. We then developed a mortality decision tree prediction model based on immunosurveillance indicators through machine learning.
At admission, the MM of circulating NK cells (NK-MM) was the best discriminator of severe/moderate disease (AUC = 0.8067) compared with the routine infection biomarkers. The NK cell count and NK-MM displayed superior diagnostic effects to distinguish patients with non-fatal or fatal outcomes. Interestingly, NK-MM was significantly polarized in non-survivors, with some patients showing a decrease and others showing an abnormal increase. Kaplan-Meier analysis showed that NK-MM had the optimal predictive efficacy (hazard ratio = 11.66). The decision tree model has the highest proportion of importance for NK-MM, which is superior to the single diagnostic effect of the above indicators (AUC = 0.8900).
NK-MM was not only associated with disease severity, its abnormal increases or decreases also predicted mortality risk. The resulting decision tree prediction model is the first to focus on immune monitoring indicators to provide decision-making clues for COVID-19 clinical management.
严重的 SARS-CoV-2 感染会导致淋巴细胞减少和 T、B、NK(TBNK 为主)淋巴细胞功能受损。线粒体是 SARS-CoV-2 的重要靶点,淋巴细胞线粒体功能在 COVID-19 患者中的免疫监视作用尚未得到评估。
采用多参数流式细胞术检测严重(n=93)和中度(n=77)住院 COVID-19 患者 TBNK 为主的淋巴细胞中线粒体功能,包括线粒体质量(MM)和低线粒体膜电位(MMP)。我们比较了新型淋巴细胞线粒体指标与常规感染生物标志物作为 COVID-19 患者严重程度和死亡的早期预测指标的作用。然后,我们通过机器学习建立了基于免疫监测指标的死亡率决策树预测模型。
入院时,循环 NK 细胞的 MM(NK-MM)是区分严重/中度疾病的最佳判别指标(AUC=0.8067),优于常规感染生物标志物。NK 细胞计数和 NK-MM 显示出优越的诊断效果,可区分非致死性或致死性结局的患者。有趣的是,NK-MM 在非幸存者中明显极化,一些患者减少,另一些患者异常增加。Kaplan-Meier 分析表明,NK-MM 具有最佳的预测效果(危险比=11.66)。决策树模型对 NK-MM 的重要性比例最高,优于上述指标的单一诊断效果(AUC=0.8900)。
NK-MM 不仅与疾病严重程度相关,其异常增加或减少也预测了死亡风险。由此产生的决策树预测模型是首次关注免疫监测指标,为 COVID-19 临床管理提供决策线索。