Department of Clinical Laboratory, Xiangya Hospital, Central South University, 87 Xiangya Road, Changsha, 410008, Hunan, People's Republic of China.
Sci Rep. 2024 Sep 28;14(1):22470. doi: 10.1038/s41598-024-72977-w.
Systemic lupus erythematosus (SLE) commonly damages the blood system and often manifests as blood cell abnormalities. The performance of biomarkers for predicting SLE activity still requires further improvement. This study aimed to analyze blood cell parameters to identify key indicators for a SLE activity prediction model. Clinical data of 138 patients with SLE (high activity, n = 40; moderate activity, n = 44; mild activity, n = 37; low activity, n = 17) and 100 healthy controls (HCs) were retrospectively analyzed. Data from 89 paired admission-discharge patients with SLE were collected. Differences and associations between blood cell parameters and disease indicators, as well as the relationship between the these parameters and organ damage, were examined. Machine-learning methods were employed to develop a prediction model for disease activity evaluation. Most blood cell parameters (22/26, 84.62%) differed significantly between patients with SLE and HCs. Analysis of 89 paired patients with SLE revealed significant changes in most blood cell parameters at discharge. The standard deviation of lymphocyte volume (SD-V-LY), red blood cell (RBC) count, lymphocyte percentage (LY%), hemoglobin(HGB), hematocrit(HCT), and neutrophil percentage(NE%) correlated with disease activity. By employing machine learning, an optimal model was established to predict active SLE using SD-V-LY, RBC count, and LY% (area under the curve [AUC] = 0.908, sensitivity = 0.811). External validation indicated impressive performance (AUC = 0.940, sensitivity = 0.833). Correlation analysis revealed that SD-V-LY was positively correlated with ESR, IgG, IgA, and IgM but was negatively correlated with C3 and C4. The RBC count was linked to renal and hematopoietic system impairments, whereas LY% was associated with joint/muscle involvement. In conclusion, SD-V-LY is associated with SLE disease activity. SD-V-LY combined with RBC count and LY% contributes to a prediction model, which can be utilized as an effective tool for assessing SLE activity.
系统性红斑狼疮(SLE)常损害血液系统,常表现为血细胞异常。用于预测 SLE 活动的生物标志物的表现仍需进一步改善。本研究旨在分析血细胞参数,以确定用于 SLE 活动预测模型的关键指标。回顾性分析了 138 例 SLE 患者(高活动度,n=40;中活动度,n=44;低活动度,n=37;低活动度,n=17)和 100 例健康对照者(HCs)的临床资料。收集了 89 例 SLE 入院-出院配对患者的数据。检查了血细胞参数与疾病指标之间的差异和关联,以及这些参数与器官损伤之间的关系。采用机器学习方法建立疾病活动评估的预测模型。SLE 患者与 HCs 之间的大多数血细胞参数(22/26,84.62%)差异有统计学意义。对 89 例 SLE 配对患者的分析显示,大多数血细胞参数在出院时均有明显变化。淋巴细胞体积标准差(SD-V-LY)、红细胞(RBC)计数、淋巴细胞百分比(LY%)、血红蛋白(HGB)、红细胞压积(HCT)和中性粒细胞百分比(NE%)与疾病活动度相关。通过机器学习,建立了一个使用 SD-V-LY、RBC 计数和 LY%预测活动性 SLE 的最佳模型(曲线下面积[AUC]=0.908,敏感性=0.811)。外部验证表明其性能令人印象深刻(AUC=0.940,敏感性=0.833)。相关性分析显示,SD-V-LY 与 ESR、IgG、IgA 和 IgM 呈正相关,与 C3 和 C4 呈负相关。RBC 计数与肾脏和造血系统损伤有关,而 LY%与关节/肌肉受累有关。结论:SD-V-LY 与 SLE 疾病活动度相关。SD-V-LY 联合 RBC 计数和 LY%有助于预测模型的建立,可作为评估 SLE 活动度的有效工具。