Wu Juehui, Zhan Xiaoxia, Wang Songzi, Liao Xuanren, Li Laisheng, Luo Jinmei
Department of Laboratory Medicine, The First Affiliated Hospital of Sun Yat-Sen University, 58 Zhongshan Road, Guangzhou, 510080, People's Republic of China.
Department of Laboratory Medicine and Technology, College of Laboratory and Biotechnology, Southern Medical University, Guangzhou, 510515, People's Republic of China.
Inflamm Res. 2023 Sep;72(9):1829-1837. doi: 10.1007/s00011-023-01787-z. Epub 2023 Sep 5.
Presepsin is a soluble CD14 subtype that has been considered as a novel marker for patients with sepsis. This study explored the clinical value of presepsin for sepsis in Southern China, and further established models for diagnosis and prognosis of sepsis through using machine learning (ML), by combining presepsin and other laboratory parameters.
269 subjects (105 infected patients, 164 sepsis and septic shock) and 198 healthy controls were enrolled. Laboratory parameters (hematological parameters, coagulation parameters, liver function indices, renal function indices, and inflammatory markers) were collected. Plasma presepsin was tested by chemiluminescence enzyme immunoassay. ML of DxAI™ Research platform was used to establish diagnostic and prognostic models. Sensitivity, specificity, and other performance indicators were used to evaluate the performance of each model.
The level of presepsin was obviously increased in sepsis and sepsis shock, compared with that of infected and healthy group (all P < 0.0001). Presepsin concentration was positively correlated with positive blood culture and 30-day mortality in sepsis and septic shock patients. Through ROC curve analysis, Hb, UREA, APTT, CRP, PCT, and presepsin were incorporated into machine learning to construct diagnosis models. Ada Boost model had the best diagnostic efficiency (AUC: 0.94 (95% CI 0.919-0.968) in the training set and AUC: 0.86 (95% CI 0.813-0.900) in validation set). Furthermore, AST, APTT, UREA, PCT, and presepsin were included in the prognosis ML models, and the Bernoulli NB model had greater predictive ability for 30-day mortality risk of sepsis (AUC: 0.706), which was higher than that of PCT (AUC: 0.617) and presepsin (AUC: 0.634) alone.
Machine-learning model based on presepsin and routinely laboratory parameters showed good performance of diagnostic and prognostic ability for sepsis patients.
可溶性髓系细胞触发受体-1(Presepsin)是一种可溶性CD14亚型,被认为是脓毒症患者的新型标志物。本研究探讨了Presepsin在中国南方地区对脓毒症的临床价值,并通过机器学习(ML)结合Presepsin和其他实验室参数,进一步建立脓毒症的诊断和预后模型。
纳入269例受试者(105例感染患者、164例脓毒症和脓毒性休克患者)及198例健康对照。收集实验室参数(血液学参数、凝血参数、肝功能指标、肾功能指标及炎症标志物)。采用化学发光酶免疫分析法检测血浆Presepsin。使用DxAI™研究平台的机器学习建立诊断和预后模型。采用灵敏度、特异性等性能指标评估各模型的性能。
与感染组和健康组相比,脓毒症组和脓毒性休克组Presepsin水平明显升高(均P<0.0001)。脓毒症和脓毒性休克患者的Presepsin浓度与血培养阳性及30天死亡率呈正相关。通过ROC曲线分析,将血红蛋白(Hb)、尿素(UREA)、活化部分凝血活酶时间(APTT)、C反应蛋白(CRP)、降钙素原(PCT)和Presepsin纳入机器学习以构建诊断模型。Ada Boost模型具有最佳诊断效率(训练集AUC:0.94(95%CI 0.919-0.968),验证集AUC:0.86(95%CI 0.813-0.900))。此外,天冬氨酸氨基转移酶(AST)、APTT、UREA、PCT和Presepsin被纳入预后机器学习模型,伯努利朴素贝叶斯(Bernoulli NB)模型对脓毒症30天死亡风险的预测能力更强(AUC:0.706),高于单独的PCT(AUC:0.617)和Presepsin(AUC:0.634)。
基于Presepsin和常规实验室参数的机器学习模型对脓毒症患者具有良好的诊断和预后能力。