Lukaszewski R A, Yates A M, Jackson M C, Swingler K, Scherer J M, Simpson A J, Sadler P, McQuillan P, Titball R W, Brooks T J G, Pearce M J
Dstl Porton Down, Salisbury, Wiltshire, United Kingdom.
Clin Vaccine Immunol. 2008 Jul;15(7):1089-94. doi: 10.1128/CVI.00486-07. Epub 2008 May 14.
Postoperative or posttraumatic sepsis remains one of the leading causes of morbidity and mortality in hospital populations, especially in populations in intensive care units (ICUs). Central to the successful control of sepsis-associated infections is the ability to rapidly diagnose and treat disease. The ability to identify sepsis patients before they show any symptoms would have major benefits for the health care of ICU patients. For this study, 92 ICU patients who had undergone procedures that increased the risk of developing sepsis were recruited upon admission. Blood samples were taken daily until either a clinical diagnosis of sepsis was made or until the patient was discharged from the ICU. In addition to standard clinical and laboratory parameter testing, the levels of expression of interleukin-1beta (IL-1beta), IL-6, IL-8, and IL-10, tumor necrosis factor-alpha, FasL, and CCL2 mRNA were also measured by real-time reverse transcriptase PCR. The results of the analysis of the data using a nonlinear technique (neural network analysis) demonstrated discernible differences prior to the onset of overt sepsis. Neural networks using cytokine and chemokine data were able to correctly predict patient outcomes in an average of 83.09% of patient cases between 4 and 1 days before clinical diagnosis with high sensitivity and selectivity (91.43% and 80.20%, respectively). The neural network also had a predictive accuracy of 94.55% when data from 22 healthy volunteers was analyzed in conjunction with the ICU patient data. Our observations from this pilot study indicate that it may be possible to predict the onset of sepsis in a mixed patient population by using a panel of just seven biomarkers.
术后或创伤后脓毒症仍然是医院患者发病和死亡的主要原因之一,尤其是在重症监护病房(ICU)的患者中。成功控制脓毒症相关感染的关键在于能够快速诊断和治疗疾病。在脓毒症患者出现任何症状之前就能识别他们,这将对ICU患者的医疗保健带来重大益处。在本研究中,92名因接受了增加脓毒症发病风险手术的ICU患者在入院时被招募。每天采集血样,直到做出脓毒症的临床诊断或患者从ICU出院。除了标准的临床和实验室参数检测外,还通过实时逆转录聚合酶链反应测量白细胞介素-1β(IL-1β)、IL-6、IL-8和IL-10、肿瘤坏死因子-α、FasL和CCL2 mRNA的表达水平。使用非线性技术(神经网络分析)对数据进行分析的结果表明,在明显脓毒症发作之前存在可辨别的差异。使用细胞因子和趋化因子数据的神经网络能够在临床诊断前4至1天,以高灵敏度和选择性(分别为91.43%和80.20%)正确预测平均83.09%的患者病例的结局。当将22名健康志愿者的数据与ICU患者数据一起分析时,神经网络的预测准确率为94.55%。我们从这项初步研究中的观察结果表明,仅使用一组七种生物标志物就有可能在混合患者群体中预测脓毒症的发作。