Paul Mical, Nielsen Anders D, Goldberg Elad, Andreassen Steen, Tacconelli Evelina, Almanasreh Nadja, Frank Uwe, Cauda Roberto, Leibovici Leonard
Department of Medicine E, Rabin Medical Center, Beilinson Campus, Petah-Tiqva, Israel.
J Antimicrob Chemother. 2007 Jun;59(6):1204-7. doi: 10.1093/jac/dkm107. Epub 2007 Apr 21.
Prediction of bacterial infections and their pathogens allows for early, directed investigation and treatment. We assessed the ability of TREAT, a computerized decision support system, to predict specific pathogens.
TREAT uses data available within the first few hours of infection presentation in a causal probabilistic network to predict sites of infection and specific pathogens. We included 3529 patients (920 with microbiologically documented infections) participating in the observational and interventional trials of the TREAT system in Israel, Germany and Italy. Discriminatory performance of TREAT to predict individual pathogens was expressed by the AUC with 95% confidence intervals. Calibration was assessed using the Hosmer-Lemeshow goodness-of-fit statistic.
The AUCs for Gram-negative bacteria, including Pseudomonas aeruginosa, Acinetobacter baumannii, Klebsiella spp. and Escherichia coli, ranged between 0.70 and 0.80 (all significant). Adequate calibration was demonstrated for any Gram-negative infection and individual bacteria, except for E. coli. Discrimination and calibration were acceptable for Enterococcus spp. (AUC 0.71, 0.65-0.78), but not for Staphylococcus aureus (AUC 0.63, 0.55-0.71). The few infections caused by Candida spp. and Clostridium difficile were well predicted (AUCs 0.74, 0.54-0.95; and 0.94, 0.88-1.00, respectively). The coverage with TREAT's recommendation exceeded that observed with physicians' treatment for all pathogens, except Candida spp.
TREAT predicted individual pathogens causing infection well. Prediction of S. aureus was inferior to that observed with other pathogens. TREAT can be used to triage patients by the risk for specific pathogens. The system's predictions enable it to prescribe appropriate antibiotic treatment prior to pathogen identification.
预测细菌感染及其病原体有助于进行早期、有针对性的调查和治疗。我们评估了计算机决策支持系统TREAT预测特定病原体的能力。
TREAT利用感染出现后头几个小时内可得的数据,通过因果概率网络预测感染部位和特定病原体。我们纳入了参与以色列、德国和意大利TREAT系统观察性和干预性试验的3529例患者(920例有微生物学记录的感染患者)。TREAT预测个体病原体的鉴别性能用AUC及95%置信区间表示。使用Hosmer-Lemeshow拟合优度统计量评估校准情况。
革兰阴性菌的AUC值,包括铜绿假单胞菌、鲍曼不动杆菌、克雷伯菌属和大肠杆菌,在0.70至0.80之间(均有统计学意义)。除大肠杆菌外,任何革兰阴性菌感染和单个细菌均显示校准良好。肠球菌属的鉴别和校准情况尚可(AUC 0.71,0.65-0.78),但金黄色葡萄球菌的情况不佳(AUC 0.63,0.55-0.71)。念珠菌属和艰难梭菌引起的少数感染预测良好(AUC分别为0.74,0.54-0.95;和0.94,0.88-1.00)。除念珠菌属外,TREAT推荐的覆盖范围超过了医生治疗时观察到的所有病原体的覆盖范围。
TREAT能很好地预测引起感染的个体病原体。金黄色葡萄球菌的预测不如其他病原体。TREAT可用于根据特定病原体风险对患者进行分诊。该系统的预测使其能够在病原体鉴定之前开出适当的抗生素治疗方案。