Department of Computer and Information Science, Cleveland State University, Cleveland, Ohio, USA.
Surg Infect (Larchmt). 2012 Apr;13(2):93-101. doi: 10.1089/sur.2008.057. Epub 2010 Jul 28.
Differentiation between infectious and non-infectious etiologies of the systemic inflammatory response syndrome (SIRS) in trauma patients remains elusive. We hypothesized that mathematical modeling in combination with computerized clinical decision support would assist with this differentiation. The purpose of this study was to determine the capability of various mathematical modeling techniques to predict infectious complications in critically ill trauma patients and compare the performance of these models with a standard fever workup practice (identifying infections on the basis of fever or leukocytosis).
An 18-mo retrospective database was created using information collected daily from critically ill trauma patients admitted to an academic surgical and trauma intensive care unit. Two hundred forty-three non-infected patient-days were chosen randomly to combine with the 243 infected-days, which created a modeling sample of 486 patient-days. Utilizing ten variables known to be associated with infectious complications, decision trees, neural networks, and logistic regression analysis models were created to predict the presence of urinary tract infections (UTIs), bacteremia, and respiratory tract infections (RTIs). The data sample was split into a 70% training set and a 30% testing set. Models were compared by calculating sensitivity, specificity, positive predictive value, negative predictive value, overall accuracy, and discrimination.
Decision trees had the best modeling performance, with a sensitivity of 83%, an accuracy of 82%, and a discrimination of 0.91 for identifying infections. Both neural networks and decision trees outperformed logistic regression analysis. A second analysis was performed utilizing the same 243 infected days and only those non-infected patient-days associated with negative microbiologic cultures (n = 236). Decision trees again had the best modeling performance for infection identification, with a sensitivity of 79%, an accuracy of 83%, and a discrimination of 0.87.
The use of mathematical modeling techniques beyond logistic regression can improve the robustness and accuracy of predicting infections in critically ill trauma patients. Decision tree analysis appears to have the best potential to use in assisting physicians in differentiating infectious from non-infectious SIRS.
在创伤患者中,区分全身炎症反应综合征(SIRS)的感染性和非感染性病因仍然难以捉摸。我们假设,数学建模结合计算机临床决策支持将有助于进行这种区分。本研究的目的是确定各种数学建模技术预测重症创伤患者感染并发症的能力,并比较这些模型与标准发热检查实践(根据发热或白细胞增多来确定感染)的性能。
使用从入住学术外科和创伤重症监护病房的重症创伤患者每天收集的信息创建了一个 18 个月的回顾性数据库。随机选择 243 例非感染性患者日与 243 例感染性患者日相结合,创建了 486 例患者日的建模样本。利用与感染并发症相关的 10 个变量,创建决策树、神经网络和逻辑回归分析模型,以预测尿路感染(UTI)、菌血症和呼吸道感染(RTI)的存在。将数据样本分为 70%的训练集和 30%的测试集。通过计算敏感性、特异性、阳性预测值、阴性预测值、总准确性和鉴别力来比较模型。
决策树的建模性能最佳,其识别感染的敏感性为 83%,准确性为 82%,鉴别力为 0.91。神经网络和决策树均优于逻辑回归分析。对使用相同的 243 例感染性患者日和仅与阴性微生物培养相关的 236 例非感染性患者日进行了第二次分析。决策树再次对感染识别具有最佳的建模性能,其敏感性为 79%,准确性为 83%,鉴别力为 0.87。
除逻辑回归分析外,使用数学建模技术可以提高预测重症创伤患者感染的稳健性和准确性。决策树分析似乎最有潜力用于帮助医生区分感染性和非感染性 SIRS。