Graduate Institute of Medical Sciences, College of Medicine, Taipei Medical University, Taipei City, Taiwan (CSL)
Department of Anesthesiology, Taipei Medical University Hospital, Taipei City, Taiwan (CSL, CCC, YWL, JAL, MSM)
Med Decis Making. 2011 Mar-Apr;31(2):308-14. doi: 10.1177/0272989X10379648. Epub 2010 Sep 27.
Perioperative hypotension is associated with adverse outcomes in patients undergoing surgery. A computer-based model that integrates related factors and predicts the risk of hypotension would be helpful in clinical anesthesia. The purpose of this study was to develop artificial neural network (ANN) models to identify patients at high risk for postinduction hypotension during general anesthesia.
Anesthesia records for March through November 2007 were reviewed, and 1017 records were analyzed. Eleven patient-related, 2 surgical, and 5 anesthetic variables were used to develop the ANN and logistic regression (LR) models. The quality of the models was evaluated by an external validation data set. Three clinicians were asked to make predictions of the same validation data set on a case-by-case basis.
The ANN model had an accuracy of 82.3%, sensitivity of 76.4%, and specificity of 85.6%. The accuracy of the LR model was 76.5%, the sensitivity was 74.5%, and specificity was 77.7%. The area under the receiver operating characteristic curve for the ANN and LR models was 0.893 and 0.840. The clinicians had the lowest predictive accuracy and sensitivity compared with the ANN and LR models.
The ANN model developed in this study had good discrimination and calibration and would provide decision support to clinicians and increase vigilance for patients at high risk of postinduction hypotension during general anesthesia.
围手术期低血压与手术患者的不良预后相关。整合相关因素并预测低血压风险的基于计算机的模型将有助于临床麻醉。本研究的目的是开发人工神经网络(ANN)模型,以识别全身麻醉期间诱导后低血压风险较高的患者。
回顾 2007 年 3 月至 11 月的麻醉记录,分析了 1017 份记录。使用 11 个患者相关、2 个手术和 5 个麻醉变量来开发 ANN 和逻辑回归(LR)模型。通过外部验证数据集评估模型的质量。要求三位临床医生逐案对同一验证数据集进行预测。
ANN 模型的准确率为 82.3%,灵敏度为 76.4%,特异性为 85.6%。LR 模型的准确率为 76.5%,灵敏度为 74.5%,特异性为 77.7%。ANN 和 LR 模型的受试者工作特征曲线下面积分别为 0.893 和 0.840。与 ANN 和 LR 模型相比,临床医生的预测准确性和灵敏度最低。
本研究中开发的 ANN 模型具有良好的区分度和校准度,可为临床医生提供决策支持,并提高对全身麻醉期间诱导后低血压风险较高的患者的警惕性。