Traeger M, Eberhart A, Geldner G, Morin A M, Putzke C, Wulf H, Eberhart L H J
Klinik für Innere Medizin, Kreiskrankenhaus Günzburg.
Anaesthesist. 2003 Dec;52(12):1132-8. doi: 10.1007/s00101-003-0575-y.
Postoperative nausea and vomiting (PONV) are still frequent side-effects after general anaesthesia. These unpleasant symptoms for the patients can be sufficiently reduced using a multimodal antiemetic approach. However, these efforts should be restricted to risk patients for PONV. Thus, predictive models are required to identify these patients before surgery. So far all risk scores to predict PONV are based on results of logistic regression analysis. Artificial neural networks (ANN) can also be used for prediction since they can take into account complex and non-linear relationships between predictive variables and the dependent item. This study presents the development of an ANN to predict PONV and compares its performance with two established simplified risk scores (Apfel's and Koivuranta's scores).
The development of the ANN was based on data from 1,764 patients undergoing elective surgical procedures under balanced anaesthesia. The ANN was trained with 1,364 datasets and a further 400 were used for supervising the learning process. One of the 49 ANNs showing the best predictive performance was compared with the established risk scores with respect to practicability, discrimination (by means of the area under a receiver operating characteristics curve) and calibration properties (by means of a weighted linear regression between the predicted and the actual incidences of PONV).
The ANN tested showed a statistically significant ( p<0.0001) and clinically relevant higher discriminating power (0.74; 95% confidence interval: 0.70-0.78) than the Apfel score (0.66; 95% CI: 0.61-0.71) or Koivuranta's score (0.69; 95% CI: 0.65-0.74). Furthermore, the agreement between the actual incidences of PONV and those predicted by the ANN was also better and near to an ideal fit, represented by the equation y=1.0x+0. The equations for the calibration curves were: KNN y=1.11x+0, Apfel y=0.71x+1, Koivuranta 0.86x-5.
The improved predictive accuracy achieved by the ANN is clinically relevant. However, the disadvantages of this system prevail because a computer is required for risk calculation. Thus, we still recommend the use of one of the simplified risk scores for clinical practice.
术后恶心呕吐(PONV)仍是全身麻醉后常见的副作用。采用多模式抗呕吐方法可充分减轻患者这些不适症状。然而,这些措施应仅限于PONV风险患者。因此,需要预测模型在手术前识别这些患者。到目前为止,所有预测PONV的风险评分均基于逻辑回归分析结果。人工神经网络(ANN)也可用于预测,因为它们可以考虑预测变量与因变量之间复杂的非线性关系。本研究展示了一种用于预测PONV的ANN的开发,并将其性能与两种已确立的简化风险评分(Apfel评分和Koivuranta评分)进行比较。
ANN的开发基于1764例接受平衡麻醉下择期手术患者的数据。ANN用1364个数据集进行训练,另外400个用于监督学习过程。将表现出最佳预测性能的49个ANN中的一个与既定风险评分在实用性、区分度(通过受试者操作特征曲线下面积)和校准特性(通过预测的和实际的PONV发生率之间的加权线性回归)方面进行比较。
所测试的ANN显示出比Apfel评分(0.66;95%置信区间:0.61 - 0.71)或Koivuranta评分(0.69;9%置信区间:0.65 - 0.74)在统计学上有显著差异(p<0.0001)且临床上相关的更高区分能力(0.74;95%置信区间:0.70 - 0.78)。此外,PONV的实际发生率与ANN预测的发生率之间的一致性也更好,且接近由方程y = 1.0x + 0表示的理想拟合。校准曲线的方程为:KNN y = 1.11x + 0,Apfel y = 0.71x + 1,Koivuranta 0.86x - 5。
ANN实现的预测准确性提高在临床上具有相关性。然而,该系统的缺点仍然突出,因为风险计算需要计算机。因此,我们仍建议在临床实践中使用简化风险评分之一。