Green Michael, Björk Jonas, Forberg Jakob, Ekelund Ulf, Edenbrandt Lars, Ohlsson Mattias
Department of Theoretical Physics, Lund University, Sölvegatan 14A, SE-22362 Lund, Sweden.
Artif Intell Med. 2006 Nov;38(3):305-18. doi: 10.1016/j.artmed.2006.07.006. Epub 2006 Sep 7.
Patients with suspicion of acute coronary syndrome (ACS) are difficult to diagnose and they represent a very heterogeneous group. Some require immediate treatment while others, with only minor disorders, may be sent home. Detecting ACS patients using a machine learning approach would be advantageous in many situations.
Artificial neural network (ANN) ensembles and logistic regression models were trained on data from 634 patients presenting an emergency department with chest pain. Only data immediately available at patient presentation were used, including electrocardiogram (ECG) data. The models were analyzed using receiver operating characteristics (ROC) curve analysis, calibration assessments, inter- and intra-method variations. Effective odds ratios for the ANN ensembles were compared with the odds ratios obtained from the logistic model.
The ANN ensemble approach together with ECG data preprocessed using principal component analysis resulted in an area under the ROC curve of 80%. At the sensitivity of 95% the specificity was 41%, corresponding to a negative predictive value of 97%, given the ACS prevalence of 21%. Adding clinical data available at presentation did not improve the ANN ensemble performance. Using the area under the ROC curve and model calibration as measures of performance we found an advantage using the ANN ensemble models compared to the logistic regression models.
Clinically, a prediction model of the present type, combined with the judgment of trained emergency department personnel, could be useful for the early discharge of chest pain patients in populations with a low prevalence of ACS.
疑似急性冠状动脉综合征(ACS)的患者诊断困难,且这类患者群体非常多样化。一些患者需要立即治疗,而另一些仅有轻微病症的患者可能被送回家。在许多情况下,使用机器学习方法检测ACS患者会很有优势。
人工神经网络(ANN)集成模型和逻辑回归模型在634例因胸痛到急诊科就诊的患者数据上进行训练。仅使用患者就诊时可立即获取的数据,包括心电图(ECG)数据。使用受试者工作特征(ROC)曲线分析、校准评估、方法间和方法内差异对模型进行分析。将ANN集成模型的有效比值比与逻辑模型得到的比值比进行比较。
ANN集成方法与使用主成分分析预处理的ECG数据相结合,ROC曲线下面积为80%。在灵敏度为95%时,特异度为41%,鉴于ACS患病率为21%,相应的阴性预测值为97%。添加就诊时可用的临床数据并未改善ANN集成模型的性能。使用ROC曲线下面积和模型校准作为性能指标,我们发现与逻辑回归模型相比,ANN集成模型具有优势。
临床上,这种类型的预测模型与训练有素的急诊科人员的判断相结合,可能有助于ACS患病率较低人群中胸痛患者的早期出院。