Objective: During cardiac arrest treatment, a reliable detection of spontaneous circulation, usually performed by manual pulse checks, is both vital for patient survival and practically challenging. Methods: We developed a machine learning algorithm to automatically predict the circulatory state during cardiac arrest treatment from 4-second-long snippets of accelerometry and electrocardiogram data from real-world defibrillator records. The algorithm was trained based on 917 cases from the German Resuscitation Registry, for which ground truth labels were created by a manual annotation of physicians. It uses a kernelized Support Vector Machine classifier based on 14 features, which partially reflect the correlation between accelerometry and electrocardiogram data. Results: On a test data set, the proposed algorithm exhibits an accuracy of 94.4 (93.6, 95.2)%, a sensitivity of 95.0 (93.9, 96.1)%, and a specificity of 93.9 (92.7, 95.1)%. Conclusion and significance: In application, the algorithm may be used to simplify retrospective annotation for quality management and, moreover, to support clinicians to assess circulatory state during cardiac arrest treatment.
翻译:目标:在心脏停止治疗期间,通常通过人工脉搏检查对自发循环进行可靠检测,这对病人的生存至关重要,而且实际上也具有挑战性。 方法:我们开发了机器学习算法,从现实世界除颤器记录的4秒长的心电图和心电图数据片段中自动预测心脏停止治疗期间的循环状态。算法是根据德国复苏登记处的917个案例培训的,这些案例的地面真实性标签是由医生人工注解产生的。它使用基于14个特征的内分泌支持矢量机分类器,部分反映了加速度测量和心电图数据之间的相互关系。结果:在测试数据集中,拟议算法显示94.4(93.6,95.2)的准确性,95.0(93.9,96.1)%的灵敏度,以及93.9(92.7,95.1)%的特殊性。结论和意义:在应用时,算法可以用于简化质量管理的追溯性说明,此外,还用于支持临床医生评估心脏停止治疗期间的循环状态。