Xiao Ran, King Johnathan, Villaroman Andrea, Do Duc H, Boyle Noel G, Hu Xiao
Annu Int Conf IEEE Eng Med Biol Soc. 2018 Jul;2018:3717-3720. doi: 10.1109/EMBC.2018.8513269.
Bedside monitors in hospital intensive care units (ICUs) are known to produce excessive false alarms that could desensitize caregivers, resulting in delayed or even missed clinical interventions to life-threatening events. Our previous studies proposed a framework aggregating information in monitor alarm data by mining frequent alarm combinations (i.e., SuperAlarm) that are predictive to clinical endpoints, such as code blue events, in an effort to address this critical issue. In the present pilot study, we hypothesize that sequential deep learning models, specifically long-short term memory (LSTM), could capture time-depend features in continuous alarm sequences preceding code blue events and these features may be predictive of these endpoints. LSTM models are trained from continuous alarm sequences in various window lengths preceding code blue events, and the preliminary results showed the best performance reached an AUC of 0.8549. With the selection of optimal cutoff threshold, the 2-hour window model achieved 85.75% sensitivity and 72.61% specificity, respectively.
医院重症监护病房(ICU)中的床边监护仪会产生过多的误报,这可能会使护理人员产生脱敏反应,从而导致对危及生命事件的临床干预延迟甚至错过。我们之前的研究提出了一个框架,通过挖掘对临床终点(如蓝色代码事件)具有预测性的频繁警报组合(即超级警报)来汇总监护仪警报数据中的信息,以解决这一关键问题。在本初步研究中,我们假设序列深度学习模型,特别是长短期记忆(LSTM)模型,可以捕捉蓝色代码事件之前连续警报序列中的时间依赖性特征,并且这些特征可能对这些终点具有预测性。LSTM模型是根据蓝色代码事件之前不同窗口长度的连续警报序列进行训练的,初步结果显示最佳性能的AUC达到0.8549。通过选择最佳截止阈值,2小时窗口模型的灵敏度和特异性分别达到85.75%和72.61%。