Ghosh Shameek, Li Jinyan, Cao Longbing, Ramamohanarao Kotagiri
Advanced Analytics Institute, Faculty of Engineering and IT, University of Technology Sydney (UTS), Australia.
Department of Computing and Information Systems, The University of Melbourne, Parkville, VIC 3010, Australia.
J Biomed Inform. 2017 Feb;66:19-31. doi: 10.1016/j.jbi.2016.12.010. Epub 2016 Dec 21.
Critical care patient events like sepsis or septic shock in intensive care units (ICUs) are dangerous complications which can cause multiple organ failures and eventual death. Preventive prediction of such events will allow clinicians to stage effective interventions for averting these critical complications.
It is widely understood that physiological conditions of patients on variables such as blood pressure and heart rate are suggestive to gradual changes over a certain period of time, prior to the occurrence of a septic shock. This work investigates the performance of a novel machine learning approach for the early prediction of septic shock. The approach combines highly informative sequential patterns extracted from multiple physiological variables and captures the interactions among these patterns via coupled hidden Markov models (CHMM). In particular, the patterns are extracted from three non-invasive waveform measurements: the mean arterial pressure levels, the heart rates and respiratory rates of septic shock patients from a large clinical ICU dataset called MIMIC-II.
For baseline estimations, SVM and HMM models on the continuous time series data for the given patients, using MAP (mean arterial pressure), HR (heart rate), and RR (respiratory rate) are employed. Single channel patterns based HMM (SCP-HMM) and multi-channel patterns based coupled HMM (MCP-HMM) are compared against baseline models using 5-fold cross validation accuracies over multiple rounds. Particularly, the results of MCP-HMM are statistically significant having a p-value of 0.0014, in comparison to baseline models. Our experiments demonstrate a strong competitive accuracy in the prediction of septic shock, especially when the interactions between the multiple variables are coupled by the learning model.
It can be concluded that the novelty of the approach, stems from the integration of sequence-based physiological pattern markers with the sequential CHMM model to learn dynamic physiological behavior, as well as from the coupling of such patterns to build powerful risk stratification models for septic shock patients.
重症监护病房(ICU)中诸如脓毒症或脓毒性休克等重症监护患者事件是危险的并发症,可导致多器官功能衰竭并最终死亡。对此类事件进行预防性预测将使临床医生能够实施有效的干预措施以避免这些严重并发症。
人们普遍认为,在脓毒性休克发生之前的一段时间内,患者的血压和心率等变量的生理状况会逐渐发生变化。这项工作研究了一种用于脓毒性休克早期预测的新型机器学习方法的性能。该方法结合了从多个生理变量中提取的高信息量序列模式,并通过耦合隐马尔可夫模型(CHMM)捕捉这些模式之间的相互作用。具体而言,这些模式是从三个非侵入性波形测量中提取的:来自一个名为MIMIC-II的大型临床ICU数据集的脓毒性休克患者的平均动脉压水平、心率和呼吸频率。
对于基线估计,使用给定患者的连续时间序列数据,采用基于支持向量机(SVM)和隐马尔可夫模型(HMM),使用平均动脉压(MAP)、心率(HR)和呼吸频率(RR)。基于单通道模式的HMM(SCP-HMM)和基于多通道模式的耦合HMM(MCP-HMM)与基线模型进行比较,通过多轮5折交叉验证准确率进行评估。特别是,与基线模型相比,MCP-HMM的结果具有统计学意义,p值为0.0014。我们的实验表明,在脓毒性休克的预测中具有很强的竞争准确性,特别是当多个变量之间的相互作用通过学习模型耦合时。
可以得出结论,该方法的新颖之处在于将基于序列的生理模式标记与序列CHMM模型相结合以学习动态生理行为,以及将这些模式进行耦合以构建针对脓毒性休克患者的强大风险分层模型。