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Predicting Patient-ventilator Asynchronies with Hidden Markov Models

机译:用隐马尔可夫模型预测患者呼吸机的异步性

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摘要

In mechanical ventilation, it is paramount to ensure the patient’s ventilatory demand is met while minimizing asynchronies. We aimed to develop a model to predict the likelihood of asynchronies occurring. We analyzed 10,409,357 breaths from 51 critically ill patients who underwent mechanical ventilation >24 h. Patients were continuously monitored and common asynchronies were identified and regularly indexed. Based on discrete time-series data representing the total count of asynchronies, we defined four states or levels of risk of asynchronies, z1 (very-low-risk) – z4 (very-high-risk). A Poisson hidden Markov model was used to predict the probability of each level of risk occurring in the next period. Long periods with very few asynchronous events, and consequently very-low-risk, were more likely than periods with many events (state z4). States were persistent; large shifts of states were uncommon and most switches were to neighbouring states. Thus, patients entering states with a high number of asynchronies were very likely to continue in that state, which may have serious implications. This novel approach to dealing with patient-ventilator asynchrony is a first step in developing smart alarms to alert professionals to patients entering high-risk states so they can consider actions to improve patient-ventilator interaction.
机译:在机械通气中,最重要的是确保满足患者的通气需求,同时最大程度地减少异步性。我们旨在开发一种模型来预测异步发生的可能性。我们分析了51例接受机械通气> 24h的危重患者的呼吸10409357例。对患者进行持续监测,确定常见的异步并定期索引。基于代表异步总数的离散时间序列数据,我们定义了四种状态或异步风险级别,z1(极低风险)-z4(极高风险)。使用泊松隐马尔可夫模型预测下一阶段发生的每个风险级别的概率。与具有许多事件的状态(状态z4)相比,具有很少的异步事件的长期时间(因此风险非常低)更可能。各国坚持不懈;状态的大转变并不常见,大多数转换都转移到相邻的状态。因此,进入具有大量异步状态的患者极有可能继续处于该状态,这可能会产生严重的影响。这种处理患者-呼吸机异步的新颖方法是开发智能警报的第一步,以向专业人员警告进入高风险状态的患者,使他们可以考虑采取措施改善患者-呼吸机的相互作用。

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