Claassen Jan, Rahman Shah Atiqur, Huang Yuxiao, Frey Hans-Peter, Schmidt J Michael, Albers David, Falo Cristina Maria, Park Soojin, Agarwal Sachin, Connolly E Sander, Kleinberg Samantha
Division of Critical Care Neurology, Department of Neurology, Columbia University, New York, NY, United States of America.
Computer Science Department, Stevens Institute of Technology, Hoboken, NJ, United States of America.
PLoS One. 2016 Apr 28;11(4):e0149878. doi: 10.1371/journal.pone.0149878. eCollection 2016.
High frequency physiologic data are routinely generated for intensive care patients. While massive amounts of data make it difficult for clinicians to extract meaningful signals, these data could provide insight into the state of critically ill patients and guide interventions. We develop uniquely customized computational methods to uncover the causal structure within systemic and brain physiologic measures recorded in a neurological intensive care unit after subarachnoid hemorrhage. While the data have many missing values, poor signal-to-noise ratio, and are composed from a heterogeneous patient population, our advanced imputation and causal inference techniques enable physiologic models to be learned for individuals. Our analyses confirm that complex physiologic relationships including demand and supply of oxygen underlie brain oxygen measurements and that mechanisms for brain swelling early after injury may differ from those that develop in a delayed fashion. These inference methods will enable wider use of ICU data to understand patient physiology.
重症监护患者通常会生成高频生理数据。虽然大量数据使临床医生难以提取有意义的信号,但这些数据可以洞察重症患者的状态并指导干预措施。我们开发了独特定制的计算方法,以揭示蛛网膜下腔出血后神经重症监护病房记录的全身和大脑生理指标中的因果结构。虽然数据存在许多缺失值、信噪比低,且来自异质性患者群体,但我们先进的插补和因果推断技术使我们能够为个体学习生理模型。我们的分析证实,包括脑氧供需在内的复杂生理关系是脑氧测量的基础,并且损伤后早期脑肿胀的机制可能与延迟发生的机制不同。这些推断方法将使重症监护病房的数据得到更广泛的应用,以了解患者的生理状况。