Gholami Behnood, Bailey James M, Haddad Wassim M, Tannenbaum Allen R
Schools of Electrical and Computer and Biomedical Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0150 USA (
IEEE Trans Control Syst Technol. 2012 Mar;20(5):1343-1350. doi: 10.1109/tcst.2011.2162412.
Patients in the intensive care unit (ICU) who require mechanical ventilation due to acute respiratory failure also frequently require the administration of sedative agents. The need for sedation arises both from patient anxiety due to the loss of personal control and the unfamiliar and intrusive environment of the ICU, and also due to pain or other variants of noxious stimuli. While physicians select the agent(s) used for sedation and cardiovascular function, the actual administration of these agents is the responsibility of the nursing staff. If clinical decision support systems and closed-loop control systems could be developed for critical care monitoring and lifesaving interventions as well as the administration of sedation and cardiopulmonary management, the ICU nurse could be released from the intense monitoring of sedation, allowing her/him to focus on other critical tasks. One particularly attractive strategy is to utilize the knowledge and experience of skilled clinicians, capturing explicitly the rules expert clinicians use to decide on how to titrate drug doses depending on the level of sedation. In this paper, we extend the deterministic rule-based expert system for cardiopulmonary management and ICU sedation framework presented in [1] to a stochastic setting by using probability theory to quantify uncertainty and hence deal with more realistic clinical situations.
因急性呼吸衰竭而需要机械通气的重症监护病房(ICU)患者也常常需要使用镇静剂。镇静的需求既源于患者因失去自主控制以及ICU陌生且侵入性的环境而产生的焦虑,也源于疼痛或其他有害刺激的各种情况。虽然医生选择用于镇静和心血管功能的药物,但这些药物的实际给药工作由护理人员负责。如果能够开发出用于重症监护监测、救生干预以及镇静给药和心肺管理的临床决策支持系统和闭环控制系统,ICU护士就可以从对镇静的高强度监测中解脱出来,使其能够专注于其他关键任务。一种特别有吸引力的策略是利用经验丰富的临床医生的知识和经验,明确捕捉专家临床医生用于根据镇静水平决定如何滴定药物剂量的规则。在本文中,我们通过使用概率论对不确定性进行量化,从而将文献[1]中提出的用于心肺管理和ICU镇静框架的确定性基于规则的专家系统扩展到随机环境,进而处理更现实的临床情况。