Nachimuthu Senthil K, Wong Anthony, Haug Peter J
Department of Biomedical Informatics, University of Utah;
AMIA Annu Symp Proc. 2010 Nov 13;2010:532-6.
Adequate control of serum glucose in critically ill patients is a complex problem requiring continuous monitoring and intervention, which have a direct effect on clinical outcomes. Understanding temporal relationships can help to improve our knowledge of complex disease processes and their response to treatment. We discuss a Dynamic Bayesian Network (DBN) model that we created using the open-source Projeny toolkit to represent various clinical variables and the temporal and atemporal relationships underlying insulin and glucose homeostasis. We evaluated this model by comparing the DBN model's insulin dose predictions against those of a rule-based protocol (eProtocol-insulin) currently used in the ICU. The results suggest that the DBN model's predictions are as effective as or better than those of the rule-based protocol. The limitations of our methods are discussed, with a brief note on their generalizability.
对重症患者的血糖进行充分控制是一个复杂的问题,需要持续监测和干预,这对临床结果有直接影响。了解时间关系有助于提高我们对复杂疾病过程及其对治疗反应的认识。我们讨论了一个动态贝叶斯网络(DBN)模型,该模型是我们使用开源的Projeny工具包创建的,用于表示各种临床变量以及胰岛素和葡萄糖稳态背后的时间和非时间关系。我们通过将DBN模型的胰岛素剂量预测与ICU目前使用的基于规则的方案(电子方案胰岛素)的预测进行比较来评估该模型。结果表明,DBN模型的预测与基于规则的方案一样有效或更好。我们讨论了方法的局限性,并简要说明了其可推广性。