| Literature DB >> 30071851 |
J Geoffrey Chase1, Thomas Desaive2, Julien Bohe3, Miriam Cnop4, Christophe De Block5, Jan Gunst6, Roman Hovorka7, Pierre Kalfon8, James Krinsley9, Eric Renard10, Jean-Charles Preiser11.
Abstract
There is considerable physiological and clinical evidence of harm and increased risk of death associated with dysglycemia in critical care. However, glycemic control (GC) currently leads to increased hypoglycemia, independently associated with a greater risk of death. Indeed, recent evidence suggests GC is difficult to safely and effectively achieve for all patients. In this review, leading experts in the field discuss this evidence and relevant data in diabetology, including the artificial pancreas, and suggest how safe, effective GC can be achieved in critically ill patients in ways seeking to mimic normal islet cell function. The review is structured around the specific clinical hurdles of: understanding the patient's metabolic state; designing GC to fit clinical practice, safety, efficacy, and workload; and the need for standardized metrics. These aspects are addressed by reviewing relevant recent advances in science and technology. Finally, we provide a set of concise recommendations to advance the safety, quality, consistency, and clinical uptake of GC in critical care. This review thus presents a roadmap toward better, more personalized metabolic care and improved patient outcomes.Entities:
Keywords: Artificial pancreas; Endocrine function; Glycemic control; In silico; Model based; Modeling; Review; Validation; Virtual patient
Mesh:
Year: 2018 PMID: 30071851 PMCID: PMC6091026 DOI: 10.1186/s13054-018-2110-1
Source DB: PubMed Journal: Crit Care ISSN: 1364-8535 Impact factor: 9.097
Fig. 1Model-based decision support to mimic the human pancreas with a nurse in the loop, but eventually automated. Measurements and other data are given to a decision support system that identifies patient-specific information, such as insulin sensitivity, to personalize the model. A control protocol uses these data to generate personalized recommendations for patient care. Change the model-based decision support with a clinical protocol and you would have standard care
Fig. 2Three main needs identified related to the overall model-based control loop of Fig. 1