...
首页> 外文期刊>BMC Medical Informatics and Decision Making >Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
【24h】

Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy

机译:将建模和仿真集成到基于医院的决策支持系统中,以指导儿科药物治疗

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background Decision analysis in hospital-based settings is becoming more common place. The application of modeling and simulation approaches has likewise become more prevalent in order to support decision analytics. With respect to clinical decision making at the level of the patient, modeling and simulation approaches have been used to study and forecast treatment options, examine and rate caregiver performance and assign resources (staffing, beds, patient throughput). There us a great need to facilitate pharmacotherapeutic decision making in pediatrics given the often limited data available to guide dosing and manage patient response. We have employed nonlinear mixed effect models and Bayesian forecasting algorithms coupled with data summary and visualization tools to create drug-specific decision support systems that utilize individualized patient data from our electronic medical records systems. Methods Pharmacokinetic and pharmacodynamic nonlinear mixed-effect models of specific drugs are generated based on historical data in relevant pediatric populations or from adults when no pediatric data is available. These models are re-executed with individual patient data allowing for patient-specific guidance via a Bayesian forecasting approach. The models are called and executed in an interactive manner through our web-based dashboard environment which interfaces to the hospital's electronic medical records system. Results The methotrexate dashboard utilizes a two-compartment, population-based, PK mixed-effect model to project patient response to specific dosing events. Projected plasma concentrations are viewable against protocol-specific nomograms to provide dosing guidance for potential rescue therapy with leucovorin. These data are also viewable against common biomarkers used to assess patient safety (e.g., vital signs and plasma creatinine levels). As additional data become available via therapeutic drug monitoring, the model is re-executed and projections are revised. Conclusion The management of pediatric pharmacotherapy can be greatly enhanced via the immediate feedback provided by decision analytics which incorporate the current, best-available knowledge pertaining to dose-exposure and exposure-response relationships, especially for narrow therapeutic agents that are difficult to manage.
机译:背景基于医院的环境中的决策分析正变得越来越普遍。为了支持决策分析,建模和仿真方法的应用也变得越来越普遍。关于患者水平的临床决策,建模和模拟方法已用于研究和预测治疗方案,检查和评估护理人员的表现并分配资源(人员,床位,患者通过量)。考虑到通常可用于指导剂量和管理患者反应的数据非常有限,我们非常需要在儿科中促进药物治疗决策。我们采用了非线性混合效应模型和贝叶斯预测算法,并结合了数据摘要和可视化工具来创建针对特定药物的决策支持系统,这些系统利用了我们电子病历系统中的个性化患者数据。方法根据相关儿科人群或没有儿童可用数据的成年人的历史数据,生成特定药物的药代动力学和药效动力学非线性混合效应模型。这些模型可以使用单个患者数据重新执行,从而可以通过贝叶斯预测方法为特定患者提供指导。通过基于Web的仪表板环境以交互方式调用和执行模型,该仪表板环境与医院的电子病历系统接口。结果氨甲蝶呤仪表板利用基于人群的两室PK混合效应模型来预测患者对特定给药事件的反应。可以根据方案特定的诺模图查看预计的血浆浓度,从而为使用亚叶酸的潜在抢救治疗提供剂量指导。这些数据还可以与用于评估患者安全性的常见生物标记(例如生命体征和血浆肌酐水平)相对查看。通过治疗药物监测可获得更多数据后,将重新执行该模型并修改预测。结论通过决策分析提供的即时反馈可以大大增强儿科药物治疗的管理,该决策分析结合了有关剂量-暴露和暴露-反应关系的当前,最佳可用知识,特别是对于难以管理的狭窄治疗药物。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号