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

<p>Abstract</p> <p>Background</p> <p>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 dec...

Full description

Bibliographic Details
Main Authors: Vijayakumar Kalpana, Narayan Mahesh, Mondick John T, Barrett Jeffrey S, Vijayakumar Sundararajan
Format: Article
Language:English
Published: BMC 2008-01-01
Series:BMC Medical Informatics and Decision Making
Online Access:http://www.biomedcentral.com/1472-6947/8/6
_version_ 1811320153212715008
author Vijayakumar Kalpana
Narayan Mahesh
Mondick John T
Barrett Jeffrey S
Vijayakumar Sundararajan
author_facet Vijayakumar Kalpana
Narayan Mahesh
Mondick John T
Barrett Jeffrey S
Vijayakumar Sundararajan
author_sort Vijayakumar Kalpana
collection DOAJ
description <p>Abstract</p> <p>Background</p> <p>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.</p> <p>Methods</p> <p>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.</p> <p>Results</p> <p>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.</p> <p>Conclusion</p> <p>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.</p>
first_indexed 2024-04-13T12:55:15Z
format Article
id doaj.art-def9a3ef3d1e4b4c8023cb6e6fb394a9
institution Directory Open Access Journal
issn 1472-6947
language English
last_indexed 2024-04-13T12:55:15Z
publishDate 2008-01-01
publisher BMC
record_format Article
series BMC Medical Informatics and Decision Making
spelling doaj.art-def9a3ef3d1e4b4c8023cb6e6fb394a92022-12-22T02:46:05ZengBMCBMC Medical Informatics and Decision Making1472-69472008-01-0181610.1186/1472-6947-8-6Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapyVijayakumar KalpanaNarayan MaheshMondick John TBarrett Jeffrey SVijayakumar Sundararajan<p>Abstract</p> <p>Background</p> <p>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.</p> <p>Methods</p> <p>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.</p> <p>Results</p> <p>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.</p> <p>Conclusion</p> <p>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.</p>http://www.biomedcentral.com/1472-6947/8/6
spellingShingle Vijayakumar Kalpana
Narayan Mahesh
Mondick John T
Barrett Jeffrey S
Vijayakumar Sundararajan
Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
BMC Medical Informatics and Decision Making
title Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
title_full Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
title_fullStr Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
title_full_unstemmed Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
title_short Integration of modeling and simulation into hospital-based decision support systems guiding pediatric pharmacotherapy
title_sort integration of modeling and simulation into hospital based decision support systems guiding pediatric pharmacotherapy
url http://www.biomedcentral.com/1472-6947/8/6
work_keys_str_mv AT vijayakumarkalpana integrationofmodelingandsimulationintohospitalbaseddecisionsupportsystemsguidingpediatricpharmacotherapy
AT narayanmahesh integrationofmodelingandsimulationintohospitalbaseddecisionsupportsystemsguidingpediatricpharmacotherapy
AT mondickjohnt integrationofmodelingandsimulationintohospitalbaseddecisionsupportsystemsguidingpediatricpharmacotherapy
AT barrettjeffreys integrationofmodelingandsimulationintohospitalbaseddecisionsupportsystemsguidingpediatricpharmacotherapy
AT vijayakumarsundararajan integrationofmodelingandsimulationintohospitalbaseddecisionsupportsystemsguidingpediatricpharmacotherapy