Conference proceeding
Modeling and estimating the spatial distribution of healthcare workers
Proceedings of the 1st ACM International Health Informatics Symposium, pp.287-296
IHI '10
11/11/2010
DOI: 10.1145/1882992.1883034
Abstract
This paper describes a spatial model for healthcare workers' location in a large hospital facility. Such models have many applications in healthcare, such as supporting time-and- motion efficiency studies to improve healthcare delivery, or modeling the spread of hospital-acquired infections. We use our model to estimate spatial distributions for healthcare workers in The University of Iowa Hospitals and Clinics (UIHC), a 700-bed comprehensive academic medical center spanning a total of 3.2 million square feet and employing about 8,000 healthcare workers. We model the UIHC as a metric space induced by walking distance between pairs of rooms, and with each room having a level of attractiveness representing the activity level in that room. We combine this with a model in which each healthcare worker has a center of activity and a probability density function that decays polynomially as we move away from the center. Using 12 million Electronic Medical Record (EMR)logins collected over 22 months, we solve for the model parameters for each room and each healthcare worker using heuristic techniques to make the problem computationally tractable. We then validate the model parameters obtained by comparing realworld expectations of healthcare worker behavior for several job categories to our model predictions (e.g., we verify that Unit Clerks are much more stationary than Respiratory Therapists). Finally we present solutions to two important applications. First, we use healthcare worker spatial distributions to generate random walks representing their movement through the hospital. We use these random walks to This paper describes a spatial model for healthcare workers' location in a large hospital facility. Such models have many applications in healthcare, such as supporting timeand- motion efficiency studies to improve healthcare delivery, or modeling the spread of hospital-acquired infections. We use our model to estimate spatial distributions for healthcare workers in The University of Iowa Hospitals and Clinics (UIHC), a 700-bed comprehensive academic medical center spanning a total of 3.2 million square feet and employing about 8,000 healthcare workers. We model the UIHC as a metric space induced by walking distance between pairs of rooms, and with each room having a level of attractiveness representing the activity level in that room. We combine this with a model in which each healthcare worker has a center of activity and a probability density function that decays polynomially as we move away from the center. Using 12 million Electronic Medical Record (EMR) logins collected over 22 months, we solve for the model parameters for each room and each healthcare worker using heuristic techniques to make the problem computationally tractable. We then validate the model parameters obtained by comparing realworld expectations of healthcare worker behavior for several job categories to our model predictions (e.g., we verify that Unit Clerks are much more stationary than Respiratory Therapists). Finally we present solutions to two important applications. First, we use healthcare worker spatial distributions to generate random walks representing their movement through the hospital. We use these random walks to access that resource.
Details
- Title: Subtitle
- Modeling and estimating the spatial distribution of healthcare workers
- Creators
- Donald Curtis - University of IowaChristopher Hlady - University of IowaSriram Pemmaraju - University of IowaPhilip Polgreen - University of IowaAlberto Segre - University of Iowa
- Resource Type
- Conference proceeding
- Publication Details
- Proceedings of the 1st ACM International Health Informatics Symposium, pp.287-296
- Series
- IHI '10
- DOI
- 10.1145/1882992.1883034
- Publisher
- ACM
- Language
- English
- Date published
- 11/11/2010
- Academic Unit
- Infectious Diseases; Epidemiology; Nursing; Fraternal Order of Eagles Diabetes Research Center; Injury Prevention Research Center; Computer Science; Internal Medicine
- Record Identifier
- 9984259499902771
Metrics
3 Record Views