| Literature DB >> 27500278 |
Muhammad Kamran Lodhi1, Rashid Ansari1, Yingwei Yao1, Gail M Keenan2, Diana J Wilkie2, Ashfaq A Khokhar3.
Abstract
Electronic health record (EHR) systems are used in healthcare industry to observe the progress of patients. With fast growth of the data, EHR data analysis has become a big data problem. Most EHRs are sparse and multi-dimensional datasets and mining them is a challenging task due to a number of reasons. In this paper, we have used a nursing EHR system to build predictive models to determine what factors impact death anxiety, a significant problem for the dying patients. Different existing modeling techniques have been used to develop coarse-grained as well as fine-grained models to predict patient outcomes. The coarse-grained models help in predicting the outcome at the end of each hospitalization, whereas fine-grained models help in predicting the outcome at the end of each shift, therefore providing a trajectory of predicted outcomes. Based on different modeling techniques, our results show significantly accurate predictions, due to relatively noise-free data. These models can help in determining effective treatments, lowering healthcare costs, and improving the quality of end-of-life (EOL) care.Entities:
Keywords: Electronic health record (EHR); component; end-of-life (EOL); predictive modeling
Year: 2015 PMID: 27500278 PMCID: PMC4975538 DOI: 10.1109/BigDataCongress.2015.67
Source DB: PubMed Journal: Proc IEEE Int Congr Big Data ISSN: 2379-7703