DocumentCode :
140407
Title :
Heterogeneous postsurgical data analytics for predictive modeling of mortality risks in intensive care units
Author :
Yun Chen ; Hui Yang
Author_Institution :
Modeling & Anal. Lab., Univ. of South Florida, Tampa, FL, USA
fYear :
2014
fDate :
26-30 Aug. 2014
Firstpage :
4310
Lastpage :
4314
Abstract :
The rapid advancements of biomedical instrumentation and healthcare technology have resulted in data-rich environments in hospitals. However, the meaningful information extracted from rich datasets is limited. There is a dire need to go beyond current medical practices, and develop data-driven methods and tools that will enable and help (i) the handling of big data, (ii) the extraction of data-driven knowledge, (iii) the exploitation of acquired knowledge for optimizing clinical decisions. This present study focuses on the prediction of mortality rates in Intensive Care Units (ICU) using patient-specific healthcare recordings. It is worth mentioning that postsurgical monitoring in ICU leads to massive datasets with unique properties, e.g., variable heterogeneity, patient heterogeneity, and time asyncronization. To cope with the challenges in ICU datasets, we developed the postsurgical decision support system with a series of analytical tools, including data categorization, data pre-processing, feature extraction, feature selection, and predictive modeling. Experimental results show that the proposed data-driven methodology outperforms traditional approaches and yields better results based on the evaluation of real-world ICU data from 4000 subjects in the database. This research shows great potentials for the use of data-driven analytics to improve the quality of healthcare services.
Keywords :
Big Data; biomedical equipment; data analysis; decision support systems; feature extraction; feature selection; health care; knowledge acquisition; medical computing; patient care; patient monitoring; surgery; ICU datasets; analytical tools; big data handling; biomedical instrumentation; clinical decisions; data categorization; data preprocessing; data-driven analytics; data-driven knowledge extraction; data-driven methodology; data-driven methods; data-rich environment; database; feature extraction; feature selection; healthcare service quality; healthcare technology; heterogeneous postsurgical data analytics; hospitals; intensive care units; massive datasets; meaningful information; medical practices; mortality rate prediction; mortality risk; patient heterogeneity; patient-specific healthcare recordings; postsurgical decision support system; postsurgical monitoring; predictive modeling; real-world ICU data; rich datasets; time asyncronization; variable heterogeneity; Feature extraction; Market research; Monitoring; Predictive models; Surgery; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2014 36th Annual International Conference of the IEEE
Conference_Location :
Chicago, IL
ISSN :
1557-170X
Type :
conf
DOI :
10.1109/EMBC.2014.6944578
Filename :
6944578
Link To Document :
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