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GUDM: Automatic Generation of Unified Datasets for Learning and Reasoning in Healthcare.

Ali R, Siddiqi MH, Idris M, Ali T, Hussain S, Huh EN, Kang BH, Lee S - Sensors (Basel) (2015)

Bottom Line: However, due to the diverse nature of data, it is difficult to predict outcomes from it.The proposed tool implements user-centric priority based approach which can easily resolve the problems of unified data modeling and overlapping attributes across multiple datasets.The evaluation of the tool on six different sets of locally created diverse datasets shows that the tool, on average, reduces 94.1% time efforts of the experts and knowledge engineer while creating unified datasets.

View Article: PubMed Central - PubMed

Affiliation: Department of Computer Engineering, Kyung Hee University, Seocheon-dong, Giheung-gu Yongin-si, Gyeonggi-do 446-701, Korea. rahmanali@oslab.khu.ac.kr.

ABSTRACT
A wide array of biomedical data are generated and made available to healthcare experts. However, due to the diverse nature of data, it is difficult to predict outcomes from it. It is therefore necessary to combine these diverse data sources into a single unified dataset. This paper proposes a global unified data model (GUDM) to provide a global unified data structure for all data sources and generate a unified dataset by a "data modeler" tool. The proposed tool implements user-centric priority based approach which can easily resolve the problems of unified data modeling and overlapping attributes across multiple datasets. The tool is illustrated using sample diabetes mellitus data. The diverse data sources to generate the unified dataset for diabetes mellitus include clinical trial information, a social media interaction dataset and physical activity data collected using different sensors. To realize the significance of the unified dataset, we adopted a well-known rough set theory based rules creation process to create rules from the unified dataset. The evaluation of the tool on six different sets of locally created diverse datasets shows that the tool, on average, reduces 94.1% time efforts of the experts and knowledge engineer while creating unified datasets.

No MeSH data available.


Related in: MedlinePlus

Scenario to integrate diverse datasets into a unified dataset.
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sensors-15-15772-f001: Scenario to integrate diverse datasets into a unified dataset.

Mentions: At the Ubiquitous Computing Laboratory, Kyung Hee University, we are working on the development of a cloud-based clinical decision support system (CDSS) for chronic disease patients [8]. This system is supposed to predict diabetes type (i.e., type 1 or type 2 or no diabetes) in patients and generate recommendations. The proposed CDSS takes data from multiple data sources, such as sensors, user profiles, social media and clinical trials, as shown in Figure 1.


GUDM: Automatic Generation of Unified Datasets for Learning and Reasoning in Healthcare.

Ali R, Siddiqi MH, Idris M, Ali T, Hussain S, Huh EN, Kang BH, Lee S - Sensors (Basel) (2015)

Scenario to integrate diverse datasets into a unified dataset.
© Copyright Policy
Related In: Results  -  Collection

License
Show All Figures
getmorefigures.php?uid=PMC4541854&req=5

sensors-15-15772-f001: Scenario to integrate diverse datasets into a unified dataset.
Mentions: At the Ubiquitous Computing Laboratory, Kyung Hee University, we are working on the development of a cloud-based clinical decision support system (CDSS) for chronic disease patients [8]. This system is supposed to predict diabetes type (i.e., type 1 or type 2 or no diabetes) in patients and generate recommendations. The proposed CDSS takes data from multiple data sources, such as sensors, user profiles, social media and clinical trials, as shown in Figure 1.

Bottom Line: However, due to the diverse nature of data, it is difficult to predict outcomes from it.The proposed tool implements user-centric priority based approach which can easily resolve the problems of unified data modeling and overlapping attributes across multiple datasets.The evaluation of the tool on six different sets of locally created diverse datasets shows that the tool, on average, reduces 94.1% time efforts of the experts and knowledge engineer while creating unified datasets.

View Article: PubMed Central - PubMed

Affiliation: Department of Computer Engineering, Kyung Hee University, Seocheon-dong, Giheung-gu Yongin-si, Gyeonggi-do 446-701, Korea. rahmanali@oslab.khu.ac.kr.

ABSTRACT
A wide array of biomedical data are generated and made available to healthcare experts. However, due to the diverse nature of data, it is difficult to predict outcomes from it. It is therefore necessary to combine these diverse data sources into a single unified dataset. This paper proposes a global unified data model (GUDM) to provide a global unified data structure for all data sources and generate a unified dataset by a "data modeler" tool. The proposed tool implements user-centric priority based approach which can easily resolve the problems of unified data modeling and overlapping attributes across multiple datasets. The tool is illustrated using sample diabetes mellitus data. The diverse data sources to generate the unified dataset for diabetes mellitus include clinical trial information, a social media interaction dataset and physical activity data collected using different sensors. To realize the significance of the unified dataset, we adopted a well-known rough set theory based rules creation process to create rules from the unified dataset. The evaluation of the tool on six different sets of locally created diverse datasets shows that the tool, on average, reduces 94.1% time efforts of the experts and knowledge engineer while creating unified datasets.

No MeSH data available.


Related in: MedlinePlus