scholarly journals Semantic Health Knowledge Graph: Semantic Integration of Heterogeneous Medical Knowledge and Services

2017 ◽  
Vol 2017 ◽  
pp. 1-12 ◽  
Author(s):  
Longxiang Shi ◽  
Shijian Li ◽  
Xiaoran Yang ◽  
Jiaheng Qi ◽  
Gang Pan ◽  
...  

With the explosion of healthcare information, there has been a tremendous amount of heterogeneous textual medical knowledge (TMK), which plays an essential role in healthcare information systems. Existing works for integrating and utilizing the TMK mainly focus on straightforward connections establishment and pay less attention to make computers interpret and retrieve knowledge correctly and quickly. In this paper, we explore a novel model to organize and integrate the TMK into conceptual graphs. We then employ a framework to automatically retrieve knowledge in knowledge graphs with a high precision. In order to perform reasonable inference on knowledge graphs, we propose a contextual inference pruning algorithm to achieve efficient chain inference. Our algorithm achieves a better inference result with precision and recall of 92% and 96%, respectively, which can avoid most of the meaningless inferences. In addition, we implement two prototypes and provide services, and the results show our approach is practical and effective.

Computers ◽  
2018 ◽  
Vol 7 (4) ◽  
pp. 51 ◽  
Author(s):  
Abdullah Alamri

Healthcare sectors have been at the forefront of the adoption and use of IoT technologies for efficient healthcare diagnosis and treatment. Because healthcare IoT sensor technology obtains health-related data from patients, it needs to be integrated with the electronic healthcare records (EHR) system. Most EHR systems have not been designed for integration with IoT technology; they have been designed to be more patient-centric management systems. The use of the IoT in EHR remains a long-term goal. Configuring IoT in EHR can enhance patient healthcare, enabling health providers to monitor their patients outside of the clinic. To assist physicians to access data resources efficiently, a data model that is semantic and flexible is needed to connect EHR data and IoT data that may help to provide true interoperability and integration. This research proposes a semantic middleware that exploits ontology to support the semantic integration and functional collaborations between IoT healthcare Information Systems and EHR systems.


Author(s):  
Bennie E. Harsanyi ◽  
David H. Wilson ◽  
Marguerite A. Daniels ◽  
Kathleen C. Allan ◽  
John Anderson

Sign in / Sign up

Export Citation Format

Share Document