Literature DB >> 34057901

EHR-oriented Knowledge Graph System: Toward Efficient Utilization of Non-used Information Buried in Routine Clinical Practice.

Yong Shang, Yu Tian, Min Zhou, Tianshu Zhou, Kewei Lyu, Zhixiao Wang, Ran Xin, Tingbo Liang, Shiqiang Zhu, Jingsong Li.   

Abstract

Non-used clinical information has negative implications on healthcare quality. Clinicians pay priority attention to clinical information relevant to their specialties during routine clinical practices but may be insensitive or less concerned about information showing disease risks beyond their professions, resulting in delayed, missed diagnoses or improper management. In this study, we introduced an EHR-oriented knowledge graph system to efficiently utilize non-used information buried in electronic health records (EHRs). EHR data were transformed into a semantic patient-centralized information model under the ontology structure of a knowledge graph. The knowledge graph then creates an EHR data trajectory and performs reasoning through semantic rules to identify important clinical findings within EHR data. A graphical reasoning pathway illustrates the reasoning footage and explains the clinical significance for clinicians to better understand the neglected information. An application study was performed to evaluate the unconsidered chronic kidney disease (CKD) reminding for non-nephrology clinicians to identify important neglected information. The study covered 71,679 patients in non-nephrology departments. The system identified 2,774 patients meeting CKD diagnosis criteria and 10,377 patients requiring high attention. A follow-up study of 5,439 patients showed 80.7% of patients meeting the diagnosis criteria and 61.4% of patients requiring high attention were confirmed to be CKD positive during follow-up research. The application demonstrated that the purposed approach is feasible and effective in clinical information utilization. Additionally, it's valuable as an explainable artificial intelligence to provide interpretable recommendations for specialist physicians to understand the importance of non-used data and make comprehensive decisions.

Entities:  

Year:  2021        PMID: 34057901     DOI: 10.1109/JBHI.2021.3085003

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   5.772


  1 in total

1.  A Deep Learning Model Incorporating Knowledge Representation Vectors and Its Application in Diabetes Prediction.

Authors:  He Xu; Qunli Zheng; Jingshu Zhu; Zuoling Xie; Haitao Cheng; Peng Li; Yimu Ji
Journal:  Dis Markers       Date:  2022-08-12       Impact factor: 3.464

  1 in total

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