资源类型: 
                
                    
                        期刊 
                        
                     
                 
            
                    
                    
                        WOS体系: 
                        
                            
                                Article 
                             
                         
                    
                                    
                        Pubmed体系: 
                        
                            
                                Journal Article 
                             
                         
                    
                             
            
                收录情况: 
                
                            ◇ SCIE 
                 
            
                        
            文章类型: 
            
                
                    论著 
                 
             
        
            
                    
                机构: 
                
                        
                            [1]Shenzhen International Graduate School, Tsinghua University, Shenzhe, P.R. China. 
                         
                        
                            [2]Beijing Tongren Hospital, Capital Medical University, Beijing, P.R. China. 
                                首都医科大学附属北京同仁医院 
                                首都医科大学附属同仁医院 
                         
                 
            
        
        
        
                    
                        
        
        
            关键词: 
            
                    
                        Medical record management
                     
                    
                         Ophthalmology
                     
                    
                         Knowledge graph
                     
                    
                         Healthcare
                     
             
        
            
                
                    
                        摘要: 
                        
                            The electronic medical record management system plays a crucial role in clinical practice, optimizing the recording and management of healthcare data. To enhance the functionality of the medical record management system, this paper develops a customized schema designed for ophthalmic diseases. A multi-modal knowledge graph is constructed, which is built upon expert-reviewed and de-identified real-world ophthalmology medical data. Based on this data, we propose an auxiliary diagnostic model based on a contrastive graph attention network (CGAT-ADM), which uses the patient's diagnostic results as anchor points and achieves auxiliary medical record diagnosis services through graph clustering. By implementing contrastive methods and feature fusion of node types, text, and numerical information in medical records, the CGAT-ADM model achieved an average precision of 0.8563 for the top 20 similar case retrievals, indicating high performance in identifying analogous diagnoses. Our research findings suggest that medical record management systems underpinned by multimodal knowledge graphs significantly enhance the development of AI services. These systems offer a range of benefits, from facilitating assisted diagnosis and addressing similar patient inquiries to delving into potential case connections and disease patterns. This comprehensive approach empowers healthcare professionals to garner deeper insights and make well-informed decisions.© 2024. The Author(s).
                        
                     
                 
            
                
            
        
            
                WOS: 
                
                    
                        WOS:001330396200018 
                     
                 
            
                    
                PubmedID: 
                
                    
                        39369079 
                     
                 
            
        
        
            中科院(CAS)分区: 
            
    
        出版当年[2023]版: 
                
                    大类 
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                                    2 区 
                                                                        综合性期刊 
                                    
                                 
                     
                
                
                    小类 
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                                    2 区 
                                                                        综合性期刊 
                                 
                     
                
     
    
        最新[2025]版: 
                
                    大类 
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                                    3 区 
                                                                        综合性期刊 
                                    
                                 
                     
                
                
                    小类 
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                                    3 区 
                                                                        综合性期刊 
                                 
                     
                
     
             
         
        
        
            JCR分区: 
            
    
        出版当年[2022]版: 
                    
                            
                                Q2 
                                MULTIDISCIPLINARY SCIENCES 
                             
                     
                
     
    
        最新[2024]版: 
                    
                            
                                Q1 
                                MULTIDISCIPLINARY SCIENCES 
                             
                     
                
     
             
         
        
        
            影响因子: 
            
                    
            3.9 
最新[2024版]     
    
            4.3 
最新五年平均     
                    
            4.6 
出版当年[2022版]     
    
            4.9 
出版当年五年平均     
                    
            4.997 
出版前一年[2021版]     
    
            3.8 
出版后一年[2023版]     
             
        
                        
                    第一作者: 
                    
                        
                            Gao Weihao 
                         
                     
                
                
                    第一作者机构: 
                    
                                
                                    [1]Shenzhen International Graduate School, Tsinghua University, Shenzhe, P.R. China. 
                                 
                     
                
                
                    共同第一作者: 
                    
                        
                            Rong Fuju 
                         
                     
                
                        
                    通讯作者: 
                    
                        
                            Wei Wenbin;Ma Lan 
                         
                     
                
                    
                推荐引用方式(GB/T 7714): 
                
                    
                        Gao Weihao,Rong Fuju,Shao Lei,et al.Enhancing ophthalmology medical record management with multi-modal knowledge graphs[J].Scientific Reports.2024,14(1):23221.doi:10.1038/s41598-024-73316-9.
                     
                
             
                    
                APA: 
                
                    
                        Gao Weihao,Rong Fuju,Shao Lei,Deng Zhuo,Xiao Daimin...&Ma Lan.(2024).Enhancing ophthalmology medical record management with multi-modal knowledge graphs.Scientific Reports,14,(1)
                     
                
             
                    
                MLA: 
                
                    
                        Gao Weihao,et al."Enhancing ophthalmology medical record management with multi-modal knowledge graphs".Scientific Reports 14..1(2024):23221