Research progress on electronic health records multimodal data fusion based on deep learning

被引:1
|
作者
Fan, Yong [1 ]
Zhang, Zhengbo [1 ]
Wang, Jing [2 ]
机构
[1] Medical Innovation Research Department, Chinese PLA General Hospital, Beijing,100853, China
[2] School of Computer and Information Technology, Beijing Jiaotong University, Beijing,100044, China
关键词
Clinical research - Data fusion - Diagnosis - Patient treatment - Records management;
D O I
10.7507/1001-5515.202310011
中图分类号
学科分类号
摘要
Currently, the development of deep learning-based multimodal learning is advancing rapidly, and is widely used in the field of artificial intelligence-generated content, such as image-text conversion and image-text generation. Electronic health records are digital information such as numbers, charts, and texts generated by medical staff using information systems in the process of medical activities. The multimodal fusion method of electronic health records based on deep learning can assist medical staff in the medical field to comprehensively analyze a large number of medical multimodal data generated in the process of diagnosis and treatment, thereby achieving accurate diagnosis and timely intervention for patients. In this article, we firstly introduce the methods and development trends of deep learning-based multimodal data fusion. Secondly, we summarize and compare the fusion of structured electronic medical records with other medical data such as images and texts, focusing on the clinical application types, sample sizes, and the fusion methods involved in the research. Through the analysis and summary of the literature, the deep learning methods for fusion of different medical modal data are as follows: first, selecting the appropriate pre-trained model according to the data modality for feature representation and post-fusion, and secondly, fusing based on the attention mechanism. Lastly, the difficulties encountered in multimodal medical data fusion and its developmental directions, including modeling methods, evaluation and application of models, are discussed. Through this review article, we expect to provide reference information for the establishment of models that can comprehensively utilize various modal medical data. © 2024 West China Hospital, Sichuan Institute of Biomedical Engineering. All rights reserved.
引用
收藏
页码:1062 / 1071
相关论文
共 50 条
  • [41] Identification based on feature fusion of multimodal biometrics and deep learning
    Medjahed, Chahreddine
    Mezzoudj, Freha
    Rahmoun, Abdellatif
    Charrier, Christophe
    INTERNATIONAL JOURNAL OF BIOMETRICS, 2023, 15 (3-4) : 521 - 538
  • [42] Multimodal Fusion Odometer Based on Deep Learning and Kalman Filter
    Li Long
    An Yi
    Xie Lirong
    Sun Zhuo
    Dong Hongxiang
    LASER & OPTOELECTRONICS PROGRESS, 2024, 61 (18)
  • [43] A Deep Reinforcement Learning Method For Multimodal Data Fusion in Action Recognition
    Guo, Jiale
    Liu, Qiang
    Chen, Enqing
    IEEE SIGNAL PROCESSING LETTERS, 2022, 29 : 120 - 124
  • [44] Deep learning in multimodal remote sensing data fusion: A comprehensive review
    Li, Jiaxin
    Hong, Danfeng
    Gao, Lianru
    Yao, Jing
    Zheng, Ke
    Zhang, Bing
    Chanussot, Jocelyn
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2022, 112
  • [45] A Deep-Learning-Based Multimodal Data Fusion Framework for Urban Region Function Recognition
    Yu, Mingyang
    Xu, Haiqing
    Zhou, Fangliang
    Xu, Shuai
    Yin, Hongling
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2023, 12 (12)
  • [46] Deep Learning Based Optimal Multimodal Fusion Framework for Intrusion Detection Systems for Healthcare Data
    Phong Thanh Nguyen
    Vy Dang Bich Huynh
    Khoa Dang Vo
    Phuong Thanh Phan
    Elhoseny, Mohamed
    Dac-Nhuong Le
    CMC-COMPUTERS MATERIALS & CONTINUA, 2021, 66 (03): : 2555 - 2571
  • [47] Data Mining in Spine Surgery: Leveraging Electronic Health Records for Machine Learning and Clinical Research
    Staartjes, Victor E.
    Stienen, Martin N.
    NEUROSPINE, 2019, 16 (04) : 654 - 656
  • [48] Learning from heterogeneous temporal data in electronic health records
    Zhao, Jing
    Papapetrou, Panagiotis
    Asker, Lars
    Bostrom, Henrik
    JOURNAL OF BIOMEDICAL INFORMATICS, 2017, 65 : 105 - 119
  • [49] The Effectiveness of Multitask Learning for Phenotyping with Electronic Health Records Data
    Ding, Daisy Yi
    Simpson, Chloe
    Pfohl, Stephen
    Kale, Dave C.
    Jung, Kenneth
    Shah, Nigam H.
    PACIFIC SYMPOSIUM ON BIOCOMPUTING 2019, 2019, : 18 - 29
  • [50] Data Quality: A Central Tenet in Electronic Health Records Research
    Feder, Shelli
    NURSING RESEARCH, 2015, 64 (02) : E93 - E93