Self-Supervised Learning-Based General Laboratory Progress Pretrained Model for Cardiovascular Event Detection

被引:1
|
作者
Chen, Li-Chin [1 ]
Hung, Kuo-Hsuan [1 ]
Tseng, Yi-Ju [2 ]
Wang, Hsin-Yao [3 ]
Lu, Tse-Min [4 ,5 ]
Huang, Wei-Chieh [4 ,6 ,7 ]
Tsao, Yu [1 ]
机构
[1] Acad Sinica, Res Ctr Informat Technol Innovat, Taipei 11529, Taiwan
[2] Natl Yang Ming Chiao Tung Univ, Dept Comp Sci, Hsinchu 30010, Taiwan
[3] Chang Gung Mem Hosp, Dept Lab Med, Taoyuan 33342, Taiwan
[4] Taipei Vet Gen Hosp, Dept Internal Med, Div Cardiol, Taipei 112201, Taiwan
[5] Taipei Vet Gen Hosp, Dept Hlth Care Ctr, Taipei 112201, Taiwan
[6] Natl Yang Ming Chiao Tung Univ, Coll Med, Sch Med, Dept Internal Med, Taipei 112304, Taiwan
[7] Natl Taiwan Univ, Dept Biomed Engn, Taipei 10617, Taiwan
关键词
Interpolation; Training; Task analysis; Cardiovascular diseases; Electrocardiography; Glucose; Statistics; cardiometabolic disease; disease progression; laboratory examinations; time-series data; pre-train model; representation learning; self-supervised learning; transfer learning; TARGET LESION; RESTENOSIS; PREDICTORS; REVASCULARIZATION; NETWORK; STENTS;
D O I
10.1109/JTEHM.2023.3307794
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Objective: Leveraging patient data through machine learning techniques in disease care offers a multitude of substantial benefits. Nonetheless, the inherent nature of patient data poses several challenges. Prevalent cases amass substantial longitudinal data owing to their patient volume and consistent follow-ups, however, longitudinal laboratory data are renowned for their irregularity, temporality, absenteeism, and sparsity; In contrast, recruitment for rare or specific cases is often constrained due to their limited patient size and episodic observations. This study employed self-supervised learning (SSL) to pretrain a generalized laboratory progress (GLP) model that captures the overall progression of six common laboratory markers in prevalent cardiovascular cases, with the intention of transferring this knowledge to aid in the detection of specific cardiovascular event. Methods and procedures: GLP implemented a two-stage training approach, leveraging the information embedded within interpolated data and amplify the performance of SSL. After GLP pretraining, it is transferred for target vessel revascularization (TVR) detection. Results: The proposed two-stage training improved the performance of pure SSL, and the transferability of GLP exhibited distinctiveness. After GLP processing, the classification exhibited a notable enhancement, with averaged accuracy rising from 0.63 to 0.90. All evaluated metrics demonstrated substantial superiority ( ${p} < 0.01$ ) compared to prior GLP processing. Conclusion: Our study effectively engages in translational engineering by transferring patient progression of cardiovascular laboratory parameters from one patient group to another, transcending the limitations of data availability. The transferability of disease progression optimized the strategies of examinations and treatments, and improves patient prognosis while using commonly available laboratory parameters. The potential for expanding this approach to encompass other diseases holds great promise. Clinical impact: Our study effectively transposes patient progression from one cohort to another, surpassing the constraints of episodic observation. The transferability of disease progression contributed to cardiovascular event assessment.
引用
收藏
页码:43 / 55
页数:13
相关论文
共 50 条
  • [1] A Hyperspectral Image Change Detection Framework With Self-Supervised Contrastive Learning Pretrained Model
    Ou, Xianfeng
    Liu, Liangzhen
    Tan, Shulun
    Zhang, Guoyun
    Li, Wujing
    Tu, Bing
    [J]. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2022, 15 : 7724 - 7740
  • [2] A Hyperspectral Image Change Detection Framework With Self-Supervised Contrastive Learning Pretrained Model
    Ou, Xianfeng
    Liu, Liangzhen
    Tan, Shulun
    Zhang, Guoyun
    Li, Wujing
    Tu, Bing
    [J]. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2022, 15 : 7724 - 7740
  • [3] Hybrid self-supervised learning-based architecture for construction progress monitoring
    Reja, Varun Kumar
    Goyal, Shreya
    Varghese, Koshy
    Ravindran, Balaraman
    Ha, Quang Phuc
    [J]. AUTOMATION IN CONSTRUCTION, 2024, 158
  • [4] Self-supervised learning-based oil spill detection of hyperspectral images
    PuHong Duan
    ZhuoJun Xie
    XuDong Kang
    ShuTao Li
    [J]. Science China Technological Sciences, 2022, 65 : 793 - 801
  • [5] Self-supervised learning-based oil spill detection of hyperspectral images
    DUAN PuHong
    XIE ZhuoJun
    KANG XuDong
    LI ShuTao
    [J]. Science China Technological Sciences, 2022, (04) : 793 - 801
  • [6] Self-supervised learning-based oil spill detection of hyperspectral images
    DUAN PuHong
    XIE ZhuoJun
    KANG XuDong
    LI ShuTao
    [J]. Science China(Technological Sciences)., 2022, 65 (04) - 801
  • [7] Self-supervised learning-based oil spill detection of hyperspectral images
    Duan PuHong
    Xie ZhuoJun
    Kang XuDong
    Li ShuTao
    [J]. SCIENCE CHINA-TECHNOLOGICAL SCIENCES, 2022, 65 (04) : 793 - 801
  • [8] Self-supervised learning-based automated classification model for fetal ultrasound planes
    Feng, M.
    Xu, K.
    Liu, Y.
    Liu, Y.
    Yuan, R.
    [J]. ULTRASOUND IN OBSTETRICS & GYNECOLOGY, 2023, 62 : 114 - 114
  • [9] Self-supervised learning representation for abnormal acoustic event detection based on attentional contrastive learning
    Wei, Juan
    Zhang, Qian
    Ning, Weichen
    [J]. DIGITAL SIGNAL PROCESSING, 2023, 142
  • [10] BADGR: An Autonomous Self-Supervised Learning-Based Navigation System
    Kahn, Gregory
    Abbeel, Pieter
    Levine, Sergey
    [J]. IEEE ROBOTICS AND AUTOMATION LETTERS, 2021, 6 (02) : 1312 - 1319