BIOMARKERS

Molecular Biopsy of Human Tumors

- a resource for Precision Medicine *

140 related articles for article (PubMed ID: 36388276)

  • 1. Modeling the adoption of medical wearable devices among the senior adults: Using hybrid SEM-neural network approach.
    Xinyan Z; Mamun AA; Ali MH; Siyu L; Yang Q; Hayat N
    Front Public Health; 2022; 10():1016065. PubMed ID: 36388276
    [TBL] [Abstract][Full Text] [Related]  

  • 2. Predicting the intention and adoption of wearable payment devices using hybrid SEM-neural network analysis.
    Al Mamun A; Naznen F; Yang M; Yang Q; Wu M; Masukujjaman M
    Sci Rep; 2023 Jul; 13(1):11217. PubMed ID: 37433838
    [TBL] [Abstract][Full Text] [Related]  

  • 3. Predicting the intention to adopt wearable payment devices in China: The use of hybrid SEM-Neural network approach.
    Luyao L; Al Mamun A; Hayat N; Yang Q; Hoque ME; Zainol NR
    PLoS One; 2022; 17(8):e0273849. PubMed ID: 36040924
    [TBL] [Abstract][Full Text] [Related]  

  • 4. Predicting the Mass Adoption of eDoctor Apps During COVID-19 in China Using Hybrid SEM-Neural Network Analysis.
    Yang Q; Al Mamun A; Hayat N; Md Salleh MF; Salameh AA; Makhbul ZKM
    Front Public Health; 2022; 10():889410. PubMed ID: 35570961
    [TBL] [Abstract][Full Text] [Related]  

  • 5. How health motivation moderates the effect of intention and usage of wearable medical devices? An empirical study in Malaysia.
    Hayat N; Zainol NR; Salameh AA; Al Mamun A; Yang Q; Md Salleh MF
    Front Public Health; 2022; 10():931557. PubMed ID: 36045735
    [TBL] [Abstract][Full Text] [Related]  

  • 6. Modelling the mass adoption potential of wearable medical devices.
    Yang Q; Al Mamun A; Hayat N; Salleh MFM; Jingzu G; Zainol NR
    PLoS One; 2022; 17(6):e0269256. PubMed ID: 35675373
    [TBL] [Abstract][Full Text] [Related]  

  • 7. Modeling the Intention and Adoption of Wearable Fitness Devices: A Study Using SEM-PLS Analysis.
    Yang Q; Al Mamun A; Hayat N; Jingzu G; Hoque ME; Salameh AA
    Front Public Health; 2022; 10():918989. PubMed ID: 35875013
    [TBL] [Abstract][Full Text] [Related]  

  • 8. Smart technology for healthcare: Exploring the antecedents of adoption intention of healthcare wearable technology.
    Chau KY; Lam MHS; Cheung ML; Tso EKH; Flint SW; Broom DR; Tse G; Lee KY
    Health Psychol Res; 2019 Mar; 7(1):8099. PubMed ID: 31583292
    [TBL] [Abstract][Full Text] [Related]  

  • 9. Wearable Technology Acceptance in Health Care Based on National Culture Differences: Cross-Country Analysis Between Chinese and Swiss Consumers.
    Yang Meier D; Barthelmess P; Sun W; Liberatore F
    J Med Internet Res; 2020 Oct; 22(10):e18801. PubMed ID: 33090108
    [TBL] [Abstract][Full Text] [Related]  

  • 10. Impact of the Moderating Effect of National Culture on Adoption Intention in Wearable Health Care Devices: Meta-analysis.
    Zhang Z; Xia E; Huang J
    JMIR Mhealth Uhealth; 2022 Jun; 10(6):e30960. PubMed ID: 35657654
    [TBL] [Abstract][Full Text] [Related]  

  • 11. Factors affecting wearable ECG device adoption by general practitioners for atrial fibrillation screening: cross-sectional study.
    Yao Y; Li Z; He Y; Zhang Y; Guo Z; Lei Y; Zhao Q; Li D; Zhang Z; Zhang Y; Liao X
    Front Public Health; 2023; 11():1128127. PubMed ID: 37213597
    [TBL] [Abstract][Full Text] [Related]  

  • 12. Exploring the smart wearable payment device adoption intention: Using the symmetrical and asymmetrical analysis methods.
    Hayat N; Al Mamun A; Salameh AA; Ali MH; Hussain WMHW; Zainol NR
    Front Psychol; 2022; 13():863544. PubMed ID: 36148091
    [TBL] [Abstract][Full Text] [Related]  

  • 13. Research on elderly users' intentions to accept wearable devices based on the improved UTAUT model.
    Chen J; Wang T; Fang Z; Wang H
    Front Public Health; 2022; 10():1035398. PubMed ID: 36699866
    [TBL] [Abstract][Full Text] [Related]  

  • 14. Exploring the mass adoption potential of wearable fitness devices in Malaysia.
    Hayat N; Salameh AA; Mamun AA; Alam SS; Zainol NR
    Digit Health; 2023; 9():20552076231180728. PubMed ID: 37325073
    [TBL] [Abstract][Full Text] [Related]  

  • 15. Technical attributes, health attribute, consumer attributes and their roles in adoption intention of healthcare wearable technology.
    Zhang M; Luo M; Nie R; Zhang Y
    Int J Med Inform; 2017 Dec; 108():97-109. PubMed ID: 29132639
    [TBL] [Abstract][Full Text] [Related]  

  • 16. The adoption of cryptocurrency as a disruptive force: Deep learning-based dual stage structural equation modelling and artificial neural network analysis.
    Abbasi GA; Tiew LY; Tang J; Goh YN; Thurasamy R
    PLoS One; 2021; 16(3):e0247582. PubMed ID: 33684120
    [TBL] [Abstract][Full Text] [Related]  

  • 17. What Factors Predict the Adoption of Type 2 Diabetes Patients to Wearable Activity Trackers-Application of Diffusion of Innovation Theory.
    Chen P; Shen Y; Li Z; Sun X; Feng XL; Fisher EB
    Front Public Health; 2021; 9():773293. PubMed ID: 35047473
    [No Abstract]   [Full Text] [Related]  

  • 18. Understanding consumer acceptance of healthcare wearable devices: An integrated model of UTAUT and TTF.
    Wang H; Tao D; Yu N; Qu X
    Int J Med Inform; 2020 Jul; 139():104156. PubMed ID: 32387819
    [TBL] [Abstract][Full Text] [Related]  

  • 19. The Mediating Influence of the Unified Theory of Acceptance and Use of Technology on the Relationship Between Internal Health Locus of Control and Mobile Health Adoption: Cross-sectional Study.
    Ahadzadeh AS; Wu SL; Ong FS; Deng R
    J Med Internet Res; 2021 Dec; 23(12):e28086. PubMed ID: 34964718
    [TBL] [Abstract][Full Text] [Related]  

  • 20. Determinants predicting the electronic medical record adoption in healthcare: A SEM-Artificial Neural Network approach.
    Almarzouqi A; Aburayya A; Salloum SA
    PLoS One; 2022; 17(8):e0272735. PubMed ID: 35972979
    [TBL] [Abstract][Full Text] [Related]  

    [Next]    [New Search]
    of 7.