References
Brezulianu, A., Burlacu, A., Popa, I. V., Arif, M., & Geman, O. (2022). "Not by our feeling, but by others' seeing": Sentiment analysis technique in cardiology—An exploratory review. Frontiers in Public Health, 10, 880207.
Briganti, G., & Le Moine, O. (2020). Artificial intelligence in medicine: Today and tomorrow. Frontiers in Medicine, 7, 509744.
Eberly, L. A., Khatana, S. A. M., Nathan, A. S., Snider, C., Julien, H. M., Deleener, M. E., & Adusumalli, S. (2020). Telemedicine outpatient cardiovascular care during the COVID-19 pandemic: Bridging or opening the digital divide?. Circulation, 142(5), 510-512.
Elbagir, S., & Yang, J. (2019, March). Twitter sentiment analysis using natural language toolkit and VADER sentiment. In Proceedings of the international multiconference of engineers and computer scientists (Vol. 122, No. 16). sn.
Fan, B., Fan, W., & Smith, C. (2020). Adverse drug event detection and extraction from open data: A deep learning approach. Information Processing & Management, 57(1), 102131.
Gohil, S., Vuik, S., & Darzi, A. (2018). Sentiment analysis of health care tweets: Review of the methods used. JMIR Public Health and Surveillance, 4(2), e5789.
Gümüs, A. E., Uyulan, Ç., & Guleken, Z. (2022). Detection of EEG patterns for induced fear emotion state via EMOTIV EEG testbench. Natural and Engineering Sciences, 7(2), 148-168.
Huang, D., Huang, Y., Adams, N., Nguyen, T. T., & Nguyen, Q. C. (2020). Twitter-characterized sentiment towards racial/ethnic minorities and cardiovascular disease (CD) outcomes. Journal of Racial and Ethnic Health Disparities, 7(5), 888-900.
Laranjo, L., Lanas, F., Sun, M. C., Chen, D. A., Hynes, L., Imran, T. F., ... & Chow, C. K. (2024). World Heart Federation roadmap for secondary prevention of cardiovascular disease: 2023 update. Global Heart, 19(1).
Lavanya, P., Subba, R. I. V., Selvakumar, V., & Deshpande, S. V. (2024). An intelligent health surveillance system: Predictive modeling of cardiovascular parameters through machine learning algorithms using LoRa communication and the Internet of Medical Things (IoMT). Journal of Internet Services and Information Security, 14(1), 165-179.
Ligthart, A., Catal, C., & Tekinerdogan, B. (2021). Systematic reviews in sentiment analysis: A tertiary study. Artificial Intelligence Review, 1-57.
Mahadevkar, S. V., Patil, S., Kotecha, K., Soong, L. W., & Choudhury, T. (2024). Exploring AI-driven approaches for unstructured document analysis and future horizons. Journal of Big Data, 11(1), 92.
Mumtaj Begum, H. (2022). Scientometric analysis of the research paper output on artificial intelligence: A study. Indian Journal of Information Sources and Services, 12(1), 52–58.
Reference
Sathyanarayanan, S., & Srikanta, M. K. (2024). Heart sound analysis using SAINet incorporating CNN and transfer learning for detecting heart diseases. Journal of Wireless Mobile Networks, Ubiquitous Computing, and Dependable Applications (JoWUA), 15(2), 152-169. https://doi.org/10.58346/JOWUA.2024.I2.011
Toshtemirovna, E. M. M., Alisherovna, K. M., Totlibayevich, Y. S., & Xudoyberdiyevich, G. X. (2022). Anxiety disorders and coronary heart disease. The Peerian Journal, 11, 58-63.
Tweepy. (2024). Retrieved from https://docs.tweepy.org/en/stable/
Wankhade, M., Rao, A. C. S., & Kulkarni, C. (2022). A survey on sentiment analysis methods, applications, and challenges. Artificial Intelligence Review, 55(7), 5731-5780.
Yazdani, A., Shamloo, M., Khaki, M., & Nahvijou, A. (2023). Use of sentiment analysis for capturing hospitalized cancer patients' experience from free-text comments in the Persian language. BMC Medical Informatics and Decision Making, 23(1), 275.