Trends and Outcomes of Traditional Medicine Treatments for Arterial Hypertension and Rheumatic Diseases in Mongolia (2021-2023)
DOI:
https://doi.org/10.56294/sctconf2024.985Keywords:
Mongolian Traditional Medicine, arterial hypertension, rheumatoid arthritis, morbidity, mortality, inpatient careAbstract
We analyzed morbidity, mortality, and inpatient data from 2021 to 2023, obtained from the Center for Health Development in Mongolia.Background: This study analyzes morbidity, mortality, and inpatient data from Mongolian Traditional Medicine Departments (MTMDs) for the years 2021-2023, focusing on patients diagnosed with arterial hypertension (ICD-10 I10) and rheumatoid arthritis (ICD-10 M05), corresponding to traditional diagnoses of "wind and blood ascending disorder" and "rheumatic diseases," respectively.
Methods: Data were collected from the Center for Health Development Mongolia, encompassing 1,398 cases of "wind and blood ascending disorder" and 175 cases of "rheumatic diseases." Variables analyzed included patient demographics, hospitalization duration, and disease status.Results:1. From 2021 to 2023, cases decreased annually (823 in 2021, 404 in 2022, and 171 in 2023). Ulaanbaatar and Zavkhan had the highest prevalence rates (1.5%), while Orkhon had the lowest (0.1%). Admissions peaked in winter and decreased in spring, with significant monthly variations (p<0.05). Most patients (73.2%) were treated in private hospitals, with a mean hospital stay of 7.07±1.73 days. Cases varied across the years (95 in 2021, 34 in 2022, and 46 in 2023). Ulaanbaatar accounted for the majority of hospitalizations (82.1% in 2021, 64.7% in 2022, 30.4% in 2023). Mean hospital stay was 7.3±1.29 days, with significant regional differences (p<0.05).Conclusions:The incidence of "wind and blood ascending disorder" has declined, while admissions to MTMDs have increased. "Rheumatic diseases" showed a variable pattern, with significant regional and temporal differences in hospitalization rates and durations. Further research is needed to understand the underlying causes of these trends and optimize treatment protocols.
References
Wang, S. H. Annual advances of Chinese minority traditional medicine in 2019. Traditional Medicine Research, 2020,5(2), 108-121.
Shao, G., Xie, W., Jia, X., Bade, R., Xie, Y., Qi, R., ... & Bo, AOverview of traditional Mongolian medical warm acupuncture. Aging and Disease, . 2022, 13(4), 1030.
Song, Y., Li, J., István, B., Xuan, R., Wei, S., Zhong, G., & Gu, Y. Current evidence on traditional Chinese exercises for quality of life in patients with essential hypertension: a systematic review and meta-analysis. Frontiers in cardiovascular medicine,2021, 7, 627518.
Li, X., Yi, L. T., Bi, Y. Q., Zhang, L., Sun, Y. H., & Li, M. H. Ethnomedicinal survey of plants and animals used by Daur ethnic group, Inner Mongolia, China,2020.
Lin, Zheng, Zeyu Wang, Yue Zhu, Zichao Li, and Hao Qin. "Text Sentiment Detection and Classification Based on Integrated Learning Algorithm." Applied Science and Engineering Journal for Advanced Research 3, no. 3 (2024): 27-33.
M. K. Afzal, Y. B. Zikria, S. Mumtaz, A. Rayes, A. Al-Dulaimi and M. Guizani, "Unlocking 5G Spectrum Potential for Intelligent IoT: Opportunities, Challenges, and Solutions," in IEEE Communications Magazine, vol. 56, no. 10, pp. 92-93, OCTOBER 2018.
Z. Guo, K. Yu, N. Kumar, W. Wei, S. Mumtaz and M. Guizani, "Deep-Distributed-Learning-Based POI Recommendation Under Mobile-Edge Networks," in IEEE Internet of Things Journal, vol. 10, no. 1, pp. 303-317, 1 Jan.1, 2023.
H. Liao et al., "Cloud-Edge-Device Collaborative Reliable and Communication-Efficient Digital Twin for Low-Carbon Electrical Equipment Management," in IEEE Transactions on Industrial Informatics, vol. 19, no. 2, pp. 1715-1724, Feb. 2023
J. Pan et al., "AI-Driven Blind Signature Classification for IoT Connectivity: A Deep Learning Approach," in IEEE Transactions on Wireless Communications, vol. 21, no. 8, pp. 6033-6047, Aug. 2022
Guochang Zhang. Enhancing English Pronunciation Assessment in Computer-Assisted Language Learning for College Students[J], Journal of Combinatorial Mathematics and Combinatorial Computing, Volume 120. 275-283. DOI: https://doi.org/10.61091/jcmcc120-24.
Yan Gao, Bo Wang, Penghui Xu, Zheng Lv, Jian Jiao, Na Liu. Big Data Analysis Based on the Evaluation of College Students’ Civic Web[J], Journal of Combinatorial Mathematics and Combinatorial Computing, Volume 120. 265-274. DOI: https://doi.org/10.61091/jcmcc120-23.
C. Zhang, M. Li and D. Wu, "Federated Multidomain Learning With Graph Ensemble Autoencoder GMM for Emotion Recognition," in IEEE Transactions on Intelligent Transportation Systems, vol. 24, no. 7, pp. 7631-7641, July 2023, doi: 10.1109/TITS.2022.3203800.
Wang, S. H. Annual advances of Chinese minority traditional medicine in 2019. Traditional Medicine Research,2020, 5(2), 108-121.
Wang, S., Qin, J., Meng, X., & Zhang, Y. Research hotspots and trends in Chinese minority traditional medicine during 2021: a visual bibliometrics analysis. Tradit. Med. Res,2022, 7(29), 10-53388.
Jadambaa, A., Spickett, J., Badrakh, B., & Norman, R. E. The impact of the environment on health in Mongolia: a systematic review. Asia Pacific Journal of Public Health, 2015, 27(1), 45-75.
Published
Issue
Section
License
Copyright (c) 2024 Li Li, Chimedragchaa. Ch, Tsend-Ayush .D, Dorjibat.S, Nansalmaa M, Terigen (Author)
This work is licensed under a Creative Commons Attribution 4.0 International License.
The article is distributed under the Creative Commons Attribution 4.0 License. Unless otherwise stated, associated published material is distributed under the same licence.