Abstract
Compared with the current continuous development of the Internet, the unbalanced distribution of medical resources and low efficiency have made the traditional medical system stretched. In order to solve these problems and allow patients to get health advice from doctors at home, this article proposes an Internet-based telemedicine system. This article first elaborates the research background and significance of telemedicine, the development status at home and abroad, and the advantages and disadvantages of telemedicine. In the overall design, the system is divided into basic platform subsystem, application platform subsystem, and specific application subsystem, and the structure and implementation process of each module are designed. Aiming at the reliability of data transmission, this paper improves the traditional follow-up selection algorithm. The performance of the improved algorithm proposed is better than that of the traditional algorithm, which greatly improves the throughput of the system, avoids the repeated use of the same node, and improves the stability of the system. This paper designs a more comprehensive telemedicine system at the functional level, which can meet various functions required by telemedicine, enable patients and doctors to communicate in real time, and effectively improve doctors’ work efficiency.








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Zhong, Y., Xu, Z. & Cao, L. Intelligent IoT-based telemedicine systems implement for smart medical treatment. Pers Ubiquit Comput 27, 1429–1439 (2023). https://doi.org/10.1007/s00779-021-01633-1
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DOI: https://doi.org/10.1007/s00779-021-01633-1