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AI and IoT Synergy in Predictive Diagnostics and Personalized Dental Care
0
Zitationen
6
Autoren
2025
Jahr
Abstract
In this research, the transformation capacity of the Internet of Things (IoT) activated smart systems has been investigated to improve the use of resources for diagnosis of oral disease. The need for new solutions has been shown by expanding the deficiencies of traditional clinical problems, including worldwide issues of oral diseases, along with worldwide issues of oral diseases, including their excessive cost, limited access and subjective, subjective assessment. A new way is that the Internet of Things (IoT) actively through the “Internet of Dental Things” (IODT), the data -drive changes our understanding of oral health care. This report discusses on the basis of the IOD system, as well as how they can improve the first identity, use AI to improve the diagnosis, adapt treatment plans, streamline operations and provide convenience for telecommunications. Several questions, including data security, interoperability, technical complexity, regulatory compliance and moral concerns, are also seriously investigated. The report takes a look at the fact that new technologies, such as biosphere based on digital twins and nanomaterials, can combine to change the distribution of oral health services. This emphasizes that in order to achieve this, IDT must continuously challenge and integrate strategically, which will generally use patient results, use resources and use public health systems.
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