Employing Nanotechnology, Nanobiosensors, and IoNT to Advance Modern Healthcare: Taxonomies, Applications, and Issues
Abstract
The industry most likely to benefit from nanotechnology applications is the healthcare sector. Rapid advancements in the fields of nanotechnology, nanobiosensors, and IoNT (Internet of Nano-Things) possess the capacity to change a number of industries and enhance our daily lives. Together, these three technologies produce a strong and effective system with a wide range of application possibilities. The use of nanotechnology, nanobiosensors, and Internet of Nano-Things (IoNT) has greatly advanced modern healthcare, especially in terms of medical architecture. In this review, I will discuss the ways in which employing nanotechnology, nanobiosensors, and IoNT has revolutionized the architecture of modern healthcare. In the areas
of medicine and healthcare services, nanotechnology—in various forms in nanomedicine,nanoimplants, nanobiosensors, and IoNT— possesses the capacity to bring about a revolutionary advancement. An extensive review of nanotechnology, biosensors, nanobiosensors, and IoNT is given in this paper. Moreover, multilevel taxonomies for nanoparticles, biosensors,nanobiosensors, nanotechnology, and nanozymes are provided. These technologies possible uses
in medicine and clinical settings are covered in detail along with numerous examples. In particular, the role of IoBNT in healthcare is the main topic of this paper. In this I discussed Texonomies, Issues and opportunities and Natural Decendant about internet of bio-nano-things (IoBNT) related things.
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