AI in Healthcare: Balancing Cybersecurity and Information Access for Enhanced Patient Care

Authors

  • George Edison Independent Researcher, France Author

DOI:

https://doi.org/10.70445/avjcs.2.2.2025.47-63

Keywords:

Electronic health records, artificial intelligent safeguards, artificial intelligence confidentiality, moral issues, artificial intelligence protection.

Abstract

Cloud computing based AI integration can bring immeasurable advantage to enrich the diagnosis, to wipe out lot of secretarial occupations and to overhaul the way treatment protocols. Nonetheless, the infusion of AI is more or less apparent in the operational environment of the HC system; these give rise to new form of questions on data protection, privacy, ethical and legal queries to name a few. The authors of this article present a brief overview of four significant segments of AI applications in healthcare security, such as contemporary regulation, elements of a framework for data security for patients’ information and the potential for the future of AI to enhance both security and efficient information usage. For this reason it emphasizes what concerns apply to healthcare organizations, compatibility with existing systems, privacy, and the requirement for domain knowledge. But as I mentioned earlier, the article does provides clues to an ethical issue when adopting AI for example the problem of bias in data, and the bias of the models in decision making and the problem of opacity of the models. Thus, to the future, direction of development indicates that artificial intelligence in cybersecurity, Block Chain, Biometric technologies and future amendments in the legislative act will influence significantly the enhancement of the conditions of data protection and authorization. The final issue of the article shares that these challenges are to be solved by all the stakeholders in healthcare and with AI, governments, patients, while this technology should be made sufficiently safe, ethical, and transparent on sufficient level. If solved these issues AI could dramatically transform the limits and scope of healthcare and advance the quest for safer, better and ever more effective healthcare rapidly.

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Published

2025-03-20

How to Cite

AI in Healthcare: Balancing Cybersecurity and Information Access for Enhanced Patient Care. (2025). AlgoVista: Journal of AI & Computer Science, 2(2), 47-63. https://doi.org/10.70445/avjcs.2.2.2025.47-63

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