Safeguarding Health: The Role of Artificial Intelligence in Healthcare Cybersecurity and Information Assurance
DOI:
https://doi.org/10.70445/avjcs.2.2.2025.32-46Keywords:
Artificial intelligence, cyber security in health care facility, information assurance, data analysis, machine learning, data accuracy.Abstract
In the situation of healthcare information and cybersecurity, the use of Artificial Intelligence by health care organizations is now a monumental step that has transformed how organizations in the health care industry store client data securely, and ensure that records are kept confidential, and free from tampering, and are readily accessible. Thus, in this article special attention will be devoted to the AI’s opportunities in increasing cybersecurity in the sphere of healthcare, its role in threats’ recognition, data protection and risks’ reduction. It is possible to state that the general ability to address and stop the new kinds of cyber threats as well as to detect, respond, and assured the trustworthiness of data and information in the future incidents in the healthcare organizations is increasing with technologies such as machine learning, predictive analytics, or anomaly detection. However the systems also have their weaknesses for example; the concerns with the equity of the algorithms applied, the impact of the autonomy of the AI methods, the expensive nature of implementing the system and last but not least the constantly evolving threats from cybercriminals. This paper also discusses visionary developments like predictive artificial intelligence, privacy-preserving artificial intelligence, more secure IoT all will transform the healthcare cybersecurity scenario in upcoming days. Last of all, the paper concludes about utilizing AI as a sort of effective solutions for protecting healthcare organizations from security threats; however, AI implementation process is conditioned by the adequate assessment of the ethical, financial, and operational concerns. From gathered data, this article singles out usage of AI in healthcare satisfying the beneficial impacts and improvement of safeguards as a way of safe and lawful buildings for the booming digital populating realm.
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