Explainable Trust-Centric Artificial Intelligence for Integrated Healthcare, Financial Security, and Cyber-Risk Management

Authors

  • Sajjadur Rahman Student, Department: School of Computing and Digital Technology, Birmingham City University, UK Author

DOI:

https://doi.org/10.32996/fcsai.2025.5.1.1

Keywords:

Explainable Artificial Intelligence; Trust-Centric AI; Cybersecurity; Financial Fraud Detection; Healthcare Analytics; Ethical AI Governance

Abstract

The rapid deployment of artificial intelligence across healthcare, finance, and cybersecurity has intensified concerns regarding transparency, trust, and ethical accountability in automated decision-making systems. While predictive models demonstrate strong performance in isolated domains, their real-world adoption remains constrained by limited explainability and insufficient alignment with human judgment. This research proposes an Explainable Trust-Centric Artificial Intelligence (ETC-AI) framework that unifies behavioral analytics, explainable machine learning, and governance-aware risk modeling across healthcare, financial security, and public systems. Drawing on advances in autism behavioral monitoring, cloud-based IoT architectures, cybersecurity for connected medical devices, financial fraud detection, and ethical AI for welfare systems, the framework operationalizes trust as a measurable and adaptive system property. Through cross-domain simulation and analytical evaluation, the study demonstrates improved interpretability, reduced false alerts, and enhanced decision confidence among human stakeholders. The findings support a shift toward explainable, trust-centric AI architectures capable of responsibly managing risk across interconnected socio-technical domains.

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Published

2025-12-28

Issue

Section

Research Article

How to Cite

Explainable Trust-Centric Artificial Intelligence for Integrated Healthcare, Financial Security, and Cyber-Risk Management. (2025). Frontiers in Computer Science and Artificial Intelligence, 4(5), 01-06. https://doi.org/10.32996/fcsai.2025.5.1.1