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Equitable automation at scale: Integrating explainable AI and CRM platforms to modernize service delivery in U.S. healthcare and public systems


Article Information

Title: Equitable automation at scale: Integrating explainable AI and CRM platforms to modernize service delivery in U.S. healthcare and public systems

Authors: Farouk G. Adewumi, Uchechukwu Okafor, Chibuzor Njoku

Journal: Computer science & IT research journal

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Year: 2025

Volume: 6

Issue: 7

Language: en

DOI: 10.51594/csitrj.v6i7.1982

Categories

Abstract

Fragmented service delivery, operational delays, and inequitable access continue to challenge healthcare systems and public-sector institutions across the United States. As digital transformation accelerates, the integration of explainable artificial intelligence (AI) and intelligent customer relationship management (CRM) platforms offers a compelling path forward. This manuscript explores the potential of combining explainable AI and Salesforce-based CRM infrastructure to modernize service workflows, reduce systemic disparities, and improve service responsiveness in healthcare and public administration. Drawing from national digital modernization priorities—including Executive Order 14058 and the Blueprint for an AI Bill of Rights—we propose a framework for equitable automation that enhances both operational efficiency and transparency. Explainable AI models, when embedded into CRM platforms such as Salesforce Service Cloud, can guide decision-making in high-stakes environments—triaging patients, managing benefit eligibility, and responding to citizen inquiries—while ensuring accountability, fairness, and audibility. We illustrate sector-specific applications in healthcare (e.g., AI-informed case resolution and patient engagement) and public systems (e.g., benefit adjudication and workflow automation), showing how these technologies reduce service delays and improve outcomes for underserved populations. We also discuss the implications for the 2.7 million-strong U.S. customer service workforce, emphasizing how intelligent automation can alleviate labor strain while enabling more meaningful human engagement. Our findings highlight the transformative potential of aligning AI fairness with CRM modernization to build scalable, human-centered service infrastructure. We conclude by calling for cross-sector investment in integrated platforms that promote inclusion, trust, and public impact—hallmarks of a digitally resilient and equitable service economy.
Keywords: Explainable AI (XAI), Artificial Intelligence (AI), Customer Relation Management (CRM).


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