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Enterprise AI Analysis: Mapping study on AI-based technologies in palliative care – a scoping study

Enterprise AI Analysis

Mapping study on AI-based technologies in palliative care – a scoping study

This comprehensive analysis, based on a recent scoping review, delves into the transformative potential of AI in palliative care, highlighting key innovations, benefits, and the critical challenges for implementation.

Published: 28 October 2025 | Author: Mariana Silva-Ferreira et al.

Executive Impact

Key metrics demonstrating the potential for AI integration in palliative care, enhancing patient outcomes and operational efficiency.

57+ Studies Analyzed
48% Telemedicine Focus
38% Communication Focus
32% Symptom Control Focus

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

5+ Studies on external validation of AI models

Predictive models enhance early palliative care referrals and tailor ACP by stratifying patients based on clinical trajectories. However, evidence is largely based on qualitative reports or small pilot studies, with limited external validation.

Enterprise Process Flow

Data Fragmentation in EHRs
Inconsistent Data Standards
Hurdles in AI Integration
Delayed Clinical Decision Making

Seamless integration of AI into existing Electronic Health Record (EHR) systems faces significant challenges due to data fragmentation and lack of standardized formats. Overcoming these barriers is crucial for efficient data exchange and AI-driven insights.

Ethical Concern Impact in Palliative Care Mitigation Strategy
Data Privacy & Consent Sensitive patient data requires robust protection and clear consent processes.
  • ✓ Implement strong encryption
  • ✓ Ensure transparent consent forms
  • ✓ Adhere to GDPR/HIPAA standards
Algorithmic Bias & Equity AI models trained on biased data can reinforce disparities, especially for vulnerable populations.
  • ✓ Diversify training datasets
  • ✓ Regular bias audits
  • ✓ Prioritize inclusive design
Transparency & Trust Lack of interpretability in AI decisions can erode trust among patients and HCPs.
  • ✓ Explainable AI (XAI) approaches
  • ✓ Clear communication of AI roles
  • ✓ Build clinician AI literacy

Addressing ethical considerations is paramount for responsible AI deployment in palliative care. Transparency, fairness, and patient autonomy must guide development and implementation.

Case Study: Remote Training for Rural Caregivers

Challenge: Providing adequate palliative care training and support to family caregivers in rural areas, often facing geographic isolation and limited access to resources.

AI/Tech Solution: Implementation of remote training programs using video consultations between PC teams and family caregivers. This involved delivering educational content and facilitating real-time interactive support sessions.

Impact & Outcomes: While no significant differences in caregiver burden were noted, participants showed significant improvements in general quality of life and a decrease in depression symptoms. This highlights the potential of digital tools to enhance caregiver well-being and understanding of care tasks, even without reducing perceived burden.

Key Takeaway: Technology can effectively bridge geographical gaps, providing valuable support and improving the emotional well-being of caregivers, complementing direct care interventions.

Calculate Your Potential AI ROI

Estimate the efficiency gains and cost savings AI can bring to your palliative care operations based on industry benchmarks.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Implementation Roadmap

A phased approach to successfully integrate AI into your palliative care practice, ensuring ethical, effective, and patient-centered solutions.

Phase 1: Needs Assessment & Pilot Study (3-6 Months)

Identify specific pain points, gather stakeholder input, and implement a small-scale pilot project for a chosen AI application (e.g., symptom tracking) to assess feasibility and user acceptance.

Phase 2: Data Governance & Ethical Framework (6-12 Months)

Establish robust data privacy protocols, ensure informed consent, and develop an ethical framework for AI use, including bias mitigation strategies and algorithmic transparency guidelines.

Phase 3: Interoperability & System Integration (12-18 Months)

Integrate AI solutions with existing EHR systems and other digital platforms, ensuring seamless data flow and care coordination. Address technical hurdles and ensure compatibility.

Phase 4: Training & Scaling (Ongoing)

Provide comprehensive training for HCPs and caregivers on AI literacy, data interpretation, and ethical use. Gradually scale up successful pilot programs across the organization, with continuous evaluation.

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