A Guide to Implementing a Governance Model for AI Software for Clinical Documentation

Introduction

In the rapidly evolving landscape of healthcare, artificial intelligence (AI) is transforming the way clinical documentation is managed. As biotech and pharmaceutical companies, academic institutions, and healthcare systems increasingly adopt AI tools to improve the accuracy and efficiency of clinical information, the need for robust governance structures becomes imperative. Drawing inspiration from proven, existing frameworks like protocol review committees and clinical subteams in clinical trials, this post explores a potential governance model tailored for AI software implementation in clinical documentation.

 

The Need for Governance in AI Implementations

AI applications in clinical documentation offer significant benefits, including reducing the administrative burden on staff, increasing the accuracy of patient information, and improving overall outcomes. However, these systems also raise unique challenges such as data privacy, ethical considerations, and the need for precise integration with existing clinical workflows. A governance model ensures that these challenges are systematically addressed, ensuring the safe and effective use of AI technologies.

 

Proposed Governance Model for AI in Clinical Documentation

Our proposed model for governing AI in clinical documentation borrows elements from the structures used in clinical trial processes, notably protocol review committees and clinical subteams. Here’s how it can be structured:

  1. Formation of an AI Oversight Committee
  • Composition: This committee should include diverse stakeholders such as clinicians, IT professionals, data scientists, ethicists, and legal experts.
  • Role: The AI Oversight Committee will be responsible for overall strategy, approval, monitoring, and evaluation of AI tools used in clinical documentation.

 

  1. Establishment of a Technical Review Subteam
  • Composition: Comprising IT specialists, data scientists, and medical communicators, this subteam focuses on the technical aspects of AI tools
  • Role: This subteam ensures the technical robustness of AI applications, oversees data integration, and maintains alignment with IT infrastructure.
  1. Creation of a Clinical Integration Subteam
  • Composition: This subteam should include clinicians, nursing staff, and other healthcare providers.
  • Role: Their primary responsibility is to assess the impact of AI tools on clinical workflows, train staff, and provide feedback to the technical team on practical issues.

 

  1. Ethics and Compliance Subteam
  • Composition: Ethicists, legal experts, and regulatory professionals.
  • Role: This subteam focuses on ensuring that the deployment of AI tools complies with ethical standards, data protection laws, and regulatory requirements.

Implementation Strategy

  • Pilot Testing: Before full-scale implementation, pilot tests of AI applications should be conducted in selected departments to gauge their impact and identify potential issues. Pilot testing should include legacy documents, theoretical or practice documents, and real-life (non-business critical) examples. The AI Oversight Committee jointly identifies the appropriate source materials and appropriate pilot documents.
  • Feedback Loops: Regular feedback from all stakeholders during the pilot phase should be used to refine and optimize the AI tools, as well as documenting relevant work instructions and best practices for using the tools.
  • Training and Support: Comprehensive training sessions for all end-users, coupled with ongoing support from AI specialists, are crucial for successful adoption.

 

Monitoring and Continuous Improvement

  • Regular Assessments: The AI Oversight Committee should conduct regular assessments to ensure that the AI tools continue to meet clinical needs and compliance standards.
  • Adaptation to Changes: The model must be flexible to adapt to technological advancements and changes in clinical practices or regulatory landscapes. Periodic review of new literature and guidance as well as the relevant competitive landscape should be planned to inform any necessary updates to technology or associated processes.

 

Conclusion

Establishing a robust governance model is essential for the successful implementation of AI in clinical documentation. By adapting structures familiar in clinical trials or other relevant settings, healthcare organizations can ensure that their AI tools are not only technically proficient but also align with clinical needs and ethical standards. This proactive approach in governance will pave the way for AI to be a transformative force in healthcare, enhancing both the clinical professional and patient experience.

For healthcare administrators and IT leaders, now is the time to consider how a structured governance model can help harness the full potential of AI in your clinical documentation processes. By fostering a collaborative, regulated, and ethically guided implementation, the future of healthcare documentation is not just automated but optimized for better care delivery. Need help determining your governance structure or what to implement for a pilot of AgileWriter™? Find out more at: https://youtu.be/f6JmIw9HW0U

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Alex Olinger