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Background: General awareness and exposure to generative artificial intelligence (AI) have increased recently. This transformative technology has the potential to create a more dynamic and engaging user experience in digital mental health interventions (DMHIs). However, if not appropriately used and controlled, it can introduce risks to users that may result in harm and erode trust. At the time of conducting this trial, there had not been a rigorous evaluation of an approach to safely implementing generative AI in a DMHI.
Objective: This study aims to explore the user relationship, experience, safety, and technical guardrails of a DMHI using generative AI compared with a rules-based intervention.
Methods: We conducted a 2-week exploratory randomized controlled trial (RCT) with 160 adult participants randomized to receive a generative AI (n=81) or rules-based (n=79) version of a conversation-based DMHI. Self-report measures of the user relationship (client satisfaction, working alliance bond, and accuracy of empathic listening and reflection) and experience (engagement metrics, adverse events, and technical guardrail success) were collected. Descriptions and validation of technical guardrails for handling user inputs (eg, detecting potentially concerning language and off-topic responses) and model outputs (eg, not providing medical advice and not providing a diagnosis) are provided, along with examples to illustrate how they worked. Safety monitoring was conducted throughout the trial for adverse events, and the success of technical guardrails created for the generative arm was assessed post trial.
Results: In general, the majority of measures of user relationship and experience appeared to be similar in both the generative and rules-based arms. The generative arm appeared to be more accurate at detecting and responding to user statements with empathy (98% accuracy vs 69%). There were no serious or device-related adverse events, and technical guardrails were shown to be 100% successful in posttrial review of generated statements. A majority of participants in both groups reported an increase in positive sentiment (62% and 66%) about AI at the end of the trial.
Conclusions: This trial provides initial evidence that, with the right guardrails and process, generative AI can be successfully used in a digital mental health intervention (DMHI) while maintaining the user experience and relationship. It also provides an initial blueprint for approaches to technical and conversational guardrails that can be replicated to build a safe DMHI.
Trial Registration: ClinicalTrials.gov NCT05948670; https://clinicaltrials.gov/study/NCT05948670.
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http://dx.doi.org/10.2196/67365 | DOI Listing |
JAMIA Open
October 2025
Division of Pulmonary and Critical Care, Brigham and Women's Hospital, Boston, MA, United States.
Objectives: Unstructured data, such as procedure notes, contain valuable medical information that is frequently underutilized due to the labor-intensive nature of data extraction. This study aims to develop a generative artificial intelligence (GenAI) pipeline using an open-source Large Language Model (LLM) with built-in guardrails and a retry mechanism to extract data from unstructured right heart catheterization (RHC) notes while minimizing errors, including hallucinations.
Materials And Methods: A total of 220 RHC notes were randomly selected for pipeline development and 200 for validation from the Pulmonary Vascular Disease Registry.
J Glob Health
September 2025
Association of Academic Global Surgery, Milwaukee, Wisconsin, USA.
Background: Collaborative research in global surgery has resulted in the rapid development of the field via knowledge creation and dissemination, research capacity building, and direct improvements in the delivery of clinical care. Yet the establishment and maintenance of trans-boundary collaborations carries significant risk to health systems, clinicians, patients, and researchers, particularly if such collaborations are not developed thoughtfully and with appropriate guardrails. In recent years, there has been significant growth in the literature on the pervasiveness and impact of neocolonialism on global health research.
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May 2025
Veterans Affairs Northern California Health Care System, Sacramento.
Background: Limited staff, rising costs, and regulatory oversight, coupled with the need to achieve clinical endpoints and improve access to care, has made scaling health care operations challenging. This article explores the emerging paradigm of multiagent artificial intelligence (AI) systems in health care, which represent a significant leap beyond traditional large language models.
Observations: This analysis reviews the potential of multiagent AI systems to revolutionize patient care, streamline administrative processes, and support complex clinical decision-making.
J Midwifery Womens Health
August 2025
School of Nursing, Texas Tech University Health Sciences Center, Dallas, Texas.
Introduction: Artificial intelligence (AI) presents unique opportunities to enhance student learning and assessment, faculty teaching, and faculty support. Midwifery education is based on competency-based learning and AI has potential to either enhance or detract from achieving this outcome.
Methods: We conducted a rapid scoping review guided by 3 questions aimed to explore the use of AI to facilitate competency-based education (CBE) relevant to midwifery faculty and students.
BMC Genomics
August 2025
Labcorp, Burlington, NC, USA.
Background: Orthogonal confirmation of variants identified by next-generation sequencing (NGS) is routinely performed in many clinical laboratories to improve assay specificity. However, confirmatory testing of all clinically significant variants increases both turnaround time and operating costs for laboratories. Improvements to early NGS methods and bioinformatics algorithms have dramatically improved variant calling accuracy, particularly for single nucleotide variants (SNVs), thus calling into question the necessity of confirmatory testing for all variant types.
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