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Background Integrating Artificial Intelligence (AI) in nursing practice is revolutionising healthcare by enhancing clinical decision-making and patient care. However, the adoption of AI by registered nurses, especially in varied healthcare settings such as Saudi Arabia, remains underexplored. Understanding the facilitators and barriers from the perspective of frontline nurses is crucial for successful AI implementation. Aim This study aimed to explore registered nurses' perspectives on the facilitators and barriers to AI adoption in nursing practice in Saudi Arabia and to propose an extended Technology Acceptance Model for AI in Nursing (TAM-AIN). Methods A qualitative study utilising focus group discussions was conducted with 48 registered nurses from four major healthcare facilities in Al-Kharj, Saudi Arabia. Thematic analysis, guided by the Technology Acceptance Model framework, was employed to analyse the data. Results Key facilitators of AI adoption included perceived benefits to patient care (85%), strong organisational support (70%), and comprehensive training programs (75%). Primary barriers involved technical challenges (60%), ethical concerns regarding patient privacy (55%), and fears of job displacement (45%). These findings led to the development of TAM-AIN, an extended model that incorporates additional constructs such as ethical alignment, organisational readiness, and perceived threats to professional autonomy. Conclusions AI adoption in nursing practice requires a holistic approach that addresses technical, educational, ethical, and organisational challenges. The proposed TAM-AIN offers a comprehensive framework for optimising AI integration into nursing practice, emphasising the importance of nurse-centred implementation strategies. This model provides healthcare institutions and policymakers with a robust tool to facilitate successful AI adoption and enhance patient outcomes.
Background Integrating Artificial Intelligence (AI) in nursing practice is revolutionising healthcare by enhancing clinical decision-making and patient care. However, the adoption of AI by registered nurses, especially in varied healthcare settings such as Saudi Arabia, remains underexplored. Understanding the facilitators and barriers from the perspective of frontline nurses is crucial for successful AI implementation. Aim This study aimed to explore registered nurses' perspectives on the facilitators and barriers to AI adoption in nursing practice in Saudi Arabia and to propose an extended Technology Acceptance Model for AI in Nursing (TAM-AIN). Methods A qualitative study utilising focus group discussions was conducted with 48 registered nurses from four major healthcare facilities in Al-Kharj, Saudi Arabia. Thematic analysis, guided by the Technology Acceptance Model framework, was employed to analyse the data. Results Key facilitators of AI adoption included perceived benefits to patient care (85%), strong organisational support (70%), and comprehensive training programs (75%). Primary barriers involved technical challenges (60%), ethical concerns regarding patient privacy (55%), and fears of job displacement (45%). These findings led to the development of TAM-AIN, an extended model that incorporates additional constructs such as ethical alignment, organisational readiness, and perceived threats to professional autonomy. Conclusions AI adoption in nursing practice requires a holistic approach that addresses technical, educational, ethical, and organisational challenges. The proposed TAM-AIN offers a comprehensive framework for optimising AI integration into nursing practice, emphasising the importance of nurse-centred implementation strategies. This model provides healthcare institutions and policymakers with a robust tool to facilitate successful AI adoption and enhance patient outcomes.
BACKGROUND Artificial intelligence (AI) Is rapidly transforming healthcare, offering potential benefits in diagnosis, treatment, and workflow efficiency. However, limited research explores patient perspectives on AI, especially in its role in diagnosis and communication. This study examines patient perceptions of various AI applications, focusing on the diagnostic process and communication. OBJECTIVE To examine patient perspectives on AI use in healthcare, particularly in diagnostic processes and communication, identifying key concerns, expectations, and opportunities to guide the development and implementation of AI tools. METHODS A co-design focus group workshop was conducted with 17 participants (patients and family members) aged 18-80. The session included interactive activities, discussions, and guideline development exploring five AI scenarios: (1) Patient Portal Messaging, (2) Radiological Imaging, (3) Ambient Digital Scribe, (4) Virtual Human Telehealth Call, (5) Clinical Decision Support for HIV Testing. Thematic analysis was used to analyze transcripts and facilitator notes RESULTS Participants reported varying comfort levels with AI applications, with higher comfort for AI tools with less direct patient interaction, such as ambient digital scribes and radiology image readers, and lower comfort for those with more direct interaction, such as virtual human telehealth calls. Five key themes regarding patient perspectives of AI emerged: (1) Concerns Around Model Development and Validation, (2) Concerns Around AI Systems for Patients and Providers, (3) Expectations Around Disclosure of AI Usage, (4) Excitement and Opportunities for AI to Better Address Patient Needs, (5) Patient Concerns Around Data Protection, Privacy, and Security. Participants emphasized the importance of transparency in AI development validation, preferred AI as a supplementary tool rather than a replacement for human clinicians and stressed the need for clear communication about AI’s role in their care. They also highlighted the potential for AI to enhance patient understanding and engagement while expressing concerns about data security and privacy. CONCLUSIONS This study highlights the importance of incorporating patient perspectives in the design and implementation of AI tools in healthcare. Transparency, human oversight, clear communication, and data privacy are crucial for patient trust and acceptance of AI in diagnostic processes. These findings inform strategies for individual clinicians, healthcare organizations, and policymakers to ensure responsible and patient-centered AI deployment in healthcare.
In recent years, the integration of informatics in emergency medicine has led to significant improvements in clinical decision-making, patient management, and overall healthcare delivery. This literature review explores the most recent trends and applications of informatics in the field of emergency medicine, including electronic health records, telemedicine, artificial intelligence, and mobile health technologies. The goal is to provide a comprehensive overview of the state-of-the-art technologies, their current implementations, and the challenges that remain to be addressed.
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