Integration of AI Systems in Routine Clinical Practice
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Integration of AI Systems in Routine Clinical Practice
Sai Kalyani Rachapalli
ETL Developer
rsaikalyani@gmail.com
Abstract- Artificial Intelligence (AI) has progressed at lightning speed from experimental innovation to a revolutionary force in the healthcare industry. The incorporation of AI into day-to-day clinical practice has the potential to increase diagnostic precision, tailor treatment protocols, reduce administrative hurdles, and ultimately lead to better outcomes for patients. In spite of the enormous advances in technology, the actual implementation of AI is beset by various challenges such as regulatory hurdles, data interoperability, clinician hesitation, and ethical concerns. This paper critically assesses the integration process of AI systems into standard clinical settings. We begin with a historical background and original concepts of clinical AI, then proceed with a literature review of prominent studies, with successful case studies and areas of pitfalls respectively. We then outline a firm methodological framework for the systematic application of AI technologies, with the focus on stakeholder involvement, iterative testing, and ongoing education of healthcare workers. Findings from different case analyses show that a multidisciplinary approach greatly enhances the likelihood of successful AI integration. Yet, findings also highlight that technical performance is not enough; socio-technical dynamics and regulatory alignment are crucial. In the discussion, we determine enablers and barriers to AI adoption in healthcare, suggesting strategies for sustainable integration. Lastly, the paper concludes by highlighting that the future of AI in clinical practice is promising but needs intentional, ethically appropriate, and patient-focused deployment. The research seeks to be a guide for healthcare professionals, technology developers, and policymakers who are working towards incorporating AI technologies successfully into clinical processes. The results highlight that with careful implementation, AI has the potential to make a huge impact towards a new era of precision medicine, efficiency, and patient empowerment.
Keywords- Artificial Intelligence (AI), Clinical Practice, Healthcare Technology, Clinical Decision Support Systems (CDSS), Medical Data, Patient Care Optimization, AI Implementation Strategies, Health Informatics, Ethics in AI, Medical Automation.