Integrating Robot-Assisted Surgery and AI for Improved Healthcare Outcomes
Archana Shahi, Gagandeep Bajaj, Roshani GolharSathawane, Dinesh Mendhe, Akriti Dogra
- 发表年份
- 2024
- 引用次数
- 38
摘要
One of the numerous possible advantages of integrating Artificial Intelligence (AI) with Robot-Assisted Surgery (RAS) in the operating theatre is improved surgical accuracy and patient outcomes. We carried out a thorough investigation here to better comprehend this overlap. The study used a rigorous methodology that focused on making up information while collecting, analyzing, and testing data. The adoption of AI-driven Clinical Decision Support Systems (CDSS) was linked to a statistically significant drop in surgical problem rates across all surgical groups, with a mean rate of around 14.36%, in a descriptive analysis of surgical complication rates. These findings demonstrate the potential therapeutic value of integrating RAS and AI. The goal is to shape a healthcare landscape that is characterized by precision, efficiency, personalization, and universal access to cutting-edge healthcare technologies, and the way forward includes rigorous clinical validation, AI model refinement, interdisciplinary collaboration, ethical considerations, costeffectiveness analysis, and a commitment to global accessibility. The combination of RAS and AI has the potential to revolutionize surgical procedures and improve health outcomes for people all across the world.
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