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Abstract

Artificial intelligence (AI) and machine learning are rapidly transforming the landscape of medicine, particularly in the field of interventional pain management. These technologies offer promising advancements in diagnostic accuracy, treatment precision, and patient outcomes by leveraging vast amounts of medical data. In interventional pain management, AI's potential is being realized through applications such as advanced diagnostic imaging, image optimization, AI-assisted robotics, augmented reality displays, and big data management. For instance, AI can enhance the interpretation of MRI and CT scans, guide surgical procedures with precision, and optimize fluoroscopic and ultrasound images to improve procedural outcomes. Moreover, AI is revolutionizing the training of clinicians by providing realistic, virtual environments for practicing minimally invasive techniques, thereby accelerating the learning process. Despite the significant benefits, the integration of AI into clinical practice presents challenges. These include ensuring the quality and representativeness of data, addressing cybersecurity concerns, navigating regulatory and ethical considerations, and providing adequate training for clinicians to effectively utilize AI tools. Additionally, the high costs and accessibility issues associated with AI technologies must be carefully evaluated to ensure equitable distribution of benefits across healthcare systems. This commentary underscores the need for ongoing research, robust guidelines, and interdisciplinary collaboration to fully harness AI's potential in interventional pain management. Only by addressing these challenges, AI will be able to significantly enhance the precision and effectiveness of pain management, ultimately improving patient care and outcomes.

Creative Commons License

Creative Commons License
This work is licensed under a Creative Commons Attribution-Noncommercial-No Derivative Works 4.0 License.

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