Modern interactive 3D visualization tools and medical imaging have been combined in recent years, revolutionizing surgery planning and medical education. The creation of novel approaches to use interactive 3D visualization for improving comprehension of complex medical data, assisting surgical planning, and boosting medical education is explored. Clinicians and educators may manipulate, examine, and comprehend complex anatomical structures and clinical states in an intuitive and immersive way thanks to the integration of cutting-edge visualization tools with medical data. We draw attention to the potential benefits of these methods for strengthening training initiatives, enhancing surgical results, and promoting patient care. A thorough analysis of the systems now in use, talk about the difficulties in visualizing 3D medical data, and suggest fresh methods to overcome these difficulties has been discussed. Through this research, we aim to contribute to the growing field of interactive 3D visualization in medicine and underscore its transformative potential.

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