Abstract
This paper explores the integration of artificial intelligence (AI), machine learning (ML), and quantum computing in revolutionizing diagnostic and therapeutic approaches within modern healthcare. The convergence of these cutting-edge technologies is poised to address critical challenges in healthcare, such as precision medicine, early disease detection, and personalized treatment strategies. AI and ML algorithms, particularly deep learning, are demonstrated to enhance diagnostic accuracy through the analysis of complex medical data, including imaging and genomics. Furthermore, quantum computing presents novel capabilities in processing large datasets, optimizing optimization problems, and accelerating drug discovery processes. This research investigates the synergistic potential of AI, ML, and quantum computing in transforming clinical decision-making processes, enabling more effective and tailored therapeutic interventions. Case studies and practical applications highlight the real-world impact of these technologies, while discussions on their limitations, ethical implications, and future directions provide a comprehensive understanding of their role in shaping the future of healthcare. Challenges related to data privacy, computational resources, and integration into existing healthcare infrastructures are also critically examined.