Ruchi Mangharamani
Georgia State University
Atlanta, GA, 30302, United States
Dr. Gaurav Raj
Department of CSE
SSET, Sharda University
Greater Noida , India
er.gaurav.raj@gmail.com
Abstract
Quantum-Driven Predictive Healthcare represents a pioneering integration of quantum computing principles with advanced risk modeling and artificial intelligence to revolutionize medical decision support systems. This approach harnesses quantum algorithms to process vast, complex healthcare datasets, enabling rapid identification of subtle patterns and correlations that traditional computing systems may overlook. By incorporating quantum-enhanced risk modeling, clinicians can benefit from more precise predictions of disease progression and patient outcomes, ultimately facilitating early intervention and personalized treatment strategies. AI-powered decision support further refines these predictions by dynamically adapting to new data inputs, learning continuously from real-time clinical feedback. The synergy between quantum computing and AI not only accelerates data analysis but also improves diagnostic accuracy and resource allocation within healthcare institutions. Moreover, the methodology promotes a deeper understanding of multifactorial health conditions by integrating diverse datasets—from genomics to electronic health records—into a coherent analytical framework. This fusion of technologies is poised to overcome the limitations of conventional statistical models, offering a robust, scalable, and future-proof solution for predictive healthcare. As healthcare challenges become increasingly complex, embracing quantum-driven solutions will be instrumental in transforming medical risk assessment and decision-making processes. The research presented herein lays the groundwork for next-generation clinical tools that merge computational innovation with practical healthcare applications, promising enhanced patient outcomes and more efficient medical care delivery.
Keywords
Quantum computing, predictive healthcare, risk modeling, AI-powered decision support, personalized medicine, clinical data analytics, quantum algorithms, healthcare innovation.
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