Treffer: Enhancing Healthcare Applications with Object-Oriented Generative Adversarial Networks.
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Integrating object-oriented programming (OOP) principles with Generative Adversarial Networks (GANs) presents a novel approach to advancing healthcare applications. While OOP and GANs emerge from distinct paradigms, they share common modularity, scalability, and efficiency goals. This research explores how combining these concepts can lead to more adaptive and robust healthcare solutions, particularly in medical imaging, synthetic data generation, and diagnostic systems. By leveraging OOP design patterns, GAN architectures can become more modular and maintainable, enhancing their application in healthcare. This paper demonstrates the benefits of applying structured software design to machine learning models through case studies and comparative analysis, fostering innovations that improve diagnostic accuracy and patient outcomes. Furthermore, it offers insights into the future of healthcare technology, highlighting the potential of OOP-GANs to drive purposeful and ethical advancements in medical AI. [ABSTRACT FROM AUTHOR]