Generative AI for Healthcare: Fundamentals, Challenges, and Perspectives
Gang Chen, Changshuo Liu, Gene Anne Ooi, Marcus Tan, Zhongle Xie, Jianwei Yin, James Wei Luen Yip, Wenqiao Zhang, Jiaqi Zhu, Beng Chin Ooi

TL;DR
This paper discusses how generative AI can revolutionize healthcare through a data-centric approach, emphasizing the importance of a medical data ecosystem for effective deployment and improved clinical outcomes.
Contribution
It introduces a data-centric paradigm for deploying GenAI in healthcare, focusing on a sustainable medical data ecosystem for better integration, retrieval, and application of medical data.
Findings
Medical data ecosystem supports diverse data integration
Semantic vector search enhances data retrieval efficiency
High-quality data improves GenAI model performance
Abstract
Generative Artificial Intelligence (GenAI) is taking the world by storm. It promises transformative opportunities for advancing and disrupting existing practices, including healthcare. From large language models (LLMs) for clinical note synthesis and conversational assistance to multimodal systems that integrate medical imaging, electronic health records, and genomic data for decision support, GenAI is transforming the practice of medicine and the delivery of healthcare, such as diagnosis and personalized treatments, with great potential in reducing the cognitive burden on clinicians, thereby improving overall healthcare delivery. However, GenAI deployment in healthcare requires an in-depth understanding of healthcare tasks and what can and cannot be achieved. In this paper, we propose a data-centric paradigm in the design and deployment of GenAI systems for healthcare. Specifically, we…
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