Exploring the Opportunities and Limitations of Generative Models in Medical Imaging
This blog explores the opportunities and limitations of generative models, including GANs and Diffusion models, in the field of medical imaging. Generative models like ChatGPT have undeniably achieved remarkable success in language modeling and the entertainment industry, where minor errors, omissions, or inaccuracies are less critical and can be easily corrected through human intervention and iterative refinement. The success of these data-driven generative models is anticipated to have a profound impact in the future, as they harness the collective wisdom of large datasets and efficiently tackle time-consuming, routine tasks. However, the requirements in the medical domain are far more stringent, with a heavy emphasis on accuracy and expert interpretation. For example, the expertise of a skilled specialist is far more valuable than the average opinion of a general practitioner, and there are countless patient-specific cases that cannot be adequately captured by collected data through...