In this episode of SciBud, we dive into an exciting breakthrough in bioimaging that enhances our ability to visualize flexible membrane proteins using atomic force microscopy (AFM). Led by Heath et al. and published in Nature, researchers have developed a novel deep learning algorithm that transforms AFM techniques, enabling unprecedented clarity in imaging proteins like the SecYEG translocon—crucial for understanding cellular processes. By integrating this deep learning approach with Localization Atomic Force Microscopy (LAFM), the team has overcome the limitations of traditional imaging methods, allowing us to distinguish between different conformational states of dynamic proteins. While the study opens new avenues for research, we also discuss areas for improvement, particularly in data accessibility and methodological transparency. Join us as we unravel how this cutting-edge research could reshape our understanding of protein dynamics and fuel future scientific discoveries! Link to episode page with article citation: www.scibud.media/podcast/season/2025/episode/299