Cancer Detection
Cancer detection research intensely focuses on improving the accuracy and efficiency of diagnosis using various imaging modalities (e.g., ultrasound, mammograms, CT scans) and genomic data. Current efforts leverage deep learning architectures, including convolutional neural networks (CNNs) and transformers, often combined with techniques like transfer learning, semi-supervised learning, and multiple instance learning to address challenges such as limited annotated data and inter-patient variability. These advancements aim to enable earlier, more accurate cancer detection, ultimately improving patient outcomes and streamlining clinical workflows. The field is also exploring the integration of multimodal data and explainable AI to enhance both diagnostic performance and clinical interpretability.
Papers
Quantum Support Vector Machine for Prostate Cancer Detection: A Performance Analysis
Walid El Maouaki, Taoufik Said, Mohamed Bennai
In-context learning enables multimodal large language models to classify cancer pathology images
Dyke Ferber, Georg Wölflein, Isabella C. Wiest, Marta Ligero, Srividhya Sainath, Narmin Ghaffari Laleh, Omar S. M. El Nahhas, Gustav Müller-Franzes, Dirk Jäger, Daniel Truhn, Jakob Nikolas Kather