Cancer Patient
Cancer patient research intensely focuses on improving diagnosis, treatment, and patient outcomes through advanced data analysis. Current efforts leverage machine learning, particularly deep learning models like transformers and recurrent neural networks, along with federated learning to address data privacy and heterogeneity across diverse datasets (including multi-omics data, medical images, and clinical notes). This research aims to enhance precision medicine by improving prediction of survival, adverse drug reactions, and treatment response, ultimately leading to more effective and personalized cancer care. The development of AI-driven tools for clinical decision support and efficient data extraction from electronic health records is a major focus, with ongoing efforts to ensure model reliability, explainability, and ethical considerations.
Papers
Autonomous Artificial Intelligence Agents for Clinical Decision Making in Oncology
Dyke Ferber, Omar S. M. El Nahhas, Georg Wölflein, Isabella C. Wiest, Jan Clusmann, Marie-Elisabeth Leßman, Sebastian Foersch, Jacqueline Lammert, Maximilian Tschochohei, Dirk Jäger, Manuel Salto-Tellez, Nikolaus Schultz, Daniel Truhn, Jakob Nikolas Kather
Evaluating the Effectiveness of Artificial Intelligence in Predicting Adverse Drug Reactions among Cancer Patients: A Systematic Review and Meta-Analysis
Fatma Zahra Abdeldjouad, Menaouer Brahami, Mohammed Sabri
Defining Effective Engagement For Enhancing Cancer Patients' Well-being with Mobile Digital Behavior Change Interventions
Aneta Lisowska, Szymon Wilk, Laura Locati, Mimma Rizzo, Lucia Sacchi, Silvana Quaglini, Matteo Terzaghi, Valentina Tibollo, Mor Peleg
Narrative Feature or Structured Feature? A Study of Large Language Models to Identify Cancer Patients at Risk of Heart Failure
Ziyi Chen, Mengyuan Zhang, Mustafa Mohammed Ahmed, Yi Guo, Thomas J. George, Jiang Bian, Yonghui Wu