TY - JOUR
T1 - Prompt mechanisms in medical imaging
T2 - A comprehensive survey
AU - Yang, Hao
AU - Liang, Xinglong
AU - Li, Zhang
AU - Sun, Yue
AU - Hu, Zheyu
AU - Xie, Xinghe
AU - Dashtbozorg, Behdad
AU - Huang, Jincheng
AU - Zhu, Shiwei
AU - Han, Luyi
AU - Zhang, Jiong
AU - Wang, Shanshan
AU - Mann, Ritse
AU - Yu, Qifeng
AU - Tan, Tao
N1 - Publisher Copyright:
© 2026 The Author(s). Published by Elsevier Inc. on behalf of Youth Innovation Co., Ltd. This is an open access article under the CC BY-NC-ND license. http://creativecommons.org/licenses/by-nc-nd/4.0/
PY - 2026
Y1 - 2026
N2 - Deep learning offers transformative potential in medical imaging, yet its clinical adoption is frequently hampered by challenges such as data scarcity, distribution shifts, and the need for robust task generalization. Prompt-based methodologies have emerged as a pivotal strategy to guide deep learning models, providing flexible, domain-specific adaptations that significantly enhance model performance and adaptability without extensive retraining. This systematic review critically examines the burgeoning landscape of prompt engineering in medical imaging. We dissect diverse prompt modalities, including textual instructions, visual prompts, and learnable embeddings, and analyze their integration for core tasks such as image generation, segmentation, and classification. Our survey shows that prompt mechanisms advance medical AI on two fronts. At a performance level, they enhance accuracy, robustness, and data efficiency. Methodologically, they circumvent the need for manual feature engineering. This model guidance has the potential to enhance the interpretability of model behavior by making task guidance more explicit. Despite substantial advancements, we identify persistent challenges, particularly in prompt design optimization, data heterogeneity, and ensuring scalability for clinical deployment. Finally, this review outlines promising future trajectories, including advanced multimodal prompting and robust clinical integration, underscoring the critical role of prompt-driven AI in accelerating the revolution of diagnostics and personalized treatment planning in medicine.
AB - Deep learning offers transformative potential in medical imaging, yet its clinical adoption is frequently hampered by challenges such as data scarcity, distribution shifts, and the need for robust task generalization. Prompt-based methodologies have emerged as a pivotal strategy to guide deep learning models, providing flexible, domain-specific adaptations that significantly enhance model performance and adaptability without extensive retraining. This systematic review critically examines the burgeoning landscape of prompt engineering in medical imaging. We dissect diverse prompt modalities, including textual instructions, visual prompts, and learnable embeddings, and analyze their integration for core tasks such as image generation, segmentation, and classification. Our survey shows that prompt mechanisms advance medical AI on two fronts. At a performance level, they enhance accuracy, robustness, and data efficiency. Methodologically, they circumvent the need for manual feature engineering. This model guidance has the potential to enhance the interpretability of model behavior by making task guidance more explicit. Despite substantial advancements, we identify persistent challenges, particularly in prompt design optimization, data heterogeneity, and ensuring scalability for clinical deployment. Finally, this review outlines promising future trajectories, including advanced multimodal prompting and robust clinical integration, underscoring the critical role of prompt-driven AI in accelerating the revolution of diagnostics and personalized treatment planning in medicine.
KW - deep learning
KW - foundation models
KW - medical imaging
KW - prompt engineering
UR - https://www.scopus.com/pages/publications/105033942498
U2 - 10.1016/j.xinn.2026.101271
DO - 10.1016/j.xinn.2026.101271
M3 - Review article
AN - SCOPUS:105033942498
SN - 2666-6758
JO - Innovation
JF - Innovation
M1 - 101271
ER -