Author
Listed:
- Fang Dai
(Shanghai Jiao Tong University
Shanghai Jiao Tong University
Tongji University)
- Siqiong Yao
(Shanghai Jiao Tong University)
- Min Wang
(Shanghai Jiaotong University School of Medicine)
- Yicheng Zhu
(Pudong New Area People’s Hospital Affiliated to Shanghai University of Medicine and Health Sciences)
- Xiangjun Qiu
(Tsinghua University)
- Peng Sun
(Shanghai Jiao Tong University)
- Cheng Qiu
(Nantong University)
- Jisheng Yin
(University of Chinese Academy of sciences)
- Guangtai Shen
(Xin’an League People’s Hospital)
- Jingjing Sun
(Shanghai Fourth People’s Hospital Affiliated to Tongji University)
- Maofeng Wang
(Affiliated Dongyang Hospital of Wenzhou Medical University)
- Yun Wang
(Xuzhou City Central Hospital)
- Zheyu Yang
(Shanghai Jiaotong University School of medicine)
- Jianfeng Sang
(The Affiliated Hospital of Nanjing University Medical School)
- Xiaolei Wang
(Shanghai Jiao Tong University)
- Fenyong Sun
(Tongji University)
- Wei Cai
(Shanghai Jiaotong University School of medicine)
- Xingcai Zhang
(World Tea Organization)
- Hui Lu
(Shanghai Jiao Tong University
Shanghai Jiao Tong University
Shanghai Academy of Experimental Medicine)
Abstract
Artificial intelligence applications in oncology imaging often struggle with diagnosing rare tumors. We identify significant gaps in detecting uncommon thyroid cancer types with ultrasound, where scarce data leads to frequent misdiagnosis. Traditional augmentation strategies do not capture the unique disease variations, hindering model training and performance. To overcome this, we propose a text-driven generative method that fuses clinical insights with image generation, producing synthetic samples that realistically reflect rare subtypes. In rigorous evaluations, our approach achieves substantial gains in diagnostic metrics, surpasses existing methods in authenticity and diversity measures, and generalizes effectively to other private and public datasets with various rare cancers. In this work, we demonstrate that text-guided image augmentation substantially enhances model accuracy and robustness for rare tumor detection, offering a promising avenue for more reliable and widespread clinical adoption.
Suggested Citation
Fang Dai & Siqiong Yao & Min Wang & Yicheng Zhu & Xiangjun Qiu & Peng Sun & Cheng Qiu & Jisheng Yin & Guangtai Shen & Jingjing Sun & Maofeng Wang & Yun Wang & Zheyu Yang & Jianfeng Sang & Xiaolei Wang, 2025.
"Improving AI models for rare thyroid cancer subtype by text guided diffusion models,"
Nature Communications, Nature, vol. 16(1), pages 1-16, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-59478-8
DOI: 10.1038/s41467-025-59478-8
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