TY - JOUR
T1 - FetalFlex
T2 - Anatomy-guided diffusion model for flexible control on fetal ultrasound image synthesis
AU - Duan, Yaofei
AU - Tan, Tao
AU - Zhu, Zhiyuan
AU - Huang, Yuhao
AU - Zhang, Yuanji
AU - Gao, Rui
AU - Pang, Patrick Cheong Iao
AU - Gao, Xinru
AU - Tao, Guowei
AU - Cong, Xiang
AU - Li, Zhou
AU - Liang, Lianying
AU - He, Guangzhi
AU - Yin, Linliang
AU - Deng, Xuedong
AU - Yang, Xin
AU - Ni, Dong
N1 - Publisher Copyright:
© 2025 Elsevier B.V.
PY - 2025/10
Y1 - 2025/10
N2 - Fetal ultrasound (US) examinations require the acquisition of multiple planes, each providing unique diagnostic information to evaluate fetal development and screening for congenital anomalies. However, obtaining a thorough, multi-plane annotated fetal US dataset remains challenging, particularly for rare or complex anomalies owing to their low incidence and numerous subtypes. This poses difficulties in training novice radiologists and developing robust AI models, especially for detecting abnormal fetuses. In this study, we introduce a Flexible Fetal US image generation framework (FetalFlex) to address these challenges, which leverages anatomical structures and multimodal information to enable controllable synthesis of fetal US images across diverse planes. Specifically, FetalFlex incorporates a pre-alignment module to enhance controllability and introduces a repaint strategy to ensure consistent texture and appearance. Moreover, a two-stage adaptive sampling strategy is developed to progressively refine image quality from coarse to fine levels. We believe that FetalFlex is the first method capable of generating both in-distribution normal and out-of-distribution abnormal fetal US images, without requiring any abnormal data. Experiments on multi-center datasets demonstrate that FetalFlex achieved state-of-the-art performance across multiple image quality metrics. Comprehensive reader studies further confirms the close alignment of the generated results with expert visual assessments and clinical-level fidelity. Furthermore, synthetic images by FetalFlex significantly improve the performance of six typical deep models in downstream classification and anomaly detection tasks. Lastly, FetalFlex's anatomy-level controllable generation offers a unique advantage for anomaly simulation and creating paired or counterfactual data at the pixel level. The demo is available at: https://dyf1023.github.io/FetalFlex/.
AB - Fetal ultrasound (US) examinations require the acquisition of multiple planes, each providing unique diagnostic information to evaluate fetal development and screening for congenital anomalies. However, obtaining a thorough, multi-plane annotated fetal US dataset remains challenging, particularly for rare or complex anomalies owing to their low incidence and numerous subtypes. This poses difficulties in training novice radiologists and developing robust AI models, especially for detecting abnormal fetuses. In this study, we introduce a Flexible Fetal US image generation framework (FetalFlex) to address these challenges, which leverages anatomical structures and multimodal information to enable controllable synthesis of fetal US images across diverse planes. Specifically, FetalFlex incorporates a pre-alignment module to enhance controllability and introduces a repaint strategy to ensure consistent texture and appearance. Moreover, a two-stage adaptive sampling strategy is developed to progressively refine image quality from coarse to fine levels. We believe that FetalFlex is the first method capable of generating both in-distribution normal and out-of-distribution abnormal fetal US images, without requiring any abnormal data. Experiments on multi-center datasets demonstrate that FetalFlex achieved state-of-the-art performance across multiple image quality metrics. Comprehensive reader studies further confirms the close alignment of the generated results with expert visual assessments and clinical-level fidelity. Furthermore, synthetic images by FetalFlex significantly improve the performance of six typical deep models in downstream classification and anomaly detection tasks. Lastly, FetalFlex's anatomy-level controllable generation offers a unique advantage for anomaly simulation and creating paired or counterfactual data at the pixel level. The demo is available at: https://dyf1023.github.io/FetalFlex/.
KW - Anatomical structural guidance
KW - Controllable synthesis
KW - Diffusion model
KW - Fetal ultrasound image
UR - https://www.scopus.com/pages/publications/105011714439
U2 - 10.1016/j.media.2025.103725
DO - 10.1016/j.media.2025.103725
M3 - Article
AN - SCOPUS:105011714439
SN - 1361-8415
VL - 105
JO - Medical Image Analysis
JF - Medical Image Analysis
M1 - 103725
ER -