TY - JOUR
T1 - Disentangle Then Calibrate With Gradient Guidance
T2 - A Unified Framework for Common and Rare Disease Diagnosis
AU - Chen, Yuanyuan
AU - Guo, Xiaoqing
AU - Xia, Yong
AU - Yuan, Yixuan
N1 - Funding Information:
This work was supported in part by the National Natural Science Foundation of China under Grant 62171377; in part by the Ningbo Clinical Research Center for Medical Imaging under Grant 2021L003 (Open Project 2022LYKFZD06); in part by the National Key Research and Development Program of China under Grant 2022YFC2009903 and Grant 2022YFC2009900; in part by the Hong Kong Research Grants Council General Research Fund under Grant 11211221, Grant 14204321, and Grant 14220622; and in part by the Innovation and Technology Commission-Innovation and Technology Fund under Grant ITS/100/20.
Publisher Copyright:
© 2024 IEEE.
PY - 2024/5
Y1 - 2024/5
N2 - The computer-aided diagnosis (CAD) for rare diseases using medical imaging poses a significant challenge due to the requirement of large volumes of labeled training data, which is particularly difficult to collect for rare diseases. Although Few-shot learning (FSL) methods have been developed for this task, these methods focus solely on rare disease diagnosis, failing to preserve the performance in common disease diagnosis. To address this issue, we propose the Disentangle then Calibrate with Gradient Guidance (DCGG) framework under the setting of generalized few-shot learning, i.e., using one model to diagnose both common and rare diseases. The DCGG framework consists of a network backbone, a gradient-guided network disentanglement (GND) module, and a gradient-induced feature calibration (GFC) module. The GND module disentangles the network into a disease-shared component and a disease-specific component based on gradient guidance, and devises independent optimization strategies for both components, respectively, when learning from rare diseases. The GFC module transfers only the disease-shared channels of common-disease features to rare diseases, and incorporates the optimal transport theory to identify the best transport scheme based on the semantic relationship among different diseases. Based on the best transport scheme, the GFC module calibrates the distribution of rare-disease features at the disease-shared channels, deriving more informative rare-disease features for better diagnosis. The proposed DCGG framework has been evaluated on three public medical image classification datasets. Our results suggest that the DCGG framework achieves state-of-the-art performance in diagnosing both common and rare diseases.
AB - The computer-aided diagnosis (CAD) for rare diseases using medical imaging poses a significant challenge due to the requirement of large volumes of labeled training data, which is particularly difficult to collect for rare diseases. Although Few-shot learning (FSL) methods have been developed for this task, these methods focus solely on rare disease diagnosis, failing to preserve the performance in common disease diagnosis. To address this issue, we propose the Disentangle then Calibrate with Gradient Guidance (DCGG) framework under the setting of generalized few-shot learning, i.e., using one model to diagnose both common and rare diseases. The DCGG framework consists of a network backbone, a gradient-guided network disentanglement (GND) module, and a gradient-induced feature calibration (GFC) module. The GND module disentangles the network into a disease-shared component and a disease-specific component based on gradient guidance, and devises independent optimization strategies for both components, respectively, when learning from rare diseases. The GFC module transfers only the disease-shared channels of common-disease features to rare diseases, and incorporates the optimal transport theory to identify the best transport scheme based on the semantic relationship among different diseases. Based on the best transport scheme, the GFC module calibrates the distribution of rare-disease features at the disease-shared channels, deriving more informative rare-disease features for better diagnosis. The proposed DCGG framework has been evaluated on three public medical image classification datasets. Our results suggest that the DCGG framework achieves state-of-the-art performance in diagnosing both common and rare diseases.
KW - feature calibration
KW - Few-shot learning
KW - network disentanglement
KW - rare diseases diagnosis
UR - http://www.scopus.com/inward/record.url?scp=85181568462&partnerID=8YFLogxK
U2 - 10.1109/TMI.2023.3349284
DO - 10.1109/TMI.2023.3349284
M3 - Journal article
C2 - 38165794
AN - SCOPUS:85181568462
SN - 0278-0062
VL - 43
SP - 1816
EP - 1827
JO - IEEE Transactions on Medical Imaging
JF - IEEE Transactions on Medical Imaging
IS - 5
ER -