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Evidence-based uncertainty-aware semi-supervised medical image segmentation.
Chen, Yingyu; Yang, Ziyuan; Shen, Chenyu; Wang, Zhiwen; Zhang, Zhongzhou; Qin, Yang; Wei, Xin; Lu, Jingfeng; Liu, Yan; Zhang, Yi.
Afiliación
  • Chen Y; College of Computer Science, Sichuan University, China; The Key Laboratory of Data Protection and Intelligent Management, Ministry of Education, Sichuan University, China.
  • Yang Z; College of Computer Science, Sichuan University, China.
  • Shen C; College of Computer Science, Sichuan University, China.
  • Wang Z; College of Computer Science, Sichuan University, China.
  • Zhang Z; College of Computer Science, Sichuan University, China.
  • Qin Y; College of Computer Science, Sichuan University, China.
  • Wei X; Department of Ophthalmology, West China Hospital, Sichuan University, China.
  • Lu J; School of Cyber Science and Engineering, Sichuan University, China.
  • Liu Y; College of Electrical Engineering, Sichuan University, China. Electronic address: liuyan77@scu.edu.cn.
  • Zhang Y; School of Cyber Science and Engineering, Sichuan University, China; The Key Laboratory of Data Protection and Intelligent Management, Ministry of Education, Sichuan University, China.
Comput Biol Med ; 170: 108004, 2024 Mar.
Article en En | MEDLINE | ID: mdl-38277924
ABSTRACT
Semi-Supervised Learning (SSL) has demonstrated great potential to reduce the dependence on a large set of annotated data, which is challenging to collect in clinical practice. One of the most important SSL methods is to generate pseudo labels from the unlabeled data using a network model trained with labeled data, which will inevitably introduce false pseudo labels into the training process and potentially jeopardize performance. To address this issue, uncertainty-aware methods have emerged as a promising solution and have gained considerable attention recently. However, current uncertainty-aware methods usually face the dilemma of balancing the additional computational cost, uncertainty estimation accuracy, and theoretical basis in a unified training paradigm. To address this issue, we propose to integrate the Dempster-Shafer Theory of Evidence (DST) into SSL-based medical image segmentation, dubbed EVidential Inference Learning (EVIL). EVIL performs as a novel consistency regularization-based training paradigm, which enforces consistency on predictions perturbed by two networks with different parameters to enhance generalization Additionally, EVIL provides a theoretically assured solution for precise uncertainty quantification within a single forward pass. By discarding highly unreliable pseudo labels after uncertainty estimation, trustworthy pseudo labels can be generated and incorporated into subsequent model training. The experimental results demonstrate that the proposed approach performs competitively when benchmarked against several state-of-the-art methods on public datasets, i.e., ACDC, MM-WHS, and MonuSeg. The code can be found at https//github.com/CYYukio/EVidential-Inference-Learning.
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Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Contexto en salud: 1_ASSA2030 Problema de salud: 1_geracao_evidencia_conhecimento Asunto principal: Benchmarking / Aprendizaje Automático Supervisado Tipo de estudio: Prognostic_studies Idioma: En Revista: Comput Biol Med Año: 2024 Tipo del documento: Article País de afiliación: China

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Contexto en salud: 1_ASSA2030 Problema de salud: 1_geracao_evidencia_conhecimento Asunto principal: Benchmarking / Aprendizaje Automático Supervisado Tipo de estudio: Prognostic_studies Idioma: En Revista: Comput Biol Med Año: 2024 Tipo del documento: Article País de afiliación: China
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