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A multimodal feature disentanglement model for lymphadenopathy diagnosis based on BUS and CDFI ultrasound videos: a retrospective, prospective, multicenter study.

March 14, 2026pubmed logopapers

Authors

Cao R,Zhu Y,Zhao H,Zhu Z,Chen L,Hu Y,Ouyang F,Zhao N,Jiang T,Li Y,Xing W,Song J,Nie F,Qiu L,Ta D

Affiliations (16)

  • College of Biomedical Engineering, Fudan University, Shanghai, China.
  • Ultrasound Medical Center, The Second Hospital of Lanzhou University, Lanzhou, China.
  • Gansu Province Clinical Research Center for Ultrasonography, Lanzhou, China.
  • Gansu Province Medical Engineering Research Center for Intelligence Ultrasound, Lanzhou, China.
  • Department of Ultrasound, West China Hospital, Sichuan University, Chengdu, China.
  • Department of Ultrasound, Huadong Hospital Affiliated to Fudan University, Shanghai, China.
  • Departments of Radiation Oncology, Chongqing University Cancer Hospital, Chongqing, China.
  • Department of Ultrasound Medicine, The First People's Hospital of Chenzhou, Hunan, China.
  • Department of Radiology, Cancer Hospital of Dalian University of Technology, Liaoning Cancer Hospital and Institute, Shenyang, China.
  • School of Rehabilitation Science and Engineering, University of Health and Rehabilitation Sciences, Qingdao, China.
  • Department of Ultrasound, People's Hospital of Ningxia Hui Autonomous Region, Yinchuan, China.
  • Ultrasound Medical Center, The Second Hospital of Lanzhou University, Lanzhou, China. [email protected].
  • Gansu Province Clinical Research Center for Ultrasonography, Lanzhou, China. [email protected].
  • Gansu Province Medical Engineering Research Center for Intelligence Ultrasound, Lanzhou, China. [email protected].
  • Department of Ultrasound, West China Hospital, Sichuan University, Chengdu, China. [email protected].
  • College of Biomedical Engineering, Fudan University, Shanghai, China. [email protected].

Abstract

This study developed and validated a deep learning model for diagnosing lymphadenopathy (LA) using B-mode ultrasound (BUS) and color Doppler flow imaging (CDFI) videos. A retrospective and prospective study was conducted from January 2016 to August 2025, including 7371 patients (3824 male [51.9%], 3547 females [48.1%], median age, 52 years [9-94 years]) who underwent multimodal ultrasound examinations across six centers from five regions of China. A total of 147,420 key frames were extracted from BUS and CDFI videos of all patients for model training and validation. Besides, patient clinical information was integrated to enhance the diagnostic performance of the model. Model performance was evaluated using the area under the receiver operating characteristic curve (AUC), accuracy (ACC), sensitivity (SEN), specificity (SPE), and precision (PRE). The clinical practical value of the model was verified by comparing with the performance of independent diagnosis and model-assisted diagnosis of radiologists with different levels of experience. This model achieved AUCs of 0.956 (95% CI: 0.925-0.981), 0.928 (95% CI: 0.884-0.965), and 0.912 (95% CI: 0.863-0.952) in the internal, retrospective external, and prospective external validation cohorts, respectively. In the retrospective external cohort, the average AUC of junior radiologists improved from 0.739 (95% CI: 0.676-0.801) to 0.891 (95% CI: 0.846-0.940) with the assistance of the model. In the prospective external cohort, their average AUC improved from 0.767 (95% CI: 0.705-0.829) to 0.899 (95% CI: 0.853-0.944). This multimodal video-based deep learning model enhances LA diagnostic accuracy and shows strong potential as a noninvasive, efficient tool for clinical decision-making. Question Why is multimodal ultrasound video needed in clinical practice to enhance the automated assessment of LA? Findings The proposed multimodal ultrasound video AI model achieved high diagnostic accuracy and robustness, outperforming senior radiologists in distinguishing benign from malignant LA across multicenter datasets. Clinical relevance This model offers a reliable, noninvasive clinical decision-support tool that enhances diagnostic performance, reduces operator dependence, and facilitates early detection and precise management of LA across healthcare institutions with varying resources.

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