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Deep learning model based on two-dimensional ultrasound images for preoperative prediction of breast cancer lymphovascular invasion: a human-machine comparison study
更新时间:2025-12-15
    • Deep learning model based on two-dimensional ultrasound images for preoperative prediction of breast cancer lymphovascular invasion: a human-machine comparison study

    • The latest research shows that the depth learning model based on two-dimensional ultrasound images is more accurate and reliable than traditional ultrasound physicians in predicting vascular invasion of breast cancer, providing new imaging basis for precision medicine.
    • Oncoradiology   Vol. 34, Issue 3, Pages: 201-207(2025)
    • DOI:10.19732/j.cnki.2096-6210.2025.03.001    

      CLC:
    • Received:05 February 2025

      Published Online:08 July 2025

      Published:28 June 2025

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  • Jinyu LAI, Lichang ZHONG, Lin SHI, et al. Deep learning model based on two-dimensional ultrasound images for preoperative prediction of breast cancer lymphovascular invasion: a human-machine comparison study[J]. Oncoradiology, 2025, 34(3): 201-207. DOI: 10.19732/j.cnki.2096-6210.2025.03.001.

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Related Author

Jiaojiao HU
Xiaohong FU
Yan SHEN
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Qingqing CHEN
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Related Institution

Department of Radiology, The First Affiliated Hospital of Soochow University
Department of Ultrasound, Gongli Hospital, Shanghai Pudong New Area
Institute of Medical Imaging, Soochow University
Department of Ultrasound, Shanghai Punan Hospital of Pudong New District
College of Medical Instrumentation, Shanghai University of Medicine & Health Sciences
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