您当前的位置:
首页 >
文章列表页 >
The predictive value of nomogram scoring model based on ultrasound and clinicopathological features to predict pCR in HER2 positive breast cancer after NAC
更新时间:2025-12-15
    • The predictive value of nomogram scoring model based on ultrasound and clinicopathological features to predict pCR in HER2 positive breast cancer after NAC

    • The research team of the First Affiliated Hospital of Nanjing Medical University has constructed a scoring model of ultrasound combined with pathological characteristics nomogram, which can effectively predict the complete pathological remission of HER2 positive breast cancer after neoadjuvant chemotherapy, and provide reference for clinical decision-making.
    • Oncoradiology   Vol. 33, Issue 6, Pages: 593-601(2024)
    • DOI:10.19732/j.cnki.2096-6210.2024.06.004    

      CLC:
    • Received:25 August 2024

      Published Online:02 January 2025

      Published:28 December 2024

    移动端阅览

  • Xinyue WANG, Kunpeng CAO, Hua SHU, et al. The predictive value of nomogram scoring model based on ultrasound and clinicopathological features to predict pCR in HER2 positive breast cancer after NAC[J]. Oncoradiology, 2024, 33(6): 593-601. DOI: 10.19732/j.cnki.2096-6210.2024.06.004.

  •  
  •  

0

Views

319

下载量

2

CNKI被引量

Alert me when the article has been cited
提交
Tools
Download
Export Citation
Share
Add to favorites
Add to my album

Related Articles

Prediction of treating response for breast cancer by multi-phase MRI histogram arrays
Risk assessment of sentinel lymph node metastasis in breast cancer using a radiomics model based on B-mode ultrasound and color doppler ultrasound
Multimodal ultrasound features combined with serum CEA and CK19 to predict axillary lymph node metastasis of breast cancer
Value of deep learning ultrasound radiomics in predicting axillary lymph node metastasis of breast cancer
Deep learning model based on two-dimensional ultrasound images for preoperative prediction of breast cancer lymphovascular invasion: a human-machine comparison study

Related Author

ZHU Haitao
LI Xiaoting
QU Yuhong
SUN Yingshi
Yicheng ZHU
Yuan ZHANG
Zheqin YANG
Yu FU

Related Institution

Department of Radiology, Peking University Cancer Hospital
Department of Radiology, Affiliated Beijing Chaoyang Hospital of Capital Medical University
Department of Ultrasound, Shanghai Pudong New Area People's Hospital
Department of Ultrasound, The First Hospital of Qinhuangdao
Qinhuangdao Health School, Qin Huangdao
0