王建新

教授 博士生导师 硕士生导师

所在单位:计算机学院

学历:研究生(博士)毕业

办公地点:中南大学校本部计算机楼303室

性别:男

联系方式:jxwang@mail.csu.edu.cn

学位:博士学位

在职信息:在职

毕业院校:中南大学

曾获荣誉:

教育部新世纪人才

湖南省杰出青年基金获得者

   
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MLDRL: Multi-loss disentangled representation learning for predicting esophageal cancer response to neoadjuvant chemoradiotherapy using longitudinal CT images

发布时间:2025-03-05

点击次数:

DOI码:10.1016/j.media.2022.102423

发表刊物:MEDICAL IMAGE ANALYSIS

关键字:SURGERY,CHEMORADIATION,MAMMOGRAMS,RECURRENCE,REGRESSION,CARCINOMA,PATTERN

摘要:Accurate prediction of pathological complete response (pCR) after neoadjuvant chemoradiotherapy (nCRT) is essential for clinical precision treatment. However, the existing methods of predicting pCR in esophageal cancer are based on the single stage data, which limits the performance of these methods. Effective fusion of the longitudinal data has the potential to improve the performance of pCR prediction, thanks to the combination of complementary information. In this study, we propose a new multi-loss disentangled representation learning (MLDRL) to realize the effective fusion of complementary information in the longitudinal data. Specifically, we first disentangle the latent variables of features in each stage into inherent and variational components. Then, we define a multi-loss function to ensure the effectiveness and structure of disentanglement, which consists of a cross-cycle reconstruction loss, an inherent-variational loss and a supervised classification loss. Finally, an adaptive gradient normalization algorithm is applied to balance the training of multiple loss terms by dynamically tuning the gradient magnitudes. Due to the cooperation of the multi-loss function and the adaptive gradient normalization algorithm, MLDRL effectively restrains the potential interference and achieves effective information fusion. The proposed method is evaluated on multi-center datasets, and the experimental results show that our method not only outperforms several state-of-art methods in pCR prediction, but also achieves better performance in the prognostic analysis of multi-center unlabeled datasets. (c) 2022ElsevierB.V. Allrightsreserved.

备注:Yue, HL (Yue, Hailin) [1] ; Liu, J (Liu, Jin) [1] ; Li, JJ (Li, Junjian) [1] ; Kuang, HL (Kuang, Hulin) [1] ; Lang, JY (Lang, Jinyi) [2] , [3] ; Cheng, JH (Cheng, Jianhong) [1] ; Peng, L (Peng, Lin) [4] ; Han, YT (Han, Yongtao) [4] ; Bai, H (Bai, Harrison) [5] , [6] ; Wang, YP (Wang, Yuping) [7] ; Wang, QF (Wang, Qifeng) [2] , [3] ; Wang, JX (Wang, Jianxin) [1]

论文类型:期刊论文

卷号:79

是否译文:

发表时间:2022-07-01

收录刊物:SCI

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