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Hongsen Cai

Showing results (1-10 of 4) with videos related to

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Peerj. Computer Science|June 26, 2025
A feature selection method utilizing path accumulation cost, redundancy minimization, and interaction maximization for the diagnosis of coronary heart diseaseJiayao Jiang, Zheng Yue, Hongling Zhu, et al.
Medical Physics|June 25, 2026
Diffusion-based novel view synthesis for X-ray imagingMeijie Wang, Hongsen Cai, Yan Li, et al.
International Journal of Cardiology. Cardiovascular Risk and Prevention|July 21, 2025
Development and validation of a predictive model for in-hospital mortality in patients with coronary heart disease and renal insufficiencyYahui Li, Hongsen Cai, Wei Zheng, et al.
Research (Washington, D.C.)|August 21, 2025
An Explainable Two-Stage Machine Learning Model for Predicting the Post-Thrombolysis Complications in Stroke Patients: A Multi-Center StudyHongling Zhu, Qing Ye, Shurui Wang, et al.
Pageof 1

Showing results (1-10 of 4) with videos related to

Sort By:
Pageof 1
Peerj. Computer Science|June 26, 2025
A feature selection method utilizing path accumulation cost, redundancy minimization, and interaction maximization for the diagnosis of coronary heart diseaseJiayao Jiang, Zheng Yue, Hongling Zhu, et al.
Medical Physics|June 25, 2026
Diffusion-based novel view synthesis for X-ray imagingMeijie Wang, Hongsen Cai, Yan Li, et al.
International Journal of Cardiology. Cardiovascular Risk and Prevention|July 21, 2025
Development and validation of a predictive model for in-hospital mortality in patients with coronary heart disease and renal insufficiencyYahui Li, Hongsen Cai, Wei Zheng, et al.
Research (Washington, D.C.)|August 21, 2025
An Explainable Two-Stage Machine Learning Model for Predicting the Post-Thrombolysis Complications in Stroke Patients: A Multi-Center StudyHongling Zhu, Qing Ye, Shurui Wang, et al.
Pageof 1