A deep learning‐based dual‐omics prediction model for radiation pneumonitis
Medical Physics2021Vol. 48(10), pp. 6247–6256
Citations Over TimeTop 10% of 2021 papers
Bin Liang, Yuan Tian, Zhaohui Su, Wenting Ren, Zhiqiang Liu, Peng Huang, Shu-ying You, Lei Deng, Jianyang Wang, Jingbo Wang, Tao Zhang, Xiaotong Lu, Nan Bi, Dai JianRong
Abstract
The dual-omics outperformed single-omics for RP prediction, which can be contributed to: (1) using more data points; (2) exploring the data in greater depth; and (3) incorporating of the bimodality data.
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