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Convolution kernel and iterative reconstruction affect the diagnostic performance of radiomics and deep learning in lung adenocarcinoma pathological subtypes.

Wei ZhaoWei ZhangYingli SunYuxiang YeJiancheng YangWufei ChenPan GaoJianying LiCheng LiLiang JinPeijun WangYanqing HuaMing Li
Published in: Thoracic cancer (2019)
The results demonstrated that DL was more susceptible to CT parameter variability than radiomics. Standard convolution kernel images seem to be more appropriate for imaging analysis. Further investigation with a larger sample size is needed.
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