Image 1_Combining clinical characteristics with CT radiomics to predict Ki67 expression level of small renal mass based on artificial intelligence algorithms.tif
Background<p>Most small renal masses (SRMs) grow slowly and have good prognosis, but a portion of SRMs can also demonstrate aggressive characteristics, which can be explored by the proliferation-related marker Ki67.</p>Methods<p>A total of 241 patients collected from the two center...
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| Main Author: | Junyi Lin (10573039) (author) |
|---|---|
| Other Authors: | Yongyi Ou (20762306) (author), Mingli Luo (13798936) (author), Xuxuan Jiang (20762309) (author), Shengren Cen (9960407) (author), Guohua Zeng (288129) (author) |
| Published: |
2025
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| Subjects: | |
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