Login / Signup

A multi-classifier system integrated by clinico-histology-genomic analysis for predicting recurrence of papillary renal cell carcinoma.

Kang-Bo HuangCheng-Peng GuiYun-Ze XuXue-Song LiHong-Wei ZhaoJia-Zheng CaoYu-Hang ChenYi-Hui PanBing LiaoYun CaoXin-Ke ZhangHui HanFang-Jian ZhouRan-Yi LiuWen-Fang ChenZe-Ying JiangZi-Hao FengFu-Neng JiangYan-Fei YuSheng-Wei XiongGuan-Peng HanQi TangKui OuyangGui-Mei QuJi-Tao WuMing CaoBai-Jun DongYi-Ran HuangJin ZhangCai-Xia LiPei-Xing LiWei ChenWei-De ZhongJian-Ping GuoZhi-Ping LiuJer-Tsong HsiehDan XieMu-Yan CaiWei XueJin-Huan WeiJunghang Luo
Published in: Nature communications (2024)
Integrating genomics and histology for cancer prognosis demonstrates promise. Here, we develop a multi-classifier system integrating a lncRNA-based classifier, a deep learning whole-slide-image-based classifier, and a clinicopathological classifier to accurately predict post-surgery localized (stage I-III) papillary renal cell carcinoma (pRCC) recurrence. The multi-classifier system demonstrates significantly higher predictive accuracy for recurrence-free survival (RFS) compared to the three single classifiers alone in the training set and in both validation sets (C-index 0.831-0.858 vs. 0.642-0.777, p < 0.05). The RFS in our multi-classifier-defined high-risk stage I/II and grade 1/2 groups is significantly worse than in the low-risk stage III and grade 3/4 groups (p < 0.05). Our multi-classifier system is a practical and reliable predictor for recurrence of localized pRCC after surgery that can be used with the current staging system to more accurately predict disease course and inform strategies for individualized adjuvant therapy.
Keyphrases
  • free survival
  • renal cell carcinoma
  • deep learning
  • lymph node
  • squamous cell carcinoma
  • machine learning
  • single cell
  • young adults
  • long noncoding rna
  • squamous cell