Oncocytoma-Related Gene Signature to Differentiate Chromophobe Renal Cancer and Oncocytoma Using Machine Learning

被引:7
|
作者
Bin Satter, Khaled [1 ]
Tran, Paul Minh Huy [1 ]
Tran, Lynn Kim Hoang [1 ]
Ramsey, Zach [2 ]
Pinkerton, Katheine [1 ]
Bai, Shan [1 ]
Savage, Natasha M. [2 ]
Kavuri, Sravan [2 ]
Terris, Martha K. [3 ]
She, Jin-Xiong [1 ,4 ]
Purohit, Sharad [1 ,4 ,5 ]
机构
[1] Augusta Univ, Med Coll Georgia, Ctr Biotechnol & Genom Med, 1120 15th Str, Augusta, GA 30912 USA
[2] Augusta Univ, Med Coll Georgia, Dept Pathol, 1120 15th Str, Augusta, GA 30912 USA
[3] Augusta Univ, Med Coll Georgia, Dept Urol, 1120 15th Str, Augusta, GA 30912 USA
[4] Augusta Univ, Med Coll Georgia, Dept Obstet & Gynecol, 1120 15th Str, Augusta, GA 30912 USA
[5] Augusta Univ, Coll Allied Hlth Sci, Dept Undergrad Hlth Profess, 1120 15th Str, Augusta, GA 30912 USA
关键词
chromophobe; oncocytoma; classification; machine learning; transcriptomic; gene signature; CELL CARCINOMA; EXPRESSION; DIAGNOSIS; PATTERNS; PACKAGE; S100A1;
D O I
10.3390/cells11020287
中图分类号
Q2 [细胞生物学];
学科分类号
071009 ; 090102 ;
摘要
Publicly available gene expression datasets were analyzed to develop a chromophobe and oncocytoma related gene signature (COGS) to distinguish chRCC from RO. The datasets GSE11151, GSE19982, GSE2109, GSE8271 and GSE11024 were combined into a discovery dataset. The transcriptomic differences were identified with unsupervised learning in the discovery dataset (97.8% accuracy) with density based UMAP (DBU). The top 30 genes were identified by univariate gene expression analysis and ROC analysis, to create a gene signature called COGS. COGS, combined with DBU, was able to differentiate chRCC from RO in the discovery dataset with an accuracy of 97.8%. The classification accuracy of COGS was validated in an independent meta-dataset consisting of TCGA-KICH and GSE12090, where COGS could differentiate chRCC from RO with 100% accuracy. The differentially expressed genes were involved in carbohydrate metabolism, transcriptomic regulation by TP53, beta-catenin-dependent Wnt signaling, and cytokine (IL-4 and IL-13) signaling highly active in cancer cells. Using multiple datasets and machine learning, we constructed and validated COGS as a tool that can differentiate chRCC from RO and complement histology in routine clinical practice to distinguish these two tumors.
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页数:13
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