下面这篇文章中巧妙地利用和
对比,最终选择随机森林树建立诊断模型+Nomogram,还是有一定说服力的。
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类似的文章有:联合运用LASSO+RF+SVM将lncRNA进行降维。
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参考链接:
1.思路清奇SCI21.m6A+哮喘.4.6分
2.Identification of diagnostic long non‑coding RNA biomarkers in patients with hepatocellular carcinoma
3.Significance of RNA N6-Methyladenosine Regulators in the Diagnosis and Subtype Classification of Childhood Asthma Using the Gene Expression Omnibus Database
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