Research Paper Volume 16, Issue 1 pp 153—168

Identification of aging-related genes in diagnosing osteoarthritis via integrating bioinformatics analysis and machine learning

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Figure 6. Machine learning screens biomarkers for diagnosing OA. (A, B) The LASSO regression revealed that the number of genes corresponding to the lowest point of the curve (n = 6) is best suited for the diagnosis of OA. (C, D) Random Forest algorithm showed errors in OA; each gene is ranked according to its importance score. (E) The Venn diagram depicts the intersection genes of LASSO and RF results.