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. 2016 Aug 29;32(17):i421–i429. doi: 10.1093/bioinformatics/btw430

Fig. 4.

Fig. 4.

Predictive power of pipelines that use RSEM with varying machine learning algorithms and filtering. AUC values were generated by running all input datasets (NSCLC, ALS, COPD) through nine pipelines that all performed transcript quantification with RSEM, but varied in feature type (gene, isoform count, isoform fraction), use of filtering and machine learning algorithm (Random Forest, Elastic Net, SPLS). Predictive values are shown grouped by machine learning algorithm and whether filtering was applied