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. 2024 May 3;20:923–936. doi: 10.2147/NDT.S449135

Table 2.

Performance of SVM-Radial and PAM Models in Independent Dataset Class Prediction Analysis

SVM-radial
Features Accuracy Sensitivity Specificity Precision AUROC
Top5 54.44 (0.06) 66.05 (0.12) 37.24 (0.13) 60.87 (0.04) 53.98 (0.05)
Top25 60.56 (0.04) 71.4 (0.06) 44.48 (0.15) 66.12 (0.05) 60.60 (0.06)
Top100 67.08 (0.04) 75.35 (0.05) 54.83 (0.1) 71.50 (0.04) 73.34 (0.05)
Top400 67.64 (0.04) 76.28 (0.05) 54.83 (0.09) 71.69 (0.04) 75.26 (0.04)
Top1600 71.39 (0.03) 75.81 (0.05) 64.83 (0.06) 76.27 (0.03) 75.27 (0.02)
All genes 70.83 (0.03) 66.98 (0.08) 76.55 (0.06) 81.22 (0.03) 82.57 (0.02)
PAM
Top5 61.53 (0.05) 69.07 (0.09) 50.35 (0.10) 67.44 (0.04) 63.56 (0.04)
Top25 65.56 (0.04) 64.42 (0.07) 67.24 (0.04) 74.36 (0.03) 70.76 (0.03)
Top100 64.45 (0.03) 63.26 (0.03) 66.21 (0.07) 73.67 (0.04) 74.91 (0.02)
Top400 67.09 (0.01) 63.72 (0.02) 72.07 (0.03) 77.20 (0.02) 75.40 (0.02)
Top1600 67.22 (0.02) 63.26 (0.03) 73.10 (0.04) 77.78 (0.02) 74.89 (0.01)
All genes 67.09 (0.02) 62.56 (0.03) 73.79 (0.02) 77.98 (0.02) 73.92 (0.01)

Notes: Support vector machine (SVM)-radial and prediction analysis of microarrays (PAM) models were developed using different number of top differentially expressed genes (DEGs). These models were evaluated for their performance based on their ability to predict samples of GSE27383 as independent dataset. The models were compared using RMA followed by Tukey’s post hoc test with Greenhouse-Geisser and Huynh-Feldt corrections for each parameter separately. SVM-radial models performed better with higher number of feature DEGs. The values mentioned in the tables are in percentage and the standard deviation for the ten iterations in bracket.