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. 2020 Mar 11;21(Suppl 2):91. doi: 10.1186/s12859-020-3358-4

Table 2.

Best classification performance on BCDR database

Normal/Abnormal Benign/Malignant
Embedded Method AUC 98.16 (97.87−98.48)∗∗ 92.08 (91.61−92.58)
Accuracy 97.31 (96.92−97.31)∗∗ 88.46 (87.69−89.23)
Sensitivity 94.62 (93.85−94.62) 89.09 (87.27−90.91)
Specificity 100 (100−100)∗∗ 88.00 (86.67−89.33)
Filter Method AUC 98.67 (98.57−98.76) 92.13 (91.66−92.78)
Accuracy 96.92 (96.54−96.92) 87.69 (86.92−89.23)
Sensitivity 93.85 (93.85−94.62) 89.09 (87.27−90.91)
Specificity 99.23 (99.23−100) 87.33 (85.33−89.33)

The classification performance calculated in correspondence with the best result highlighted in the 100 rounds of 10-fold cross-validation for increasing the number of selected features, are summarized. We tested the significance of the diversity of performance measures obtained with the two different feature selection techniques on the same classification problem. Statistical significance is measured with the Wilcoxon-Mann-Whitney test: ** p-value <0.01 (Bonferroni correction)