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. 2021 Feb 25;16(2):e0245579. doi: 10.1371/journal.pone.0245579

Table 5. Performance evaluation of DL models for dyslexia neural-biomarker classification without/with smoothen and normalized dataset (mean ± SD after 10 repeated 10-fold CV).

DL Model Iteration (Epoch) Accuracy (%) Sensitivity (%) Specificity (%) F-Score (%) Feature extraction time (mins)
Inception-V3 Without smoothing and MHN 402 86.23±1.99 88.91±3.78 85.68±3.20 87.27±3.47 41.66
With smoothing and MHN 380 89.08±1.22 90.22±2.61 92.86±2.14 91.52±2.35 33.45*
Cascaded CNN Without smoothing and MHN 498 80.91±2.31 91.74±1.88 93.11±3.04 92.42±2.23 44.02
With smoothing and MHN 550 91.21±0.89 93.11±2.64 92.95±2.46 93.03±2.55 31.78*
ResNet50 Without smoothing and MHN 369 93.33±1.02 95.11±2.87 91.42±0.83 93.23±1.29 23.67
With smoothing and MHN 450 94.67±0.69* 95.79±2.18* 94.91±2.16* 95.35±2.17* 12.65*

*Statistically significantly larger than the other two (p-value<0.05); 95% CI level. MHN-modified histogram normalization; CNN-convolutional neural network.