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. 2024 Feb 4;14(3):337. doi: 10.3390/diagnostics14030337

Table 5.

Performance of CoSev vs. other models.

Paper Brief Description Metrics
Multi-Dataset Papers
Jin et al. [25] External validation on MosMet; trained on other datasets. 93.25
Yousefzadeh et al. [26] External validation on MosMet; trained on other datasets. 95.4
Meng et al. [28] Trained on several datasets. Segmentation and classification data used. 94.9
Methodological Deviations
Dara et al. [29] Multiple federated learning models used; potential performance inflation. 94.00
Goncharov et al. [36] Trained on classification and segmentation data from MosMed dataset. 93.00
Mittal et al. [37] Uses upsampled 2d slices. 94.12
Kollias, Arsenos [39] CNN+RNN model on 2D slices. 89.87
State-Of-The-Art CNN Architectures
DenseNet169 [38] SOTA 2D CNN. 61.66
VGG16 [38] SOTA 2D CNN. 65.18
VGG19 [38] SOTA 2D CNN. 65.62
ResNet-50 [38] SOTA 2D CNN. 58.80
Inceptionv3 [38] SOTA 2D CNN. 64.48
Comparable 3D Networks
DenseNet3D121 [39] SOTA 3D CNN 79.95
ResNet3D [39] SOTA 3D CNN 79.95
MC3 18 [39] SOTA 3D CNN 80.24
CovidNet3D [40] DNAS on 3D CNN Architectures. 82.29
DecovNet [12] Custom 3D CNN w/Residual Blocks. 82.43
CoSev (Ours) Sequential data-driven training 81.57