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[Preprint]. 2020 May 8:2020.05.04.20090803. [Version 1] doi: 10.1101/2020.05.04.20090803

Table 3.

Performance achieved by the custom WRN and pretrained CNNs in classifying the pediatric CXR dataset into bacterial and viral categories. Here Acc.: Accuracy, Sens.: Sensitivity, Prec.: Precision, F: F-score, and MCC: Matthews Correlation Coefficient). Here bold values indicate superior performance.

Models Acc. AUC Sens. Spec. Prec. F MCC
Custom WRN 0.8974 0.9534 0.9381 0.8311 0.9008 0.9191 0.7806
VGG-16 0.9308 0.9565 0.9711 0.8649 0.9216 0.9457 0.8527
Inception-V3 0.9103 0.937 0.9587 0.8311 0.9028 0.9299 0.8085
Xception 0.9282 0.954 0.9546 0.8852 0.9315 0.9429 0.8469
DenseNet-121 0.9026 0.9408 0.967 0.7973 0.8864 0.925 0.7931
NASNet-mobile 0.9282 0.9479 0.9753 0.8514 0.9148 0.944 0.8477