Diagnostic accuracy of feature prediction by deep learning based model as opposed to radiologist detected MRI findings

Predicted feature n = 70SensitivitySpecificityPPVNPVAccuracy
Hypointensity on T1WI86.36%093.44%081.43%
Isointensity on T2WI63.16%84.62%94.74%34.37%67.14%
Hyperintensity on FLAIR85.71%61.9%60%86.67%71.4%
Haemorrhage54.17%78.26%56.62%76.6%70%
Cyst79.07%59.26%75.56%64%71.4%
Necrosis52.94%83.02%50%84.62%75.71%
Enhancement heterogeneity81.36%72.73%94.12%42.11%80%
Enhancement quantificationMild50%92.86%82.35%73.58%75.71%
Moderate61.1%71.15%42.31%84.09%68.57%
Severe83.3%84.78%74.07%90.70%84.29%
Diffusion restriction53.33%96.77%94.12%68.16%75.4%

n: total number of abnormal cases which were picked by AS model and on which the mentioned features are predicted by AS model