Deep learning-based detection system for multiclass lesions on chest radiographs: comparison with observer readings.
Sohee ParkSang Min LeeKyung Hee LeeKyu-Hwan JungWoong BaeJooae ChoeJoon Beom SeoPublished in: European radiology (2019)
• The DLD system was feasible for detection with pattern classification of multiclass lesions on chest radiograph. • The DLD system had high performance of image-wise classification as normal or abnormal chest radiographs (AUROC, 0.985) and showed especially high specificity (99.0%). • In lesion-wise detection of multiclass lesions, the DLD system outperformed all 9 observers (FOM, 0.962 vs. 0.886; p < 0.001).