Application of a validated prostate MRI deep learning system to independent same-vendor multi-institutional data: demonstration of transferability.
Nils NetzerCarolin EithOliver BethgeThomas HielscherConstantin SchwabAlbrecht StenzingerRegula GnirsHeinz-Peter SchlemmerKlaus H Maier-HeinLars SchimmöllerDavid BonekampPublished in: European radiology (2023)
• A previously bi-institutionally validated fully automatic deep learning system maintained acceptable exam-level diagnostic performance in two independent external data sets. • Lesion detection performance and segmentation congruence was similar on the institutional and an external data set, as measured by the weighted alternative FROC AUC and Dice coefficient. • Although the system generalized to two external institutions without re-training, achieving expected sensitivity and specificity levels using the deep learning system requires probability thresholds to be adjusted, underlining the importance of institution-specific calibration and quality control.