Generalizability of deep learning models for dental image analysis

We assessed the generalizability of deep learning models and how to improve it. Our exemplary use-case was the detection of apical lesions on panoramic radiographs. We employed two datasets of panoramic radiographs from two centers, one in Germany (Charité, Berlin, n = 650) and one in India (KGMU, L...

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Veröffentlicht in:Scientific reports 2021-03, Vol.11 (1), p.6102-6102, Article 6102
Hauptverfasser: Krois, Joachim, Garcia Cantu, Anselmo, Chaurasia, Akhilanand, Patil, Ranjitkumar, Chaudhari, Prabhat Kumar, Gaudin, Robert, Gehrung, Sascha, Schwendicke, Falk
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Sprache:eng
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Zusammenfassung:We assessed the generalizability of deep learning models and how to improve it. Our exemplary use-case was the detection of apical lesions on panoramic radiographs. We employed two datasets of panoramic radiographs from two centers, one in Germany (Charité, Berlin, n = 650) and one in India (KGMU, Lucknow, n = 650): First, U-Net type models were trained on images from Charité (n = 500) and assessed on test sets from Charité and KGMU (each n = 150). Second, the relevance of image characteristics was explored using pixel-value transformations, aligning the image characteristics in the datasets. Third, cross-center training effects on generalizability were evaluated by stepwise replacing Charite with KGMU images. Last, we assessed the impact of the dental status (presence of root-canal fillings or restorations). Models trained only on Charité images showed a (mean ± SD) F1-score of 54.1 ± 0.8% on Charité and 32.7 ± 0.8% on KGMU data ( p  
ISSN:2045-2322
2045-2322
DOI:10.1038/s41598-021-85454-5