Impact of Noisy Labels on Dental Deep Learning-Calculus Detection on Bitewing Radiographs

被引:5
作者
Buettner, Martha [1 ,2 ]
Schneider, Lisa [1 ,2 ]
Krasowski, Aleksander [1 ]
Krois, Joachim [2 ]
Feldberg, Ben [1 ]
Schwendicke, Falk [1 ,2 ]
机构
[1] Charite Univ med Berlin, Dept Oral Diagnost Digital Hlth & Hlth Serv Res, D-14197 Berlin, Germany
[2] ITU WHO Focus Grp AI4Health Top Grp Dent Diagnost, CH-1211 Geneva 20, Switzerland
关键词
artificial intelligence; machine learning; deep learning; computer vision; convolutional neural networks; calculus; digital imaging; radiology;
D O I
10.3390/jcm12093058
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Supervised deep learning requires labelled data. On medical images, data is often labelled inconsistently (e.g., too large) with varying accuracies. We aimed to assess the impact of such label noise on dental calculus detection on bitewing radiographs. On 2584 bitewings calculus was accurately labeled using bounding boxes (BBs) and artificially increased and decreased stepwise, resulting in 30 consistently and 9 inconsistently noisy datasets. An object detection network (YOLOv5) was trained on each dataset and evaluated on noisy and accurate test data. Training on accurately labeled data yielded an mAP50: 0.77 (SD: 0.01). When trained on consistently too small BBs model performance significantly decreased on accurate and noisy test data. Model performance trained on consistently too large BBs decreased immediately on accurate test data (e.g., 200% BBs: mAP50: 0.24; SD: 0.05; p < 0.05), but only after drastically increasing BBs on noisy test data (e.g., 70,000%: mAP50: 0.75; SD: 0.01; p < 0.05). Models trained on inconsistent BB sizes showed a significant decrease of performance when deviating 20% or more from the original when tested on noisy data (mAP50: 0.74; SD: 0.02; p < 0.05), or 30% or more when tested on accurate data (mAP50: 0.76; SD: 0.01; p < 0.05). In conclusion, accurate predictions need accurate labeled data in the training process. Testing on noisy data may disguise the effects of noisy training data. Researchers should be aware of the relevance of accurately annotated data, especially when testing model performances.
引用
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页数:10
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