Self-supervised learning methods for label-efficient dental caries classification
dc.contributor.author | Taleb, Aiham | pt_BR |
dc.contributor.author | Rohrer, Csaba | pt_BR |
dc.contributor.author | Bergner, Benjamin Sebastian | pt_BR |
dc.contributor.author | De Leon, Guilherme | pt_BR |
dc.contributor.author | Rodrigues, Jonas de Almeida | pt_BR |
dc.contributor.author | Schwendicke, Falk | pt_BR |
dc.contributor.author | Lippert, Christoph | pt_BR |
dc.contributor.author | Krois, Joachim | pt_BR |
dc.date.accessioned | 2022-07-15T04:49:39Z | pt_BR |
dc.date.issued | 2022 | pt_BR |
dc.identifier.issn | 2075-4418 | pt_BR |
dc.identifier.uri | http://hdl.handle.net/10183/242600 | pt_BR |
dc.description.abstract | High annotation costs are a substantial bottleneck in applying deep learning architectures to clinically relevant use cases, substantiating the need for algorithms to learn from unlabeled data. In this work, we propose employing self-supervised methods. To that end, we trained with three selfsupervised algorithms on a large corpus of unlabeled dental images, which contained 38K bitewing radiographs (BWRs). We then applied the learned neural network representations on tooth-level dental caries classification, for which we utilized labels extracted from electronic health records (EHRs). Finally, a holdout test-set was established, which consisted of 343 BWRs and was annotated by three dental professionals and approved by a senior dentist. This test-set was used to evaluate the fine-tuned caries classification models. Our experimental results demonstrate the obtained gains by pretraining models using self-supervised algorithms. These include improved caries classification performance (6 p.p. increase in sensitivity) and, most importantly, improved label-efficiency. In other words, the resulting models can be fine-tuned using few labels (annotations). Our results show that using as few as 18 annotations can produce ě45% sensitivity, which is comparable to human-level diagnostic performance. This study shows that self-supervision can provide gains in medical image analysis, particularly when obtaining labels is costly and expensive. | en |
dc.format.mimetype | application/pdf | pt_BR |
dc.language.iso | eng | pt_BR |
dc.relation.ispartof | Diagnostics. Basel. Vol. 12, no. 5 (2022), 1237, 15 p. | pt_BR |
dc.rights | Open Access | en |
dc.subject | Unsupervised methods | en |
dc.subject | Cárie dentária | pt_BR |
dc.subject | Self-supervised learning | en |
dc.subject | Representation learning | en |
dc.subject | Dental caries classification | en |
dc.subject | Data driven approaches | en |
dc.subject | Annotation efficient deep learning | en |
dc.title | Self-supervised learning methods for label-efficient dental caries classification | pt_BR |
dc.type | Artigo de periódico | pt_BR |
dc.identifier.nrb | 001144806 | pt_BR |
dc.type.origin | Estrangeiro | pt_BR |
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