抄録
Eye checkups have become increasingly important to maintain good vision and quality of life. As the population requiring eye checkups increases, so does the clinical work burden of clinicians. An automatic screening algorithm to reduce the clinicians’ workload is necessary. Machine learning (ML) has recently become one of the chief techniques for automated image recognition and is a helpful tool for identifying ocular diseases. However, the accuracy of ML models is lower in a clinical setting than in the laboratory. The performance of ML models depends on the training dataset. Eye checkups often prioritize speed and minimize image processing. Data distribution differs from the training dataset and, consequently, decreases prediction performance. The study aim was to investigate an ML model to screen for retinal diseases from low-quality optical coherence tomography (OCT) images captured during actual eye chechups to prevent a dataset shift. The ensemble model with convolutional neural networks (CNNs) and random forest models showed high screening performance in the single-shot OCT images captured during the actual eye checkups. Our study indicates the strong potential of the ensemble model combining the CNN and random forest models in accurately predicting abnormalities during eye checkups.
本文言語 | 英語 |
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論文番号 | 6872 |
ジャーナル | Applied Sciences (Switzerland) |
巻 | 12 |
号 | 14 |
DOI | |
出版ステータス | 出版済み - 07-2022 |
外部発表 | はい |
All Science Journal Classification (ASJC) codes
- 材料科学一般
- 器械工学
- 工学一般
- プロセス化学およびプロセス工学
- コンピュータ サイエンスの応用
- 流体および伝熱