| Literature DB >> 36161827 |
Josef Huemer1,2, Martin Kronschläger3, Manuel Ruiss3, Dawn Sim1, Pearse A Keane1,2,4, Oliver Findl3, Siegfried K Wagner5,2,4.
Abstract
OBJECTIVE: To train and validate a code-free deep learning system (CFDLS) on classifying high-resolution digital retroillumination images of posterior capsule opacification (PCO) and to discriminate between clinically significant and non-significant PCOs. METHODS AND ANALYSIS: For this retrospective registry study, three expert observers graded two independent datasets of 279 images three separate times with no PCO to severe PCO, providing binary labels for clinical significance. The CFDLS was trained and internally validated using 179 images of a training dataset and externally validated with 100 images. Model development was through Google Cloud AutoML Vision. Intraobserver and interobserver variabilities were assessed using Fleiss kappa (κ) coefficients and model performance through sensitivity, specificity and area under the curve (AUC).Entities:
Keywords: diagnostic tests/investigation; imaging; lens and zonules
Mesh:
Year: 2022 PMID: 36161827 PMCID: PMC9174773 DOI: 10.1136/bmjophth-2022-000992
Source DB: PubMed Journal: BMJ Open Ophthalmol ISSN: 2397-3269
Figure 1Examples of non-significant (above) and significant (below) posterior capsule opacification with central 3 mm region of interest highlighted on the left side only available for the human expert graders.
Distribution of classes in the development and external validation datasets
| Development | External | |||
| Train | Validation | Test | Test | |
| Non-significant | 67 | 9 | 8 | 37 |
| Significant | 76 | 10 | 9 | 63 |
| Total | 143 | 19 | 17 | 100 |
Fleiss κ between observers and majority vote
| Observer 1 | Observer 2 | Observer 3 | Majority vote | |
| Observer 1 | X | |||
| Observer 2 | 0.85 (0.79 to 0.90) | X | ||
| Observer 3 | 0.90 (0.85 to 0.94) | 0.88 (0.82 to 0.93) | X | |
| Majority vote | 0.93 (0.87 to 0.97) | 0.93 (0.88 to 0.96) | 0.96 (0.92 to 0.99) | X |
Figure 2Fourfold confusion matrices for the internal validation and external validation sets.
Figure 3Receiver operating characteristic curve showing model performance on the internal and external validation test sets across different thresholds. The boundary of no discrimination is shown in a dotted red line. AUC, area under the curve.