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Interpretable detection of epiretinal membrane from optical coherence tomography with deep neural networks. | LitMetric

AI Article Synopsis

  • The study developed a method using deep neural networks (DNNs) to automatically detect and classify epiretinal membranes (ERMs) in OCT scans based on their size.
  • The dataset consisted of 11,061 OCT images, which were analyzed, graded, and divided into training, validation, and test sets, yielding high performance in detection accuracy across different ERM sizes, particularly challenging for small ERMs.
  • Saliency maps were created to visually indicate ERMs within the scans, even in the presence of other retinal features, suggesting potential applications for improved screening and decision-support systems in ophthalmology.

Article Abstract

This study aimed to automatically detect epiretinal membranes (ERM) in various OCT-scans of the central and paracentral macula region and classify them by size using deep-neural-networks (DNNs). To this end, 11,061 OCT-images were included and graded according to the presence of an ERM and its size (small 100-1000 µm, large > 1000 µm). The data set was divided into training, validation and test sets (75%, 10%, 15% of the data, respectively). An ensemble of DNNs was trained and saliency maps were generated using Guided-Backprob. OCT-scans were also transformed into a one-dimensional-value using t-SNE analysis. The DNNs' receiver-operating-characteristics on the test set showed a high performance for no-ERM, small-ERM and large-ERM cases (AUC: 0.99, 0.92, 0.99, respectively; 3-way accuracy: 89%), with small-ERMs being the most difficult ones to detect. t-SNE analysis sorted cases by size and, in particular, revealed increased classification uncertainty at the transitions between groups. Saliency maps reliably highlighted ERM, regardless of the presence of other OCT features (i.e. retinal-thickening, intraretinal pseudo-cysts, epiretinal-proliferation) and entities such as ERM-retinoschisis, macular-pseudohole and lamellar-macular-hole. This study showed therefore that DNNs can reliably detect and grade ERMs according to their size not only in the fovea but also in the paracentral region. This is also achieved in cases of hard-to-detect, small-ERMs. In addition, the generated saliency maps can be used to highlight small-ERMs that might otherwise be missed. The proposed model could be used for screening-programs or decision-support-systems in the future.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11009346PMC
http://dx.doi.org/10.1038/s41598-024-57798-1DOI Listing

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