Accuracy of generative deep learning model for macular anatomy prediction from optical coherence tomography images in macular hole surgery.
Han Jo KwonJun HeoSu Hwan ParkSung Who ParkIk Soo ByonPublished in: Scientific reports (2024)
This study aims to propose a generative deep learning model (GDLM) based on a variational autoencoder that predicts macular optical coherence tomography (OCT) images following full-thickness macular hole (FTMH) surgery and evaluate its clinical accuracy. Preoperative and 6-month postoperative swept-source OCT data were collected from 150 patients with successfully closed FTMH using 6 × 6 mm 2 macular volume scan datasets. Randomly selected and augmented 120,000 training and 5000 validation pairs of OCT images were used to train the GDLM. We assessed the accuracy and F1 score of concordance for neurosensory retinal areas, performed Bland-Altman analysis of foveolar height (FH) and mean foveal thickness (MFT), and predicted postoperative external limiting membrane (ELM) and ellipsoid zone (EZ) restoration accuracy between artificial intelligence (AI)-OCT and ground truth (GT)-OCT images. Accuracy and F1 scores were 94.7% and 0.891, respectively. Average FH (228.2 vs. 233.4 μm, P = 0.587) and MFT (271.4 vs. 273.3 μm, P = 0.819) were similar between AI- and GT-OCT images, within 30.0% differences of 95% limits of agreement. ELM and EZ recovery prediction accuracy was 88.0% and 92.0%, respectively. The proposed GDLM accurately predicted macular OCT images following FTMH surgery, aiding patient and surgeon understanding of postoperative macular features.
Keyphrases
- optical coherence tomography
- deep learning
- artificial intelligence
- diabetic retinopathy
- big data
- minimally invasive
- optic nerve
- patients undergoing
- convolutional neural network
- machine learning
- coronary artery bypass
- body mass index
- surgical site infection
- case report
- physical activity
- percutaneous coronary intervention
- mass spectrometry
- acute coronary syndrome
- magnetic resonance