Abstract

.Spectral-domain optical coherence tomography (SDOCT) is a noncontact and noninvasive imaging technology offering three-dimensional (3-D), objective, and quantitative assessment of optic nerve head (ONH) in human eyes in vivo. The image quality of SDOCT scans is crucial for an accurate and reliable interpretation of ONH structure and for further detection of diseases. Traditionally, signal strength (SS) is used as an index to include or exclude SDOCT scans for further analysis. However, it is insufficient to assess other image quality issues such as off-centration, out of registration, missing data, motion artifacts, mirror artifacts, or blurriness, which require specialized knowledge in SDOCT for such assessment. We proposed a deep learning system (DLS) as an automated tool for filtering out ungradable SDOCT volumes. In total, 5599 SDOCT ONH volumes were collected for training (80%) and primary validation (20%). Other 711 and 298 volumes from two independent datasets, respectively, were used for external validation. An SDOCT volume was labeled as ungradable when SS was or when any artifacts influenced the measurement circle or of the peripheral area. Artifacts included (1) off-centration, (2) out of registration, (3) missing signal, (4) motion artifacts, (5) mirror artifacts, and (6) blurriness. An SDOCT volume was labeled as gradable when SS was , and there was an absence of any artifacts or artifacts only influenced peripheral area but not the retinal nerve fiber layer calculation circle. We developed and validated a 3-D DLS based on squeeze-and-excitation ResNeXt blocks and experimented with different training strategies. The area under the receiver operating characteristic curve (AUC), sensitivity, specificity, and accuracy were calculated to evaluate the performance. Heatmaps were generated by gradient-weighted class activation map. Our findings show that the presented DLS achieved a good performance in both primary and external validations, which could potentially increase the efficiency and accuracy of SDOCT volumetric scans quality control by filtering out ungradable ones automatically.

Highlights

  • Optical coherence tomography (OCT) is a noncontact and noninvasive imaging technology offering objective and quantitative assessment of human eye structures, including the cornea, macula, and optic nerve head (ONH) in vivo

  • Two nonoverlapping datasets collected from Prince of Wales Hospital (PWH) and Tuen Mun Eye Center (TMEC) in Hong Kong were used as two external validation datasets, including 711 spectral-domain optical coherence tomography (SDOCT) scans from 509 eyes and 298 scans from 296 eyes, respectively. (Table 1)

  • The retinal nerve fiber layer (RNFL) calculation circle was a circle of 3.46 mm in diameter evenly around its center based on the location of the optic disc, and it was automatically placed by Cirrus SDOCT machine (Cirrus User Manual)

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Summary

Introduction

Optical coherence tomography (OCT) is a noncontact and noninvasive imaging technology offering objective and quantitative assessment of human eye structures, including the cornea, macula, and optic nerve head (ONH) in vivo. The introduction of spectral-domain optical coherence tomography (SDOCT) in recent years has improved scanning speed and axial resolution, enabling high-resolution, three-dimensional (3-D) volumetric imaging that has made a great contribution to the wide application in clinics.[1] poor scan quality due to patients’ poor cooperation, operators’ skills, or device-dependent factors (e.g., inaccurate optic disc margin delineation) can affect the metrics generated from the SDOCT.[2,3] insufficient image quality potentially leads to inaccurate measurements of retinal nerve fiber layer (RNFL) thickness, which is an important metric for detection of optic neuropathy such as glaucoma, a leading cause of irreversible blindness.[4] Other morphologies from ONH, such as neuroretinal rim and lamina cribrosa,[5] are used to assess glaucoma, which require sufficient quality of SDOCT volumetric data for such assessment. It is necessary to filter out ungradable scans and reoperate on patients with subpar images before any clinical assessment

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