Abstract
Volumetric laser endomicroscopy (VLE) is an advanced imaging modality used to detect Barrett's esophagus (BE) dysplasia. However, real-time interpretation of VLE scans is complex and time-consuming. Computer-aided detection (CAD) may help in the process of VLE image interpretation. Our aim was to train and validate a CAD algorithm for VLE-based detection of BE neoplasia. The multicenter, VLE PREDICT study, prospectively enrolled 47 patients with BE. In total, 229 nondysplastic BE and 89 neoplastic (high-grade dysplasia/esophageal adenocarcinoma) targets were laser marked under VLE guidance and subsequently underwent a biopsy for histologic diagnosis. Deep convolutional neural networks were used to construct a CAD algorithm for differentiation between nondysplastic and neoplastic BE tissue. The CAD algorithm was trained on a set consisting of the first 22 patients (134 nondysplastic BE and 38 neoplastic targets) and validated on a separate test set from patients 23 to 47 (95 nondysplastic BE and 51 neoplastic targets). The performance of the algorithm was benchmarked against the performance of 10 VLE experts. Using the training set to construct the algorithm resulted in an accuracy of 92%, sensitivity of 95%, and specificity of 92%. When performance was assessed on the test set, accuracy, sensitivity, and specificity were 85%, 91%, and 82%, respectively. The algorithm outperformed all 10 VLE experts, who demonstrated an overall accuracy of 77%, sensitivity of 70%, and specificity of 81%. We developed, validated, and benchmarked a VLE CAD algorithm for detection of BE neoplasia using prospectively collected and biopsy-correlated VLE targets. The algorithm detected neoplasia with high accuracy and outperformed 10 VLE experts. (The Netherlands National Trials Registry (NTR) number: NTR 6728.).
Highlights
Patients with Barrett’s esophagus (BE) are at risk of developing esophageal adenocarcinoma and require endoscopic surveillance for detection and treatment of early neoplasia, including high-grade dysplasia and intramucosal adenocarcinoma.[1,2] current BE surveillance practices are suboptimal because early neoplasia can be missed due to its subtle endoscopic appearance and sampling error of random biopsies.[3,4]Volumetric laser endomicroscopy (VLE) has the potential to identify and mark areas suspicious for early BE neoplasia not appreciated under high-definition white-light endoscopy
Patient and VLE characteristics VLE imaging was performed on 50 patients with BE; 3 patients were excluded because of technical failures, including balloon leakage after the balloon’s black registration line was hit by the laser marking system, and no clear visual endoscopic appearance of both laser marks assuring adequate correlation between VLE and histology
340 VLE targets were obtained from 47 patients with BE
Summary
Volumetric laser endomicroscopy (VLE) has the potential to identify and mark areas suspicious for early BE neoplasia not appreciated under high-definition white-light endoscopy. Volumetric laser endomicroscopy algorithm for Barrett’s neoplasia this balloon-based system makes a scan to circumferentially visualize surface and subsurface esophageal layers in microscopic resolution (Fig. 1). The addition of computer-aided detection (CAD) may overcome this limitation and may enhance the potential of this imaging technology to improve BE surveillance. Volumetric laser endomicroscopy (VLE) is an advanced imaging modality used to detect Barrett’s esophagus (BE) dysplasia. Real-time interpretation of VLE scans is complex and timeconsuming. Computer-aided detection (CAD) may help in the process of VLE image interpretation. Our aim was to train and validate a CAD algorithm for VLE-based detection of BE neoplasia
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