1. First-in-human pilot study of snapshot multispectral endoscopy for early detection of Barrett's-related neoplasia
- Author
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Sophia Bano, Wladyslaw Januszewicz, Dan Stoyanov, Rebecca C. Fitzgerald, Dale J. Waterhouse, Massimiliano di Pietro, and Sarah E. Bohndiek
- Subjects
Paper ,Esophageal Neoplasms ,Computer science ,multispectral ,Multispectral image ,Biomedical Engineering ,Early detection ,Pilot Projects ,Imaging ,Biomaterials ,Cohort Studies ,Barrett Esophagus ,dysplasia ,Humans ,Computer vision ,endoscopy ,Research data ,esophagus ,Contextual image classification ,business.industry ,computer assisted diagnosis ,First in human ,Atomic and Molecular Physics, and Optics ,digestive system diseases ,Electronic, Optical and Magnetic Materials ,Tissue optics ,Snapshot (computer storage) ,Artificial intelligence ,Esophagoscopy ,business - Abstract
Significance: The early detection of dysplasia in patients with Barrett’s esophagus could improve outcomes by enabling curative intervention; however, dysplasia is often inconspicuous using conventional white-light endoscopy. Aim: We sought to determine whether multispectral imaging (MSI) could be applied in endoscopy to improve detection of dysplasia in the upper gastrointestinal (GI) tract. Approach: We used a commercial fiberscope to relay imaging data from within the upper GI tract to a snapshot MSI camera capable of collecting data from nine spectral bands. The system was deployed in a pilot clinical study of 20 patients (ClinicalTrials.gov NCT03388047) to capture 727 in vivo image cubes matched with gold-standard diagnosis from histopathology. We compared the performance of seven learning-based methods for data classification, including linear discriminant analysis, k-nearest neighbor classification, and a neural network. Results: Validation of our approach using a Macbeth color chart achieved an image-based classification accuracy of 96.5%. Although our patient cohort showed significant intra- and interpatient variance, we were able to resolve disease-specific contributions to the recorded MSI data. In classification, a combined principal component analysis and k-nearest-neighbor approach performed best, achieving accuracies of 95.8%, 90.7%, and 76.1%, respectively, for squamous, non-dysplastic Barrett’s esophagus and neoplasia based on majority decisions per-image. Conclusions: MSI shows promise for disease classification in Barrett’s esophagus and merits further investigation as a tool in high-definition “chip-on-tip” endoscopes.
- Published
- 2021