2 research outputs found
sj-docx-1-opp-10.1177_10781552231171925 - Supplemental material for Serositis causing pericardial and pleural effusions after eight years of maintenance ibrutinib for Waldenstrom's macroglobulinemia
Supplemental material, sj-docx-1-opp-10.1177_10781552231171925 for Serositis causing pericardial and pleural effusions after eight years of maintenance ibrutinib for Waldenstrom's macroglobulinemia by Grace Johnson, Niharika Baviriseaty, Nicholas Massanet and Jeffrey Kooper in Journal of Oncology Pharmacy Practice</p
Reduction of Video Capsule Endoscopy Reading Times Using Deep Learning with Small Data
Video capsule endoscopy (VCE) is an innovation that has revolutionized care within the field of gastroenterology, but the time needed to read the studies generated has often been cited as an area for improvement. With the aid of artificial intelligence, various fields have been able to improve the efficiency of their core processes by reducing the burden of irrelevant stimuli on their human elements. In this study, we have created and trained a convolutional neural network (CNN) capable of significantly reducing capsule endoscopy reading times by eliminating normal parts of the video while retaining abnormal ones. Our model, a variation of ResNet50, was able to reduce VCE video length by 47% on average and capture abnormal segments on VCE with 100% accuracy on three VCE videos as confirmed by the reading physician. The ability to successfully pre-process VCE footage as we have demonstrated will greatly increase the practicality of VCE technology without the expense of hundreds of hours of physician annotated videos