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Reduce False-Positive Rate by Active Learning for Automatic Polyp Detection in Colonoscopy Videos

Zhe Guo, Ruiyao Zhang, Qin Li, Xinkai Liu, Daiki Nemoto, Kazutomo Togashi, S. M. Isuru Niroshana, Yuchen Shi, Xin Zhu

202028 citationsDOI

Abstract

Automatic polyp detection is reported to have a high false-positive rate (FPR) because of various polyp-like structures and artifacts in complex colon environment. An efficient polyp's computer-aided detection (CADe) polyp detection system should have a high sensitivity and a low FPR (high specificity). Convolutional neural networks have been implemented in colonoscopy-based automatic polyp detection and achieved high performance in improving polyp detection rate. However, complex colon environments caused excessive false positives are going to prevent the clinical implementation of CADe systems. To reduce false positive rate, we proposed an automatic polyp detection algorithm, combined with YOLOv3 architecture and active learning. This algorithm was trained with colonoscopy videos/images from 283 subjects. Through testing with 100 short and 9 full colonoscopy videos, the proposed algorithm shown FPR of 2.8 % and 1.5 %, respectively, similar sensitivities of expert endoscopists.

Topics & Concepts

False positive paradoxArtificial intelligenceFalse positive rateColonoscopyComputer scienceConvolutional neural networkPattern recognition (psychology)True positive rateSensitivity (control systems)Computer visionFalse positives and false negativesColorectal PolypMedicineColorectal cancerInternal medicineEngineeringCancerElectronic engineeringColorectal Cancer Screening and DetectionGastrointestinal Bleeding Diagnosis and TreatmentImage Retrieval and Classification Techniques
Reduce False-Positive Rate by Active Learning for Automatic Polyp Detection in Colonoscopy Videos | Litcius