Augmented Bladder Tumor Detection Using Deep Learning.

Eur Urol

Department of Urology, Stanford University School of Medicine, Stanford, CA, USA; Veterans Affairs Palo Alto Health Care System, Palo Alto, CA, USA. Electronic address:

Published: December 2019

AI Article Synopsis

  • Adequate bladder tumor detection is crucial during transurethral resection (TURBT) to minimize cancer recurrence, but standard white light cystoscopy misses about 20% of tumors.
  • Researchers developed a deep learning algorithm called CystoNet to enhance tumor detection during cystoscopy by using video frames of confirmed bladder cancers for training and testing the model.
  • CystoNet demonstrated impressive results in a validation study, showing 90.9% sensitivity and 98.6% specificity, indicating it could significantly improve bladder cancer detection and surgical outcomes.

Article Abstract

Adequate tumor detection is critical in complete transurethral resection of bladder tumor (TURBT) to reduce cancer recurrence, but up to 20% of bladder tumors are missed by standard white light cystoscopy. Deep learning augmented cystoscopy may improve tumor localization, intraoperative navigation, and surgical resection of bladder cancer. We aimed to develop a deep learning algorithm for augmented cystoscopic detection of bladder cancer. Patients undergoing cystoscopy/TURBT were recruited and white light videos were recorded. Video frames containing histologically confirmed papillary urothelial carcinoma were selected and manually annotated. We constructed CystoNet, an image analysis platform based on convolutional neural networks, for automated bladder tumor detection using a development dataset of 95 patients for algorithm training and five patients for testing. Diagnostic performance of CystoNet was validated prospectively in an additional 54 patients. In the validation dataset, per-frame sensitivity and specificity were 90.9% (95% confidence interval [CI], 90.3-91.6%) and 98.6% (95% CI, 98.5-98.8%), respectively. Per-tumor sensitivity was 90.9% (95% CI, 90.3-91.6%). CystoNet detected 39 of 41 papillary and three of three flat bladder cancers. With high sensitivity and specificity, CystoNet may improve the diagnostic yield of cystoscopy and efficacy of TURBT. PATIENT SUMMARY: Conventional cystoscopy has recognized shortcomings in bladder cancer detection, with implications for recurrence. Cystoscopy augmented with artificial intelligence may improve cancer detection and resection.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6889816PMC
http://dx.doi.org/10.1016/j.eururo.2019.08.032DOI Listing

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