1 d - Translate

https://www.selleckchem.com/products/cpi-613.html
Using patient AFB video, 99.5%/90.2% of test frames were correctly labeled as informative/uninformative by our method versus 99.2%/47.6% by ResNet. In addition, ≥97% of lesion frames were correctly identified, with false positive and false negative rates ≤3%.Clinical relevance-The method makes AFB-based bronchial lesion analysis more efficient, thereby helping to advance the goal of better early lung cancer detection.The introduction of deep learning techniques for the computer-aided detection scheme has shed a light for real incorporat