Chang Qi, Bascom Rebecca, Toth Jennifer, Ahmad Danish, Higgins William E
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:1556-1559. doi: 10.1109/EMBC44109.2020.9176007.
Because of the significance of bronchial lesions as indicators of early lung cancer and squamous cell carcinoma, a critical need exists for early detection of bronchial lesions. Autofluorescence bronchoscopy (AFB) is a primary modality used for bronchial lesion detection, as it shows high sensitivity to suspicious lesions. The physician, however, must interactively browse a long video stream to locate lesions, making the search exceedingly tedious and error prone. Unfortunately, limited research has explored the use of automated AFB video analysis for efficient lesion detection. We propose a robust automatic AFB analysis approach that distinguishes informative and uninformative AFB video frames in a video. In addition, for the informative frames, we determine the frames containing potential lesions and delineate candidate lesion regions. Our approach draws upon a combination of computer-based image analysis, machine learning, and deep learning. Thus, the analysis of an AFB video stream becomes more tractable. 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.
由于支气管病变作为早期肺癌和鳞状细胞癌指标的重要性,早期检测支气管病变至关重要。自体荧光支气管镜检查(AFB)是用于支气管病变检测的主要方式,因为它对可疑病变显示出高敏感性。然而,医生必须交互式浏览长视频流来定位病变,这使得搜索极其繁琐且容易出错。不幸的是,有限的研究探索了使用自动AFB视频分析进行高效病变检测。我们提出了一种强大的自动AFB分析方法,该方法可区分视频中信息丰富和信息不丰富的AFB视频帧。此外,对于信息丰富的帧,我们确定包含潜在病变的帧并勾勒出候选病变区域。我们的方法借鉴了基于计算机的图像分析、机器学习和深度学习的组合。因此,AFB视频流的分析变得更易于处理。使用患者AFB视频,我们的方法将99.5%/90.2%的测试帧正确标记为信息丰富/信息不丰富,而ResNet的这一比例为99.2%/47.6%。此外,≥97%的病变帧被正确识别,假阳性和假阴性率≤3%。临床相关性——该方法使基于AFB的支气管病变分析更高效,从而有助于推进更好地早期检测肺癌的目标。