Lung cancer tends to be detected at an advanced stage, resulting in a high patient mortality rate. Thus, much recent research has focused on early disease detection Bronchoscopy is the procedure of choice for an effective noninvasive way of detecting early manifestations (bronchial lesions) of lung cancer. In particular, autofluorescence bronchoscopy (AFB) discriminates the autofluorescence properties of normal (green) and diseased tissue (reddish brown) with different colors. Because recent studies show AFB's high sensitivity in searching lesions, it has become a potentially pivotal method in bronchoscopic airway exams. Unfortunately, manual inspection of AFB video is extremely tedious and error prone, while limited effort has been expended toward potentially more robust automatic AFB lesion analysis. We propose a real-time (processing throughput of 27 frames/sec) deep-learning architecture dubbed ESFPNet for accurate segmentation and robust detection of bronchial lesions in AFB video streams. The architecture features an encoder structure that exploits pretrained Mix Transformer (MiT) encoders and an efficient stage-wise feature pyramid (ESFP) decoder structure. Segmentation results from the AFB airway-exam videos of 20 lung cancer patients indicate that our approach gives a mean Dice index = 0.756 and an average Intersection of Union = 0.624, results that are superior to those generated by other recent architectures. Thus, ESFPNet gives the physician a potential tool for confident real-time lesion segmentation and detection during a live bronchoscopic airway exam. Moreover, our model shows promising potential applicability to other domains, as evidenced by its state-of-the-art (SOTA) performance on the CVC-ClinicDB, ETIS-LaribPolypDB datasets, and superior performance on the Kvasir, CVC-ColonDB datasets.
翻译:肺癌往往在高级阶段被检测,导致患者死亡率高。因此,最近许多研究都侧重于早期疾病检测。因此,最近许多研究都侧重于早期疾病检测。 布朗肖氏检查是有效、非侵入性地检测肺癌早期表现(支气管损伤)的一种选择程序。 特别是,自动显性支气管检查(AFB)会以不同颜色区分正常(绿色)和疾病组织(红褐色)的自流性能特性。 由于最近的研究表明AFB在搜索病变中的敏感度很高,它已成为支气管对空气路测试的一种潜在关键方法。 不幸的是,对AFB视频的手动检查是极为乏味且容易出错的,而对AFB的自动显露性功能。 我们的实时(处理量为27个框架/sec)深层结构将ESFPNet变成准确分解和强力检测AFB的硬质腐蚀性能。 这种结构将利用Mix变压(MIC)前的硬质变压(MIC) 精度结构、EST级变压变压的直影机机机机机显示我们20级机的直径的直径机机机机机的直径分析结果。