Self-Supervised Learning for Endoscopic Video Analysis

Roy Hirsch, Mathilde Caron, Regev Cohen, Amir Livne, Ron Shapiro, Tomer Golany, Roman Goldenberg, Daniel Freedman, E. Rivlin
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Abstract

Self-supervised learning (SSL) has led to important breakthroughs in computer vision by allowing learning from large amounts of unlabeled data. As such, it might have a pivotal role to play in biomedicine where annotating data requires a highly specialized expertise. Yet, there are many healthcare domains for which SSL has not been extensively explored. One such domain is endoscopy, minimally invasive procedures which are commonly used to detect and treat infections, chronic inflammatory diseases or cancer. In this work, we study the use of a leading SSL framework, namely Masked Siamese Networks (MSNs), for endoscopic video analysis such as colonoscopy and laparoscopy. To fully exploit the power of SSL, we create sizable unlabeled endoscopic video datasets for training MSNs. These strong image representations serve as a foundation for secondary training with limited annotated datasets, resulting in state-of-the-art performance in endoscopic benchmarks like surgical phase recognition during laparoscopy and colonoscopic polyp characterization. Additionally, we achieve a 50% reduction in annotated data size without sacrificing performance. Thus, our work provides evidence that SSL can dramatically reduce the need of annotated data in endoscopy.
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内窥镜视频分析的自监督学习
自我监督学习(SSL)通过允许从大量未标记数据中学习,导致了计算机视觉的重要突破。因此,它可能在生物医学中发挥关键作用,因为注释数据需要高度专业化的专业知识。然而,许多医疗保健领域还没有对SSL进行广泛的探索。其中一个领域是内窥镜检查,这是一种微创手术,通常用于检测和治疗感染、慢性炎症性疾病或癌症。在这项工作中,我们研究了一种领先的SSL框架,即屏蔽暹罗网络(msn),用于内窥镜视频分析,如结肠镜检查和腹腔镜检查。为了充分利用SSL的力量,我们创建了相当大的未标记内窥镜视频数据集来训练msn。这些强大的图像表示为有限的注释数据集的二次训练奠定了基础,从而在腹腔镜和结肠镜息肉表征等内窥镜基准中获得了最先进的性能。此外,我们在不牺牲性能的情况下实现了注释数据大小减少50%。因此,我们的工作提供了SSL可以显著减少内窥镜检查中对注释数据的需求的证据。
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