An Efficient Anchor-Free Universal Lesion Detection in Ct-Scans

Manu Sheoran, Meghal Dani, Monika Sharma, L. Vig
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引用次数: 5

Abstract

Existing universal lesion detection (ULD) methods utilize compute-intensive anchor-based architectures which rely on predefined anchor boxes, resulting in unsatisfactory detection performance, especially in small and mid-sized lesions. Further, these default fixed anchor-sizes and ratios do not generalize well to different datasets. Therefore, we propose a robust one-stage anchor-free lesion detection network that can perform well across varying lesions sizes by exploiting the fact that the box predictions can be sorted for relevance based on their center rather than their overlap with the object. Furthermore, we demonstrate that the ULD can be improved by explicitly providing it the domain-specific information in the form of multi-intensity images generated using multiple HU windows, followed by self-attention based feature-fusion and backbone initialization using weights learned via self-supervision over CT-scans. We obtain comparable results to the state-of-the-art methods, achieving an overall sensitivity of 86.05% on the DeepLesion dataset, which comprises of approximately 32K CT-scans with lesions annotated across various body organs.
ct扫描中一种有效的无锚点普遍病变检测方法
现有的通用病变检测(ULD)方法使用基于计算密集型锚点的架构,依赖于预定义的锚点盒,导致检测性能不理想,特别是在中小型病变中。此外,这些默认的固定锚大小和比率不能很好地推广到不同的数据集。因此,我们提出了一种鲁棒的单阶段无锚点病变检测网络,该网络可以在不同病变大小的情况下表现良好,方法是利用盒子预测可以根据其中心而不是与对象的重叠进行相关性排序。此外,我们证明可以通过明确地提供使用多个HU窗口生成的多强度图像形式的领域特定信息来改进ULD,然后使用通过ct扫描的自我监督学习的权重进行基于自关注的特征融合和骨干初始化。我们获得了与最先进的方法相媲美的结果,在DeepLesion数据集上实现了86.05%的总体灵敏度,该数据集包括大约32K的ct扫描,并在各个身体器官上注释了病变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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