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可变形扩张 Faster R-CNN 用于 CT 图像中的通用病变检测。

Deformable Dilated Faster R-CNN for Universal Lesion Detection in CT Images.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2896-2902. doi: 10.1109/EMBC46164.2021.9631021.

DOI:10.1109/EMBC46164.2021.9631021
PMID:34891852
Abstract

Cancer is a major public health issue and takes the second-highest toll of deaths caused by non-communicable diseases worldwide. Automatically detecting lesions at an early stage is essential to increase the chance of a cure. This study proposes a novel dilated Faster R-CNN with modulated deformable convolution and modulated deformable positive-sensitive region of interest pooling to detect lesions in computer tomography images. A pre-trained VGG-16 is transferred as the backbone of Faster R-CNN, followed by a region proposal network and a region of interest pooling layer to achieve lesion detection. The modulated deformable convolutional layers are employed to learn deformable convolutional filters, while the modulated deformable positive-sensitive region of interest pooling provides an enhanced feature extraction on the feature maps. Moreover, dilated convolutions are combined with the modulated deformable convolutions to fine-tune the VGG-16 model with multi-scale receptive fields. In the experiments evaluated on the DeepLesion dataset, the modulated deformable positive-sensitive region of interest pooling model achieves the highest sensitivity score of 58.8 % on average with dilation of [4, 4, 4] and outperforms state-of-the-art models in the range of [2], [8] average false positives per image. This research demonstrates the suitability of dilation modifications and the possibility of enhancing the performance using a modulated deformable positive-sensitive region of interest pooling layer for universal lesion detectors.

摘要

癌症是一个主要的公共卫生问题,是全球非传染性疾病导致死亡的第二大原因。早期自动检测病变对于提高治愈机会至关重要。本研究提出了一种新颖的扩张 Faster R-CNN,使用调制变形卷积和调制变形正敏感区域池化来检测计算机断层扫描图像中的病变。预训练的 VGG-16 被转移为 Faster R-CNN 的骨干,然后是一个区域提议网络和一个感兴趣区域池化层,以实现病变检测。调制变形卷积层用于学习变形卷积滤波器,而调制变形正敏感区域池化层则在特征图上提供增强的特征提取。此外,膨胀卷积与调制变形卷积相结合,用于使用多尺度感受野微调 VGG-16 模型。在 DeepLesion 数据集上进行的实验评估中,调制变形正敏感区域池化模型在膨胀为[4,4,4]时平均具有 58.8%的最高灵敏度得分,并且在[2]、[8]范围内的平均每张图像假阳性率优于最先进的模型。这项研究表明,扩张修改和使用调制变形正敏感区域池化层增强通用病变检测器性能的可能性是合适的。

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