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Positive-Aware Lesion Detection Network with Cross-scale Feature Pyramid for OCT Images

机译:具有跨尺度特征金字塔的正感知病变检测网络OCT图像

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Optical coherence tomography (OCT) is an important imaging technique in ophthalmology, and accurate detection of retinal lesions plays an important role in computer-aided diagnosis. However, the particularities of retinal lesions, such as their complex appearance and large variation of scale, limit the successful application of conventional deep learning-based object detection networks for OCT lesion detection. In this study, we propose a positive-aware lesion detection network with cross-scale feature pyramid for OCT images. A cross-scale boost module with non-local network is firstly applied to enhance the ability of feature representation for OCT lesions with varying scales. To avoid lesion omission and misdetection, some positive-aware network designs are then added into a two-stage detection network, including global level positive estimation and local level positive mining. Finally, we establish a large OCT dataset with multiple retinal lesions, and perform sufficient comparative experiments on it. The results demonstrate that our proposed network achieves 92.36 mean average precision (mAP) for OCT lesion detection, which is superior to other existing detection approaches.
机译:光学相干断层扫描(OCT)是眼科的重要成像技术,准确地检测视网膜病变在计算机辅助诊断中起重要作用。然而,视网膜病变的特殊性,例如它们复杂的外观和大规模变化,限制了常规深度学习的物体检测网络的成功应用于OCT病变检测。在这项研究中,我们提出了一种具有用于OCT图像的串尺度特征金字塔的正感知病变检测网络。首先应用具有非本地网络的跨尺度升压模块,以增强具有不同尺度的OCT病变的特征表示功能。为避免病变遗漏和误解,然后将一些正感知的网络设计添加到两级检测网络中,包括全球级正估计和局部水平正挖掘。最后,我们建立了具有多个视网膜病变的大OCT数据集,并对其进行了足够的比较实验。结果表明,我们所提出的网络实现了102.36平均平均精度(MAP),用于OCT病变检测,其优于其他现有的检测方法。

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