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Deep Active Lesion Segmentation

机译:深度活动性病变分割

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摘要

Lesion segmentation is an important problem in computer-assisted diagnosis that remains challenging due to the prevalence of low contrast, irregular boundaries that are unamenable to shape priors. We introduce Deep Active Lesion Segmentation (DALS), a fully automated segmentation framework that leverages the powerful nonlinear feature extraction abilities of fully Convolutional Neural Networks (CNNs) and the precise boundary delineation abilities of Active Contour Models (ACMs). Our DALS framework benefits from an improved level-set ACM formulation with a per-pixel-parameterized energy functional and a novel multiscale encoder-decoder CNN that learns an initialization probability map along with parameter maps for the ACM. We evaluate our lesion segmentation model on a new Multiorgan Lesion Segmentation (MLS) dataset that contains images of various organs, including brain, liver, and lung, across different imaging modalities—MR and CT. Our results demonstrate favorable performance compared to competing methods, especially for small training datasets.
机译:病变分割是计算机辅助诊断中的一个重要问题,由于普遍存在低对比度,难以塑造的先验边界,因此仍然具有挑战性。我们介绍了深度主动病变分割(DALS),这是一种全自动的分割框架,它利用了全卷积神经网络(CNN)强大的非线性特征提取能力和主动轮廓模型(ACM)的精确边界描绘能力。我们的DALS框架得益于改进的水平集ACM公式,该公式具有按像素参数化的能量功能,以及新颖的多尺度编码器/解码器CNN,可以学习初始化概率图以及ACM的参数图。我们在新的多器官病变分割(MLS)数据集上评估了病变分割模型,该数据集包含跨不同成像方式(MR和CT)的各种器官(包括脑,肝和肺)的图像。与竞争方法相比,我们的结果证明了良好的性能,尤其是对于小型训练数据集而言。

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