论文标题

使用共裂部门对CT扫描的弱监督病变细分

Weakly-Supervised Lesion Segmentation on CT Scans using Co-Segmentation

论文作者

Agarwal, Vatsal, Tang, Youbao, Xiao, Jing, Summers, Ronald M.

论文摘要

对计算机断层扫描(CT)扫描的病变分割是精确监测病变/肿瘤生长变化的重要步骤。但是,这项任务非常具有挑战性,因为手动细分非常耗时,昂贵,需要专业知识。当前的做法依赖于实体瘤中称为响应评估标准的不精确替代品(Recist)。尽管这些标记缺乏有关病变区域的详细信息,但它们通常在医院的图片归档和通信系统(PAC)中找到。因此,这些标记物具有作为2D病变分割的弱点的强大来源。为了解决此问题,本文提出了基于弱化的病变分割方法的卷积神经网络(CNN),该方法首先从恢复测量中生成初始病变掩模,然后利用共段来利用病变的相似性并改善初始标签。在这项工作中,由于能够从一对图像中学习更多的判别特征,因此采用了基于注意力的共细分模型。 NIH DeepLeperion数据集的实验结果表明,所提出的共分割方法显着改善了病变分割的性能,例如,骰子得分增加了约4.0%(从85.8%到89.8%)。

Lesion segmentation on computed tomography (CT) scans is an important step for precisely monitoring changes in lesion/tumor growth. This task, however, is very challenging since manual segmentation is prohibitively time-consuming, expensive, and requires professional knowledge. Current practices rely on an imprecise substitute called response evaluation criteria in solid tumors (RECIST). Although these markers lack detailed information about the lesion regions, they are commonly found in hospitals' picture archiving and communication systems (PACS). Thus, these markers have the potential to serve as a powerful source of weak-supervision for 2D lesion segmentation. To approach this problem, this paper proposes a convolutional neural network (CNN) based weakly-supervised lesion segmentation method, which first generates the initial lesion masks from the RECIST measurements and then utilizes co-segmentation to leverage lesion similarities and refine the initial masks. In this work, an attention-based co-segmentation model is adopted due to its ability to learn more discriminative features from a pair of images. Experimental results on the NIH DeepLesion dataset demonstrate that the proposed co-segmentation approach significantly improves lesion segmentation performance, e.g the Dice score increases about 4.0% (from 85.8% to 89.8%).

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