身体位置嵌入3D U-Net (BLE-U-Net)用于卵巢癌CT扫描的腹水分割

M. Nag, Jianfei Liu, Liangchen Liu, Seung Yeon Shin, Sungwon Lee, Jung-Min Lee, R. Summers
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引用次数: 2

摘要

腹水通常被认为是晚期卵巢癌的标志,卵巢癌是最致命的妇科恶性肿瘤。腹水分割通过提供准确的腹水测量,有助于跟踪卵巢癌的发展进展,可以有效指导后续治疗,并有可能降低死亡率。腹水的分割是具有挑战性的,因为存在等强度的液体,如胆汁、尿液等,在腹水区域附近。在这项工作中,我们提出了一种新的三维U-Net分割方法,称为身体位置嵌入式U-Net (BLE-U-Net),该方法将解剖位置信息与分割过程相结合。BLE-U-Net结合身体部位回归来预测沿z轴的每个CT切片的大致解剖位置。将回归分数离散化以显示不同的身体区域,并嵌入到改进的3D U-Net中以改善腹水分割。使用20个增强体CT扫描来评估所提出的方法。常规3D U-Net和BLE-U-Net的骰子系数分别为38±10和65±06 (t检验p <0.05)。分节腹水容积分别为0.51±0.74和0.57±0.85 l,其中底真容积为0.58±0.84 l。这些结果表明,嵌入的位置信息是改善腹水分割的关键因素,可能有助于卵巢癌的诊断和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Body location embedded 3D U-Net (BLE-U-Net) for ovarian cancer ascites segmentation on CT scans
Ascites is often regarded as the hallmark of advanced ovarian cancer, which is the most lethal gynecologic malignancy. Ascites segmentation contributes to track the progress of ovarian cancer development by providing accurate ascites measurement, which can effectively guide subsequent treatment and potentially reduce the mortality. Segmentation of ascites is challenging due to the presence of iso-intense fluids such as bile, urine, etc., near the ascites region. In this work we propose a novel 3D U-Net segmentation method called body location embedded U-Net (BLE-U-Net) that integrates anatomical location information with the segmentation process. BLE-U-Net incorporates body part regression to predict the approximate anatomical location of each CT slice along the z- axis. The regression scores are discretized to indicate different body regions and embedded into a modified 3D U-Net to improve the ascites segmentation. Twenty contrast-enhanced body CT scans were used to evaluate the proposed method. Dice coefficients of 38 ±10 and 65 ±06 were achieved for a conventional 3D U-Net and BLE-U-Net, respectively (with t-test p <0.05). Volumes of segmented ascites were 0.51±0.74 and 0.57±0.85 liters for each method where the ground-truth volume was 0.58±0.84 liters. These results suggest that the embedded location information is the key factor to improve the ascites segmentation, which could potentially benefit ovarian cancer diagnosis and treatment.
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