Dense volumetric detection and segmentation of mediastinal lymph nodes in chest CT images

淋巴 淋巴结 医学 放射科 纵隔淋巴结 分割 人工智能 计算机科学 病理 内科学 癌症 转移
作者
Hirohisa Oda,Kanwal K. Bhatia,Holger R. Roth,Masahiro Oda,Takayuki Kitasaka,Shingo Iwano,H Homma,Hirotsugu Takabatake,Masaki Mori,Hiroshi Natori,Julia A. Schnabel,Kensaku Mori
出处
期刊:Medical Imaging 2018: Computer-Aided Diagnosis 卷期号:9035: 1-1 被引量:28
标识
DOI:10.1117/12.2287066
摘要

We propose a novel mediastinal lymph node detection and segmentation method from chest CT volumes based on fully convolutional networks (FCNs). Most lymph node detection methods are based on filters for blob-like structures, which are not specific for lymph nodes. The 3D U-Net is a recent example of the state-of-the-art 3D FCNs. The 3D U-Net can be trained to learn appearances of lymph nodes in order to output lymph node likelihood maps on input CT volumes. However, it is prone to oversegmentation of each lymph node due to the strong data imbalance between lymph nodes and the remaining part of the CT volumes. To moderate the balance of sizes between the target classes, we train the 3D U-Net using not only lymph node annotations but also other anatomical structures (lungs, airways, aortic arches, and pulmonary arteries) that can be extracted robustly in an automated fashion. We applied the proposed method to 45 cases of contrast-enhanced chest CT volumes. Experimental results showed that 95.5% of lymph nodes were detected with 16.3 false positives per CT volume. The segmentation results showed that the proposed method can prevent oversegmentation, achieving an average Dice score of 52.3 ± 23.1%, compared to the baseline method with 49.2 ± 23.8%, respectively.

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