Courot Adele, Cabrera Diana L F, Gogin Nicolas, Gaillandre Loic, Rico Geoffrey, Zhang-Yin Jules, Elhaik Mickael, Bidault François, Bousaid Imad, Lassau Nathalie
General Electric Healthcare, 78530 Buc, France.
General Electric Healthcare, 78530 Buc, France; Université de Reims Champagne Ardenne, CReSTIC EA 3804, 51097 Reims, France.
Diagn Interv Imaging. 2021 Nov;102(11):675-681. doi: 10.1016/j.diii.2021.04.009. Epub 2021 May 19.
The purpose of this study was to develop a fast and automatic algorithm to detect and segment lymphadenopathy from head and neck computed tomography (CT) examination.
An ensemble of three convolutional neural networks (CNNs) based on a U-Net architecture were trained to segment the lymphadenopathies in a fully supervised framework. The resulting predictions were assessed using the Dice similarity coefficient (DSC) on examinations presenting one or more adenopathies. On examinations without adenopathies, the score was given by the formula M/(M+A) where M was the mean adenopathy volume per patient and A the volume segmented by the algorithm. The networks were trained on 117 annotated CT acquisitions.
The test set included 150 additional CT acquisitions unseen during the training. The performance on the test set yielded a mean score of 0.63.
Despite limited available data and partial annotations, our CNN based approach achieved promising results in the task of cervical lymphadenopathy segmentation. It has the potential to bring precise quantification to the clinical workflow and to assist the clinician in the detection task.
本研究的目的是开发一种快速自动算法,用于从头部和颈部计算机断层扫描(CT)检查中检测和分割淋巴结病。
基于U-Net架构的三个卷积神经网络(CNN)组成的集成模型在完全监督框架下进行训练,以分割淋巴结病。在存在一个或多个腺病的检查中,使用Dice相似系数(DSC)评估所得预测结果。在没有腺病的检查中,分数由公式M/(M+A)给出,其中M是每位患者的平均腺病体积,A是算法分割的体积。这些网络在117份标注的CT图像上进行训练。
测试集包括训练期间未见过的另外150份CT图像。测试集上的性能产生的平均分数为0.63。
尽管可用数据有限且注释不完整,但我们基于CNN的方法在颈部淋巴结病分割任务中取得了有前景的结果。它有可能为临床工作流程带来精确的量化,并协助临床医生进行检测任务。