Tumor Segmentation in Patients with Head and Neck Cancers Using Deep Learning Based-on Multi-modality PET/CT Images.

Mohamed A Naser, Lisanne V van Dijk, Renjie He, Kareem A Wahid, Clifton D Fuller
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Abstract

Segmentation of head and neck cancer (HNC) primary tumors onmedical images is an essential, yet labor-intensive, aspect of radiotherapy.PET/CT imaging offers a unique ability to capture metabolic and anatomicinformation, which is invaluable for tumor detection and border definition. Anautomatic segmentation tool that could leverage the dual streams of informationfrom PET and CT imaging simultaneously, could substantially propel HNCradiotherapy workflows forward. Herein, we leverage a multi-institutionalPET/CT dataset of 201 HNC patients, as part of the MICCAI segmentationchallenge, to develop novel deep learning architectures for primary tumor auto-segmentation for HNC patients. We preprocess PET/CT images by normalizingintensities and applying data augmentation to mitigate overfitting. Both 2D and3D convolutional neural networks based on the U-net architecture, which wereoptimized with a model loss function based on a combination of dice similaritycoefficient (DSC) and binary cross entropy, were implemented. The median andmean DSC values comparing the predicted tumor segmentation with the groundtruth achieved by the models through 5-fold cross validation are 0.79 and 0.69for the 3D model, respectively, and 0.79 and 0.67 for the 2D model, respec-tively. These promising results show potential to provide an automatic, accurate,and efficient approach for primary tumor auto-segmentation to improve theclinical practice of HNC treatment.

利用基于多模态 PET/CT 图像的深度学习对头颈部癌症患者进行肿瘤分割
在医学影像上对头颈癌(HNC)原发肿瘤进行分割是放疗的一个重要环节,但也是一个劳动密集型环节。PET/CT 成像具有捕捉代谢和解剖信息的独特能力,这对肿瘤检测和边界界定非常宝贵。自动分割工具可以同时利用 PET 和 CT 成像的双信息流,从而大大推动 HNC 放射治疗工作流程的发展。在此,我们利用多机构 201 名 HNC 患者的 PET/CT 数据集,作为 MICCAI 细分挑战赛的一部分,为 HNC 患者的原发性肿瘤自动分割开发了新型深度学习架构。我们对 PET/CT 图像进行了预处理,对密度进行了归一化处理,并应用数据增强技术来减少过拟合。我们使用基于骰子相似性系数(DSC)和二元交叉熵组合的模型损失函数对基于 U-net 架构的二维和三维卷积神经网络进行了优化。通过 5 倍交叉验证,预测的肿瘤分割结果与模型获得的地面实况相比,三维模型的 DSC 中值和均值分别为 0.79 和 0.69,二维模型的 DSC 中值和均值分别为 0.79 和 0.67。这些令人鼓舞的结果表明,我们有可能提供一种自动、准确、高效的原发肿瘤自动分割方法,以改善 HNC 治疗的临床实践。
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