Taku Nicolette, Wahid Kareem A, van Dijk Lisanne V, Sahlsten Jaakko, Jaskari Joel, Kaski Kimmo, Fuller Clifton D, Naser Mohamed A
Department of Radiation Oncology, The University of Texas MD Anderson Cancer Center, Houston, TX, United States.
Department of Radiation Oncology, University Medical Center Groningen, University of Groningen, Groningen, Netherlands.
Clin Transl Radiat Oncol. 2022 Jun 18;36:47-55. doi: 10.1016/j.ctro.2022.06.007. eCollection 2022 Sep.
Segmentation of involved lymph nodes on head and neck computed tomography (HN-CT) scans is necessary for the radiotherapy planning of early-stage human papilloma virus (HPV) associated oropharynx cancers (OPC). We aimed to train a deep learning convolutional neural network (DL-CNN) to segment involved lymph nodes on HN-CT scans.
Ground-truth segmentation of involved nodes was performed on pre-surgical HN-CT scans for 90 patients who underwent levels II-IV neck dissection for node-positive HPV-OPC (training/validation [n = 70] and testing [n = 20]). A 5-fold cross validation approach was used to train 5 DL-CNN sub-models based on a residual U-net architecture. Validation and testing segmentation masks were compared to ground-truth masks using predetermined metrics. A lymph auto-detection model to discriminate between "node-positive" and "node-negative" HN-CT scans was developed by thresholding segmentation model outputs and evaluated using the area under the receiver operating characteristic curve (AUC).
In the DL-CNN validation phase, all sub-models yielded segmentation masks with median Dice ≥ 0.90 and median volume similarity score of ≥ 0.95. In the testing phase, the DL-CNN produced consensus segmentation masks with median Dice of 0.92 (IQR, 0.89-0.95), median volume similarity of 0.97 (IQR, 0.94-0.99), and median Hausdorff distance of 4.52 mm (IQR, 1.22-8.38). The detection model achieved an AUC of 0.98.
The results from this single-institution study demonstrate the successful automation of lymph node segmentation for patients with HPV-OPC using a DL-CNN. Future studies, including validation with an external dataset, are necessary to clarify its role in the larger radiation oncology treatment planning workflow.
对头颈部计算机断层扫描(HN-CT)图像上受累淋巴结进行分割,对于早期人乳头瘤病毒(HPV)相关口咽癌(OPC)的放射治疗计划而言至关重要。我们旨在训练一个深度学习卷积神经网络(DL-CNN),用于在HN-CT图像上分割受累淋巴结。
对90例因淋巴结阳性HPV-OPC接受II-IV区颈部清扫术的患者,在术前HN-CT图像上进行受累淋巴结的真实分割(训练/验证[n = 70]和测试[n = 20])。采用5折交叉验证方法,基于残差U-net架构训练5个DL-CNN子模型。使用预定指标将验证和测试分割掩码与真实掩码进行比较。通过对分割模型输出进行阈值处理,开发了一种用于区分“淋巴结阳性”和“淋巴结阴性”HN-CT图像的淋巴结自动检测模型,并使用受试者操作特征曲线下面积(AUC)进行评估。
在DL-CNN验证阶段,所有子模型生成的分割掩码的中位Dice系数≥0.90,中位体积相似性得分≥0.95。在测试阶段,DL-CNN生成的一致性分割掩码的中位Dice系数为0.92(四分位间距,0.89 - 0.95),中位体积相似性为0.97(四分位间距,0.94 - 0.99),中位豪斯多夫距离为4.52毫米(四分位间距,1.22 - 8.38)。检测模型的AUC为0.98。
这项单机构研究的结果表明,使用DL-CNN可成功实现HPV-OPC患者淋巴结分割的自动化。未来的研究,包括使用外部数据集进行验证,对于明确其在更大的放射肿瘤治疗计划工作流程中的作用是必要的。