Qasem Ahmad, Zhou Zhiguo
Department of Biostatistics & Data Science, The Reliable Intelligence and Medical Innovation Laboratory (RIMI Lab), University of Kansas Medical Center, Kansas City, KS, 66160, USA.
Department of Biostatistics & Data Science, The Reliable Intelligence and Medical Innovation Laboratory (RIMI Lab), University of Kansas Medical Center, Kansas City, KS, 66160, USA; University of Kansas Cancer Center, Kansas City, KS, 66160, USA.
Med Dosim. 2025;50(1):80-90. doi: 10.1016/j.meddos.2024.09.001. Epub 2024 Oct 10.
Head and Neck (H&N) cancer accounts for 3% of cancer cases in the United States. Precise tumor segmentation in H&N is of utmost importance for treatment planning and administering personalized treatment dose. We aimed to develop an automatic tumor localization and segmentation method in enhancing the clinical efficiency and ultimately improving treatment outcomes.
In this study, a hybrid neural network (HNN) was developed by integrating object localization and segmentation into a unified framework. It consists of 4 stages: preprocessing, HNN training, object localization and segmentation, and postprocessing. We utilized a dataset consisting of PET and CT images for 48 patients and designed a Hybrid Neural Network (HNN) which consists of YOLOv4 object detection model + U-Net model for image segmentation. YOLOv4 was used to identify regions of interests (ROI), while the U-Net was employed for the precise image segmentation. In our experiments we considered 2 object detection architectures to identify possible tumor regions, namely YOLOv4 and Faster-RCNN. The evaluation metrics for both were evaluated and compared.
We evaluated the performance of 3 model combinations: YOLOv4 + U-Net, Faster-RCNN + U-Net, and U-Net alone. The models were evaluated based on Sensitivity, Specificity, F-Score, and Intersection over Union (IoU). YOLOv4 + U-Net achieved the best values with Sensitivity of 0.89, Specificity of 0.99, F-Score of 0.84, and IoU of 0.72.
A new hybrid neural network (HNN) for fully automatic tumor localization and segmentation was developed and the experimental results. showcased the HNN's impressive performance, indicating its potential to be a valuable H&N tumor segmentation tool.
头颈癌占美国癌症病例的3%。对头颈癌进行精确的肿瘤分割对于治疗规划和给予个性化治疗剂量至关重要。我们旨在开发一种自动肿瘤定位和分割方法,以提高临床效率并最终改善治疗效果。
在本研究中,通过将目标定位和分割集成到一个统一框架中,开发了一种混合神经网络(HNN)。它包括4个阶段:预处理、HNN训练、目标定位和分割以及后处理。我们使用了一个由48名患者的PET和CT图像组成的数据集,并设计了一种混合神经网络(HNN),它由用于图像分割的YOLOv4目标检测模型+U-Net模型组成。YOLOv4用于识别感兴趣区域(ROI),而U-Net用于精确的图像分割。在我们的实验中,我们考虑了2种目标检测架构来识别可能的肿瘤区域,即YOLOv4和Faster-RCNN。对两者的评估指标进行了评估和比较。
我们评估了3种模型组合的性能:YOLOv4+U-Net、Faster-RCNN+U-Net和单独的U-Net。基于灵敏度、特异性、F分数和交并比(IoU)对模型进行了评估。YOLOv4+U-Net取得了最佳值,灵敏度为0.89,特异性为0.99,F分数为0.84,IoU为0.72。
开发了一种用于全自动肿瘤定位和分割的新型混合神经网络(HNN),实验结果展示了HNN令人印象深刻的性能,表明其有潜力成为一种有价值的头颈肿瘤分割工具。