Sahel Heydarheydari, Mohammad Javad Tahmasebi Birgani, Seyed Masoud Rezaeijo
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引用次数: 5
Abstract
Purpose: Accurately segmenting head and neck cancer (HNC) tumors in medical images is crucial for effective treatment planning. However, current methods for HNC segmentation are limited in their accuracy and efficiency. The present study aimed to design a model for segmenting HNC tumors in three-dimensional (3D) positron emission tomography (PET) images using Non-Local Means (NLM) and morphological operations.
Material and methods: The proposed model was tested using data from the HECKTOR challenge public dataset, which included 408 patient images with HNC tumors. NLM was utilized for image noise reduction and preservation of critical image information. Following pre-processing, morphological operations were used to assess the similarity of intensity and edge information within the images. The Dice score, Intersection Over Union (IoU), and accuracy were used to evaluate the manual and predicted segmentation results.
Results: The proposed model achieved an average Dice score of 81.47 ± 3.15, IoU of 80 ± 4.5, and accuracy of 94.03 ± 4.44, demonstrating its effectiveness in segmenting HNC tumors in PET images.
Conclusions: The proposed algorithm provides the capability to produce patient-specific tumor segmentation without manual interaction, addressing the limitations of current methods for HNC segmentation. The model has the potential to improve treatment planning and aid in the development of personalized medicine. Additionally, this model can be extended to effectively segment other organs from limited annotated medical images.
目的:头颈癌(HNC)医学影像的准确分割是制定有效治疗方案的关键。然而,现有的HNC分割方法在精度和效率上都存在一定的局限性。本研究旨在设计一个模型,利用非局部方法(NLM)和形态学操作在三维(3D)正电子发射断层扫描(PET)图像中分割HNC肿瘤。材料和方法:使用HECKTOR挑战公共数据集的数据对所提出的模型进行了测试,该数据集包括408例患有HNC肿瘤的患者图像。利用NLM进行图像降噪和关键图像信息的保存。在预处理之后,形态学操作用于评估图像内强度和边缘信息的相似性。Dice评分、Intersection Over Union (IoU)和准确率被用来评估人工和预测的分割结果。结果:该模型的平均Dice评分为81.47±3.15,IoU为80±4.5,准确率为94.03±4.44,证明了该模型在PET图像中分割HNC肿瘤的有效性。结论:提出的算法提供了无需人工交互即可产生患者特异性肿瘤分割的能力,解决了当前HNC分割方法的局限性。该模型具有改善治疗计划和帮助个性化医疗发展的潜力。此外,该模型可以扩展到从有限的注释医学图像中有效地分割其他器官。