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3D Texture Feature-Based Lymph Node Automated Detection in Head and Neck Cancer Analysis

机译:基于3D纹理特征的淋巴结在头部和颈部癌症分析中自动检测

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Lymph node extracapsular extension (ECE) is a decisive indication for treatment planning of patients with head and neck squamous cell carcinoma (HNSCC). Lymph node region identification and segmentation is crucial for computer-aided ECE diagnosis. In this research, we propose a systematic machine learning approach to detect lymph node region from computed tomography (CT) scans based on 3D texture features. The process includes three steps: 1) region of interests (ROI) segmentation, where the potential lymph node region is segmented based on morphological operation; 2) 3D Haralick texture features are collected for lymph node and non-lymph node samples, respectively; and 3) three machine learning models with feature extraction and selection approaches are employed for lymph node classification. Based on 5-fold cross-validation, the experimental results have demonstrated that gradient boosting model with feature agglomeration and low variance threshold achieves the test accuracy of 94.48%. To check the explainability of the models, feature analysis is also conducted. The outcome of this research is expected to promote the implementation of artificial intelligence for lymph node detection as well as head and neck cancer diagnosis in the radiology computer vision field.
机译:淋巴结倍增延伸(ECE)是头部和颈部鳞状细胞癌(HNSCC)患者治疗计划的决定性指示。淋巴结区域识别和分割对于计算机辅助ECE诊断至关重要。在本研究中,我们提出了一种系统的机器学习方法,以根据3D纹理特征从计算机断层扫描(CT)扫描中检测淋巴结区域。该方法包括三个步骤:1)利益区域(ROI)分割,基于形态学操作分割潜在淋巴结区域; 2)分别为淋巴结和非淋巴结样品收集3D Haralick纹理特征; 3)具有特征提取和选择方法的三种机器学习模型用于淋巴结分类。基于5倍的交叉验证,实验结果表明,具有特征聚集和低方差阈值的梯度升压模型实现了94.48%的测试精度。为了检查模型的解释性,还进行了特征分析。该研究的结果预计将促进淋巴结检测的人工智能的实施以及放射性计算机视觉领域的头部和颈部癌症诊断。

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