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基于影像组学和临床信息的头颈部鳞状细胞癌预后预测

Prognosis Prediction in Head and Neck Squamous Cell Carcinoma by Radiomics and Clinical Information.

作者信息

Tam Shing-Yau, Tang Fuk-Hay, Chan Mei-Yu, Lai Hiu-Ching, Cheung Shing

机构信息

School of Medical and Health Sciences, Tung Wah College, Hong Kong.

出版信息

Biomedicines. 2024 Jul 24;12(8):1646. doi: 10.3390/biomedicines12081646.

Abstract

(1) Background: head and neck squamous cell carcinoma (HNSCC) is a common cancer whose prognosis is affected by its heterogeneous nature. We aim to predict 5-year overall survival in HNSCC radiotherapy (RT) patients by integrating radiomic and clinical information in machine-learning models; (2) Methods: HNSCC radiotherapy planning computed tomography (CT) images with RT structures were obtained from The Cancer Imaging Archive. Radiomic features and clinical data were independently analyzed by five machine-learning algorithms. The results were enhanced through a voted ensembled approach. Subsequently, a probability-weighted enhanced model (PWEM) was generated by incorporating both models; (3) Results: a total of 299 cases were included in the analysis. By receiver operating characteristic (ROC) curve analysis, PWEM achieved an area under the curve (AUC) of 0.86, which outperformed both radiomic and clinical factor models. Mean decrease accuracy, mean decrease Gini, and a chi-square test identified T stage, age, and disease site as the most important clinical factors in prognosis prediction; (4) Conclusions: our radiomic-clinical combined model revealed superior performance when compared to radiomic and clinical factor models alone. Further prospective research with a larger sample size is warranted to implement the model for clinical use.

摘要

(1) 背景:头颈部鳞状细胞癌(HNSCC)是一种常见癌症,其异质性影响预后。我们旨在通过在机器学习模型中整合放射组学和临床信息来预测HNSCC放疗(RT)患者的5年总生存率;(2) 方法:从癌症影像存档库获取带有RT结构的HNSCC放疗计划计算机断层扫描(CT)图像。通过五种机器学习算法独立分析放射组学特征和临床数据。结果通过投票集成方法得到增强。随后,通过合并这两种模型生成概率加权增强模型(PWEM);(3) 结果:分析共纳入299例病例。通过受试者工作特征(ROC)曲线分析,PWEM的曲线下面积(AUC)为0.86,优于放射组学和临床因素模型。平均准确度下降、平均基尼系数下降和卡方检验确定T分期、年龄和疾病部位是预后预测中最重要的临床因素;(4) 结论:与单独的放射组学和临床因素模型相比,我们的放射组学-临床联合模型显示出卓越性能。有必要进行更大样本量的进一步前瞻性研究,以将该模型应用于临床。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d32f/11352052/e87ed49d3777/biomedicines-12-01646-g001.jpg

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