整合了三维深度学习和放射组学的头颈癌组合诺模的预后价值

IF 1 4区 医学 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Computer Assisted Tomography Pub Date : 2024-05-01 Epub Date: 2024-02-27 DOI:10.1097/RCT.0000000000001584
Shuyan Li, Jiayi Xie, Jinghua Liu, Yanjun Wu, Zhongxiao Wang, Zhendong Cao, Dong Wen, Xiaolei Zhang, Bingzhen Wang, Yifan Yang, Lijun Lu, Xianling Dong
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引用次数: 0

摘要

目的:术前预测头颈癌(HNC)患者的总生存期(OS)状况对患者的个体化治疗和预后具有重要价值。本研究旨在评估在放射组学模型中添加三维深度学习特征对预测5年OS状况的影响:本研究纳入了癌症影像档案公共数据集中的 2200 个病例;从每个病例中提取了 2212 个放射组学特征和 304 个深度特征。通过单变量分析、最小绝对收缩和选择算子对特征进行筛选,然后将其分组为包含正电子发射断层扫描/计算机断层扫描(PET/CT)放射组学特征得分的放射组学模型、包含深度特征得分的深度模型以及包含 PET/CT 放射组学特征得分 +3D 深度特征得分的组合模型。为了比较组合模型的性能,还利用患者的初始肿瘤结节转移分期构建了肿瘤分期模型。为了分析深度特征对模型性能的影响,还构建了一个提名图。采用接收者操作特征曲线下平均面积和校准曲线的 10 倍交叉验证来评估性能,并开发了 Shapley Additive exPlanations(SHAP)用于解释:结果:TumorStage 模型、放射组学模型、深度模型和组合模型在训练集上的接收者操作特征曲线下面积分别为 0.604、0.851、0.840 和 0.895,在测试集上的接收者操作特征曲线下面积分别为 0.571、0.849、0.832 和 0.900。与放射组学模型和深度模型相比,联合模型在预测HNC患者的5年OS状况方面表现更好。综合模型在校准曲线中的拟合效果良好,在决策曲线分析中具有临床实用性。SHAP摘要图和SHAP力图直观地解释了深度特征和放射组学特征对模型结果的影响:结论:在预测HNC患者的5年OS状况时,三维深度特征可为组合模型提供更丰富的特征,与放射组学模型和深度模型相比,组合模型表现更优。
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Prognostic Value of a Combined Nomogram Model Integrating 3-Dimensional Deep Learning and Radiomics for Head and Neck Cancer.

Objective: The preoperative prediction of the overall survival (OS) status of patients with head and neck cancer (HNC) is significant value for their individualized treatment and prognosis. This study aims to evaluate the impact of adding 3D deep learning features to radiomics models for predicting 5-year OS status.

Methods: Two hundred twenty cases from The Cancer Imaging Archive public dataset were included in this study; 2212 radiomics features and 304 deep features were extracted from each case. The features were selected by univariate analysis and the least absolute shrinkage and selection operator, and then grouped into a radiomics model containing Positron Emission Tomography /Computed Tomography (PET/CT) radiomics features score, a deep model containing deep features score, and a combined model containing PET/CT radiomics features score +3D deep features score. TumorStage model was also constructed using initial patient tumor node metastasis stage to compare the performance of the combined model. A nomogram was constructed to analyze the influence of deep features on the performance of the model. The 10-fold cross-validation of the average area under the receiver operating characteristic curve and calibration curve were used to evaluate performance, and Shapley Additive exPlanations (SHAP) was developed for interpretation.

Results: The TumorStage model, radiomics model, deep model, and the combined model achieved areas under the receiver operating characteristic curve of 0.604, 0.851, 0.840, and 0.895 on the train set and 0.571, 0.849, 0.832, and 0.900 on the test set. The combined model showed better performance of predicting the 5-year OS status of HNC patients than the radiomics model and deep model. The combined model was shown to provide a favorable fit in calibration curves and be clinically useful in decision curve analysis. SHAP summary plot and SHAP The SHAP summary plot and SHAP force plot visually interpreted the influence of deep features and radiomics features on the model results.

Conclusions: In predicting 5-year OS status in patients with HNC, 3D deep features could provide richer features for combined model, which showed outperformance compared with the radiomics model and deep model.

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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
230
审稿时长
4-8 weeks
期刊介绍: The mission of Journal of Computer Assisted Tomography is to showcase the latest clinical and research developments in CT, MR, and closely related diagnostic techniques. We encourage submission of both original research and review articles that have immediate or promissory clinical applications. Topics of special interest include: 1) functional MR and CT of the brain and body; 2) advanced/innovative MRI techniques (diffusion, perfusion, rapid scanning); and 3) advanced/innovative CT techniques (perfusion, multi-energy, dose-reduction, and processing).
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