Radiomics-based Machine Learning Methods for Volume Doubling Time Prediction of Pulmonary Ground-glass Nodules With Baseline Chest Computed Tomography.

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Wenjun Huang, Hanxiao Zhang, Yanming Ge, Shaofeng Duan, Yanqing Ma, Xiaoling Wang, Xiuxiu Zhou, Taohu Zhou, Wenting Tu, Yun Wang, Shiyuan Liu, Peng Dong, Li Fan
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引用次数: 0

Abstract

Purpose: Reliable prediction of volume doubling time (VDT) is essential for the personalized management of pulmonary ground-glass nodules (GGNs). We aimed to determine the optimal VDT prediction method by comparing different machine learning methods only based on the baseline chest computed tomography (CT) images.

Materials and methods: Seven classical machine learning methods were evaluated in terms of their stability and performance for VDT prediction. The VDT, calculated by the preoperative and baseline CT, was divided into 2 groups with a cutoff value of 400 days. A total of 90 GGNs from 3 hospitals constituted the training set, and 86 GGNs from the fourth hospital served as the external validation set. The training set was used for feature selection and model training, and the validation set was used to evaluate the predictive performance of the model independently.

Results: The eXtreme Gradient Boosting showed the highest predictive performance (accuracy: 0.890±0.128 and area under the ROC curve (AUC): 0.896±0.134), followed by the neural network (NNet) (accuracy: 0.865±0.103 and AUC: 0.886±0.097). While regarding stability, the NNet showed the highest robustness against data perturbation (relative SDs [%] of mean AUC: 10.9%). Therefore, the NNet was chosen as the final model, achieving high accuracy of 0.756 in the external validation set.

Conclusion: The NNet is a promising machine learning method to predict the VDT of GGNs, which would assist in the personalized follow-up and treatment strategies for GGNs reducing unnecessary follow-up and radiation dose.

基于放射组学的机器学习方法用于肺部磨玻璃结节的基线胸部计算机断层扫描体积倍增时间预测。
目的:肺磨玻璃结节(ggn)的个体化治疗需要可靠的体积倍增时间(VDT)预测。我们的目的是通过比较不同的机器学习方法,仅基于胸部计算机断层扫描(CT)的基线图像来确定最佳的VDT预测方法。材料和方法:评估了7种经典的机器学习方法在VDT预测中的稳定性和性能。术前和基线CT计算VDT,分为2组,截断值为400天。来自3家医院的90个ggn组成训练集,来自第4家医院的86个ggn作为外部验证集。训练集用于特征选择和模型训练,验证集用于独立评估模型的预测性能。结果:eXtreme Gradient Boosting预测准确率最高(准确率为0.890±0.128,ROC曲线下面积(AUC)为0.896±0.134),其次为神经网络(NNet)(准确率为0.865±0.103,AUC为0.886±0.097)。在稳定性方面,NNet对数据扰动的稳健性最高(平均AUC的相对SDs[%]: 10.9%)。因此,选择NNet作为最终模型,在外部验证集中获得了0.756的高精度。结论:NNet是一种很有前途的预测GGNs VDT的机器学习方法,有助于GGNs的个性化随访和治疗策略,减少不必要的随访和辐射剂量。
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来源期刊
Journal of Thoracic Imaging
Journal of Thoracic Imaging 医学-核医学
CiteScore
7.10
自引率
9.10%
发文量
87
审稿时长
6-12 weeks
期刊介绍: Journal of Thoracic Imaging (JTI) provides authoritative information on all aspects of the use of imaging techniques in the diagnosis of cardiac and pulmonary diseases. Original articles and analytical reviews published in this timely journal provide the very latest thinking of leading experts concerning the use of chest radiography, computed tomography, magnetic resonance imaging, positron emission tomography, ultrasound, and all other promising imaging techniques in cardiopulmonary radiology. Official Journal of the Society of Thoracic Radiology: Japanese Society of Thoracic Radiology Korean Society of Thoracic Radiology European Society of Thoracic Imaging.
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