Sharma Maksym, Kirby Miranda, Fenster Aaron, McCormack David G, Parraga Grace
Robarts Research Institute, London, Ontario, Canada.
Western University, Department of Medical Biophysics, London, Ontario, Canada.
J Med Imaging (Bellingham). 2024 Jul;11(4):046001. doi: 10.1117/1.JMI.11.4.046001. Epub 2024 Jul 19.
Our objective was to train machine-learning algorithms on hyperpolarized magnetic resonance imaging (MRI) datasets to generate models of accelerated lung function decline in participants with and without chronic-obstructive-pulmonary-disease. We hypothesized that hyperpolarized gas MRI ventilation, machine-learning, and multivariate modeling could be combined to predict clinically-relevant changes in forced expiratory volume in 1 s ( ) across 3 years.
Hyperpolarized MRI was acquired using a coronal Cartesian fast gradient recalled echo sequence with a partial echo and segmented using a k-means clustering algorithm. A maximum entropy mask was used to generate a region-of-interest for texture feature extraction using a custom-developed algorithm and the PyRadiomics platform. The principal component and Boruta analyses were used for feature selection. Ensemble-based and single machine-learning classifiers were evaluated using area-under-the-receiver-operator-curve and sensitivity-specificity analysis.
We evaluated 88 ex-smoker participants with months follow-up data, 57 of whom (22 females/35 males, years) had negligible changes in and 31 participants (7 females/24 males, years) with worsening . In addition, 3/88 ex-smokers reported a change in smoking status. We generated machine-learning models to predict decline using demographics, spirometry, and texture features, with the later yielding the highest classification accuracy of 81%. The combined model (trained on all available measurements) achieved the overall best classification accuracy of 82%; however, it was not significantly different from the model trained on MRI texture features alone.
For the first time, we have employed hyperpolarized MRI ventilation texture features and machine-learning to identify ex-smokers with accelerated decline in with 82% accuracy.
我们的目标是在超极化磁共振成像(MRI)数据集上训练机器学习算法,以生成慢性阻塞性肺疾病患者和非慢性阻塞性肺疾病患者肺功能加速下降的模型。我们假设超极化气体MRI通气、机器学习和多变量建模可以结合起来预测3年内1秒用力呼气量( )的临床相关变化。
使用具有部分回波的冠状笛卡尔快速梯度回波序列采集超极化MRI,并使用k均值聚类算法进行分割。使用最大熵掩码,通过自定义算法和PyRadiomics平台生成感兴趣区域以进行纹理特征提取。主成分分析和Boruta分析用于特征选择。使用受试者操作特征曲线下面积和敏感度-特异度分析评估基于集成的和单机学习分类器。
我们评估了88名曾吸烟的参与者,并获取了 个月的随访数据,其中57名(22名女性/35名男性, 岁)的 变化可忽略不计,31名参与者(7名女性/24名男性, 岁)的 恶化。此外,88名曾吸烟者中有3人报告了吸烟状态的变化。我们生成了机器学习模型,使用人口统计学、肺量计和纹理特征来预测 的下降,其中后者产生了最高81%的分类准确率。组合模型(基于所有可用测量值进行训练)实现了总体最佳分类准确率82%;然而,它与仅基于MRI纹理特征训练的模型没有显著差异。
我们首次采用超极化MRI通气纹理特征和机器学习,以82%的准确率识别出 下降加速的曾吸烟者。