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Predicting Pulmonary Function Testing from Quantified Computed Tomography Using Machine Learning Algorithms in Patients with COPD

机译:使用机器学习算法从定量计算机断层扫描预测肺功能测试对COPD患者的预测

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摘要

Introduction: Quantitative computed tomography (qCT) is an emergent technique for diagnostics and research in patients with chronic obstructive pulmonary disease (COPD). qCT parameters demonstrate a correlation with pulmonary function tests and symptoms. However, qCT only provides anatomical, not functional, information. We evaluated five distinct, partial-machine learning-based mathematical models to predict lung function parameters from qCT values in comparison with pulmonary function tests. Methods: 75 patients with diagnosed COPD underwent body plethysmography and a dose-optimized qCT examination on a third-generation, dual-source CT with inspiration and expiration. Delta values (inspiration—expiration) were calculated afterwards. Four parameters were quantified: mean lung density, lung volume low-attenuated volume, and full width at half maximum. Five models were evaluated for best prediction: average prediction, median prediction, k-nearest neighbours (kNN), gradient boosting, and multilayer perceptron. Results: The lowest mean relative error (MRE) was calculated for the kNN model with 16%. Similar low MREs were found for polynomial regression as well as gradient boosting-based prediction. Other models led to higher MREs and thereby worse predictive performance. Beyond the sole MRE, distinct differences in prediction performance, dependent on the initial dataset (expiration, inspiration, delta), were found. Conclusion: Different, partially machine learning-based models allow the prediction of lung function values from static qCT parameters within a reasonable margin of error. Therefore, qCT parameters may contain more information than we currently utilize and can potentially augment standard functional lung testing.
机译:简介:定量计算机断层扫描(qCT)是一种用于慢性阻塞性肺疾病(COPD)患者的诊断和研究的新兴技术。 qCT参数证明与肺功能测试和症状相关。但是,qCT仅提供解剖信息,而不提供功能信息。我们评估了五个不同的,基于局部机器学习的数学模型,以与肺功能测试相比,从qCT值预测肺功能参数。方法:对75例被诊断为COPD的患者进行体体积描记术,并在第三代双源CT吸气和呼出气中进行剂量优化的qCT检查。随后计算出增量值(吸气-呼气)。量化了四个参数:平均肺密度,肺体积低衰减体积和最大宽度的一半。评价了五个模型以获得最佳预测:平均预测,中位数预测,k最近邻(kNN),梯度提升和多层感知器。结果:kNN模型的最低平均相对误差(MRE)计算为16%。对于多项式回归以及基于梯度增强的预测,发现了相似的低MRE。其他模型导致较高的MRE,从而导致较差的预测性能。除了唯一的MRE,还发现了预测性能的明显差异,这取决于初始数据集(到期时间,灵感,增量)。结论:基于局部机器学习的不同模型可以在合理的误差范围内根据静态qCT参数预测肺功能值。因此,qCT参数可能包含比我们目前使用的更多的信息,并且可能会增强标准的功能性肺部测试。

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