College of Medicine and Biological Information Engineering, Northeastern University, Shenyang 110169, China.
College of Health Science and Environmental Engineering, Shenzhen Technology University, Shenzhen 518118, China.
J Healthc Eng. 2023 Nov 3;2023:3715603. doi: 10.1155/2023/3715603. eCollection 2023.
Computed tomography (CT) has been regarded as the most effective modality for characterizing and quantifying chronic obstructive pulmonary disease (COPD). Therefore, chest CT images should provide more information for COPD diagnosis, such as COPD stage classification. This paper proposes a features combination strategy by concatenating three-dimension (3D) CNN features and lung radiomics features for COPD stage classification based on the multi-layer perceptron (MLP) classifier. First, 465 sets of chest HRCT images are automatically segmented by a trained ResU-Net, obtaining the lung images with the Hounsfield unit. Second, the 3D CNN features are extracted from the lung region images based on a truncated transfer learning strategy. Then, the lung radiomics features are extracted from the lung region images by PyRadiomics. Third, the MLP classifier with the best classification performance is determined by the 3D CNN features and the lung radiomics features. Finally, the proposed combined feature vector is used to improve the MLP classifier's performance. The results show that compared with CNN models and other ML classifiers, the MLP classifier with the best classification performance is determined. The MLP classifier with the proposed combined feature vector has achieved accuracy, mean precision, mean recall, mean 1-score, and AUC of 0.879, 0.879, 0.879, 0.875, and 0.971, respectively. Compared to the MLP classifier with the 3D CNN features selected by Lasso, our method based on the MLP classifier has improved the classification performance by 5.8% (accuracy), 5.3% (mean precision), 5.8% (mean recall), 5.4% (mean 1-score), and 2.5% (AUC). Compared to the MLP classifier with lung radiomics features selected by Lasso, our method based on the MLP classifier has improved the classification performance by 5.0% (accuracy), 5.1% (mean precision), 5.0% (mean recall), 5.1% (mean 1-score), and 2.1% (AUC). Therefore, it is concluded that our method is effective in improving the classification performance for COPD stage classification.
计算机断层扫描(CT)已被认为是描述和量化慢性阻塞性肺疾病(COPD)的最有效方式。因此,胸部 CT 图像应该为 COPD 的诊断提供更多信息,例如 COPD 分期分类。本文提出了一种特征组合策略,通过串联三维(3D)CNN 特征和肺放射组学特征,基于多层感知机(MLP)分类器进行 COPD 分期分类。首先,通过训练好的 ResU-Net 自动分割 465 组胸部高分辨率 CT 图像,获得 HU 单位的肺图像。其次,基于截断的迁移学习策略,从肺区域图像中提取 3D CNN 特征。然后,通过 PyRadiomics 从肺区域图像中提取肺放射组学特征。第三,通过 3D CNN 特征和肺放射组学特征确定具有最佳分类性能的 MLP 分类器。最后,使用提出的组合特征向量来提高 MLP 分类器的性能。结果表明,与 CNN 模型和其他 ML 分类器相比,确定了具有最佳分类性能的 MLP 分类器。使用所提出的组合特征向量的 MLP 分类器的准确性、平均精度、平均召回率、平均 1 分和 AUC 分别为 0.879、0.879、0.879、0.875 和 0.971。与通过 Lasso 选择 3D CNN 特征的 MLP 分类器相比,我们基于 MLP 分类器的方法将分类性能提高了 5.8%(准确性)、5.3%(平均精度)、5.8%(平均召回率)、5.4%(平均 1 分)和 2.5%(AUC)。与通过 Lasso 选择肺放射组学特征的 MLP 分类器相比,我们基于 MLP 分类器的方法将分类性能提高了 5.0%(准确性)、5.1%(平均精度)、5.0%(平均召回率)、5.1%(平均 1 分)和 2.1%(AUC)。因此,结论是我们的方法可以有效提高 COPD 分期分类的分类性能。