School of Public Health, Anhui Medical University, 81 Meishan Road, Hefei 230032, China.
The Third People's Hospital of Hefei, Hefei Third Clinical College of Anhui Medical University, Hefei 230022, China.
Comput Methods Programs Biomed. 2022 Oct;225:107098. doi: 10.1016/j.cmpb.2022.107098. Epub 2022 Aug 27.
The progressive worsening of pneumoconiosis will ensue a hazardous physical condition in patients. This study details the differential diagnosis of the pneumoconiosis stage, by employing computed tomography (CT) texture analysis, based on U-Net neural network.
The pneumoconiosis location from 92 patients at various stages was extracted by U-Net neural network. Mazda software was employed to analyze the texture features. Three dimensionality reduction methods set the best texture parameters. We applied four methods of the B11 module to analyze the selected texture parameters and calculate the misclassified rate (MCR). Finally, the receiver operating characteristic curve (ROC) of the texture parameters was analyzed, and the texture parameters with diagnostic efficiency were evaluated by calculating the area under curve (AUC).
The original film was processed by Gaussian and Laplace filters for a better display of the segmented area of pneumoconiosis in all stages. The MCR value obtained by the NDA analysis method under the MI dimension reduction method was the lowest, at 10.87%. In the filtered texture feature parameters, the best AUC was 0.821.
CT texture analysis based on the U-Net neural network can be used to identify the staging of pneumoconiosis.
尘肺病的病情逐渐恶化会导致患者身体状况出现危险。本研究通过 U-Net 神经网络,采用 CT 纹理分析技术,详细描述尘肺病分期的鉴别诊断。
通过 U-Net 神经网络提取 92 例不同分期尘肺病患者的病变位置,采用 Mazda 软件分析纹理特征,选择三维降维方法设定最佳纹理参数。应用 B11 模块的 4 种方法分析所选纹理参数并计算误分类率(MCR)。最后,对纹理参数的受试者工作特征曲线(ROC)进行分析,并通过计算曲线下面积(AUC)来评估具有诊断效率的纹理参数。
原始图像通过高斯和拉普拉斯滤波器进行处理,以更好地显示各期尘肺病的分割区域。在 MI 降维方法下,NDA 分析方法得到的 MCR 值最低,为 10.87%。在滤波后的纹理特征参数中,最佳 AUC 为 0.821。
基于 U-Net 神经网络的 CT 纹理分析可用于识别尘肺病分期。