School of Mechanical Engineering, Kyungpook National University, Daegu, Republic of Korea.
Department of Internal Medicine and Environmental Health Center, Kangwon National University Hospital, School of Medicine, Kangwon National University, Chuncheon, Republic of Korea.
Comput Biol Med. 2022 Feb;141:105162. doi: 10.1016/j.compbiomed.2021.105162. Epub 2021 Dec 21.
Cement dust exposure is likely to affect the structural and functional alterations in segmental airways and parenchymal lungs. This study develops an artificial neural network (ANN) model for identifying cement dust-exposed (CDE) subjects using quantitative computed tomography-based airway structural and functional features.
We obtained the airway features in five central and five sub-grouped segmental regions and the lung features in five lobar regions and one total lung region from 311 CDE and 298 non-CDE (NCDE) subjects. The five-fold cross-validation method was adopted to train the following classification models:ANN, support vector machine (SVM), logistic regression (LR), and decision tree (DT). For all the classification models, linear discriminant analysis (LDA) and genetic algorithm (GA) were applied for dimensional reduction and hyperparameterization, respectively. The ANN model without LDA was also optimized by the GA method to observe the effect of the dimensional reduction.
The genetically optimized ANN model without the LDA method was the best in terms of the classification accuracy. The accuracy, sensitivity, and specificity of the GA-ANN model with four layers were greater than those of the other classification models (i.e., ANN, SVM, LR, and DT using LDA and GA methods) in the five-fold cross-validation. The average values of accuracy, sensitivity, and specificity for the five-fold cross-validation were 97.0%, 98.7%, and 98.6%, respectively.
We demonstrated herein that a quantitative computed tomography-based ANN model could more effectively detect CDE subjects when compared to their counterpart models. By employing the model, the CDE subjects may be identified early for therapeutic intervention.
水泥尘暴露可能影响节段性气道和实质肺的结构和功能改变。本研究开发了一种人工神经网络(ANN)模型,用于使用基于定量计算机断层扫描的气道结构和功能特征识别水泥尘暴露(CDE)受试者。
我们从 311 名 CDE 和 298 名非 CDE(NCDE)受试者中获得了五个中央和五个分组节段区域的气道特征以及五个叶区和一个全肺区域的肺特征。采用五折交叉验证法训练以下分类模型:人工神经网络(ANN)、支持向量机(SVM)、逻辑回归(LR)和决策树(DT)。对于所有分类模型,分别采用线性判别分析(LDA)和遗传算法(GA)进行降维和超参数化。还通过 GA 方法优化了没有 LDA 的 ANN 模型,以观察降维的效果。
在分类准确性方面,没有 LDA 的遗传优化 ANN 模型是最好的。在五折交叉验证中,具有四层结构的 GA-ANN 模型的准确性、灵敏度和特异性均高于其他分类模型(即使用 LDA 和 GA 方法的 ANN、SVM、LR 和 DT)。五折交叉验证的平均准确性、灵敏度和特异性值分别为 97.0%、98.7%和 98.6%。
与其他模型相比,本研究证明了基于定量计算机断层扫描的 ANN 模型在检测 CDE 受试者时更有效。通过使用该模型,可能会更早地识别出 CDE 受试者,以便进行治疗干预。