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肺活量测定值可通过一张胸部X光片估算得出。

Spirometry test values can be estimated from a single chest radiograph.

作者信息

Yoshida Akifumi, Kai Chiharu, Futamura Hitoshi, Oochi Kunihiko, Kondo Satoshi, Sato Ikumi, Kasai Satoshi

机构信息

Department of Radiological Technology, Faculty of Medical Technology, Niigata University of Health and Welfare, Niigata, Japan.

Major in Health and Welfare, Graduate School of Niigata University of Health and Welfare, Niigata, Japan.

出版信息

Front Med (Lausanne). 2024 Mar 6;11:1335958. doi: 10.3389/fmed.2024.1335958. eCollection 2024.

Abstract

INTRODUCTION

Physical measurements of expiratory flow volume and speed can be obtained using spirometry. These measurements have been used for the diagnosis and risk assessment of chronic obstructive pulmonary disease and play a crucial role in delivering early care. However, spirometry is not performed frequently in routine clinical practice, thereby hindering the early detection of pulmonary function impairment. Chest radiographs (CXRs), though acquired frequently, are not used to measure pulmonary functional information. This study aimed to evaluate whether spirometry parameters can be estimated accurately from single frontal CXR without image findings using deep learning.

METHODS

Forced vital capacity (FVC), forced expiratory volume in 1 s (FEV), and FEV/FVC as spirometry measurements as well as the corresponding chest radiographs of 11,837 participants were used in this study. The data were randomly allocated to the training, validation, and evaluation datasets at an 8:1:1 ratio. A deep learning network was pretrained using ImageNet. The input and output information were CXRs and spirometry test values, respectively. The training and evaluation of the deep learning network were performed separately for each parameter. The mean absolute error rate (MAPE) and Pearson's correlation coefficient () were used as the evaluation indices.

RESULTS

The MAPEs between the spirometry measurements and AI estimates for FVC, FEV and FEV/FVC were 7.59% ( = 0.910), 9.06% ( = 0.879) and 5.21% ( = 0.522), respectively. A strong positive correlation was observed between the measured and predicted indices of FVC and FEV. The average accuracy of >90% was obtained in each estimation of spirometry indices. Bland-Altman analysis revealed good agreement between the estimated and measured values for FVC and FEV.

DISCUSSION

Frontal CXRs contain information related to pulmonary function, and AI estimation performed using frontal CXRs without image findings could accurately estimate spirometry values. The network proposed for estimating pulmonary function in this study could serve as a recommendation for performing spirometry or as an alternative method, suggesting its utility.

摘要

引言

可使用肺活量测定法获得呼气流量和速度的物理测量值。这些测量值已用于慢性阻塞性肺疾病的诊断和风险评估,并在提供早期护理方面发挥着关键作用。然而,肺活量测定法在常规临床实践中并不经常进行,从而阻碍了肺功能损害的早期检测。胸部X光片(CXR)虽然经常获取,但并不用于测量肺功能信息。本研究旨在评估是否可以使用深度学习从无影像表现的单次正位胸部X光片中准确估计肺活量测定参数。

方法

本研究使用了11837名参与者的肺活量测定测量值,即用力肺活量(FVC)、1秒用力呼气量(FEV)和FEV/FVC,以及相应的胸部X光片。数据以8:1:1的比例随机分配到训练、验证和评估数据集。使用ImageNet对深度学习网络进行预训练。输入和输出信息分别为胸部X光片和肺活量测定测试值。针对每个参数分别进行深度学习网络的训练和评估。平均绝对误差率(MAPE)和皮尔逊相关系数()用作评估指标。

结果

FVC、FEV和FEV/FVC的肺活量测定测量值与人工智能估计值之间的MAPE分别为7.59%(=0.910)、9.06%(=0.879)和5.21%(=0.522)。FVC和FEV的测量指标与预测指标之间观察到强正相关。每次肺活量测定指标估计的平均准确率均超过90%。Bland-Altman分析显示FVC和FEV的估计值与测量值之间具有良好的一致性。

讨论

正位胸部X光片包含与肺功能相关的信息,使用无影像表现的正位胸部X光片进行的人工智能估计可以准确估计肺活量测定值。本研究中提出的用于估计肺功能的网络可以作为进行肺活量测定的建议或替代方法,表明了其效用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/07a3/10953498/a857ce1cf0d7/fmed-11-1335958-g001.jpg

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