医学
慢性阻塞性肺病
肺活量测定
肺病
心理干预
疾病
物理疗法
重症监护医学
内科学
哮喘
精神科
作者
Ryan Wang,Li-Ching Chen,Lama Moukheiber,Kenneth P. Seastedt,Mira Moukheiber,Dana Moukheiber,Zachary Zaiman,Sulaiman Moukheiber,Tess Litchman,Hari Trivedi,Rebecca Steinberg,Judy Wawira Gichoya,Po‐Chih Kuo,Leo Anthony Celi
标识
DOI:10.1016/j.ijmedinf.2023.105211
摘要
Chronic obstructive pulmonary disease (COPD) is one of the most common chronic illnesses in the world. Unfortunately, COPD is often difficult to diagnose early when interventions can alter the disease course, and it is underdiagnosed or only diagnosed too late for effective treatment. Currently, spirometry is the gold standard for diagnosing COPD but it can be challenging to obtain, especially in resource-poor countries. Chest X-rays (CXRs), however, are readily available and may have the potential as a screening tool to identify patients with COPD who should undergo further testing or intervention. In this study, we used three CXR datasets alongside their respective electronic health records (EHR) to develop and externally validate our models.To leverage the performance of convolutional neural network models, we proposed two fusion schemes: (1) model-level fusion, using Bootstrap aggregating to aggregate predictions from two models, (2) data-level fusion, using CXR image data from different institutions or multi-modal data, CXR image data, and EHR data for model training. Fairness analysis was then performed to evaluate the models across different demographic groups.Our results demonstrate that DL models can detect COPD using CXRs with an area under the curve of over 0.75, which could facilitate patient screening for COPD, especially in low-resource regions where CXRs are more accessible than spirometry.By using a ubiquitous test, future research could build on this work to detect COPD in patients early who would not otherwise have been diagnosed or treated, altering the course of this highly morbid disease.
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