Prognostication of patients with COVID-19 using artificial intelligence based on chest x-rays and clinical data: a retrospective study

Chest x-ray is a relatively accessible, inexpensive, fast imaging modality that might be valuable in the prognostication of patients with COVID-19. We aimed to develop and evaluate an artificial intelligence system using chest x-rays and clinical data to predict disease severity and progression in p...

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Veröffentlicht in:The Lancet. Digital health 2021-05, Vol.3 (5), p.e286-e294
Hauptverfasser: Jiao, Zhicheng, Choi, Ji Whae, Halsey, Kasey, Tran, Thi My Linh, Hsieh, Ben, Wang, Dongcui, Eweje, Feyisope, Wang, Robin, Chang, Ken, Wu, Jing, Collins, Scott A, Yi, Thomas Y, Delworth, Andrew T, Liu, Tao, Healey, Terrance T, Lu, Shaolei, Wang, Jianxin, Feng, Xue, Atalay, Michael K, Yang, Li, Feldman, Michael, Zhang, Paul J L, Liao, Wei-Hua, Fan, Yong, Bai, Harrison X
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Sprache:eng
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Zusammenfassung:Chest x-ray is a relatively accessible, inexpensive, fast imaging modality that might be valuable in the prognostication of patients with COVID-19. We aimed to develop and evaluate an artificial intelligence system using chest x-rays and clinical data to predict disease severity and progression in patients with COVID-19. We did a retrospective study in multiple hospitals in the University of Pennsylvania Health System in Philadelphia, PA, USA, and Brown University affiliated hospitals in Providence, RI, USA. Patients who presented to a hospital in the University of Pennsylvania Health System via the emergency department, with a diagnosis of COVID-19 confirmed by RT-PCR and with an available chest x-ray from their initial presentation or admission, were retrospectively identified and randomly divided into training, validation, and test sets (7:1:2). Using the chest x-rays as input to an EfficientNet deep neural network and clinical data, models were trained to predict the binary outcome of disease severity (ie, critical or non-critical). The deep-learning features extracted from the model and clinical data were used to build time-to-event models to predict the risk of disease progression. The models were externally tested on patients who presented to an independent multicentre institution, Brown University affiliated hospitals, and compared with severity scores provided by radiologists. 1834 patients who presented via the University of Pennsylvania Health System between March 9 and July 20, 2020, were identified and assigned to the model training (n=1285), validation (n=183), or testing (n=366) sets. 475 patients who presented via the Brown University affiliated hospitals between March 1 and July 18, 2020, were identified for external testing of the models. When chest x-rays were added to clinical data for severity prediction, area under the receiver operating characteristic curve (ROC-AUC) increased from 0·821 (95% CI 0·796–0·828) to 0·846 (0·815–0·852; p
ISSN:2589-7500
2589-7500
DOI:10.1016/S2589-7500(21)00039-X