Prediction of Pulmonary to Systemic Flow Ratio in Patients With Congenital Heart Disease Using Deep Learning-Based Analysis of Chest Radiographs

被引:23
|
作者
Toba, Shuhei [1 ]
Mitani, Yoshihide [2 ]
Yodoya, Noriko [2 ]
Ohashi, Hiroyuki [2 ]
Sawada, Hirofumi [2 ]
Hayakawa, Hidetoshi [2 ]
Hirayama, Masahiro [2 ]
Futsuki, Ayano [1 ]
Yamamoto, Naoki [1 ]
Ito, Hisato [1 ]
Konuma, Takeshi [1 ]
Shimpo, Hideto [1 ,3 ]
Takao, Motoshi [1 ]
机构
[1] Mie Univ, Dept Thorac & Cardiovasc Surg, Grad Sch Med, 2-174 Edobashi, Tsu, Mie 5148507, Japan
[2] Mie Univ, Dept Pediat, Grad Sch Med, 2-174 Edobashi, Tsu, Mie 5148507, Japan
[3] Mie Prefectural Gen Med Ctr, Yokaichi, Mie, Japan
基金
日本学术振兴会;
关键词
CLASSIFICATION; VALIDATION; AGREEMENT; ALGORITHM; DOPPLER;
D O I
10.1001/jamacardio.2019.5620
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Question Does deep learning-based analysis of chest radiographs predict the pulmonary to systemic flow ratio in patients with congenital heart disease? Findings This retrospective observational study using 1031 cardiac catheterizations and chest radiographs showed that the pulmonary to systemic flow ratio predicted by a deep learning model was significantly correlated with the values calculated using the Fick method (intraclass correlation coefficient, 0.68). The diagnostic concordance rate of the model was significantly higher than that of experts (64 of 100 cases vs 49 of 100 cases). Meaning These results may allow clinicians to quantify otherwise qualitative and subjective findings of pulmonary vascularity in chest radiographs. Importance Chest radiography is a useful noninvasive modality to evaluate pulmonary blood flow status in patients with congenital heart disease. However, the predictive value of chest radiography is limited by the subjective and qualitive nature of the interpretation. Recently, deep learning has been used to analyze various images, but it has not been applied to analyzing chest radiographs in such patients. Objective To develop and validate a quantitative method to predict the pulmonary to systemic flow ratio from chest radiographs using deep learning. Design, Setting, and Participants This retrospective observational study included 1031 cardiac catheterizations performed for 657 patients from January 1, 2005, to April 30, 2019, at a tertiary center. Catheterizations without the Fick-derived pulmonary to systemic flow ratio or chest radiography performed within 1 month before catheterization were excluded. Seventy-eight patients (100 catheterizations) were randomly assigned for evaluation. A deep learning model that predicts the pulmonary to systemic flow ratio from chest radiographs was developed using the method of transfer learning. Main Outcomes and Measures Whether the model can predict the pulmonary to systemic flow ratio from chest radiographs was evaluated using the intraclass correlation coefficient and Bland-Altman analysis. The diagnostic concordance rate was compared with 3 certified pediatric cardiologists. The diagnostic performance for a high pulmonary to systemic flow ratio of 2.0 or more was evaluated using cross tabulation and a receiver operating characteristic curve. Results The study included 1031 catheterizations in 657 patients (522 males [51%]; median age, 3.4 years [interquartile range, 1.2-8.6 years]), in whom the mean (SD) Fick-derived pulmonary to systemic flow ratio was 1.43 (0.95). Diagnosis included congenital heart disease in 1008 catheterizations (98%). The intraclass correlation coefficient for the Fick-derived and deep learning-derived pulmonary to systemic flow ratio was 0.68, the log-transformed bias was 0.02, and the log-transformed precision was 0.12. The diagnostic concordance rate of the deep learning model was significantly higher than that of the experts (correctly classified 64 of 100 vs 49 of 100 chest radiographs; P = .02 [McNemar test]). For detecting a high pulmonary to systemic flow ratio, the sensitivity of the deep learning model was 0.47, the specificity was 0.95, and the area under the receiver operating curve was 0.88. Conclusions and Relevance The present investigation demonstrated that deep learning-based analysis of chest radiographs predicted the pulmonary to systemic flow ratio in patients with congenital heart disease. These findings suggest that the deep learning-based approach may confer an objective and quantitative evaluation of chest radiographs in the congenital heart disease clinic. This study develops and validates a quantitative method to predict the pulmonary to systemic flow ratio in patients with congenital heart disease from chest radiographs using deep learning.
引用
收藏
页码:449 / 457
页数:9
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