Explainable Deep Learning Algorithm for Distinguishing Incomplete
Kawasaki Disease by Coronary Artery Lesions on Echocardiographic Imaging
- URL: http://arxiv.org/abs/2204.02403v1
- Date: Tue, 5 Apr 2022 11:39:02 GMT
- Title: Explainable Deep Learning Algorithm for Distinguishing Incomplete
Kawasaki Disease by Coronary Artery Lesions on Echocardiographic Imaging
- Authors: Haeyun Lee, Yongsoon Eun, Jae Youn Hwang, Lucy Youngmin Eun
- Abstract summary: Kawasaki disease (KD) has often been misdiagnosed due to a lack of clinical manifestations.
Findings: SE-ResNext50 showed the best performance in terms of accuracy, specificity, and precision in the classification.
- Score: 2.8620557933595583
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Background and Objective: Incomplete Kawasaki disease (KD) has often been
misdiagnosed due to a lack of the clinical manifestations of classic KD.
However, it is associated with a markedly higher prevalence of coronary artery
lesions. Identifying coronary artery lesions by echocardiography is important
for the timely diagnosis of and favorable outcomes in KD. Moreover, similar to
KD, coronavirus disease 2019, currently causing a worldwide pandemic, also
manifests with fever; therefore, it is crucial at this moment that KD should be
distinguished clearly among the febrile diseases in children. In this study, we
aimed to validate a deep learning algorithm for classification of KD and other
acute febrile diseases.
Methods: We obtained coronary artery images by echocardiography of children
(n = 88 for KD; n = 65 for pneumonia). We trained six deep learning networks
(VGG19, Xception, ResNet50, ResNext50, SE-ResNet50, and SE-ResNext50) using the
collected data.
Results: SE-ResNext50 showed the best performance in terms of accuracy,
specificity, and precision in the classification. SE-ResNext50 offered a
precision of 76.35%, a sensitivity of 82.64%, and a specificity of 58.12%.
Conclusions: The results of our study suggested that deep learning algorithms
have similar performance to an experienced cardiologist in detecting coronary
artery lesions to facilitate the diagnosis of KD.
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