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- Title
Identifying cardiomegaly in chest X-rays: a cross-sectional study of evaluation and comparison between different transfer learning methods.
- Authors
Bougias, Haralabos; Georgiadou, Eleni; Malamateniou, Christina; Stogiannos, Nikolaos
- Abstract
Background: Cardiomegaly is a relatively common incidental finding on chest X-rays; if left untreated, it can result in significant complications. Using Artificial Intelligence for diagnosing cardiomegaly could be beneficial, as this pathology may be underreported, or overlooked, especially in busy or under-staffed settings. Purpose: To explore the feasibility of applying four different transfer learning methods to identify the presence of cardiomegaly in chest X-rays and to compare their diagnostic performance using the radiologists' report as the gold standard. Material and Methods: Two thousand chest X-rays were utilized in the current study: 1000 were normal and 1000 had confirmed cardiomegaly. Of these exams, 80% were used for training and 20% as a holdout test dataset. A total of 2048 deep features were extracted using Google's Inception V3, VGG16, VGG19, and SqueezeNet networks. A logistic regression algorithm optimized in regularization terms was used to classify chest X-rays into those with presence or absence of cardiomegaly. Results: Diagnostic accuracy is reported by means of sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV), with the VGG19 network providing the best values of sensitivity (84%), specificity (83%), PPV (83%), NPV (84%), and overall accuracy (84,5%). The other networks presented sensitivity at 64.1%–82%, specificity at 77.1%–81.1%, PPV at 74%–81.4%, NPV at 68%–82%, and overall accuracy at 71%–81.3%. Conclusion: Deep learning using transfer learning methods based on VGG19 network can be used for the automatic detection of cardiomegaly on chest X-ray images. However, further validation and training of each method is required before application to clinical cases.
- Subjects
FEATURE extraction; CARDIAC hypertrophy; TRANSFER of training; X-rays; CLINICAL medicine
- Publication
Acta Radiologica, 2021, Vol 62, Issue 12, p1601
- ISSN
0284-1851
- Publication type
Article
- DOI
10.1177/0284185120973630