Multi-Label Transfer Learning for Identifying Lung Diseases using Chest X-Rays

Author(s):  
Azza El-Fiky ◽  
Marwa Ahmed Shouman ◽  
Salwa Hamada ◽  
Ayman El-Sayed ◽  
Mohamed Esmail Karar
Author(s):  
Md. Asif Iqbal Fahim ◽  
Feroza Naznin ◽  
Mohammad Ali Moni ◽  
Md Zahidul Islam
Keyword(s):  

Author(s):  
Christopher H. Fanta

This Chest X-Ray Refresher is organized as a game. For each of the three topics to be discussed, we offer four chest x-rays and four clinical histories. The order of each set is random. The exercise asks that you consider the clues in the history and the findings on chest x-ray to match the history with the x-ray. In many instances, the combination will suggest a diagnosis or a limited differential of diagnostic possibilities. The three topics to be discussed are hemoptysis, chronic interstitial lung diseases, and obstructive lung diseases.


2020 ◽  
Vol 43 (4) ◽  
pp. 1289-1303
Author(s):  
Taban Majeed ◽  
Rasber Rashid ◽  
Dashti Ali ◽  
Aras Asaad
Keyword(s):  

2021 ◽  
Author(s):  
Yang Yang ◽  
Xueyan Mei ◽  
Philip Robson ◽  
Brett Marinelli ◽  
Mingqian Huang ◽  
...  

Abstract Most current medical imaging Artificial Intelligence (AI) relies upon transfer learning using convolutional neural networks (CNNs) created using ImageNet, a large database of natural world images, including cats, dogs, and vehicles. Size, diversity, and similarity of the source data determine the success of the transfer learning on the target data. ImageNet is large and diverse, but there is a significant dissimilarity between its natural world images and medical images, leading Cheplygina to pose the question, “Why do we still use images of cats to help Artificial Intelligence interpret CAT scans?”. We present an equally large and diversified database, RadImageNet, consisting of 5 million annotated medical images consisting of CT, MRI, and ultrasound of musculoskeletal, neurologic, oncologic, gastrointestinal, endocrine, and pulmonary pathologies over 450,000 patients. The database is unprecedented in scale and breadth in the medical imaging field, constituting a more appropriate basis for medical imaging transfer learning applications. We found that RadImageNet transfer learning outperformed ImageNet in multiple independent applications, including improvements for bone age prediction from hand and wrist x-rays by 1.75 months (p<0.0001), pneumonia detection in ICU chest x-rays by 0.85% (p<0.0001), ACL tear detection on MRI by 10.72% (p<0.0001), SARS-CoV-2 detection on chest CT by 0.25% (p<0.0001) and hemorrhage detection on head CT by 0.13% (p<0.0001). The results indicate that our pre-trained models that are open-sourced on public domains will be a better starting point for transfer learning in radiologic imaging AI applications, including applications involving medical imaging modalities or anatomies not included in the RadImageNet database.


Sign in / Sign up

Export Citation Format

Share Document