Hiring in life sciences? Share your open positions with our professional community. Read more Close

Advertisement

Enhanced Detection of Pulmonary Edema in Chest X-rays Using Deep Learning Ensembles with Attention Mechanism.

Created on 08 Oct 2025

Authors

Waseem Abbasi, Afshan Shahzadi, Abeer Aljohani

Published in

Journal of imaging informatics in medicine. Oct 07, 2025. Epub Oct 07, 2025.

Abstract

Pulmonary edema, defined by the abnormal presence of excess fluid within the lungs, is a severe medical emergency that mandates accurate and immediate diagnosis. The use of classical diagnostic techniques-inspection, palpation, percussion, and auscultation-tends to be subjective and highly dependent on the clinician's experience, potentially resulting in variability in diagnosis and possible delays in treatment. This work provides a deep learning approach to the automatic diagnosis of pulmonary edema from chest X-ray images based on the NIH Chest X-ray dataset. The model based on the proposed CNN obtained a validation loss of 0.3350, an accuracy of 90%, and an F1-score of 0.91. The cross-validation further proved the model to be robust, with a total accuracy of 87%. These findings illustrate the performance of the model in the effective classification of pulmonary edema, hence facilitating quicker and more accurate clinical decision-making. Feature learning and representation were achieved with CNNs, boosted with attention and data augmentation strategies to favor generalization across patient populations and image variations. The integration of transparency aids like attention maps is imperative to validate the model's decision-making process, meeting the key criteria for clinical approval. In summary, this research provides a prospective solution to the early diagnosis of pulmonary edema, further leading to enhanced diagnostic processes and better patient care.

PMID:
41057721
Bibliographic data and abstract were imported from PubMed on 08 Oct 2025.

Read full publication at:
Please sign in to see all details.

Advertisement

Stats

  • Community rating n/a 0 votes
  • Reviewers' rating n/a 0 votes
  • Your rating

1-terrible, 9-excellent. How would you rate this publication? Sign in in to submit your rating.

  • Recommendations n/a n/a positive of 0 vote(s)
  • Views 30
  • Comments 0

Recommended by

  • No recommendations yet.

Post a comment

You need to be signed in to post comments. You can sign in here.

Comments

There are no comments yet.

Advertisement