AI Article Synopsis

  • The study investigates using Deep Learning to detect and classify pathological patterns in chest X-ray images from tuberculosis patients.
  • The research involved taking digital photographs of X-rays from TB patients and classifying them into various categories, followed by analysis using Deep Learning software.
  • Results showed that the software had high accuracy in localizing pathological areas, but some misclassifications occurred, indicating that improvements and larger data sets are needed for better diagnostic outcomes.

Article Abstract

Objective: To evaluate the feasibility of Deep Learning-based detection and classification of pathological patterns in a set of digital photographs of chest X-ray (CXR) images of tuberculosis (TB) patients.

Materials And Methods: In this prospective, observational study, patients with previously diagnosed TB were enrolled. Photographs of their CXRs were taken using a consumer-grade digital still camera. The images were stratified by pathological patterns into classes: cavity, consolidation, effusion, interstitial changes, miliary pattern or normal examination. Image analysis was performed with commercially available Deep Learning software in two steps. Pathological areas were first localised; detected areas were then classified. Detection was assessed using receiver operating characteristics (ROC) analysis, and classification using a confusion matrix.

Results: The study cohort was 138 patients with human immunodeficiency virus (HIV) and TB co-infection (median age 34 years, IQR 28-40); 54 patients were female. Localisation of pathological areas was excellent (area under the ROC curve 0.82). The software could perfectly distinguish pleural effusions from intraparenchymal changes. The most frequent misclassifications were consolidations as cavitations, and miliary patterns as interstitial patterns (and vice versa).

Conclusion: Deep Learning analysis of CXR photographs is a promising tool. Further efforts are needed to build larger, high-quality data sets to achieve better diagnostic performance.

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Source
http://dx.doi.org/10.5588/ijtld.17.0520DOI Listing

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