Deployment and validation of an AI system for detecting abnormal chest radiographs in clinical settings

Nguyen Ngoc Huy, Nguyen Ha Quy, Nguyen Nghia Trung, Nguyen Thang Viet, Pham Hieu Huy, Nguyen Tuan Ngoc-Minh

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Background: The purpose of this paper is to demonstrate a mechanism for deploying and validating an AI-based system for detecting abnormalities on chest X-ray scans at the Phu Tho General Hospital, Vietnam. We aim to investigate the performance of the system in real-world clinical settings and compare its effectiveness to the in-lab performance. Method: The AI system was directly integrated into the Hospital’s Picture Archiving and Communication System (PACS) after being trained on a fixed annotated dataset from other sources. The system’s performance was prospectively measured by matching and comparing the AI results with the radiology reports of 6,285 chest X-ray examinations extracted from the Hospital Information System (HIS) over the last 2 months of 2020. The normal/abnormal status of a radiology report was determined by a set of rules and served as the ground truth. Results: Our system achieves an F1 score—the harmonic average of the recall and the precision—of 0.653 (95% CI 0.635, 0.671) for detecting any abnormalities on chest X-rays. This corresponds to an accuracy of 79.6%, a sensitivity of 68.6%, and a specificity of 83.9%. Conclusions: Computer-Aided Diagnosis (CAD) systems for chest radiographs using artificial intelligence (AI) have recently shown great potential as a second opinion for radiologists. However, the performances of such systems were mostly evaluated on a fixed dataset in a retrospective manner and, thus, far from the real performances in clinical practice. Despite a significant drop from the in-lab performance, our result establishes a reasonable level of confidence in applying such a system in real-life situations.

Publisher: Frontiers in Digital Health

Article number: 890759

ISSN (Electronic): 2673253X

Keywords

  • chest X-ray (CXR)
  • clinical validation
  • Computer-Aided Diagnosis
  • deep learning
  • Picture Archiving and Communication System (PACS)

ASJC Scopus subject areas

  • Medicine (miscellaneous)
  • Biomedical Engineering
  • Health Informatics
  • Computer Science Applications

Publication year

2022

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