Using Artificial Intelligence to Stratify Normal versus Abnormal Chest X-rays: External Validation of a Deep Learning Algorithm at East Kent Hospitals University NHS Foundation Trust.
Sarah R BlakeNeelanjan DasManoj TadepalliBhargava ReddyAnshul SinghRohitashva AgrawalSubhankar ChattorajDhruv ShahPreetham PuthaPublished in: Diagnostics (Basel, Switzerland) (2023)
Background: The chest radiograph (CXR) is the most frequently performed radiological examination worldwide. The increasing volume of CXRs performed in hospitals causes reporting backlogs and increased waiting times for patients, potentially compromising timely clinical intervention and patient safety. Implementing computer-aided detection (CAD) artificial intelligence (AI) algorithms capable of accurate and rapid CXR reporting could help address such limitations. A novel use for AI reporting is the classification of CXRs as 'abnormal' or 'normal'. This classification could help optimize resource allocation and aid radiologists in managing their time efficiently. Methods: qXR is a CE-marked computer-aided detection (CAD) software trained on over 4.4 million CXRs. In this retrospective cross-sectional pre-deployment study, we evaluated the performance of qXR in stratifying normal and abnormal CXRs. We analyzed 1040 CXRs from various referral sources, including general practices (GP), Accident and Emergency (A&E) departments, and inpatient (IP) and outpatient (OP) settings at East Kent Hospitals University NHS Foundation Trust. The ground truth for the CXRs was established by assessing the agreement between two senior radiologists. Results: The CAD software had a sensitivity of 99.7% and a specificity of 67.4%. The sub-group analysis showed no statistically significant difference in performance across healthcare settings, age, gender, and X-ray manufacturer. Conclusions: The study showed that qXR can accurately stratify CXRs as normal versus abnormal, potentially reducing reporting backlogs and resulting in early patient intervention, which may result in better patient outcomes.
Keyphrases
- artificial intelligence
- deep learning
- machine learning
- patient safety
- healthcare
- big data
- convolutional neural network
- coronary artery disease
- cross sectional
- adverse drug
- randomized controlled trial
- loop mediated isothermal amplification
- quality improvement
- end stage renal disease
- public health
- chronic kidney disease
- high resolution
- mental health
- emergency department
- ejection fraction
- prognostic factors
- palliative care
- magnetic resonance
- drinking water
- magnetic resonance imaging
- resistance training
- label free
- sensitive detection
- patient reported outcomes
- patient reported