Accuracy of digital chest x-ray analysis with artificial intelligence software as a triage and screening tool in hospitalized patients being evaluated for tuberculosis in Lima, Peru.
Amanda M BiewerChristine TzeliosKaren TintayaBetsabe RomanShelley HurwitzCourtney M YuenCarole D MitnickEdward NardellLeonid LeccaDylan B TierneyRuvandhi R NathavitharanaPublished in: PLOS global public health (2024)
Tuberculosis (TB) transmission in healthcare facilities is common in high-incidence countries. Yet, the optimal approach for identifying inpatients who may have TB is unclear. We evaluated the diagnostic accuracy of qXR (Qure.ai, India) computer-aided detection (CAD) software versions 3.0 and 4.0 (v3 and v4) as a triage and screening tool within the FAST (Find cases Actively, Separate safely, and Treat effectively) transmission control strategy. We prospectively enrolled two cohorts of patients admitted to a tertiary hospital in Lima, Peru: one group had cough or TB risk factors (triage) and the other did not report cough or TB risk factors (screening). We evaluated the sensitivity and specificity of qXR for the diagnosis of pulmonary TB using culture and Xpert as primary and secondary reference standards, including stratified analyses based on risk factors. In the triage cohort (n = 387), qXR v4 sensitivity was 0.91 (59/65, 95% CI 0.81-0.97) and specificity was 0.32 (103/322, 95% CI 0.27-0.37) using culture as reference standard. There was no difference in the area under the receiver-operating-characteristic curve (AUC) between qXR v3 and qXR v4 with either a culture or Xpert reference standard. In the screening cohort (n = 191), only one patient had a positive Xpert result, but specificity in this cohort was high (>90%). A high prevalence of radiographic lung abnormalities, most notably opacities (81%), consolidation (62%), or nodules (58%), was detected by qXR on digital CXR images from the triage cohort. qXR had high sensitivity but low specificity as a triage in hospitalized patients with cough or TB risk factors. Screening patients without cough or risk factors in this setting had a low diagnostic yield. These findings further support the need for population and setting-specific thresholds for CAD programs.
Keyphrases
- risk factors
- mycobacterium tuberculosis
- emergency department
- artificial intelligence
- healthcare
- deep learning
- coronary artery disease
- end stage renal disease
- machine learning
- pulmonary tuberculosis
- high resolution
- newly diagnosed
- public health
- big data
- magnetic resonance imaging
- peritoneal dialysis
- chronic kidney disease
- structural basis
- hiv aids
- ejection fraction
- health information
- data analysis
- optical coherence tomography
- patient reported outcomes
- patient reported
- loop mediated isothermal amplification