3 research outputs found

    Real-world evaluation of rapid and laboratory-free COVID-19 triage for emergency care: external validation and pilot deployment of artificial intelligence driven screening

    No full text
    Background Uncertainty in patients' COVID-19 status contributes to treatment delays, nosocomial transmission, and operational pressures in hospitals. However, the typical turnaround time for laboratory PCR remains 12โ€“24 h and lateral flow devices (LFDs) have limited sensitivity. Previously, we have shown that artificial intelligence-driven triage (CURIAL-1.0) can provide rapid COVID-19 screening using clinical data routinely available within 1 h of arrival to hospital. Here, we aimed to improve the time from arrival to the emergency department to the availability of a result, do external and prospective validation, and deploy a novel laboratory-free screening tool in a UK emergency department. Methods We optimised our previous model, removing less informative predictors to improve generalisability and speed, developing the CURIAL-Lab model with vital signs and readily available blood tests (full blood count [FBC]; urea, creatinine, and electrolytes; liver function tests; and C-reactive protein) and the CURIAL-Rapide model with vital signs and FBC alone. Models were validated externally for emergency admissions to University Hospitals Birmingham, Bedfordshire Hospitals, and Portsmouth Hospitals University National Health Service (NHS) trusts, and prospectively at Oxford University Hospitals, by comparison with PCR testing. Next, we compared model performance directly against LFDs and evaluated a combined pathway that triaged patients who had either a positive CURIAL model result or a positive LFD to a COVID-19-suspected clinical area. Lastly, we deployed CURIAL-Rapide alongside an approved point-of-care FBC analyser to provide laboratory-free COVID-19 screening at the John Radcliffe Hospital (Oxford, UK). Our primary improvement outcome was time-to-result, and our performance measures were sensitivity, specificity, positive and negative predictive values, and area under receiver operating characteristic curve (AUROC). Findings 72โ€‰223 patients met eligibility criteria across the four validating hospital groups, in a total validation period spanning Dec 1, 2019, to March 31, 2021. CURIAL-Lab and CURIAL-Rapide performed consistently across trusts (AUROC range 0ยท858โ€“0ยท881, 95% CI 0ยท838โ€“0ยท912, for CURIAL-Lab and 0ยท836โ€“0ยท854, 0ยท814โ€“0ยท889, for CURIAL-Rapide), achieving highest sensitivity at Portsmouth Hospitals (84ยท1%, Wilson's 95% CI 82ยท5โ€“85ยท7, for CURIAL-Lab and 83ยท5%, 81ยท8โ€“85ยท1, for CURIAL-Rapide) at specificities of 71ยท3% (70ยท9โ€“71ยท8) for CURIAL-Lab and 63ยท6% (63ยท1โ€“64ยท1) for CURIAL-Rapide. When combined with LFDs, model predictions improved triage sensitivity from 56ยท9% (51ยท7โ€“62ยท0) for LFDs alone to 85ยท6% with CURIAL-Lab (81ยท6โ€“88ยท9; AUROC 0ยท925) and 88ยท2% with CURIAL-Rapide (84ยท4โ€“91ยท1; AUROC 0ยท919), thereby reducing missed COVID-19 cases by 65% with CURIAL-Lab and 72% with CURIAL-Rapide. For the prospective deployment of CURIAL-Rapide, 520 patients were enrolled for point-of-care FBC analysis between Feb 18 and May 10, 2021, of whom 436 received confirmatory PCR testing and ten (2ยท3%) tested positive. Median time from arrival to a CURIAL-Rapide result was 45 min (IQR 32โ€“64), 16 min (26ยท3%) sooner than with LFDs (61 min, 37โ€“99; log-rank p<0ยท0001), and 6 h 52 min (90ยท2%) sooner than with PCR (7 h 37 min, 6 h 5 min to 15 h 39 min; p<0ยท0001). Classification performance was high, with sensitivity of 87ยท5% (95% CI 52ยท9โ€“97ยท8), specificity of 85ยท4% (81ยท3โ€“88ยท7), and negative predictive value of 99ยท7% (98ยท2โ€“99ยท9). CURIAL-Rapide correctly excluded infection for 31 (58ยท5%) of 53 patients who were triaged by a physician to a COVID-19-suspected area but went on to test negative by PCR. Interpretation Our findings show the generalisability, performance, and real-world operational benefits of artificial intelligence-driven screening for COVID-19 over standard-of-care in emergency departments. CURIAL-Rapide provided rapid, laboratory-free screening when used with near-patient FBC analysis, and was able to reduce the number of patients who tested negative for COVID-19 but were triaged to COVID-19-suspected areas

    Rapid triage for COVID-19 using routine clinical data for patients attending hospital: development and prospective validation of an artificial intelligence screening test

    No full text
    Background: The early clinical course of COVID-19 can be difficult to distinguish from other illnesses driving presentation to hospital. However, viral-specific PCR testing has limited sensitivity and results can take up to 72 h for operational reasons. We aimed to develop and validate two early-detection models for COVID-19, screening for the disease among patients attending the emergency department and the subset being admitted to hospital, using routinely collected health-care data (laboratory tests, blood gas measurements, and vital signs). These data are typically available within the first hour of presentation to hospitals in high-income and middle-income countries, within the existing laboratory infrastructure. Methods: We trained linear and non-linear machine learning classifiers to distinguish patients with COVID-19 from pre-pandemic controls, using electronic health record data for patients presenting to the emergency department and admitted across a group of four teaching hospitals in Oxfordshire, UK (Oxford University Hospitals). Data extracted included presentation blood tests, blood gas testing, vital signs, and results of PCR testing for respiratory viruses. Adult patients (>18 years) presenting to hospital before Dec 1, 2019 (before the first COVID-19 outbreak), were included in the COVID-19-negative cohort; those presenting to hospital between Dec 1, 2019, and April 19, 2020, with PCR-confirmed severe acute respiratory syndrome coronavirus 2 infection were included in the COVID-19-positive cohort. Patients who were subsequently admitted to hospital were included in their respective COVID-19-negative or COVID-19-positive admissions cohorts. Models were calibrated to sensitivities of 70%, 80%, and 90% during training, and performance was initially assessed on a held-out test set generated by an 80:20 split stratified by patients with COVID-19 and balanced equally with pre-pandemic controls. To simulate real-world performance at different stages of an epidemic, we generated test sets with varying prevalences of COVID-19 and assessed predictive values for our models. We prospectively validated our 80% sensitivity models for all patients presenting or admitted to the Oxford University Hospitals between April 20 and May 6, 2020, comparing model predictions with PCR test results. Findings: We assessed 155โ€ˆ689 adult patients presenting to hospital between Dec 1, 2017, and April 19, 2020. 114โ€ˆ957 patients were included in the COVID-negative cohort and 437 in the COVID-positive cohort, for a full study population of 115โ€ˆ394 patients, with 72โ€ˆ310 admitted to hospital. With a sensitive configuration of 80%, our emergency department (ED) model achieved 77ยท4% sensitivity and 95ยท7% specificity (area under the receiver operating characteristic curve [AUROC] 0ยท939) for COVID-19 among all patients attending hospital, and the admissions model achieved 77ยท4% sensitivity and 94ยท8% specificity (AUROC 0ยท940) for the subset of patients admitted to hospital. Both models achieved high negative predictive values (NPV; >98ยท5%) across a range of prevalences (โ‰ค5%). We prospectively validated our models for all patients presenting and admitted to Oxford University Hospitals in a 2-week test period. The ED model (3326 patients) achieved 92ยท3% accuracy (NPV 97ยท6%, AUROC 0ยท881), and the admissions model (1715 patients) achieved 92ยท5% accuracy (97ยท7%, 0ยท871) in comparison with PCR results. Sensitivity analyses to account for uncertainty in negative PCR results improved apparent accuracy (ED model 95ยท1%, admissions model 94ยท1%) and NPV (ED model 99ยท0%, admissions model 98ยท5%). Interpretation: Our models performed effectively as a screening test for COVID-19, excluding the illness with high-confidence by use of clinical data routinely available within 1 h of presentation to hospital. Our approach is rapidly scalable, fitting within the existing laboratory testing infrastructure and standard of care of hospitals in high-income and middle-income countries. Funding: Wellcome Trust, University of Oxford, Engineering and Physical Sciences Research Council, National Institute for Health Research Oxford Biomedical Research Centre.</p

    The interplay between oxidative stress and bioenergetic failure in neuropsychiatric illnesses: can we explain it and can we treat it?

    No full text
    corecore