Developing a stroke alert trigger for clinical decision support at emergency triage using machine learning

BACKGROUND Acute stroke is an urgent medical condition that requires immediate assessment and treatment. Prompt identification of patients with suspected stroke at emergency department (ED) triage followed by timely activation of code stroke systems is the key to successful management of stroke. While false negative detection of stroke may prevent patients from receiving optimal treatment, excessive false positive alarms will substantially burden stroke neurologists. This study aimed to develop a stroke-alert trigger to identify patients with suspected stroke at ED triage. METHODS Patients who arrived at the ED within 12 h of symptom onset and were suspected of a stroke or transient ischemic attack or triaged with a stroke-related symptom were included. Clinical features at ED triage were collected, including the presenting complaint, triage level, self-reported medical history (hypertension, diabetes, hyperlipidemia, heart disease, and prior stroke), vital signs, and presence of atrial fibrillation. Three rule-based algorithms, ie, Face Arm Speech Test (FAST) and two flavors of Balance, Eyes, FAST (BE-FAST), and six machine learning (ML) techniques with various resampling methods were used to build classifiers for identification of patients with suspected stroke. Logistic regression (LR) was used to find important features. RESULTS The study population consisted of 1361 patients. The values of area under the precision-recall curve (AUPRC) were 0.737, 0.710, and 0.562 for the FAST, BE-FAST-1, and BE-FAST-2 models, respectively. The values of AUPRC for the top three ML models were 0.787 for classification and regression tree with undersampling, 0.783 for LR with synthetic minority oversampling technique (SMOTE), and 0.782 for LR with class weighting. Among the ML models, logistic regression and random forest models in general achieved higher values of AUPRC, in particular in those with class weighting or SMOTE to handle class imbalance problem. In addition to the presenting complaint and triage level, age, diastolic blood pressure, body temperature, and pulse rate, were also important features for developing a stroke-alert trigger. CONCLUSIONS ML techniques significantly improved the performance of prediction models for identification of patients with suspected stroke. Such ML models can be embedded in the electronic triage system for clinical decision support at ED triage.

[1]  Ahmet Arslan,et al.  Different medical data mining approaches based prediction of ischemic stroke , 2016, Comput. Methods Programs Biomed..

[2]  S. Sung,et al.  Increased use of thrombolytic therapy and shortening of in-hospital delays following acute ischemic stroke: experience on the establishment of a primary stroke center at a community hospital. , 2010, Acta neurologica Taiwanica.

[3]  M. Chen,et al.  Thrombectomy 6 to 24 Hours after Stroke with a Mismatch between Deficit and Infarct , 2018, The New England journal of medicine.

[4]  R. Leker,et al.  Incidence of DWI-positive stroke in patients with vertigo of unclear etiology, preliminary results , 2013, Neurological research.

[5]  Mark Goadrich,et al.  The relationship between Precision-Recall and ROC curves , 2006, ICML.

[6]  M. Kaste,et al.  Thrombolysis with alteplase 3 to 4.5 hours after acute ischemic stroke. , 2008, The New England journal of medicine.

[7]  P. Bath,et al.  Blood pressure management in acute stroke , 2016, Stroke and Vascular Neurology.

[8]  Gary A. Ford,et al.  Diagnostic Accuracy of Stroke Referrals From Primary Care, Emergency Room Physicians, and Ambulance Staff Using the Face Arm Speech Test , 2003, Stroke.

[9]  Haniye Sadat Sajadi,et al.  Global, regional, and national disability-adjusted life-years (DALYs) for 359 diseases and injuries and healthy life expectancy (HALE) for 195 countries and territories, 1990–2017: a systematic analysis for the Global Burden of Disease Study 2017 , 2018, The Lancet.

[10]  M. Alberts,et al.  Dawn of a New Era for Stroke Treatment: Implications of the DAWN Study for Acute Stroke Care and Stroke Systems of Care , 2018, Circulation.

[11]  N. Young,et al.  Aging and ischemic stroke , 2019, Aging.

[12]  G. Saposnik,et al.  In-Patient Code Stroke: A Quality Improvement Strategy to Overcome Knowledge-to-Action Gaps in Response Time , 2017, Stroke.

[13]  A. Qureshi Acute Hypertensive Response in Patients With Stroke: Pathophysiology and Management , 2008, Circulation.

[14]  J. Wardlaw,et al.  Temporal profile of body temperature in acute ischemic stroke: relation to stroke severity and outcome , 2012, BMC Neurology.

[15]  M. Bullard,et al.  Revisions to the Canadian Emergency Department Triage and Acuity Scale (CTAS) adult guidelines. , 2008, CJEM.

[16]  J. Volkmann,et al.  Relation of infarction location and volume to vertigo in vertebrobasilar stroke , 2020, Brain and behavior.

[17]  Mu-Chien Sun,et al.  Time cost of a nonclosing intravenous thrombolysis service for acute ischemic stroke. , 2015, Journal of the Formosan Medical Association = Taiwan yi zhi.

[18]  Sung-Chun Tang,et al.  Stroke Code Improves Intravenous Thrombolysis Administration in Acute Ischemic Stroke , 2014, PloS one.

[19]  Eric E. Smith,et al.  Characteristics, Performance Measures, and In-Hospital Outcomes of the First One Million Stroke and Transient Ischemic Attack Admissions in Get With The Guidelines-Stroke , 2010, Circulation. Cardiovascular quality and outcomes.

[20]  H. Markus,et al.  The use of FAST and ABCD2 scores in posterior circulation, compared with anterior circulation, stroke and transient ischemic attack , 2011, Journal of Neurology, Neurosurgery & Psychiatry.

[21]  Sheng-Feng Sung,et al.  Code stroke: a mismatch between number of activation and number of thrombolysis. , 2014, Journal of the Formosan Medical Association = Taiwan yi zhi.

[22]  S. Louw,et al.  Agreement Between Ambulance Paramedic- and Physician-Recorded Neurological Signs With Face Arm Speech Test (FAST) in Acute Stroke Patients , 2004, Stroke.

[23]  Fabien Subtil,et al.  The precision--recall curve overcame the optimism of the receiver operating characteristic curve in rare diseases. , 2015, Journal of clinical epidemiology.

[24]  Aan Vascular Neurology Stroke Practice Resources Workgroup Impact of Stroke Call on the Stroke Neurology Workforce in the United States: Possible Challenges and Opportunities. , 2018 .

[25]  Francisco Herrera,et al.  A Review on Ensembles for the Class Imbalance Problem: Bagging-, Boosting-, and Hybrid-Based Approaches , 2012, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[26]  V. Howard,et al.  Heart Rate and Ischemic Stroke: The Reasons for Geographic and Racial Differences in Stroke (Regards) Study , 2015, International journal of stroke : official journal of the International Stroke Society.

[27]  Hong Yu,et al.  Detecting Hypoglycemia Incidents Reported in Patients’ Secure Messages: Using Cost-Sensitive Learning and Oversampling to Reduce Data Imbalance , 2019, Journal of medical Internet research.

[28]  J. Jeng,et al.  Get With The Guidelines-Stroke Performance Indicators: Surveillance of Stroke Care in the Taiwan Stroke Registry: Get With The Guidelines-Stroke in Taiwan , 2010, Circulation.

[29]  J. O'Sullivan,et al.  The Time Course and Determinants of Temperature within the First 48 h after Ischaemic Stroke , 2007, Cerebrovascular Diseases.

[30]  Randall T Higashida,et al.  Forecasting the Future of Stroke in the United States: A Policy Statement From the American Heart Association and American Stroke Association , 2013, Stroke.

[31]  Mohammad Hossein Khosravi,et al.  Global, regional, and national age-sex-specific mortality for 282 causes of death in 195 countries and territories, 1980–2017: a systematic analysis for the Global Burden of Disease Study 2017 , 2018, Lancet.

[32]  Carol M. Mangione,et al.  What is the Concordance Between the Medical Record and Patient Self-Report as Data Sources for Ambulatory Care? , 2006, Medical care.

[33]  H. Kamel,et al.  Application of the ABCD2 Score to Identify Cerebrovascular Causes of Dizziness in the Emergency Department , 2012, Stroke.

[34]  Adnan H Siddiqui,et al.  Time to Treatment With Endovascular Thrombectomy and Outcomes From Ischemic Stroke: A Meta-analysis. , 2016, JAMA.

[35]  Y. Huang,et al.  Validity of a computerised five-level emergency triage system for patients with acute ischaemic stroke , 2012, Emergency Medicine Journal.

[36]  J. Wardlaw,et al.  Distinguishing Between Stroke and Mimic at the Bedside: The Brain Attack Study , 2006, Stroke.

[37]  K. Hong Blood Pressure Management for Stroke Prevention and in Acute Stroke , 2017, Journal of stroke.

[38]  N. Powe,et al.  Agreement of self-reported comorbid conditions with medical and physician reports varied by disease among end-stage renal disease patients. , 2007, Journal of clinical epidemiology.

[39]  C. Ng,et al.  Validation of the Taiwan triage and acuity scale: a new computerised five-level triage system , 2010, Emergency Medicine Journal.

[40]  Krishnamoorthi Makkithaya,et al.  Learning from a Class Imbalanced Public Health Dataset: a Cost-based Comparison of Classifier Performance , 2017 .

[41]  Michael I Weintraub,et al.  Thrombolysis (Tissue Plasminogen Activator) in Stroke: A Medicolegal Quagmire , 2006, Stroke.

[42]  A. Majid,et al.  Medicolegal Considerations with Intravenous Tissue Plasminogen Activator in Stroke: A Systematic Review , 2013, Stroke research and treatment.

[43]  Takaya Saito,et al.  The Precision-Recall Plot Is More Informative than the ROC Plot When Evaluating Binary Classifiers on Imbalanced Datasets , 2015, PloS one.

[44]  L. Goldstein,et al.  "Code stroke": hospitalized versus emergency department patients. , 2013, Journal of stroke and cerebrovascular diseases : the official journal of National Stroke Association.

[45]  C. Price,et al.  A systematic review of stroke recognition instruments in hospital and prehospital settings , 2015, Emergency Medicine Journal.

[46]  I. Kohane,et al.  Development of phenotype algorithms using electronic medical records and incorporating natural language processing , 2015, BMJ : British Medical Journal.

[47]  Keith W. Muir,et al.  Do Clinicians Overestimate the Severity of Intracerebral Hemorrhage? , 2019, Stroke.

[48]  Jin-Moo Lee,et al.  Reducing Door-to-Needle Times Using Toyota’s Lean Manufacturing Principles and Value Stream Analysis , 2012, Stroke.

[49]  L. Goldstein,et al.  BE-FAST (Balance, Eyes, Face, Arm, Speech, Time): Reducing the Proportion of Strokes Missed Using the FAST Mnemonic , 2017, Stroke.

[50]  Francisco Herrera,et al.  An insight into classification with imbalanced data: Empirical results and current trends on using data intrinsic characteristics , 2013, Inf. Sci..