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7/8/2015 Building Data Warehouse for Research, Reporting and Quality. 6 Years of ICU DataMart Experience Vitaly Herasevich, MD, PhD, MSc Associate Professor of Anesthesiology and Medicine, Department of Anesthesiology, Multidisciplinary Epidemiology and Translational Research in Intensive Care (M.E.T.R.I.C.) [email protected] Jul 2015 Why we need Datamart? EHR Herasevich et al. Medical informatics in ICU., in Principles of Critical Care, 4th, 2015 1 7/8/2015 Data volume before and in ICU Labs Drug Orders Microbiology X ray Vitals Average data points per day Per Patient Per 24 bedded ICU 60 1440 10 240 2 48 2 48 1950 46800 Microbiology, labs, medications, chest X-ray, Nurses flowsheet, Clinical notes (history and impression/plan) – Vitals excluded Herasevich V, Litell J, Pickering B. Electronic medical records and mHealth anytime, anywhere. Biomed Instrum Technol. 2012 Fall;Suppl:45-8. PMID: 23039776. Why we need Datamart? • 1) So much clinical data • 2) Physically data stored in different databases • 3) Make some sense out of data… ©2011 MFMER | slide-5 BIG data, data minng… 2 7/8/2015 The market for analytics solutions is not small — more than 100 vendors currently offer big data tools and products. ©2011 MFMER | slide-7 Association is not causation http://www.tylervigen.com/view_correlation?id=1597 ©2011 MFMER | slide-8 Big Data = Predictive Analysis = Data Mining • Data Mining is an analytic process designed to explore data (usually large amounts of data typically business or market related - also known as "big data") in search of consistent patterns and/or systematic relationships between variables. • The ultimate goal of data mining is prediction - and predictive data mining is the most common type of data mining and one that has the most direct business applications. ©2011 MFMER | slide-9 3 7/8/2015 Myths of data mining • Myth #1: Data mining provides instant crystal ball predictions • Myth #2: Data mining is not yet viable for medicine • Myth #3: Data mining requires separate, dedicated database • Myth #4: Only PhDs can do data mining • Myth #5: Data mining is for large companies with lots of customer data Data mining is not: • Data mining is a tool, not a magic. • Data mining will not automatically discover solutions without guidance. • Data mining will not sit inside of your database and send you an email when some interesting pattern is discovered. • Data mining may find interesting patterns, but it does not tell you the value of such patterns. • Data mining does not infer causality. ©2011 MFMER | slide-11 What can data mining do? • Helps to determine relationships among "internal" factors such as price, product positioning, or staff skills, and "external" factors such as economic indicators, competition, and customer demographics. • Helps to determine the impact on sales, customer satisfaction, and corporate profits. • Helps them to "drill down" into summary information Primarily used today by companies with a strong consumer focus - retail, financial, communication, and marketing organizations. ©2011 MFMER | slide-12 4 7/8/2015 Common Data Mining Applications • Market analysis • Risk analysis and management • Fraud detection and detection of unusual patterns (outliers) • Text mining (news group, email, documents) and Web mining • Real time data mining • DNA and bio-data analysis “Big Data” Applications in Health Science • Drug discovery and functional genomics • Analysis of DNA micro-array data • Gene, disease and drug interaction • Genomics, proteomics and metabolomics • Biomedical text mining (finding relations between experimental data and published literature) • Estimating outcomes of patients • Epidemiology • Data mining electronic patient records ICU Datamart (METRIC Datamart) 5 7/8/2015 Critical Care at Mayo 208 ICU beds CPOE ICU demographics Enterprise orders HRBS Nursing Flow Sheet Monitored data MICS Lastword Chart+ Clinical notes Emergency acute area MCLS Lastword YES Key Facts HL7 Radiology Reports Fluids: in/out RIMS Chart+ ~ 15,000 admissions per year ~ 1,000,000 vital records per week Transfusion Orders DSS • Data available from 2003 MYSIS Updated every hour in average (15 min Microbiology for vitals)Reports Past• history • ICD-9 • PPI • Near real-time HRBS APACHE Surgical schedule APACHE Surgical Historical Drug orders REP Herasevich V, et al. ICU data mart: a non-iT approach. Healthc Inform. 2011;28(11):42, 44–5. PMID: 22121570 HRBS OR Data mart ICU Data mart Labs HRBS METRIC datamart workflow Li M, Pickering BW, Smith VD, Hadzikadic M, Gajic O, Herasevich V. Medical informatics: an essential tool for health sciences research in acute care. Bosn J Basic Med Sci. 2009;9 Suppl 1:34–9. PMID: 19912124 6 7/8/2015 Some available data 2001 2002 2003 2004 2005 2006 2011 2015 Monthly average 90,000 Drugs orders 3,000 Radiology reports 330,000 Laboratory tests 6,000 Transfusions 3,000 Microbiology tests 6,000,000 Vital signs (150 var.) 370,000 CPOE orders 1,300 Demographics 220,000 Fluids (intake/output) Approach 7 7/8/2015 Rule zero Rule one: lego bricks 8 7/8/2015 Rule two: UNIXsh - no user interface • No formal web/query Interface • ODBC connection allows query from any app (JMP, Excel, SAS…) Approach: technically • SQL server with institutional support • Tables divided by years • In “Current tables” only patients who in currently in ICU • EAV (entity – attribute – value) structure • Continuously “Testing – production” • Test –> production DBs 9 7/8/2015 Data integrity Statistical control Real time monitoring Validation is key. Physiological parameters • Near 100% accurate Herasevich V, Pickering BW, Dong Y, et al. Informatics infrastructure for syndrome surveillance, decision support, reporting, and modeling of critical illness. Mayo Clin Proc 2010;85(3):247-254. (PMID: 20194152) Herasevich V, Kor D, Li M, et al. ICU Data Mart: A Non-IT Approach. Healthcare Informatics 2011;28(11):42-45. (PMID: 22121570) 10 7/8/2015 Areas of implementation APACHE replacement project APACHE replacement 1994 - 2009 11 7/8/2015 Free text search for medical admission diagnoses Chandra S, et al. Mapping physicians’ admission diagnoses to structured concepts towards fully automatic calculation of acute physiology and chronic health evaluation score. BMJ Open. 2011;1(2):e000216. PMID: 22102639 Clinical reports Effective management Joint Commission on Healthcare Organizations (JCAHO) measurement of ICU performance. • • • • • Mortality report Length of Stay Review ICU Death Review ICU admission Low Risk Monitor Review ICU Readmission Review 12 7/8/2015 METRIC Reports 1. Hospital Length of Stay for ICU Graduates – Unadjusted 2. ICU Length of Stay – Unadjusted 3. ICU Length of Stay – Adjusted 4. ICU Readmission Rate 5. ICU Admissions 6. ICU Admission Source and Service 7. Duration of Mechanical Ventilation 8. ICU Mortality Rate – Unadjusted 9. Hospital Mortality Rate – Adjusted 10. ICU Admissions for Low-Risk Monitoring 11. ICU Census - Hourly Utilization • Monthly reports • Ad-hock reports • Customized reports AWARE real time administrative dashboard © 2014 Mayo Foundation for Medical Education and Research Sniffers 13 7/8/2015 Sniffers – rule based DSS Herasevich V, Pickering BW, Dong Y, Peters SG, Gajic O. Informatics infrastructure for syndrome surveillance, decision support, reporting, and modeling of critical illness. Mayo Clin Proc. 2010;85(3):247–54. PMID: 20194152 Sniffers OR Datamart 1. No Temp: If the temperature recordings were not started after 45 minutes into OR location. 2. Hypothermia: If there are three consecutive low temps < 35 after 60 minutes into OR location. 3. VILI – High Tidal volume: If there are three consecutive high tidal volumes after 60 minutes into OR. 4. VILI – Peak airway pressure: if there are three consecutive peak airway pressures > 35 cm H20 after 60 minutes into OR. 5. Hypoglycemia: If the patient glucose level dropped < 70 6. Glucose Check alert: If the patient had insulin administered and had no glucose test done within 2 hours from the last glucose test. 7. Pressor alert: to alert the covering anesthesiologist when thresholds are exceeded for intravenous pressor support. 8. IV Administration of greater than 10 ml pressor (100 mcg/ml phenylephrine and/or 50 mg/ml ephedrine) in a 30 minutes period. ICU datamart 1. Hip Arthroplasty Study Alert : patients list who scheduled the hip arthroplasty surgery. Knee Arthroplasty Study Alert: patients list who scheduled the Knee arthroplasty surgery. 2. Surgery Glucose Study Alert: Patient list who scheduled Thoracic surgery with glucose problems. 3. Pepsin Study Alert: Patients list who scheduled Thoracic and other surgeries. For Blood Draw study. 4. Septic-sniffer alert: the patient list who are the ICU patients and suspicious developed septic. 5. Neuromyopathy-alert : Basically the septic patients for the pediatric ICU(s) patients. 6. Pectus excavatum repair alert: Patients list who scheduled pectus excavatum repair surgery. 7. QTC sniffer: new born lists for the QTC >475 ms. PI: Notable sniffers ALI VILI Herasevich V, Yilmaz M, Khan H, et al. Validation of an electronic surveillance system for acute lung injury. Intensive Care Med 2009;35(6):10181023. (PMID: 19280175) Herasevich V, Tsapenko M, Kojicic M, et al. Limiting ventilator-induced lung injury through individual electronic medical record surveillance. Crit Care Med 2011;39(1):3439. (PMID: 20959788) Septic Shock Herasevich V, Pieper MS, Pulido J, et al. Enrollment into a time sensitive clinical study in the critical care setting: results from computerized septic shock sniffer implementation. J Am Med Inform Assoc 2011. (PMID: 21508415) 14 7/8/2015 Data retrieval for research Olmsted county – unique for population based research Olmsted county admission METRIC datamart Clinical studies • Enrollment to time sensitive trials • Retrospective studies for Quality Improvement an research 15 7/8/2015 Data mining Visual mining In conclusion 16 7/8/2015 Datamart usage 1. Administrative reporting 2. Clinical research, including population based 3. Quality improvement: Point of care novel user interfaces, alerts and decision supports tools 4. Predictive analytics Chest. 2014;145(6):1190. doi:10.1378/chest.145.6.1190 [email protected] 17