Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

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Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015

Transcript of Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

Page 1: Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

Punkaj Gupta, MBBSDivision of Pediatric CardiologyArkansas Children’s Hospital

March 26, 2015

Page 2: Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

• None for all authors

• VPS data was provided by the VPS, LLC. No endorsement or editorial restriction of the interpretation of these data or opinions of the authors has been implied or stated

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Building Trust in the Power of “Big Data” For Outcomes

Research to Serve the Public Good

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• Study of the end results of particular health care practices and interventions

• Uses retrospective, non-interventional data from existing multi-center databases

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• The nation is spending over $800 billion dollars on health care, yet very little is known about what that $800 billion is buying

• Outcomes research helps us understand the most effective and efficient ways to provide high quality health care

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• Existing data may be used to conduct studies that are not amenable to a randomized trial format

• Existing data often describe “real-world” care and may be used to define practice variation

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• Nickname in computer science, business, and public policy for the application of sophisticated analytic techniques to large and rapidly growing databases

• In medicine applicable to electronic health records, clinical registries, and administrative databases

Page 8: Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

• Virtual PICU Performance System (VPS, LLC): ~ 1 million ICU patients from 130 Pediatric ICUs

• The Pediatric Health Information System (PHIS): ~ 3 million patients from 43 free-standing children’s hospitals in United States

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• Big data provides great potential for extracting useful knowledge to achieve the ‘triple aim’ in health care– better care for individuals, – better care for all, and – greater value for dollars spent.

Okun S, McGraw D, Stang P, et al. Discussion Paper: Making the Case for Continuous Learning From Routinely Collected Data. Institute of Medicine

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• Health care lags behind other industries in leveraging advances in information technology and analytical techniques.

• If “Big Data” using databases like VPS, LLC applied to health care, it would potentially improve quality and efficiency of the system.

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• Affordable Care Act: Incentives are increasing for stakeholders (including clinicians, insurers, purchasers, and patients) to collect, analyze, and exchange health care information

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• Study two examples from VPS, LLC database

• Demonstrate strength and weakness of “Big Data” through these examples

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Punkaj Gupta, MBBS; Xinyu Tang, PhD; Casey Lauer, BA; Robert M. Kacmarek, PhD, RRT; Tom B. Rice, MD;

Barry P. Markovitz, MD, MPH; Randall C. Wetzel, MBBS

Page 14: Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

• Little is known about the effects of clinical education, and hospital structure on medical outcomes in children with critical illness

• Increasing concerns regarding trainee inexperience as a contributing factor to outcomes in children with critical illness

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• Similar concerns for non-university, and non-free standing children’s hospitals providing a lower level of care for critically ill children

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• To evaluate outcomes associated with training programs (such as residency or fellowship training), and hospital structure (such as free-standing children’s or university hospital) using the Virtual PICU Systems (VPS, LLC) Database

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• Odds of ICU mortality

• Time to ICU discharge

• Odds of mechanical ventilation

• Time to liberation from mechanical ventilation

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• The Virtual PICU Systems (VPS, LLC) is an online pediatric critical care network

• Prospective observational cohort from ~130 PICUs with interrater reliability (IRR) testing > 95%

• Formed by NACHRI (now part of CHA), Children’s Hospital of Los Angeles, and Children’s Hospital of Wisconsin

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• Patients <18 years of age admitted to one of the participating PICUs in the VPS database were included

• Patients with both cardiac (cardiac-medical and cardiac-surgical), and non-cardiac diagnoses were included

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• Patient characteristics and outcomes summarized between the study hospitals and control hospitals

• Multivariable logistic regression models and Cox proportional hazards models were fitted to evaluate association of training programs and hospital structure with study outcomes

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• A total of 308,082 patients from 102 centers were included

• Patients in the study hospitals had greater severity of illness (PIM-2 and PRISM-3 scores), and had higher incidence of cardiopulmonary resuscitation

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• Compared to the control groups, resource utilization was also greater among the four hospital categories, e.g., – the use of mechanical ventilation and – high frequency ventilation, and – use of arterial and invasive central lines

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• Compared to patients in control hospitals, patients in the four hospital categories were older, and had significant comorbidities, such as – developmental disorder– genetic syndrome– low birth weight– prematurity

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• ICU mortality was significantly lower among the study hospitals- as compared to the control hospitals

• Despite caring for more complex and sicker patients, time to ICU discharge was shorter among the study hospitals- as compared to the control hospitals

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• Could not account for the potential impact of variables such as- – hospital structure and process measures, – training or availability of ICU personnel, or – nursing factors on study outcomes

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• Our study did not address the financial burden of training program or hospital structure as an outcome measure.

• Use of ICU Mortality, time to ICU discharge, and time to liberation from mechanical ventilation as outcome measures

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Punkaj Gupta, MBBS; Xinyu Tang, PhD; Casey Lauer, BA; Tom B. Rice, MD; Randall C. Wetzel, MBBS

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• Clinical practice variations are common in children undergoing congenital heart surgery

• None of the existing literature to-date has truly compared the volume-outcome relationship with mechanical ventilation after pediatric cardiac surgery as an outcome

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• To evaluate the – odds of mechanical ventilation, and – duration of mechanical ventilation after

pediatric cardiac surgery

• across centers of varying center volume using the Virtual PICU Systems (VPS, LLC) Database

Page 35: Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

• The Virtual PICU Systems (VPS, LLC) is an online pediatric critical care network

• Prospective observational cohort from ~130 PICUs with interrater reliability (IRR) testing > 95%

• Formed by NACHRI (now part of CHA), Children’s Hospital of Los Angeles, and Children’s Hospital of Wisconsin

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• Patients <18 years of age undergoing operations (with or without CPB) for heart disease at one of the participating ICUs in the VPS database were included

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• Patients receiving high frequency oscillatory ventilation (HFOV), or jet ventilation were also excluded

• Centers with >10% missing data were excluded

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• Average number of cardiac surgery cases per year for each center

• Study centers were categorized using the center volume tertiles:– Low-volume: <175 cases/year – Medium volume: ≥175 to <275 cases/year– High-volume: ≥275 cases/year

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• Patient characteristics, procedural data, post-operative outcomes

• Outcomes– Odds of mechanical ventilation – Duration of mechanical ventilation after

pediatric cardiac surgery

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• Multivariable logistic regression models and Cox proportional hazards models used to evaluate the relationship between: – Center volume and odds of MV

– Center volume and duration of MV

• Models adjusted for patient factors and center effects

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• 10,378 patients from 43 centers were included

Low Medium High

Number of Centers

36 4 3

Number of Patients

3,657 (35%)

3,176 (31%)

3,545 (34%)

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Low Medium High

Mortality 3% (127) 3% (102) 2% (72)

Use of MV 73% (2675) 81% (2576) 68% (2397)

Duration of MV

24 (8, 96) 27 (8, 99)45 (19,

119)

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Unadjusted Adjusted

OR (95% CI) P OR (95% CI)

P

Low 1.26 (1.14, 1.39)

<0.001 2.68 (2.15, 3.35)

<0.001

Medium 1.78 (1.60, 1.98)

<0.001 1.31 (1.12, 1.52)

<0.001

High Reference Reference

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• Higher volume centers were associated with lower odds of mechanical ventilation in the lower risk patients (STS-EACTS categories 1-3)

• No significant relationship between center volume and odds of mechanical ventilation in the higher risk patients (STS-EACTS categories 4-5)

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Unadjusted Adjusted

HR (95% CI) P HR (95% CI)

P

Low 1.16 (1.10, 1.23)

<0.001 1.26 (1.16, 1.37)

<0.001

Medium 1.14 (1.08, 1.21)

<0.001 1.19 (1.11, 1.28)

<0.001

High Reference Reference

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• Higher volume centers were associated with longer duration of mechanical ventilation in both high risk (STS-EACTS categories 4-5) and low risk patients (STS-EACTS categories 1-3)

Page 47: Punkaj Gupta, MBBS Division of Pediatric Cardiology Arkansas Children’s Hospital March 26, 2015.

• Large clinical practice variations were demonstrated for MV following pediatric cardiac surgery among ICUs of varied center volumes

• Both odds of mechanical ventilation and duration of mechanical ventilation following cardiac surgery vary substantially across hospitals

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• Multi-institutional databases can be powerful tool for doing outcomes research

• If used methodically, database research can have significant impact on clinical practice and health care outcomes