Big Data in the Assessment of Pediatric Medication Safety

Author:

McMahon Ann W.1,Cooper William O.2,Brown Jeffrey S.3,Carleton Bruce4,Doshi-Velez Finale5,Kohane Isaac6,Goldman Jennifer L.7,Hoffman Mark A.8,Kamaleswaran Rishikesan9,Sakiyama Michiyo1011,Sekine Shohko12,Sturkenboom Miriam C.J.M.13,Turner Mark A.12,Califf Robert M.13

Affiliation:

1. Office of Pediatric Therapeutics, US Food and Drug Administration, Rockville, Maryland;

2. Departments of Pediatrics and Health Policy, Vanderbilt University Medical Center, Nashville, Tennessee;

3. Population Medicine, Harvard Medical School and Harvard Pilgrim Healthcare Insititute, Boston, Massachusetts;

4. Division of Translational Therapeutics, Department of Pediatrics, Faculty of Medicine, University of British Columbia, Vancouver, Canada;

5. Paulson School of Engineering and Applied Sciences, Harvard University, Boston, Massachusetts;

6. Departments of Biomedical Informatics, Pediatrics, and

7. Divisions of Pediatric Infectious Diseases and Clinical Parmacology, Department of Pediatrics, and

8. Children's Research Institute, Children’s Mercy Hospital, Kansas City, Missouri;

9. Office of Vaccines and Blood Products and

10. Office of New Drug IV, Pharmaceuticals and Medical Devices Agency, Tokyo, Japan;

11. Department of Epidemiology, Julius Center Research Program Cardiovascular Edpidemiology, Utrecht University Medical Center, Utrecht, Netherlands;

12. Institute of Translational Medicine, University of Liverpool, Liverpool, United Kingdom; and

13. Division of Cardiology, Department of Internal Medicine, School of Medicine, Center for Health Science, Duke Clinical Research Institute, Duke University, Durham, North Carolina

Abstract

Big data (BD) in pediatric medication safety research provides many opportunities to improve the safety and health of children. The number of pediatric medication and device trials has increased in part because of the past 20 years of US legislation requiring and incentivizing study of the effects of medical products in children (Food and Drug Administration Modernization Act of 1997, Pediatric Rule in 1998, Best Pharmaceuticals for Children Act of 2002, and Pediatric Research Equity Act of 2003). There are some limitations of traditional approaches to studying medication safety in children. Randomized clinical trials within the regulatory context may not enroll patients who are representative of the general pediatric population, provide the power to detect rare safety signals, or provide long-term safety data. BD sources may have these capabilities. In recent years, medical records have become digitized, and cell phones and personal devices have proliferated. In this process, the field of biomedical science has progressively used BD from those records coupled with other data sources, both digital and traditional. Additionally, large distributed databases that include pediatric-specific outcome variables are available. A workshop entitled “Advancing the Development of Pediatric Therapeutics: Application of ‘Big Data’ to Pediatric Safety Studies” held September 18 to 19, 2017, in Silver Spring, Maryland, formed the basis of many of the ideas outlined in this article, which are intended to identify key examples, critical issues, and future directions in this early phase of an anticipated dramatic change in the availability and use of BD.

Publisher

American Academy of Pediatrics (AAP)

Subject

Pediatrics, Perinatology, and Child Health

Reference42 articles.

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3. National Institutes of Health . All of Us Research Program overview. Available at: https://allofus.nih.gov/about/all-us-research-program-overview. Accessed December 3, 2019

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