Robert Wellman, MS

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“Being part of Kaiser Permanente research teams gives me a chance to develop cutting-edge biostatistical methods while contributing to health care research with a national impact.”

Robert Wellman, MS

Principal Collaborative Biostatistician, Kaiser Permanente Washington Health Research Institute

Biography

A graduate of the University of Washington (UW) biostatistics program, Robert Wellman, MS, joined the Kaiser Permanente Washington Health Research Institute (KPWHRI) Biostatistics Unit in 2009. His work spans a diverse collection of topics including mental health, pharmacoepidemiology, postmarketing drug safety surveillance, obesity, diagnostic test accuracy, back pain, and breast cancer. Prior to this, he spent 5 years in the Biostatistics Core at the UW Center for AIDS Research.

Research interests and experience

  • Biostatistics

    Causal inference; longitudinal data; diagnostic and screening test accuracy; clinical trials; survival analysis: rare disease outcomes; nonparametrics; missing data; electronic data; distributed data; statistical computing

    Vaccines & Infectious Diseases

    Biostatistics; HIV/AIDS; vaccine safety

    Complementary & Integrative Health

    Biostatistics; clinical trials; back pain

    Obesity

    Biostatistics; bariatric surgery

  • Cancer

    Biostatistics; breast cancer; effects of chemotherapy; accuracy of automated data; screening test accuracy; advanced imaging

    Medication Use & Patient Safety

    Biostatistics; pharmacoepidemiology; postmarketing drug safety surveillance; big data; electronic health record and claims data

    Mental Health

    Biostatistics; suicide risk prediction, machine learning

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Recent publications

Arterburn D, Wellman R, Emiliano A, Smith SR, Odegaard AO, Murali S, Williams N, Coleman KJ, Courcoulas A, Coley RY, Anau J, Pardee R, Toh S, Janning C, Cook A, Sturtevant J, Horgan C, McTigue KM, PCORnet Bariatric Study Collaborative Comparative Effectiveness and Safety of Bariatric Procedures for Weight Loss: A PCORnet Cohort Study 2018 Dec 4;169(11):741-750. doi: 10.7326/M17-2786. Epub 2018-10-30. PubMed

Inge TH, Coley RY, Bazzano LA, Xanthakos SA, McTigue K, Arterburn D, Williams N, Wellman R, Coleman KJ, Courcoulas A, Desai NK, Anau J, Pardee R, Toh S, Janning C, Cook A, Sturtevant J, Horgan C, Zebrick AJ, Michalsky M, PCORnet Bariatric Study Collaborative Comparative effectiveness of bariatric procedures among adolescents: the PCORnet bariatric study 2018 Sep;14(9):1374-1386. doi: 10.1016/j.soard.2018.04.002. Epub 2018-04-17. PubMed

Cherkin D, Balderson B, Wellman R, Hsu C, Sherman KJ, Evers SC, Hawkes R, Cook A, Levine MD, Piekara D, Rock P, Estlin KT, Brewer G, Jensen M, LaPorte AM, Yeoman J, Sowden G, Hill JC, Foster NE Effect of Low Back Pain Risk-Stratification Strategy on Patient Outcomes and Care Processes: the MATCH Randomized Trial in Primary Care 2018 Aug;33(8):1324-1336. doi: 10.1007/s11606-018-4468-9. Epub 2018-05-22. PubMed

Hill DA, Haas JS, Wellman R, Hubbard RA, Lee CI, Alford-Teaster J, Wernli KJ, Henderson LM, Stout NK, Tosteson ANA, Kerlikowske K, Onega T Utilization of breast cancer screening with magnetic resonance imaging in community practice 2018 Mar;33(3):275-283. doi: 10.1007/s11606-017-4224-6. Epub 2017-12-06. PubMed

Toh S, Wellman R, Coley RY, Horgan C, Sturtevant J, Moyneur E, Janning C, Pardee R, Coleman KJ, Arterburn D, McTigue K, Anau J, Cook AJ Combining distributed regression and propensity scores: a doubly privacy-protecting analytic method for multicenter research 2018 Jan;10:1773-1786. doi: 10.2147/CLEP.S178163. Epub 2018-11-27. PubMed

 

Research

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Acupuncture safe and effective for chronic low back pain in older adults

NIH-funded study finds that acupuncture improves pain, physical functioning.

Research

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Remote programs effective for chronic pain, study finds

Telehealth and online cognitive behavioral therapy could expand treatment options for chronic pain in rural areas.

New findings

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Simpler models to identify suicide risk perform similarly to more complex ones

Models that are easier to explain, use could have better uptake in health care settings.