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STAR*D: Results and Implications for Clinicians, Researchers, and Policy Makers

STAR*D: Results and Implications for Clinicians, Researchers, and Policy Makers. Bradley N. Gaynes, M.D., M.P.H. Associate Professor of Psychiatry University of North Carolina School of Medicine Chapel Hill, North Carolina AcademyHealth Annual Research Meeting 2007. What is STAR*D?.

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STAR*D: Results and Implications for Clinicians, Researchers, and Policy Makers

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  1. STAR*D: Results and Implications for Clinicians, Researchers, and Policy Makers Bradley N. Gaynes, M.D., M.P.H. Associate Professor of Psychiatry University of North Carolina School of Medicine Chapel Hill, North Carolina AcademyHealth Annual Research Meeting 2007

  2. What is STAR*D? • Sequenced Treatment Alternatives to Relieve Depression • www.star-d.org

  3. Overall Aim of STAR*D • Define preferred treatments for treatment-resistant depression

  4. Overview - I • Duration: 7 years (October 1999 - September 2006) • Funding: National Institute of Mental Health • National Coordinating Center, UT Southwestern Medical Center, Dallas • Data Coordinating Center, Pittsburgh

  5. Overview - II • 14 Regional Centers • 41 Clinical Sites • 18 Primary Care Settings (PC) • 23 Psychiatric Care Settings (Specialty Care, or SC)

  6. Level 1 Obtain Consent Satisfactory response CIT Follow-Up Unsatisfactory response* Level 2 *Response = >50% improvement in QIDS-SR from baseline

  7. Level 2 Randomize Switch Options Augmentation Options SER BUP-SR VEN-XR CT CIT + BUP-SR CIT + BUS CIT + CT

  8. Level 2A Randomize Switch Options BUP-SR VEN-XR

  9. Level 3 Randomize Switch Options Augmentation Options MRT NTP L-2 Tx+ Li L-2 Tx+ THY

  10. Level 4 Randomize Switch Options TCP VEN-XR+ MRT

  11. Participants • Major depressive disorder • Nonpsychotic • Representative primary and specialty care practices (nonacademic/non efficacy venues) • Self-declared patients

  12. Inclusion Criteria • Clinician deems antidepressant medication indicated. • 18-75 years of age. • Baseline HRSD17 14. • Most concurrent Axis I, II, III disorders allowed. • Suicidal patients allowed

  13. Clinical Procedures • Open treatment with randomization • Symptoms/side effects measured at each clinical visit (measurement-based care, or MBC) • Clinicians guided by algorithms/supervision

  14. Research Innovations • “Real world” patient participants from nonacademic/nonefficacy research venues • Non-research clinicians • Identical criteria and concurrent enrollment from PC and SC sites • Broadly selective inclusion criteria • Patient preference built into study design

  15. STAR*D Hybrid Design - I *To establish efficacy versus placebo. †Allowed to enter if MDD requires medication.

  16. STAR*D Hybrid Design - II *To establish efficacy versus placebo. ‡Allowed if not depression-targeted, empirically tested therapy.

  17. Level 1 Findings

  18. Patients from real world settings are quite chronically ill Mean (SD) HRSD17 (ROA) 21.8 (5.2) No. of MDEs 6.0 (11.4) Length of current MDE (months) 24.6 (51.7) Length of illness (years) 15.5 (13.2) No. with either chronic or recurrent MDE 85% Depressed ≥ 2 years 25% No. with concurrent medical conditions 67%

  19. Depressed patients in PC and SC settings are surprisingly similar • No difference in • depressive severity • distribution of depressive severity • specific depressive symptom presentation • likelihood of presenting with a comorbid psychiatric illness • Main difference: SC patients more likely to have made prior suicide attempt, but common in both (20% vs. 14%, p<0.0001)

  20. Outcomes for PC and SC depressed patients were identical • Remission rates were the same (27% PC vs. 28% SC, p=0.40) • Time to remission did not differ by site (6.7 weeks PC vs. 7.3 weeks CS, p=0.11) Gaynes et al., BMJ, under review

  21. Gaynes et al., BMJ, under review

  22. Conclusions • One-quarter of patients have been depressed for >2 years and 2/3 have concurrent GMCs • About 1/3 will remit • Response occurs in 1/3 AFTER 6 weeks • MBC is feasible and works, with equivalent outcomes in PC or SC settings • Studies of remission require longer study periods than 8 weeks

  23. Level 2 Medication Switch

  24. Conclusions: Level 2 Switch • Either switching to the same class of antidepressant (SSRI to SSRI) or to a different class (SSRI to non-SSRI) did not matter • Substantial differences in pharmacology did not translate into substantial clinical differences in efficacy

  25. Level 2 Medication Augmentation

  26. Conclusions: Level 2 Augmentation • There was no substantial differences in the likelihood of either of the two augmentation medications to produce remission

  27. Patients had clear preferences about accepting augmentation vs. switching, and, accordingly, the groups differed at entry into level 2 • Consequently, whether switching vs. augmenting is preferred after one treatment failure could not be addressed

  28. QIDS-SR16 Remission Rates * Theoretical

  29. Conclusions • Cumulative remission rate is over 50% with first 2 steps • Patient preference plays a big role in strategy selection • Pharmacological distinctions do not translate into large clinical differences

  30. Level 2 Cognitive Therapy Findings

  31. Conclusions • CT is an acceptable switch option in the second step • CT is an acceptable augmentation option in the second step • Whether CT responders/remitters fare better in follow-up is in analysis • CT was not as popular as expected

  32. Remission Rates by Levelsa a By QIDS-SR16<5 at level exit

  33. Are Efficacy and Real World Patients Different?

  34. STAR*D Participant Flow (CONSORT Chart) Screened (4,790) Not offered Consent or Refused to Consent (613) Ineligible (136) Consented (4,177) HRSD17 < 14a (607) Or Missing (324) Eligible (4,041) Failed to Return (234) HRSD17>14 (3,110) Eligible for Analysis (2,876) Efficacy Sample (635) Nonefficacy Sample (2,220) Could Not Be Classified (21) a Some of these subjects were eligible for entry into Level 2. Wisniewski et al, The Lancet, in preparation

  35. Clinical Featuresa aDescriptive statistics presented as mean±sd and n (%N). Sums do not always equal N due to missing values. Percentages based on available data; b p<.01; c p<.05 Wisniewski et al, The Lancet, in preparation

  36. Outcomesa - I aDescriptive statistics presented as mean±sd and n (%N). Sums do not always equal N due to missing values. Percentages based on available data QIDS-SR16 = 16-item Quick Inventory of Depressive Symptomatology – Self-report Wisniewski et al, The Lancet, in preparation

  37. Outcomesa - II aDescriptive statistics presented as mean±sd and n (%N). Sums do not always equal N due to missing values. Percentages based on available data; b Adjusted for regional center, clinical setting, age, race, Hispanic ethnicity, education, employment status, income, medical insurance, marital status, illness duration, suicide attempt, family history of substance abuse, anxious and atypical features; QIDS-SR16 = 16-item Quick Inventory of Depressive Symptomatology – Self-report Wisniewski et al, The Lancet, in preparation

  38. Phase III clinical trial criteria do not recruit samples representative of depressed patients who seek treatment in typical clinical practice. • The use of broader inclusion criteria • would make findings more generalizable to typical care-seeking outpatients • may reduce placebo response and remission rates in Phase III trials, and • may reduce the risk of failed trials, at the risk of increasing adverse events and decreasing symptomatic benefit.

  39. What is the pay off? • By any measure, success • Over 4000 patients involved • Over 150 clinicians • Active involvement of PC sites • 51 publications to date, and more in press or preparation • At least 3 large scale ancillary studies (Child, Alcohol, Genetics), each of which has its own cadre of publications • Depression Treatment Network infrastructure, supporting rapid trial turn around

  40. What questions could not be answered? • How does high quality measurement-based care compare to usual care? • Is switching or augmentation the preferred strategy after 1 or 2 failures? • What is the role of cognitive therapy?

  41. What important questions does STAR*D raise? • Clinical • Given chronicity and low remission rates of most depressions, should combination meds (“broad spectrum antidepressants”) be started at initial treatment step? • How do you balance the effort at adequately treating those identified with identifying those undetected? Could system keep up? • Study Design • How best do you handle the role of patient preference in study design?

  42. Policy • Why not include more broadly representative patients in placebo-controlled trials used to develop treatments? • If you could ensure patient safety and ensure internal validity in such trials, the results would be more directly applicable to our patients, who are less likely to spontaneously improve. • What should the arsenal of available antidepressants be at the state level? • How best do you keep these infrastructures funded?

  43. National Coordinating Center A. John Rush, MD Madhukar H. Trivedi, MD Diane Warden, PhD, MBA Melanie M. Biggs, PhD Kathy Shores-Wilson, PhD Diane Stegman, RNC Michael Kashner, PhD, JD Data Coordinating Center Stephen R. Wisniewski, PhD G.K. Balasubramani, PhD James F. Luther, MA Heather Eng, BA. University of Alabama Lori Davis, MD University of California, Los Angeles Andrew Leuchter, MD Ira Lesser, MD Ian Cook, MD Daniel Castro, MD University of California, San Diego Sidney Zisook, MD Ari Albala, MD Timothy Dresselhous, MD Steven Shuchter, MD Terry Schwartz, MD Northwestern University Medical School, Chicago William T. McKinney, MD William S. Gilmer, MD The STAR*D Study Investigators

  44. University of Kansas, Wichita and Clinical Research Institute Sheldon H. Preskorn, MD Ahsan Khan, MD Massachusetts General Hospital, Boston Jonathan Alpert, MD Maurizio Fava, MD Andrew A. Nierenberg, MD University of Michigan, Ann Arbor Elizabeth Young, MD Michael Klinkman, MD Sheila Marcus, MD New York State Psychiatric Institute and Columbia College of Physicians and Surgeons, New York Frederic M. Quitkin, MD Patrick J. McGrath, MD Jonathan W. Stewart, MD Harold Sackeim, PhD University of North Carolina, Chapel Hill Robert N. Golden, MD Bradley N. Gaynes, MD The STAR*D Study Investigators

  45. Laureate Healthcare System, Tulsa Jeffrey Mitchell, MD William Yates, MD University of Pittsburgh Medical Center, Pittsburgh Michael E. Thase, MD Edward S. Friedman, MD Vanderbilt University Medical Center, Nashville Steven Hollon, PhD Richard Shelton, MD The University of Texas Southwestern Medical Center, Dallas Mustafa M. Husain, MD Michael Downing, MD Diane Stegman, RNC Laurie MacLeod, RN Virginia Commonwealth University, Richmond Susan G. Kornstein, MD Robert K. Schneider, MD The STAR*D Study Investigators

  46. Pharmaceutical Industry Support for STAR*D Medications were provided gratis by Bristol-Myers Squibb Company, Forest Pharmaceuticals Inc., GlaxoSmithKline, King Pharmaceuticals, Organon Inc., Pfizer Inc., and Wyeth-Ayerst Laboratories.

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