1 Arlene Ash QMC - Third Tuesday September 21, 2010 Analyzing Observational Data: Focus on Propensity Scores.

Slides:



Advertisements
Similar presentations
M2 Medical Epidemiology
Advertisements

1 Arlene Ash QMC - Third Tuesday September 21, 2010 (as amended, Sept 23) Analyzing Observational Data: Focus on Propensity Scores.
V.: 9/7/2007 AC Submit1 Statistical Review of the Observational Studies of Aprotinin Safety Part I: Methods, Mangano and Karkouti Studies CRDAC and DSaRM.
Aftercare Attendance Partially Moderated by History of Physical Abuse and Gender Louise F. Haynes 1 ; Amy E. Herrin 1 ; Rickey E. Carter 1 ; Sudie E. Back.
Predictors of Change in HIV Risk Factors for Adolescents Admitted to Substance Abuse Treatment Passetti, L. L., Garner, B. R., Funk, R., Godley, S. H.,
Differences in Characteristics of Heroin Inhalers and Injectors at Admission to Treatment J. C. Maxwell, R. T. Spence, & T. M. Bohman UT Center for Social.
12 June 2004Clinical algorithms in public health1 Seminar on “Intelligent data analysis and data mining – Application in medicine” Research on poisonings.
Delay from Testing HIV Positive until First HIV Care for Drug Users: Adverse Consequences and Possible Solutions Barbara J Turner MD, MSEd* John Fleishman.
Understanding Those Who Do and Do Not Plan to Get Colorectal Cancer (CRC) Screening Costanza ME, White MJ, Stark JR, Stoddard AM, Avrunin JS, Luckmann.
Use of Spiritual Healing Therapy in Relation to Race and Ethnicity Catherine Simile, Ph.D. and Hanyu Ni, Ph.D. Division of Health Interview Statistics.
CHILDREN’S MENTAL HEALTH PROBLEMS IN RHODE ISLAND: THE PREVALENCE AND RISK FACTORS Hanna Kim, PhD and Samara Viner-Brown, MS Rhode Island Department of.
Journal Club Alcohol, Other Drugs, and Health: Current Evidence November-December 2007.
Journal Club Alcohol and Health: Current Evidence May–June 2005.
Journal Club Alcohol, Other Drugs, and Health: Current Evidence May-June 2007.
Journal Club Alcohol, Other Drugs, and Health: Current Evidence July–August 2008.
Journal Club Alcohol, Other Drugs, and Health: Current Evidence January–February 2011.
RACIAL DISPARITIES IN PRESCRIPTION DRUG UTILIZATION AN ANALYSIS OF BETA-BLOCKER AND STATIN USE FOLLOWING HOSPITALIZATION FOR ACUTE MYOCARDIAL INFARCTION.
Risks of Reentry into the Foster Care System for Children who Reunified Terry V. Shaw, MSW University of California, Berkeley School of Social Welfare.
David Card, Carlos Dobkin, Nicole Maestas
Advanced Statistics for Interventional Cardiologists.
Factors that Influence Retention in Greek Therapeutic Communities Erianna Daliani MSc (Gerasimos Papanastasatos) KETHEA Research Dept. 11th European Conference.
1 Journal Club Alcohol, Other Drugs, and Health: Current Evidence January–February 2014.
Table 1 Introduction  Overview  While predictors of recidivism and technical violations are often examined in probation and parole outcome research,
January 25, 2011 Georgia Behavioral Health Caucus Community Care Joseph Bona, MD, MBA Chief Medical Officer DeKalb Community Service Board.
ILLINOIS STATEWIDE TREATMENT OUTCOMES PROJECT. Illinois Statewide Treatment Outcomes Project Largest evaluation of treatment outcomes by the State to.
FACTORS THAT PREDICT EMPLOYMENT OF TRANSITION- AGE YOUTH WITH VISUAL IMPAIRMENTS Michele Capella McDonnall RRTC on Blindness & Low Vision Mississippi State.
Universidad Central del Caribe Comorbidity and HIV Risk Behaviors among Hispanic Drug Users Residing in Puerto Rico Oral Presentation.
Disparities in the Adequacy of Depression Treatment in the United States Jeffrey S. Harman, Ph.D. University of Florida Mark J. Edlund, M.D., Ph.D. John.
Obtaining housing associated with achieving abstinence after detoxification in adults with addiction Tae Woo Park, Christine Maynié-François, Richard Saitz.
Lisa Raiz, William Hayes, Keith Kilty, Tom Gregoire, Christopher Holloman Ohio Employer and Ohio Family Health Research Conference July 29, 2011.
Health care utilization behaviors of school-based health center users and non-users Gorette Amaral, MHS; Sara P. Geierstanger, MPH; Samira Soleimanpour,
Article Review Cara Carty 09-Mar-06. “Confounding by indication in non-experimental evaluation of vaccine effectiveness: the example of prevention of.
Estimating Causal Effects from Large Data Sets Using Propensity Scores Hal V. Barron, MD TICR 5/06.
Arnold School of Public Health Health Services, Policy, and Management 1 Drug Treatment Disparities Among African Americans Living with HIV/AIDS Carleen.
April 4 Logistic Regression –Lee Chapter 9 –Cody and Smith 9:F.
Abstinence Incentives for Methadone Maintained Stimulant Users: Outcomes for Those Testing Stimulant Positive vs Negative at Study Intake Maxine L. Stitzer.
+ Terrell Preventable Readmission Project Jeylan Buyukdura & Natalie Davies.
The Health Consequences of Incarceration Michael Massoglia Penn State University.
Obesity, Medication Use and Expenditures among Nonelderly Adults with Asthma Eric M. Sarpong AHRQ Conference September 10, 2012.
Stat 112: Notes 2 Today’s class: Section 3.3. –Full description of simple linear regression model. –Checking the assumptions of the simple linear regression.
Generalizing Observational Study Results Applying Propensity Score Methods to Complex Surveys Megan Schuler Eva DuGoff Elizabeth Stuart National Conference.
Introduction Results Treatment Needs and Treatment Completion as Predictors of Return-to-Prison Following Community Treatment for Substance-Abusing Female.
Predicting Pregnancy Risk among Women Attending an STD Clinic Judith Shlay MD, MSPH Denver Public Health September 21, 2008 CityMatCH Conference.
September 18-19, 2006 – Denver, Colorado Sponsored by the U.S. Department of Housing and Urban Development Tatjana Meschede, Ph.D., Center for Social Policy,
Introduction Results and Conclusions On counselor background variables, no differences were found between the MH and SA COSPD specialists on race/ethnicity,
Finding a Predictive Model for Post-Hospitalization Adverse Events Henry Carretta 1, PhD, MPH; Katrina McAfee 1,2, MS; Dennis Tsilimingras 1,3, MD, MPH.
Analytical Example Using NHIS Data Files John R. Pleis.
Texas COSIG Project Gender Differences in Substance Use Severity and Psychopathology in Clients with Co-Occurring Disorders 5 th Annual COSIG Grantee Meeting.
IMPORTANCE OF STATISTICS MR.CHITHRAVEL.V ASST.PROFESSOR ACN.
Ready (or not) to graduate: Mental and physical health characteristics associated with completing public housing-based, substance abuse treatment in Key.
Using Propensity Score Matching in Observational Services Research Neal Wallace, Ph.D. Portland State University February
Explaining Racial and Ethnic Differences in Children’s Use of Stimulant Medications J.L. Hudson G.E. Miller J.B. Kirby September 8, 2008.
Predictors of study retention in addiction treatment trials KORTE JE 1, MAGRUDER KM 1,2, KILLEEN TK 1, SONNE SC 1, SAMPSON RR 1 and BRADY KT 1,2 1. Medical.
Factors Associated with Third Trimester Prenatal Care among Women in Drug Treatment Benita Walton-Moss, DNS Jessica Conrad, MSN Johns Hopkins University.
1 Statistical Review of the Observational Studies of Aprotinin Safety Part II: The i3 Drug Safety Study CRDAC and DSaRM Meeting September 12, 2007 P. Chris.
Logistic regression (when you have a binary response variable)
Introduction Results and Conclusions Numerous demographic variables were found to be associated with treatment completion. Completers were more likely.
Direct method of standardization of indices. Average Values n Mean:  the average of the data  sensitive to outlying data n Median:  the middle of the.
Medication Adherence and Substance Abuse Predict 18-Month Recidivism among Mental Health Jail Diversion Program Clients Elizabeth N. Burris 1, Evan M.
Clare Meernik, MPH 1 ; Anna McCullough, MSW, MSPH, CTTS 1 ; Leah Ranney, PhD 1 ; Barbara Walsh 2 ; Adam O. Goldstein, MD, MPH 1 Predictors of Quit for.
NURS 306, Nursing Research Lisa Broughton, MSN, RN, CCRN RESEARCH STATISTICS.
Trends in Access to Substance Abuse Treatment for Women and Men: Jeanne C. Marsh, PhD, Hee-Choon Shin, PhD, Dingcai Cao, PhD University of Chicago.
Arnold School of Public Health Health Services Policy and Management 1 Women’s Cancer Screening Services Utilization Versus Their Insurance Source Presenter:
Matching methods for estimating causal effects Danilo Fusco Rome, October 15, 2012.
Predictors of study retention in drug abuse treatment trials
UCLA School of Public Health
Lung Cancer Screening: Do Individual Health Beliefs Matter?
SCOPE Training March
The European Statistical Training Programme (ESTP)
Chapter: 9: Propensity scores
Presentation transcript:

1 Arlene Ash QMC - Third Tuesday September 21, 2010 Analyzing Observational Data: Focus on Propensity Scores

2 The Problem Those with the intervention and those without have markedly different values for important measured risk factors & Outcome is related to the risk factors that are imbalanced between the groups & It is not clear how the risk factors and outcome are related Why may standard analyses be misleading?

3 True and Modeled Relationship Between Risk and Outcome

4 Is Imbalance in Risk a Problem? If we correctly model the relationship between risk factors and outcome, we correctly estimate effect of the intervention With many risk factors, hard to know if the relationship between risk factors and outcome is correctly modeled Propensity score - a way to reduce the effect of imbalance in measured risk when models may be inadequate

5 Propensity Score Method (Key Idea) Draw a sub-sample that is more balanced on risk factors Use standard techniques to analyze the sub- sample

6 Typical Propensity Score Approach Estimate a model to predict the “probability of receiving the intervention” – This is “the propensity score” Divide the full population into quintiles of the propensity score Sample equal numbers of cases and controls from each quintile Re-fit the model to estimate the effect of the intervention in the sampled cases

7 Propensity Score Sampling Example PS Quintile# Cases# Controls# Sampled Lowest nd Middle th Highest Total

8 Propensity Score Sampling Example: Treatments for Drug Abusers Patients seeking substance abuse detoxification in Boston receive either Residential detoxification Lasts ~ one week + encouragement for post- detox treatment, or Acupuncture Acute (daily) detox months of maintenance with acupuncture and motivational counseling

9 Data From Boston’s publicly-funded substance abuse treatment system All cases discharged from residential detox or acupuncture between 1/93 and 9/94 Client classified (only once) as residential or acupuncture based on the modality of first discharge

10 Outcome Is client re-admitted to detox within 6 months? (Y/N) Study question: Are acupuncture clients more likely to be re-admitted than residential detox clients

11 Client Characteristics Available At Time Of Admission Gender Race/ethnicity Age Education Employment status Income Health insurance status Living situation Prior mental health treatment Primary drug Substance abuse treatment history

12 Residential Detox & Acupuncture Cases: % with Various Characteristics Characteristic Residential (n = 6,907) Acupuncture (n = 1,104) Gender: female 2933 Race/ethnicity: black 46 Hispanic White4143 Education: HS grad5659 College graduate413

Employment: unemployed Insurance: uninsured Medicaid Private insurance Lives: with child In shelter Characteristic Residential (n = 6,907) Acupuncture (n = 1,104) Characteristics of Residential Detox & Acupuncture Clients (2)

14 Prior mental health treatment Primary drug: alcohol Cocaine Crack Heroin Characteristic Residential (n = 6,907) Acupuncture (n = 1,104) Characteristics of Residential Detox & Acupuncture Clients (3)

15 Substance abuse admits in the last year Residential detox: Short-term residential: 0 Long-term residential: 0 Outpatient: None Acupuncture: None Characteristic Residential (n = 6,907) Acupuncture (n = 1,104) Characteristics of Residential Detox & Acupuncture Clients (4)

16 Results Of Standard Analysis Percentage of clients re-admitted to detox within 6 months Among 1,104 acupuncture cases, 18% re-admitted Among 6,907 residential detox cases, 36% re-admitted Raw odds ratio = 0.40 From a multivariable stepwise logistic regression model: Odds ratio for acupuncture:0.71 (CI = )

17 Concern Given large differences in risk adjustors between the groups and possibility of model mis-specification, should we be concerned about the estimated effect of acupuncture? Stratum-specific modeling has been used to address such concerns historically –Strata defined by a limited number of particularly important risk adjustors Propensity scores, a generalization –Used when there are many important predictors

18 Propensity Score Application Use stepwise logistic regression to build a model to predict whether a client “is a case”(i.e., receives acupuncture) Select sub-samples of cases and controls that have similar distribution of the “propensity score” (predicted probability of being a case) Model (as before) on the sub-sample

19 Sampling Results Able to match 740 cases (out of the full sample of 1,104 cases) with 740 comparable controls (out of the full sample of 6,907 controls) Much more balance in terms of risk in this sub-sample

20 Characteristic Residential Acupuncture College graduate Employed Private Insurance Lives with child or adult Lives in shelter Prior mental health Rx 7% 41% 9% 72% 5% 21% (4%) (13%) (3%) (55%) (30%) (12%) 7% 42% 6% 77% 4% 21% (13%) (57%) (15%) (76%) (3%) (28%) Characteristics of Clients in Subsample (Full Sample)

21 Comparing Standard and Propensity Score Findings From the multivariable model fit to all cases: Odds Ratio for acupuncture: % Confidence Interval: From multivariable model fit to more comparable sub- sample: OR for acupuncture: % CI:

22 Summary In this case, results were similar - Why? Original model was very good (C-statistic = 0.96) What was learned from the propensity score analysis: –Could find a subset of controls (about 10%) who look very similar to cases –Found similar results in this subset, increasing the credibility of the findings

23 Which Belong in the PS Model? Confounders (Brookhart’s X 1 variables)? Simple predictors (X 2 s)? Simple selectors (X 3 s)? Let’s work together to fill in the following table

Variable typeDirectly affects Belongs in which model Outcome (Y) Exposure (E)PSRegression X1Confounder11?? X2Predictor10?? X3Selector01?? 24