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<li><a href="./">Understanding Propensity Score Matching</a></li>
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<li class="chapter" data-level="" data-path="index.html"><a href="index.html"><i class="fa fa-check"></i>Preamble</a>
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<li class="chapter" data-level="" data-path="index.html"><a href="index.html#main-references"><i class="fa fa-check"></i>Main references</a></li>
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<li class="chapter" data-level="1" data-path="terms.html"><a href="terms.html"><i class="fa fa-check"></i><b>1</b> Defining Parameter</a>
<ul>
<li class="chapter" data-level="1.1" data-path="terms.html"><a href="terms.html#epidemiological-research-goals"><i class="fa fa-check"></i><b>1.1</b> Epidemiological research goals</a></li>
<li class="chapter" data-level="1.2" data-path="terms.html"><a href="terms.html#potential-outcome"><i class="fa fa-check"></i><b>1.2</b> Potential outcome</a></li>
<li class="chapter" data-level="1.3" data-path="terms.html"><a href="terms.html#parameters-of-interest"><i class="fa fa-check"></i><b>1.3</b> Parameters of interest</a>
<ul>
<li class="chapter" data-level="1.3.1" data-path="terms.html"><a href="terms.html#te"><i class="fa fa-check"></i><b>1.3.1</b> TE</a></li>
<li class="chapter" data-level="1.3.2" data-path="terms.html"><a href="terms.html#ate"><i class="fa fa-check"></i><b>1.3.2</b> ATE</a></li>
<li class="chapter" data-level="1.3.3" data-path="terms.html"><a href="terms.html#interpretation-of-ate"><i class="fa fa-check"></i><b>1.3.3</b> Interpretation of ATE</a></li>
<li class="chapter" data-level="1.3.4" data-path="terms.html"><a href="terms.html#identifiability-assumptions"><i class="fa fa-check"></i><b>1.3.4</b> Identifiability Assumptions</a></li>
<li class="chapter" data-level="1.3.5" data-path="terms.html"><a href="terms.html#att"><i class="fa fa-check"></i><b>1.3.5</b> ATT</a></li>
<li class="chapter" data-level="1.3.6" data-path="terms.html"><a href="terms.html#interpretation-of-att"><i class="fa fa-check"></i><b>1.3.6</b> Interpretation of ATT</a></li>
<li class="chapter" data-level="1.3.7" data-path="terms.html"><a href="terms.html#att-vs.-ate"><i class="fa fa-check"></i><b>1.3.7</b> ATT vs. ATE</a></li>
</ul></li>
</ul></li>
<li class="chapter" data-level="2" data-path="balance.html"><a href="balance.html"><i class="fa fa-check"></i><b>2</b> Balance and Overlap</a>
<ul>
<li class="chapter" data-level="2.1" data-path="balance.html"><a href="balance.html#balance-1"><i class="fa fa-check"></i><b>2.1</b> Balance</a>
<ul>
<li class="chapter" data-level="2.1.1" data-path="balance.html"><a href="balance.html#measures-of-balance"><i class="fa fa-check"></i><b>2.1.1</b> Measures of Balance</a></li>
</ul></li>
<li class="chapter" data-level="2.2" data-path="balance.html"><a href="balance.html#adjustment"><i class="fa fa-check"></i><b>2.2</b> Adjustment</a>
<ul>
<li class="chapter" data-level="2.2.1" data-path="balance.html"><a href="balance.html#why-adjust"><i class="fa fa-check"></i><b>2.2.1</b> Why adjust?</a></li>
<li class="chapter" data-level="2.2.2" data-path="balance.html"><a href="balance.html#adjustment-methods"><i class="fa fa-check"></i><b>2.2.2</b> Adjustment Methods</a></li>
</ul></li>
<li class="chapter" data-level="2.3" data-path="balance.html"><a href="balance.html#lack-of-overlap"><i class="fa fa-check"></i><b>2.3</b> Lack of overlap</a></li>
</ul></li>
<li class="chapter" data-level="3" data-path="ps.html"><a href="ps.html"><i class="fa fa-check"></i><b>3</b> Propensity score</a>
<ul>
<li class="chapter" data-level="3.1" data-path="ps.html"><a href="ps.html#motivating-problem"><i class="fa fa-check"></i><b>3.1</b> Motivating problem</a></li>
<li class="chapter" data-level="3.2" data-path="ps.html"><a href="ps.html#defining-propensity-score"><i class="fa fa-check"></i><b>3.2</b> Defining Propensity score</a>
<ul>
<li class="chapter" data-level="3.2.1" data-path="ps.html"><a href="ps.html#theoretical-result"><i class="fa fa-check"></i><b>3.2.1</b> Theoretical result</a></li>
<li class="chapter" data-level="3.2.2" data-path="ps.html"><a href="ps.html#assumptions"><i class="fa fa-check"></i><b>3.2.2</b> Assumptions</a></li>
<li class="chapter" data-level="3.2.3" data-path="ps.html"><a href="ps.html#ways-to-use-ps"><i class="fa fa-check"></i><b>3.2.3</b> Ways to use PS</a></li>
</ul></li>
<li class="chapter" data-level="3.3" data-path="ps.html"><a href="ps.html#ps-matching-steps"><i class="fa fa-check"></i><b>3.3</b> PS Matching Steps</a></li>
</ul></li>
<li class="chapter" data-level="4" data-path="s1.html"><a href="s1.html"><i class="fa fa-check"></i><b>4</b> Step 1: Exposure modelling</a>
<ul>
<li class="chapter" data-level="4.1" data-path="s1.html"><a href="s1.html#model-specification"><i class="fa fa-check"></i><b>4.1</b> Model specification</a>
<ul>
<li class="chapter" data-level="4.1.1" data-path="s1.html"><a href="s1.html#updating-model-specification"><i class="fa fa-check"></i><b>4.1.1</b> Updating model specification</a></li>
<li class="chapter" data-level="4.1.2" data-path="s1.html"><a href="s1.html#stability-of-ps"><i class="fa fa-check"></i><b>4.1.2</b> Stability of PS</a></li>
</ul></li>
<li class="chapter" data-level="4.2" data-path="s1.html"><a href="s1.html#variables-to-adjust"><i class="fa fa-check"></i><b>4.2</b> Variables to adjust</a>
<ul>
<li class="chapter" data-level="4.2.1" data-path="s1.html"><a href="s1.html#best-approach"><i class="fa fa-check"></i><b>4.2.1</b> Best approach</a></li>
<li class="chapter" data-level="4.2.2" data-path="s1.html"><a href="s1.html#general-guideline-of-type-of-variables"><i class="fa fa-check"></i><b>4.2.2</b> General guideline of type of variables</a></li>
<li class="chapter" data-level="4.2.3" data-path="s1.html"><a href="s1.html#what-not-to-include"><i class="fa fa-check"></i><b>4.2.3</b> What NOT to include</a></li>
<li class="chapter" data-level="4.2.4" data-path="s1.html"><a href="s1.html#mediators"><i class="fa fa-check"></i><b>4.2.4</b> Mediators</a></li>
<li class="chapter" data-level="4.2.5" data-path="s1.html"><a href="s1.html#unmeasured-confounding"><i class="fa fa-check"></i><b>4.2.5</b> Unmeasured confounding</a></li>
</ul></li>
<li class="chapter" data-level="4.3" data-path="s1.html"><a href="s1.html#model-selection"><i class="fa fa-check"></i><b>4.3</b> Model selection</a>
<ul>
<li class="chapter" data-level="4.3.1" data-path="s1.html"><a href="s1.html#based-on-association-with-outcome"><i class="fa fa-check"></i><b>4.3.1</b> Based on association with outcome</a></li>
<li class="chapter" data-level="4.3.2" data-path="s1.html"><a href="s1.html#based-on-association-with-exposure"><i class="fa fa-check"></i><b>4.3.2</b> Based on association with exposure</a></li>
</ul></li>
<li class="chapter" data-level="4.4" data-path="s1.html"><a href="s1.html#alternative-modelling-strategies"><i class="fa fa-check"></i><b>4.4</b> Alternative modelling strategies</a></li>
<li class="chapter" data-level="4.5" data-path="s1.html"><a href="s1.html#ps-estimation"><i class="fa fa-check"></i><b>4.5</b> PS estimation</a></li>
</ul></li>
<li class="chapter" data-level="5" data-path="s2.html"><a href="s2.html"><i class="fa fa-check"></i><b>5</b> Step 2: Propensity score Matching</a>
<ul>
<li class="chapter" data-level="5.1" data-path="s2.html"><a href="s2.html#matching-method-nn"><i class="fa fa-check"></i><b>5.1</b> Matching method NN</a></li>
<li class="chapter" data-level="5.2" data-path="s2.html"><a href="s2.html#initial-fit"><i class="fa fa-check"></i><b>5.2</b> Initial fit</a></li>
<li class="chapter" data-level="5.3" data-path="s2.html"><a href="s2.html#fine-tuning-add-caliper"><i class="fa fa-check"></i><b>5.3</b> Fine tuning: add caliper</a></li>
<li class="chapter" data-level="5.4" data-path="s2.html"><a href="s2.html#things-to-keep-track-of"><i class="fa fa-check"></i><b>5.4</b> Things to keep track of</a></li>
<li class="chapter" data-level="5.5" data-path="s2.html"><a href="s2.html#matches"><i class="fa fa-check"></i><b>5.5</b> Matches</a></li>
<li class="chapter" data-level="5.6" data-path="s2.html"><a href="s2.html#other-matching-algorithms"><i class="fa fa-check"></i><b>5.6</b> Other matching algorithms</a></li>
</ul></li>
<li class="chapter" data-level="6" data-path="s3.html"><a href="s3.html"><i class="fa fa-check"></i><b>6</b> Step 3: Balance and overlap</a>
<ul>
<li class="chapter" data-level="6.1" data-path="s3.html"><a href="s3.html#assessment-of-balance-by-smd"><i class="fa fa-check"></i><b>6.1</b> Assessment of Balance by SMD</a></li>
<li class="chapter" data-level="6.2" data-path="s3.html"><a href="s3.html#smd-vs.-p-values"><i class="fa fa-check"></i><b>6.2</b> SMD vs. P-values</a></li>
<li class="chapter" data-level="6.3" data-path="s3.html"><a href="s3.html#vizualization-for-overlap"><i class="fa fa-check"></i><b>6.3</b> Vizualization for Overlap</a></li>
<li class="chapter" data-level="6.4" data-path="s3.html"><a href="s3.html#variance-ratio-1"><i class="fa fa-check"></i><b>6.4</b> Variance ratio</a></li>
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<li class="chapter" data-level="8.5.5" data-path="compare.html"><a href="compare.html#regression-is-doomed"><i class="fa fa-check"></i><b>8.5.5</b> Regression is doomed?</a></li>
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<li class="chapter" data-level="9" data-path="misspecify.html"><a href="misspecify.html"><i class="fa fa-check"></i><b>9</b> PS vs. Double robust methods</a>
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<li class="chapter" data-level="9.1" data-path="misspecify.html"><a href="misspecify.html#complex-data-simulation"><i class="fa fa-check"></i><b>9.1</b> Complex Data Simulation</a>
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<li class="chapter" data-level="" data-path="references.html"><a href="references.html"><i class="fa fa-check"></i>References</a></li>
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<div id="refs" class="references csl-bib-body hanging-indent">
<div class="csl-entry">
Alam, Shomoita, Erica EM Moodie, and David A Stephens. 2019. <span>“Should a Propensity Score Model Be Super? The Utility of Ensemble Procedures for Causal Adjustment.”</span> <em>Statistics in Medicine</em> 38 (9): 1690–1702.
</div>
<div class="csl-entry">
Ali, M Sanni, Daniel Prieto-Alhambra, Luciane Cruz Lopes, Dandara Ramos, Nivea Bispo, Maria Y Ichihara, Julia M Pescarini, et al. 2019. <span>“Propensity Score Methods in Health Technology Assessment: Principles, Extended Applications, and Recent Advances.”</span> <em>Frontiers in Pharmacology</em> 10: 973.
</div>
<div class="csl-entry">
Athey, Susan, and Stefan Wager. 2019. <span>“Estimating Treatment Effects with Causal Forests: An Application.”</span> <em>Observational Studies</em> 5 (2): 37–51.
</div>
<div class="csl-entry">
Austin, Peter C. 2007. <span>“Propensity-Score Matching in the Cardiovascular Surgery Literature from 2004 to 2006: A Systematic Review and Suggestions for Improvement.”</span> <em>The Journal of Thoracic and Cardiovascular Surgery</em> 134 (5): 1128–35.
</div>
<div class="csl-entry">
———. 2009. <span>“Balance Diagnostics for Comparing the Distribution of Baseline Covariates Between Treatment Groups in Propensity-Score Matched Samples.”</span> <em>Statistics in Medicine</em> 28 (25): 3083–3107.
</div>
<div class="csl-entry">
———. 2011a. <span>“A Tutorial and Case Study in Propensity Score Analysis: An Application to Estimating the Effect of in-Hospital Smoking Cessation Counseling on Mortality.”</span> <em>Multivariate Behavioral Research</em> 46 (1): 119–51.
</div>
<div class="csl-entry">
———. 2011b. <span>“An Introduction to Propensity Score Methods for Reducing the Effects of Confounding in Observational Studies.”</span> <em>Multivariate Behavioral Research</em> 46 (3): 399–424.
</div>
<div class="csl-entry">
Austin, Peter C, and Dylan S Small. 2014. <span>“The Use of Bootstrapping When Using Propensity-Score Matching Without Replacement: A Simulation Study.”</span> <em>Statistics in Medicine</em> 33 (24): 4306–19.
</div>
<div class="csl-entry">
Balzer, Laura B, and Ted Westling. 2021. <span>“Demystifying Statistical Inference When Using Machine Learning in Causal Research.”</span> <em>American Journal of Epidemiology</em>.
</div>
<div class="csl-entry">
Breiman, L, JH Friedman, R Olshen, and CJ Stone. 1984. <span>“Classification and Regression Trees.”</span>
</div>
<div class="csl-entry">
Brookhart, M Alan, Sebastian Schneeweiss, Kenneth J Rothman, Robert J Glynn, Jerry Avorn, and Til Stürmer. 2006. <span>“Variable Selection for Propensity Score Models.”</span> <em>American Journal of Epidemiology</em> 163 (12): 1149–56.
</div>
<div class="csl-entry">
Chernozhukov, Victor, Denis Chetverikov, Mert Demirer, Esther Duflo, Christian Hansen, and Whitney Newey. 2017. <span>“Double/Debiased/Neyman Machine Learning of Treatment Effects.”</span> <em>American Economic Review</em> 107 (5): 261–65.
</div>
<div class="csl-entry">
D’Agostino Jr, Ralph B. 1998. <span>“Propensity Score Methods for Bias Reduction in the Comparison of a Treatment to a Non-Randomized Control Group.”</span> <em>Statistics in Medicine</em> 17 (19): 2265–81.
</div>
<div class="csl-entry">
Dong, Jing, Junni L Zhang, Shuxi Zeng, and Fan Li. 2020. <span>“Subgroup Balancing Propensity Score.”</span> <em>Statistical Methods in Medical Research</em> 29 (3): 659–76.
</div>
<div class="csl-entry">
Eeren, Hester V, Marieke D Spreeuwenberg, Anna Bartak, Mark de Rooij, and Jan JV Busschbach. 2015. <span>“Estimating Subgroup Effects Using the Propensity Score Method: A Practical Application in Outcomes Research.”</span> <em>Medical Care</em> 53 (4): 366–73.
</div>
<div class="csl-entry">
Gautret, Philippe, Jean-Christophe Lagier, Philippe Parola, Line Meddeb, Morgane Mailhe, Barbara Doudier, Johan Courjon, et al. 2020. <span>“Hydroxychloroquine and Azithromycin as a Treatment of COVID-19: Results of an Open-Label Non-Randomized Clinical Trial.”</span> <em>International Journal of Antimicrobial Agents</em> 56 (1): 105949.
</div>
<div class="csl-entry">
Girman, Cynthia J, Mugdha Gokhale, Tzuyung Doug Kou, Kimberly G Brodovicz, Richard Wyss, and Til Stürmer. 2014. <span>“Assessing the Impact of Propensity Score Estimation and Implementation on Covariate Balance and Confounding Control Within and Across Important Subgroups in Comparative Effectiveness Research.”</span> <em>Medical Care</em> 52 (3): 280.
</div>
<div class="csl-entry">
Green, Kerry M, and Elizabeth A Stuart. 2014. <span>“Examining Moderation Analyses in Propensity Score Methods: Application to Depression and Substance Use.”</span> <em>Journal of Consulting and Clinical Psychology</em> 82 (5): 773.
</div>
<div class="csl-entry">
Ho, Tin Kam. 1995. <span>“Random Decision Forests.”</span> In <em>Proceedings of 3rd International Conference on Document Analysis and Recognition</em>, 1:278–82. IEEE.
</div>
<div class="csl-entry">
Kang, Joseph DY, and Joseph L Schafer. 2007. <span>“Demystifying Double Robustness: A Comparison of Alternative Strategies for Estimating a Population Mean from Incomplete Data.”</span> <em>Statistical Science</em> 22 (4): 523–39.
</div>
<div class="csl-entry">
Karim, Mohammad Ehsanul, Menglan Pang, and Robert W Platt. 2018. <span>“Can We Train Machine Learning Methods to Outperform the High-Dimensional Propensity Score Algorithm?”</span> <em>Epidemiology</em> 29 (2): 191–98.
</div>
<div class="csl-entry">
Karim, Mohammad Ehsanul, Fabio Pellegrini, Robert W Platt, Gabrielle Simoneau, Julie Rouette, and Carl de Moor. 2020. <span>“The Use and Quality of Reporting of Propensity Score Methods in Multiple Sclerosis Literature: A Review.”</span> <em>Multiple Sclerosis Journal</em>, 1352458520972557.
</div>
<div class="csl-entry">
King, Gary, and Richard Alexander Nielsen. 2019. <span>“Why Propensity Scores Should Not Be Used for Matching.”</span>
</div>
<div class="csl-entry">
Kreif, Noemi, Richard Grieve, Rosalba Radice, Zia Sadique, Roland Ramsahai, and Jasjeet S Sekhon. 2012. <span>“Methods for Estimating Subgroup Effects in Cost-Effectiveness Analyses That Use Observational Data.”</span> <em>Medical Decision Making</em> 32 (6): 750–63.
</div>
<div class="csl-entry">
Lee, Brian K, Justin Lessler, and Elizabeth A Stuart. 2010. <span>“Improving Propensity Score Weighting Using Machine Learning.”</span> <em>Statistics in Medicine</em> 29 (3): 337–46.
</div>
<div class="csl-entry">
Liu, Shan-Yu, Chunyan Liu, Eddie Nehus, Maurizio Macaluso, Bo Lu, and Mi-Ok Kim. 2020. <span>“Propensity Score Analysis for Correlated Subgroup Effects.”</span> <em>Statistical Methods in Medical Research</em> 29 (4): 1067–80.
</div>
<div class="csl-entry">
Naimi, Ashley I, Alan E Mishler, and Edward H Kennedy. 2017. <span>“Challenges in Obtaining Valid Causal Effect Estimates with Machine Learning Algorithms.”</span> <em>arXiv Preprint arXiv:1711.07137</em>.
</div>
<div class="csl-entry">
Nguyen, Tri-Long, Gary S Collins, Jessica Spence, Jean-Pierre Daurès, PJ Devereaux, Paul Landais, and Yannick Le Manach. 2017. <span>“Double-Adjustment in Propensity Score Matching Analysis: Choosing a Threshold for Considering Residual Imbalance.”</span> <em>BMC Medical Research Methodology</em> 17 (1): 1–8.
</div>
<div class="csl-entry">
Pirracchio, Romain, Maya L Petersen, and Mark Van Der Laan. 2015. <span>“Improving Propensity Score Estimators’ Robustness to Model Misspecification Using Super Learner.”</span> <em>American Journal of Epidemiology</em> 181 (2): 108–19.
</div>
<div class="csl-entry">
Radice, Rosalba, Roland Ramsahai, Richard Grieve, Noemi Kreif, Zia Sadique, and Jasjeet S Sekhon. 2012. <span>“Evaluating Treatment Effectiveness in Patient Subgroups: A Comparison of Propensity Score Methods with an Automated Matching Approach.”</span> <em>The International Journal of Biostatistics</em> 8 (1).
</div>
<div class="csl-entry">
Rassen, Jeremy A, Robert J Glynn, Kenneth J Rothman, Soko Setoguchi, and Sebastian Schneeweiss. 2012. <span>“Applying Propensity Scores Estimated in a Full Cohort to Adjust for Confounding in Subgroup Analyses.”</span> <em>Pharmacoepidemiology and Drug Safety</em> 21 (7): 697–709.
</div>
<div class="csl-entry">
Robins, J. M., and A G Rotnitzky. 2001. <span>“Comment on the Bickel and Kwon Article, ’Inference for Semiparametric Models: Some Questions and an Answer’.”</span> <em>Statistica Sinica</em> 11 (January): 920–36.
</div>
<div class="csl-entry">
Robins, James. 1986. <span>“A New Approach to Causal Inference in Mortality Studies with a Sustained Exposure Period—Application to Control of the Healthy Worker Survivor Effect.”</span> <em>Mathematical Modelling</em> 7 (9-12): 1393–1512.
</div>
<div class="csl-entry">
Rosenbaum, Paul R, and Donald B Rubin. 1983. <span>“The Central Role of the Propensity Score in Observational Studies for Causal Effects.”</span> <em>Biometrika</em> 70 (1): 41–55.
</div>
<div class="csl-entry">
Rubin, Donald B. 1973. <span>“Matching to Remove Bias in Observational Studies.”</span> <em>Biometrics</em>, 159–83.
</div>
<div class="csl-entry">
Stanton, Jeffrey M. 2001. <span>“Galton, Pearson, and the Peas: A Brief History of Linear Regression for Statistics Instructors.”</span> <em>Journal of Statistics Education</em> 9 (3).
</div>
<div class="csl-entry">
Stuart, Elizabeth A. 2010. <span>“Matching Methods for Causal Inference: A Review and a Look Forward.”</span> <em>Statistical Science: A Review Journal of the Institute of Mathematical Statistics</em> 25 (1): 1.
</div>
<div class="csl-entry">
Van Der Laan, Mark J, and Daniel Rubin. 2006. <span>“Targeted Maximum Likelihood Learning.”</span> <em>The International Journal of Biostatistics</em> 2 (1).
</div>
<div class="csl-entry">
Wang, Shirley V, Yinzhu Jin, Bruce Fireman, Susan Gruber, Mengdong He, Richard Wyss, HoJin Shin, et al. 2018. <span>“Relative Performance of Propensity Score Matching Strategies for Subgroup Analyses.”</span> <em>American Journal of Epidemiology</em> 187 (8): 1799–1807.
</div>
<div class="csl-entry">
Yang, Dongsheng, and Jarrod E Dalton. 2012. <span>“A Unified Approach to Measuring the Effect Size Between Two Groups Using SAS.”</span> In <em>SAS Global Forum</em>, 335:1–6. Citeseer.
</div>
<div class="csl-entry">
Yao, Xiaoxin I, Xiaofei Wang, Paul J Speicher, E Shelley Hwang, Perry Cheng, David H Harpole, Mark F Berry, Deborah Schrag, and Herbert H Pang. 2017. <span>“Reporting and Guidelines in Propensity Score Analysis: A Systematic Review of Cancer and Cancer Surgical Studies.”</span> <em>JNCI: Journal of the National Cancer Institute</em> 109 (8): djw323.
</div>
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