Professor of Biostatistics (in Psychiatry)
Department of Biostatistics, Mailman School of Public Health
and
Director of Mental Health Data Science in the
Department of Psychiatry, Columbia University Irving Medical Center and
the
New York State Psychiatric Institute
I am the director of Mental
Health Data Science in the New York State Psychiatric Institute
(NYSPI) and Columbia University psychiatry department where I oversee a
team of 14 biostatisticians collaborating on predominately NIH funded
research projects related to psychiatry. I have worked extensively with
modeling complex multilevel and multimodal data on a wide array of
psychosocial public health and psychiatric research questions in both
clinical studies and large epidemiologic studies (over 450 total journal
publications). My biostatistical expertise includes latent variable
modeling (e.g. factor analysis, item response theory, latent class
models, structural equation modeling), spatial data modeling
(e.g. disease mapping), and longitudinal data analysis including the
class of longitudinal models commonly called growth curve mixture
models. I received a Ph.D. (1998) from the Department of Statistics at
Iowa State University, and a B.S. (1993) in mathematics from Truman
State University. Before moving to Columbia University in 2010, I was on
faculty in Biostatistics in the School of Public Health at the
University of Minnesota. Link to my blog about Mental Health Data
Science.
Research
My full CV is here
and below are selected research papers and statistical programs…
- Info about additive interactions
- Info about suppression effects
- Friedman L, Wall MM. (2005) “Graphical views of suppression and
multicollinearity in multiple linear regression”, The American
Statistician, vol. 59, no. 2, pp. 127 * 136. Splus program for
producing graphs in this paper here
prepared by Lynn Friedman.
- Here is an Interactive
Shiny App that allows you to examining suppression and
multicollinearity under any scenario which just the click of a button
developed by Nick
Brown.
- Programs for testing
sequences of drug initiation in Wall MM, Cheslack-Postava K, Hu MC,
Feng T, Griesler P, Kandel DB. Nonmedical prescription opioids and
pathways of drug involvement in the US: Generational differences, Drug
and Alcohol Dependence, 182: 103-111. 2017.
- Programs for assessing Total
Information in Item Response Theory Modeling
- Papers on latent variable models including nonlinear structural
equation models
- Wall MM, Park JY, Moustaki I. (2015). IRT modeling in the presence
of zero-inflation with applicaiton to psychiatric disorder severity.
Applied Psychological Measurement 39(8): 583-597.
- Wall, M.M., Guo, J., Amemiya, Y. (2012). Mixture factor analysis for
approximating a non-normally distributed continuous latent factor with
continuous and dichotomous observed variables. Multivariate
Behavioral Research, 47:276-313. Explanation
of Mplus program for Mixture Factor Analysis, Mplus
.out file for Mixture Factor Model 4class result in Table 6, Data for
Numerical Example fit in Table 6
- Wall, M.M. and Li, Ran (2009) Multiple indicator hidden Markov model
with an application to medical utilization data. Statistics in
Medicine, 28(2): 293-310.
- Guo, J. Wall, M.M., and Amemiya, Y. (2006) “Latent class regression
on latent factors”, Biostatistis, 7, 1, pp. 145-163.
- Wall, M.M. and Li, Ruifeng (2003) “A Comparison of Multiple
Regression to Two Latent Variable Techniques for Estimation and
Prediction”, Statistics in Medicine, 22, 3671-3685. SAS
programs for performing analysis in this paper here
- Nonlinear SEM Papers below and Nonlinear
SEM Programs HERE
- Wall, M.M. and Amemiya, Y, (2000) “Estimation for polynomial
structural equation models”. JASA, 95,
929-940.
- Wall, M.M. and Amemiya, Y, (2001) “Generalized appended product
indicator procedure for nonlinear structural equation analysis”.
Journal of Educational and Behavioral Statistics,
26, 1-29.
- Wall, M.M. and Amemiya, Y, (2003) “A method of moments technique for
fitting interaction effects in structural equation models”, British
Journal of Mathematical and Statistical Psychology,
56, 47-64.
- Wall M.M. and Amemiya, Y. (2007) “A review of nonlinear factor
analysis and nonlinear structural equation modeling” In Factor
Analysis at 100: Historical Developments and Future Directions,
eds. Robert Cudeck and Robert C. MacCallum, Chapter 16 pp 337-362,
Lawrence Erlbaum Associates.
- Wall M.M. and Amemiya, Y. (2007) “Nonlinear structural equation
modeling as a statistical method” In Handbook of Latent Variable and
related Models, ed Sik-Yum Lee, Chapter 15, 321-344, Elsevier, The
Netherlands.
- Wall MM (2009) Maximum likelihood and Bayesian estimation for
nonlinear structural equation models, In the Handbook of
Quantitative Methods in Psychology eds Roger Millsap and Albert
Maydeu-Olivares, Chapter 22, 540-567, Sage.
- Papers on spatial data modelling
- Wang, F., and Wall, M.M. (2003) “Generalized Common Spatial Factor
Model” Biostatistics 4(4), 569-582.
- Wang, F. and Wall, M.M. “Modelling multivariate data with a common
spatial factor” Research Report No. 2001-008, Division of Biostatistics,
University of Minnesota, Minneapolis, MN.
- Wang, F., and Wall, M.M. (2003) “Incorporating Parameter Uncertainty
into Prediction Intervals for Spatial Data Modeled via a Parametric
Variogram”, JABES, 8, Vol. 3., 1-14.
- Banerjee, S., Wall, M.M., and Carlin, B.P. (2003) “Frailty Modeling
for Spatially Correlated Survival Data, with Application to Infant
Mortality in Minnesota”, Biostatistics, 4, 123-143.
- Wall, M.M. (2004) “A close look at the spatial correlation structure
implied by the CAR and SAR models” Journal of Statsitical Planning
and Inference Vol 121, 2, 311-324.
- Zhao, Y. and Wall, M.M. (2004) ``Investigating the use of the
variogram for lattice data’’ Journal of Computational and Graphical
Statistics, 13(3) , 1-20.
- Liu X, Wall MM, Hodges JS (2005) “Generalized spatial structural
equation modeling” Biostatistics, 6: 539-557.
- Wall MM and Liu X (2009) ``Spatial Latent Class Analysis Model for
Spatially Distributed Multivariate Binary Data”, Computational
Statistics and Data Analysis, 53, 3057-3069.
- Wall MM (2012). Spatial structural equation modeling with an
application to U.S. behavioral risk factor surveillance survey data. In
the Handbook of Structural Equation Modeling Chapter 39,
674-689, ed Rick Hoyle, Guilford Press.
- Other statistical methodology papers
- Wall, M.M., Boen, J. and Tweedie, R. L. (2001) “An effective CI for
the mean with samples of size 1 and 2”, The American
Statistician, 55, No. 2, 102-105.
- Pan, W. and Wall, M.M. (2002) “Small-Sample Adjustments in Using the
Sandwich Variance Estimator in Generalized Estimating Equations”
Statistics in Medicine, 21, No. 10,
1429-1441.
- Wall, M.M. (2004) “Adjusting SIDS rates by seasonality in births in
Minnesota”, Statistics in Medicine, 23(13): 2037-2048.
- Wall, M.M., Dai, Y., Eberly, L.E. (2005) “GEE Estimation of a
Mis-specified Time-varying Covariate in Poisson Regression with Many
Observations” Statistics in Medicine, 24:925-939.
Melanie M. Wall
email: mmw2177@cumc.columbia.edu
phone: (646)774-5458
Mailing address:
1051 Riverside Drive
Unit 48
New York, NY 10032
Physical address (and FedEx):
Allan Rosenfield Building
722 West 168th Street - R207
New York, NY 10032
Here’s back to the index page.