MinJae Lee, Ph.D. Associate Professor School School of Public Health Department Public Health | Harold C. Simmons Comprehensive Cancer Center Biography Download Curriculum Vitae Dr. MinJae Lee is a tenured associate professor of biostatistics in Peter O’Donnell Jr. School of Public Health at UTSW. Dr. Lee also serves as the Chair of Population Science Protocol Review and Monitoring Committee (PRMC) at Harold C. Simmons Comprehensive Cancer Center. Prior to joining UTSW, she served as an associate/assistant professor of biostatistics in Division of Clinical & Translational Sciences at University of Texas McGovern Medical School, University of Texas Health Science Center at Houston (2012-2020), and a research instructor of biostatistics at School of Medicine, Magee-Womens Research Institute, University of Pittsburgh (2010-2012). Dr. Lee received her Ph.D. degree in Biostatistics at Graduate School of Public Health, University of Pittsburgh in 2010. Dr. Lee's research focus centers around developing and applying innovative statistical methods to solve challenges and issues found in everyday research settings. She has gained extensive experience working at multidisciplinary research units of academic medical centers, developing successful collaborations with research investigators of various specialties. Dr. Lee has actively participated in publications and grant submissions for the various studies that require advanced statistical methodology such as cancer prevention/treatment study design/analysis, preventive lifestyle behavioral intervention trial design/evaluation, acute/chronic disease biomarker analysis, highly correlated exposure data analysis, and multi-site/multi-level/longitudinal data modeling. As a result of her extensive collaborative scientific research activities, Dr. Lee became familiar with varying levels of statistical challenges in analyzing complex data; she identified the areas requiring methodologic development and provided solutions to address clinically relevant questions by developing innovative statistical methods and illustrating their proper applications to real data. Dr. Lee developed multiple statistical approaches based on quantile regression, non-/semi-parametric statistical methods to deal with various types of measurement issues in self-reported data, truncated/censored values due to limit of detections in biomarkers or environmental exposure measurements, missing values in longitudinal/multi-level data under various mechanisms. She has also contributed to the university through teaching and serving on committees across campuses. She is a member of American Statistical Associations and an active reviewer/associate editor of several statistical and clinical journals including serving as Nature Medicine Statistical Advisory Panel. Research Interest Development of statistical methods for analyzing censored/truncated biomarkers or environmental measurements subject to detection limits Imputation/estimation methods development for handling missing and/or censored values in longitudinal data Measurement errors in self-reported data Methodology for data management/quality assurance Multi-level/longitudinal data analysis methods Semi-/non-parametric statistical methods Statistical analysis and design for cancer prevention/behavioral intervention trials Statistical challenges of epidemiological research in maternal/child health Translational research Publications Featured Publications Estimating minimal clinically important difference (MCID) for gastrointestinal symptoms in cystic fibrosis. Lee M, Sathe M, Moshiree B, Vu PT, Heltshe SL, Schwarzenberg SJ, Freedman SD, Freeman AJ, J Cyst Fibros 2024 Jul Effectiveness of mailed outreach and patient navigation to promote HCC screening process completion: a multicentre pragmatic randomised clinical trial. Singal AG, Narasimman M, Daher D, Yekkaluri S, Liu Y, Lee M, Cerda V, Khan A, Seif El Dahan K, Kramer J, Gopal P, Murphy C, Hernaez R, Gut 2024 Jun An expanded chronic care management approach to multiple chronic conditions in Hispanics using community health workers as community extenders in the Rio Grande Valley of Texas. Lopez JZ, Lee M, Park SK, Zolezzi ME, Mitchell-Bennett LA, Yeh PG, Perez L, Heredia NI, McPherson DD, McCormick JB, Reininger BM, Prev Med 2024 Apr 107975 Quantile regression based method for characterizing risk-specific behavioral patterns in relation to longitudinal left-censored biomarker data collected from heterogeneous populations Lee M, Reininger BM, Gabriel K, Ranjit N, Strong LL Journal of Applied Statistics 2024 1-35 Editorial: Women in science: life-course epidemiology and social inequalities in health 2022. Lee M, Front Public Health 2023 11 1202171 A latent class based imputation method under Bayesian quantile regression framework using asymmetric Laplace distribution for longitudinal medication usage data with intermittent missing values. Lee M, Rahbar MH, Gensler LS, Brown M, Weisman M, Reveille JD, J Biopharm Stat 2020 30 1 160-177 A generalized weighted quantile sum approach for analyzing correlated data in the presence of interactions. Lee M, Rahbar MH, Samms-Vaughan M, Bressler J, Bach MA, Hessabi M, Grove ML, Shakespeare-Pellington S, Coore Desai C, Reece JA, Loveland KA, Boerwinkle E, Biom J 2019 07 61 4 934-954 A Comparison of Mean-Based and Quantile Regression Methods for Analyzing Self-Report Dietary Intake Data Vidoni ML, Reininger BM, Lee M Journal of Probability and Statistics 2019 9750538 2019 1-5 A nonparametric method for assessment of interactions in a median regression model for analyzing right censored data. Lee M, Rahbar MH, Talebi H Stat Methods Med Res 2018 Jan 962280217751518 A multiple imputation method based on weighted quantile regression models for longitudinal censored biomarker data with missing values at early visits. Lee M, Rahbar MH, Brown M, Gensler L, Weisman M, Diekman L, Reveille JD BMC Med Res Methodol 2018 Jan 18 1 8 Results 1-10 of 139 1 2 3 4 5 Next Last