Education / Graduate Education / PhD Programs / Statistics / About the Program / Curriculum / Syllabi Syllabi BST 401 Probability Theory Semester: Fall Description: Probability spaces; random variables; independence; distributions; expectation; characteristic functions and inversion theorems; convergence; laws of large numbers; central limit theorem. Contact: Changyong_Feng@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 401 Syllabus BST 411 Statistical Inference Semester: Fall Description: Probability distributions, transformations and sampling distributions; statistical models; estimation, hypothesis testing, and confidence intervals for parametric models; introduction to large-sample methods. Contact: Anthony_Almudevar@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 411 Syllabus BST 430 Introduction to Statistical Computing Semester: Fall Description: Basic/intermediate R programming; statistical analysis in R; visualization in R; introduction to SAS programming; statistical analysis in SAS; reproducible research and collaborative coding; command line tools and BlueHive. Topics in statistical analysis provide working examples. Contact: Zhengwu_Zhang@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 430 Syllabus BST 432 High Dimensional Data Analysis Semester: Fall Description: Application of statistical theory to the analysis of high throughput data; introduction to Bioconductor; molecular profiles (mRNA, cDNA, microRNA, proteomics); platforms (Affymetrix and other microarrays, PCR, RNA seq); quality control (quality assessment, batch-effects); exploratory methods (graphical methods, clustering, principal component analysis and other dimension reduction techniques); differential expression and multiple hypothesis testing; classification (feature selection, multivariate methods, machine learning, cross-validation). Contact: Andrew_McDavid@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 432 Syllabus BST 463 Introduction to Biostatistics Semester: Fall Description: Introduction to statistical techniques with emphasis on applications in the health sciences. Summarizing and displaying data; introduction to probability; Bayes' theorem and its application in diagnostic testing; binomial, Poisson, and normal distributions; sampling distributions; estimation, confidence intervals, and hypothesis testing involving means and proportions; simple correlation and regression; contingency tables; use of statistical software. Contact: Hongmei_Yang@URMC.Rochester.edu Can students outside the department’s program(s) take it? Yes BST 463 Syllabus BST 464 Applied Linear Regression Semester: Fall Description: One-way and two-way analysis of variance; multiple comparisons involving means; fixed and random effects; simple and multiple linear regression; analysis of covariance; interactions; correlation and partial correlation; multicollinearity; model selection; model checking. Contact: Sally_Thurston@URMC.Rochester.edu Can students outside the department’s program(s) take it? Yes BST 464 Syllabus BST 487 Seminar in Statistical Literature Semester: Fall Description: Provides an introduction to the process of searching the statistical literature, opportunities to acquire knowledge of a focused area of statistical research, experience in organizing, preparing, and delivering oral presentations, and an introduction to the research interests of members of the faculty. Contact: Michael_McDermott@URMC.Rochester.edu Can students outside the department’s program(s) take it? No No Syllabus Provided BST 511 Topics in Statistical Inference I Semester: Fall Description: Fall 2018 Topic: Functional Data Analysis Contact: Xing_Qiu@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. No Syllabus Provided BST 514 Survival Analysis Semester: Fall Description: Parametric, nonparametric, and semiparametric methods for the analysis of survival data. right censoring; Kaplan-Meier curves; log-rank and weighted log-rank tests; survival distributions; accelerated life and proportional hazards regression models; time-dependent covariates; partial likelihood; models for competing risks and multiple events. Contact: Robert_Strawderman@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 514 Syllabus BST 531 Nonparametric Inference Semester: Fall Description: Nonparametric estimation and inference for one-sample location and paired data, two-sample location and/or dispersion, one- and two-way layouts with and without order restrictions, tests of independence, and regression; exact and large-sample results for some commonly used procedures, including the sign test and the sample median, the Mann-Whitney-Wilcoxon test and the Hodges-Lehmann location measure, and some generalizations to more complex data structures; density estimation; nonparametric regression; generalized additive models (GAM); cross-validation; bandwidth selection; exact and asymptotic bias, variance, and mean squared error (MSE). Contact: Derick_Peterson@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 531 Syllabus BST 413 Bayesian Inference Semester: Spring Description: Posterior distributions for single and multiple parameter models under conjugacy; hierarchical models; noninformative and informative prior distributions; modern computational techniques, including Markov chain Monte Carlo; model checking; posterior predictive checks; sensitivity analysis. Contact: Tanzy_Love@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 413 Syllabus BST 426 Linear Models Semester: Spring Description: Theory of least-squares; point estimation in the general linear model; projection operators, estimable functions and generalized inverses; tests of general linear hypotheses; power; confidence intervals and ellipsoids; simultaneous inference; linear and polynomial regression; analysis of variance and analysis of covariance models; fixed, random, and mixed effects; correlation; prediction. Contact: Michael_McDermott@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 426 Syllabus BST 465 Design of Clinical Trials Semester: Spring Description: Introduction to the principles of clinical trials; clinical trial protocols; overview of the drug development process; hypotheses/objectives; specification of response variables; defining the study population; randomization; blinding; ethical issues; factorial designs; crossover designs; equivalence trials; trial monitoring and interim analyses; sample size and power; issues in data analysis and reporting; evaluating clinical trial reports. Contact: Christopher_Beck@URMC.Rochester.edu Can students outside the department’s program(s) take it? Yes BST 465 Syllabus BST 466 Categorical Data Analysis Semester: Spring Description: Measures of association for categorical outcomes; contingency table analysis; regression analysis for binary, polytomous, count and time-to-event responses; emphasis on general ideas and applications of models and methods using statistical software such as SAS; review of necessary theory underlying likelihood and nonparametric inference as it pertains to the development of relevant models and test statistics. Contact: Tongtong_Wu@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. BST 466 Syllabus BST 467 Applied Statistics in the Biomedical Sciences Semester: Spring Description: Introduction to statistical techniques with emphasis on applications in the biomedical sciences. Introduction to probability and probability distributions; sampling distributions; estimation, confidence intervals and hypothesis testing in small and large samples; analysis of categorical data; analysis of variance; correlation and linear and nonlinear regression analysis; use of statistical software; illustrations using published articles in the biomedical sciences. Contact: Xueya_Cai@URMC.Rochester.edu Can students outside the department’s program(s) take it? Yes BST 467 Syllabus BST 487 Seminar in Statistical Literature Semester: Spring Description: Provides an introduction to the process of searching the statistical literature, opportunities to acquire knowledge of a focused area of statistical research, experience in organizing, preparing, and delivering oral presentations, and an introduction to the research interests of members of the faculty. Contact: Michael_McDermott@URMC.Rochester.edu Can students outside the department’s program(s) take it? No Syllabus Not Provided BST 494 Genomic Data Analysis Semester: Spring Description: Introduction to techniques used in modern genomic experimentation and the corresponding statistical methods and software available to visualize, analyze, and interpret these data. Specific topics include mRNA/microRNA expression, protein abundance, protein-DNA binding, copy number variants, single nucleotide variants, DNA methylation, and microbial abundance. Contact: Matthew_McCall@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. Syllabus Not Provided BST 512 Topics in Statistical Inference II Semester: Spring Description: Spring 2019 Topic: Semiparametric Inference Contact: Ashkan_Ertefaie@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. Syllabus Not Provided BST 570 Topics in Biostatistics Semester: Spring Description: Spring 2019 Topic: Analysis of Marked Endpoints. This course builds on methods learned in Survival Analysis and Longitudinal Data Analysis. Contact: Brent_Johnson@URMC.Rochester.edu Can students outside the department’s program(s) take it? Please contact instructor to discuss your background. Syllabus Not Provided