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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Biostatistics

    Indian Institute of Health Management Research, Jaipur
    Duration
    4 Years
    Biostatistics UG OFFLINE

    Duration

    4 Years

    Biostatistics

    Indian Institute of Health Management Research, Jaipur
    Duration
    Apply

    Fees

    ₹6,50,000

    Placement

    93.5%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Biostatistics
    UG
    OFFLINE

    Fees

    ₹6,50,000

    Placement

    93.5%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,50,000

    Seats

    180

    Students

    180

    ApplyCollege

    Seats

    180

    Students

    180

    Curriculum

    Curriculum Overview

    The Biostatistics program at Iihmr University Jaipur is structured to provide a comprehensive foundation in mathematical and statistical principles while integrating practical applications in biological and health sciences. The curriculum spans four years, with each year building upon previous knowledge to develop advanced analytical skills.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Prerequisites
    IMATH-101Calculus and Linear Algebra3-1-0-4-
    IBIO-101Introduction to Biology3-0-0-3-
    ISTAT-101Probability and Statistics I3-1-0-4-
    IPROG-101Programming for Data Analysis2-0-2-3-
    ISCI-101Scientific Writing and Communication2-0-0-2-
    IIMATH-201Differential Equations3-1-0-4MATH-101
    IIBIO-201Cell Biology and Genetics3-1-0-4BIO-101
    IISTAT-201Probability and Statistics II3-1-0-4STAT-101
    IIPROG-201Data Structures and Algorithms3-1-0-4PROG-101
    IILAB-101Basic Biology Lab0-0-3-1BIO-101
    IIIMATH-301Mathematical Statistics3-1-0-4MATH-201
    IIIBIO-301Molecular Biology and Biochemistry3-1-0-4BIO-201
    IIISTAT-301Statistical Inference3-1-0-4STAT-201
    IIIPROG-301Advanced Data Analysis with R2-0-2-3PROG-201
    IIILAB-201Biochemistry Lab0-0-3-1BIO-201
    IVMATH-401Stochastic Processes3-1-0-4MATH-301
    IVBIO-401Genomics and Proteomics3-1-0-4BIO-301
    IVSTAT-401Regression Modeling3-1-0-4STAT-301
    IVPROG-401Python for Scientific Computing2-0-2-3PROG-301
    IVLAB-301Advanced Biology Lab0-0-3-1BIO-301
    VSTAT-501Survival Analysis3-1-0-4STAT-401
    VBIO-501Epidemiology3-1-0-4BIO-401
    VSTAT-502Experimental Design3-1-0-4STAT-401
    VELEC-101Clinical Data Management3-1-0-4-
    VLAB-401Clinical Research Lab0-0-3-1-
    VISTAT-601Bayesian Methods3-1-0-4STAT-502
    VIBIO-601Computational Biology3-1-0-4BIO-501
    VISTAT-602Time Series Analysis3-1-0-4STAT-501
    VIELEC-201Public Health Informatics3-1-0-4-
    VILAB-501Bioinformatics Lab0-0-3-1-
    VIISTAT-701Machine Learning in Biostatistics3-1-0-4STAT-602
    VIIBIO-701Drug Development and Regulatory Affairs3-1-0-4BIO-601
    VIISTAT-702Multivariate Analysis3-1-0-4STAT-601
    VIIELEC-301Healthcare Analytics3-1-0-4-
    VIILAB-601Advanced Data Analysis Lab0-0-3-1-
    VIIISTAT-801Thesis Project0-0-6-6-
    VIIIELEC-401Capstone Course3-1-0-4-

    Advanced Departmental Elective Courses:

    • Survival Analysis: This course delves into methods for analyzing time-to-event data, particularly in clinical settings. Students learn to apply Kaplan-Meier estimators, Cox proportional hazards models, and competing risks analysis. Practical applications include analyzing patient survival times in oncology studies and evaluating the effectiveness of medical treatments.
    • Bayesian Methods: Focused on Bayesian inference, this course introduces students to prior distributions, posterior computation, and decision theory. Students work with real datasets to model uncertainty and update beliefs based on observed data, essential for modern clinical research and pharmaceutical development.
    • Machine Learning in Biostatistics: This course bridges statistical modeling and machine learning techniques applied to biological data. Topics include neural networks, random forests, clustering algorithms, and deep learning models tailored for genomics and proteomics applications.
    • Time Series Analysis: Students explore temporal patterns in biological and health-related data using autoregressive integrated moving average (ARIMA) models, seasonal decomposition, and spectral analysis. The course includes hands-on projects involving healthcare monitoring systems and environmental health data.
    • Experimental Design: This course covers the principles of designing controlled experiments to minimize bias and maximize information gain. Students learn about factorial designs, blocking strategies, and randomization techniques, with applications in agricultural, clinical, and epidemiological research.
    • Statistical Inference: A foundational course covering estimation theory, hypothesis testing, confidence intervals, and decision theory. Students develop skills in both frequentist and Bayesian inference frameworks, applying these methods to real-world biological datasets.
    • Multivariate Analysis: This advanced course explores techniques for analyzing data with multiple variables, including principal component analysis (PCA), factor analysis, canonical correlation, and cluster analysis. Applications include gene expression profiling, environmental monitoring, and clinical outcome prediction.
    • Regression Modeling: Students study linear and nonlinear regression models, including logistic regression, Poisson regression, and generalized linear models. The course emphasizes model diagnostics, variable selection, and interpretation of results in biological contexts.
    • Epidemiology: This course introduces students to the methods used in studying disease patterns in populations. Topics include case-control studies, cohort studies, cross-sectional surveys, and meta-analyses, with emphasis on study design and data interpretation.
    • Clinical Data Management: Focuses on the processes involved in collecting, managing, and analyzing clinical trial data. Students learn about data validation rules, database design, quality assurance protocols, and regulatory compliance requirements for clinical research.

    Project-Based Learning Philosophy:

    The department believes that real-world problem-solving enhances learning outcomes significantly. Project-based learning is integrated throughout the curriculum, with students working on meaningful assignments that simulate professional challenges. Mini-projects are introduced in the second year, allowing students to apply concepts learned in class to actual datasets.

    Each mini-project lasts approximately 6 weeks and requires students to select a relevant research question, collect or obtain appropriate data, perform analysis using statistical software, and present findings in both written and oral formats. These projects often involve collaboration with faculty members or industry partners, ensuring relevance and impact.

    The final-year thesis project is a substantial piece of original research conducted under the supervision of a faculty mentor. Students are encouraged to pursue topics aligned with their interests and career goals, whether it involves developing new statistical methods, applying existing techniques to novel applications, or contributing to ongoing research initiatives.

    Thesis projects typically involve extensive literature review, data collection and cleaning, modeling and analysis, interpretation of results, and dissemination through academic publications or conference presentations. The department provides dedicated resources including access to specialized databases, computing clusters, and software licenses, ensuring students have the tools needed for success.