Collegese

Welcome to Collegese! Sign in →

Collegese

    Search colleges and courses

    Search and navigate to colleges and courses

    Start your journey

    Ready to find your dream college?

    Join thousands of students making smarter education decisions.

    Watch How It WorksGet Started

    Discover

    Browse & filter colleges

    Compare

    Side-by-side analysis

    Explore

    Detailed course info

    Collegese

    India's education marketplace helping students discover the right colleges, compare courses, and build careers they deserve.

    © 2026 Collegese. All rights reserved. A product of Nxthub Consulting Pvt. Ltd.

    Apply

    Scholarships & exams

    support@collegese.com
    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Biostatistics

    AIPH University, Bhubaneswar
    Duration
    4 Years
    Biostatistics UG OFFLINE

    Duration

    4 Years

    Biostatistics

    AIPH University, Bhubaneswar
    Duration
    Apply

    Fees

    ₹3,50,000

    Placement

    92.0%

    Avg Package

    ₹6,00,000

    Highest Package

    ₹12,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Biostatistics
    UG
    OFFLINE

    Fees

    ₹3,50,000

    Placement

    92.0%

    Avg Package

    ₹6,00,000

    Highest Package

    ₹12,00,000

    Seats

    120

    Students

    120

    ApplyCollege

    Seats

    120

    Students

    120

    Curriculum

    Biostatistics Curriculum at Aiph University Bhubaneswar

    The Biostatistics program at Aiph University Bhubaneswar is structured to provide a rigorous yet flexible academic experience that prepares students for careers in research, industry, and public health. The curriculum spans eight semesters and integrates foundational sciences with advanced statistical concepts and practical applications.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Prerequisites
    1MATH101Calculus I3-0-0-3-
    1MATH102Linear Algebra3-0-0-3-
    1BIO101Introduction to Biology3-0-0-3-
    1CHEM101Chemistry for Biological Sciences3-0-0-3-
    1COMP101Programming Fundamentals2-0-2-2-
    1STAT101Introduction to Statistics3-0-0-3-
    2MATH201Calculus II3-0-0-3MATH101
    2STAT201Probability Theory3-0-0-3STAT101
    2BIO201Molecular Biology3-0-0-3BIO101
    2COMP201Data Structures and Algorithms2-0-2-2COMP101
    2STAT202Statistical Inference3-0-0-3STAT201
    2LIT101English for Academic Purposes2-0-0-2-
    3STAT301Regression Analysis3-0-0-3STAT202
    3BIO301Genetics and Genomics3-0-0-3BIO201
    3STAT302Experimental Design3-0-0-3STAT202
    3COMP301Statistical Software Lab0-0-4-2COMP201
    3MATH301Differential Equations3-0-0-3MATH201
    3STAT303Survey Sampling Techniques3-0-0-3STAT202
    4STAT401Survival Analysis3-0-0-3STAT301
    4BIO401Epidemiology3-0-0-3BIO301
    4STAT402Bayesian Statistics3-0-0-3STAT302
    4COMP401Advanced Data Analysis2-0-2-2COMP301
    4STAT403Multivariate Statistics3-0-0-3STAT301
    5STAT501Clinical Trial Design3-0-0-3STAT402
    5BIO501Public Health and Policy3-0-0-3BIO401
    5STAT502Computational Biology3-0-0-3STAT403
    5COMP501Machine Learning for Biostatistics2-0-2-2COMP401
    5STAT503Advanced Statistical Modeling3-0-0-3STAT502
    6STAT601Genomic Data Analysis3-0-0-3STAT503
    6BIO601Global Health Challenges3-0-0-3BIO501
    6STAT602Meta-Analysis and Systematic Reviews3-0-0-3STAT501
    6COMP601Big Data Analytics in Health2-0-2-2COMP501
    6STAT603Statistical Software Development3-0-0-3STAT602
    7STAT701Capstone Project I0-0-8-4STAT603
    7BIO701Health Informatics3-0-0-3BIO601
    7STAT702Research Ethics and Integrity2-0-0-2-
    8STAT801Capstone Project II0-0-8-4STAT701
    8BIO801Internship in Biostatistics0-0-6-3BIO701

    Detailed Course Descriptions

    Here are detailed descriptions of some advanced departmental elective courses:

    1. Machine Learning for Biostatistics

    This course introduces students to modern machine learning algorithms specifically tailored for biostatistical applications. Topics include supervised and unsupervised learning, neural networks, decision trees, support vector machines, clustering methods, and deep learning architectures. Students learn how to apply these techniques to real-world biological datasets, such as gene expression profiles and patient outcome predictions.

    2. Clinical Trial Design

    Students explore the principles of designing, conducting, and analyzing clinical trials. The course covers phase I-IV trial designs, randomization strategies, sample size calculations, interim analyses, safety monitoring, and regulatory requirements. Practical examples from recent drug development programs are used to illustrate key concepts.

    3. Genomic Data Analysis

    This course focuses on statistical methods for analyzing genomic data. Students learn about sequence alignment, variant calling, gene expression analysis, pathway enrichment, and epigenetic modifications. The curriculum includes hands-on labs using tools like SAMtools, GATK, and R/Bioconductor packages.

    4. Big Data Analytics in Health

    This course addresses the challenges of managing and analyzing large-scale health datasets. Students study distributed computing frameworks like Apache Spark, data warehousing concepts, cloud-based platforms (AWS, Google Cloud), and real-time data processing pipelines. Case studies from electronic health records and wearable devices are analyzed.

    5. Statistical Software Development

    This course teaches students how to develop custom statistical software tools for biostatistical applications. Students learn programming languages like R and Python, object-oriented design principles, package development, testing procedures, and documentation practices. Projects include building reusable functions for common biostatistical tasks.

    6. Advanced Statistical Modeling

    Students delve into complex modeling techniques such as generalized linear models, mixed-effects models, spatial statistics, time series analysis, and hierarchical Bayesian models. Applications in epidemiology, clinical research, and environmental science are emphasized throughout the course.

    7. Meta-Analysis and Systematic Reviews

    This course provides students with the skills needed to conduct systematic reviews and meta-analyses of published literature. Topics include study selection criteria, risk of bias assessment, effect size calculations, heterogeneity analysis, publication bias detection, and reporting guidelines (PRISMA). Students complete a full meta-analysis project.

    8. Computational Biology

    This course bridges the gap between computational methods and biological systems. Students learn about sequence databases, phylogenetic analysis, protein structure prediction, metabolic pathway modeling, and systems biology approaches. Tools like BLAST, Pfam, STRING, and Cytoscape are introduced.

    9. Health Informatics

    This course explores the intersection of health information technology and biostatistics. Students study electronic health records (EHRs), data interoperability standards (FHIR), clinical decision support systems, privacy and security issues, and data governance frameworks. Practical assignments involve working with real EHR datasets.

    10. Research Ethics and Integrity

    This course emphasizes the ethical considerations in conducting biostatistical research. Topics include informed consent, data privacy, conflict of interest, reproducibility, responsible conduct of research, and institutional review board (IRB) processes. Students engage in case studies and discussions to enhance their understanding of ethical dilemmas.

    Project-Based Learning Approach

    The department strongly advocates for project-based learning as a core component of the curriculum. Students begin working on mini-projects in their third year, focusing on specific biostatistical problems relevant to current research interests. These projects are typically interdisciplinary and involve collaboration with faculty members or external organizations.

    Mini-projects are evaluated based on research design, data analysis skills, reproducibility, clarity of presentation, and impact potential. Students are required to submit progress reports at regular intervals and present their findings in a departmental seminar series.

    The final-year thesis/capstone project is a significant undertaking that allows students to demonstrate mastery of biostatistical concepts and methodologies. Projects can be theoretical, computational, or applied in nature, depending on the student's interest and career goals. Faculty mentors guide students through every stage of the project, from topic selection to final presentation.

    Students are encouraged to propose their own research ideas or select from a list of faculty-approved topics. The department maintains a repository of previous projects for inspiration and guidance. Regular meetings with advisors ensure that projects remain aligned with academic standards and practical relevance.