Aim
This course explores modern molecular cancer biology through two powerful lenses—CRISPR-based functional genomics and bioinformatics-driven discovery. Participants will learn how cancer evolves at the molecular level, how CRISPR is used to validate targets and study pathways, and how bioinformatics helps interpret multi-omics datasets to identify biomarkers, therapeutic targets, and resistance mechanisms. The program ends with a guided mini-project connecting real biological questions to practical analysis workflows.
Program Objectives
- Understand Cancer at the Molecular Level: Learn key hallmarks, signaling pathways, and genetic alterations driving cancer.
- CRISPR in Cancer Research: Understand CRISPR workflows for gene knockout/knock-in and functional screening.
- Bioinformatics for Discovery: Learn how genomics and transcriptomics data reveal oncogenic mechanisms.
- Biomarkers & Target Identification: Explore how to find candidates for diagnosis, prognosis, and therapy.
- Resistance & Tumor Heterogeneity: Understand clonal evolution and how data helps detect resistance patterns.
- Ethics & Translational Thinking: Learn limitations, safety, and responsible research practices.
- Hands-on Outcome: Complete a mini-project linking CRISPR strategy + bioinformatics analysis.
Program Structure
Module 1: Molecular Foundations of Cancer
- Hallmarks of cancer: how tumors sustain growth and evade control.
- Oncogenes vs tumor suppressors: mutations, amplification, loss-of-function.
- Key pathways overview: p53, RAS/MAPK, PI3K/AKT, cell cycle control.
- From genotype to phenotype: why the same mutation behaves differently across contexts.
Module 2: Tumor Genomics, Heterogeneity & Evolution
- Somatic mutation types: SNVs, indels, CNVs, structural variants (overview).
- Tumor heterogeneity: clonal evolution and microenvironment influence.
- Driver vs passenger mutations: how researchers distinguish significance.
- Resistance mechanisms: why therapies fail and how tumors adapt.
Module 3: CRISPR Essentials for Cancer Research
- CRISPR-Cas systems basics: Cas9, guide RNAs, PAM, editing outcomes.
- Knockout vs knock-in vs CRISPRi/CRISPRa (conceptual comparison).
- Design thinking: selecting genes, designing guides, and minimizing off-targets.
- Experimental planning: controls, validation, and interpretation discipline.
Module 4: CRISPR Functional Genomics Screens (How Targets Are Found)
- Concept of pooled CRISPR screens: essential genes, synthetic lethality, drug response.
- Screen design basics: libraries, readouts, and selection pressures.
- Data interpretation: enriched/depleted guides and what they imply biologically.
- Common pitfalls: bottlenecks, off-target confounding, and batch effects.
Module 5: Cancer Bioinformatics — Data Types & Workflows
- Core data types: DNA-seq, RNA-seq, methylation, proteomics (overview).
- Public datasets (concept): TCGA/GEO/cBioPortal type resources and what they provide.
- Clinical metadata linkage: stage, survival, treatment response (how it’s used).
- Quality control mindset: data cleaning, normalization, and bias awareness.
Module 6: Transcriptomics & Pathway Interpretation
- Differential expression concepts: tumor vs normal, responder vs non-responder.
- Signature thinking: immune markers, proliferation signals, EMT, angiogenesis.
- Pathway enrichment: GO/KEGG/Reactome concepts and careful interpretation.
- How expression links back to CRISPR target validation hypotheses.
Module 7: Biomarkers, Target Prioritization & Translational Logic
- Biomarker types: diagnostic, prognostic, predictive (clear distinctions).
- Target prioritization: druggability, selectivity, safety, pathway position.
- Integrating evidence: genomics + expression + CRISPR functional signals.
- From discovery to validation: what “next steps” look like in real research.
Module 8: Ethics, Safety & Responsible Cancer Research
- CRISPR ethics: misuse risks, off-target consequences, and containment.
- Human data ethics: privacy, consent, and responsible reporting.
- Overclaiming risks: correlation vs causation and reproducibility.
- How to write a transparent methods + limitations section.
Final Project
- Pick a cancer type or pathway and define a clear biological question.
- Design a CRISPR-based strategy (gene targets + guide logic + validation plan).
- Run a small bioinformatics interpretation workflow on a provided dataset (or sample case).
- Deliverables: short report linking data evidence + CRISPR experiment plan + expected outcomes.
- Example projects: identifying targets in EGFR pathway resistance, immune checkpoint response markers, synthetic lethal partners of tumor suppressors.
Participant Eligibility
- UG/PG/PhD students in Biotechnology, Genetics, Molecular Biology, Bioinformatics, or related fields
- Researchers working in cancer biology, functional genomics, or translational science
- Professionals transitioning into oncology research or computational biology
- Basic understanding of gene expression and molecular biology is recommended
Program Outcomes
- Cancer Biology Understanding: Strong foundation in molecular mechanisms and modern oncology concepts.
- CRISPR Readiness: Ability to plan CRISPR experiments and interpret functional genomics logic.
- Bioinformatics Confidence: Ability to read, interpret, and communicate omics insights in cancer context.
- Translational Thinking: Learn how targets and biomarkers are evaluated for real-world relevance.
- Portfolio Deliverable: A mini project report connecting CRISPR + bioinformatics for cancer research.
Program Deliverables
- Access to e-LMS: Full access to course content, datasets (where applicable), and learning resources.
- Templates & Checklists: CRISPR experiment planning sheet, target prioritization rubric, bioinformatics interpretation checklist.
- Case-Based Learning: Cancer pathway cases, resistance scenarios, and biomarker discussions.
- Project Guidance: Mentor support for defining the question and building the final project report.
- Final Assessment: Certification after assignments + capstone submission.
- e-Certification and e-Marksheet: Digital credentials provided upon successful completion.
Future Career Prospects
- Cancer Biology Research Intern / Associate
- Functional Genomics (CRISPR) Research Assistant
- Oncology Bioinformatics Analyst (Entry-level)
- Biomarker Discovery Support Associate
- Translational Research Assistant (Oncology)
Job Opportunities
- Academic & Research Institutes: Cancer research labs, genomics centers, translational programs.
- Biotech & Pharma: Oncology discovery, target validation, and biomarker teams.
- CROs: Genomics analysis, assay development support, and translational services.
- Healthtech Startups: Precision oncology, genomic analytics, and AI-driven biomarker platforms.









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