Data Science Applications in Genomics and Drug Discovery – Batch 2
Participants who want to register are requested to take the screenings first before 12th of November, link for which is given under the “Eligibility & Fees and Screenings” tab
- Description
- Profile of the Instructor(s)
- Detailed Schedule
- Eligibility & Fees and Screenings
- Certification
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Profile of the Instructor(s)
Dr. Anshu Bhardwaj obtained her Ph.D. in Life Sciences (2008) from Centre for Cellular and Molecular Biology, Hyderabad. The focus of her Ph.D. thesis was on prioritizing Single Nucleotide Polymorphism (SNPs) in disease association studies to identify potential biomarkers. She conceived, designed and implemented crowdsourcing as a tool to tackle challenging scientific problems (Connect to Decode project), which is considered a futuristic approach to drive big data scientific projects. Over years, Dr. Bhardwaj has published several prediction methods, databases and ontology based barcoding methods for genome variation data towards better understanding of genotype-phenotype correlations in addition to state-of-the-art interactome and reactome for Mycobacterium tuberculosis. She and has trained over 500 young students and also writes popular science articles. She served as an Associate scientific advisor to Science Translational Medicine and is on the Editorial board of PLOS Global Public Health, Journal of Genetics, Review Editor for Frontiers in Systems Biology, Protein Bioinformatics and Computational Genomics. She was selected as one of the young Innovator in India by UNDP and for International Visitor Leadership Program by US State Department awarded Newton-Bhabha Fund from the British Council and the Royal Society of Chemistry, UK and long-term Group Leader Fellowship by CRI, Paris, France. Her passion is towards biomedical big data analytics platforms with focus on understanding infection and rare disease biology for better therapeutics and diagnostics.
Prof. Karthik Raman is an Associate Professor at the Department of Biotechnology, Bhupat and Jyoti Mehta School of Biosciences, IIT Madras. Karthik’s research group works on the development of algorithms and computational tools to understand, predict and manipulate complex biological networks. Broadly spanning computational aspects of synthetic and systems biology, key areas of research in his group encompass microbiome analysis, in silico metabolic engineering, biological network design and biological data analysis. Karthik also co-ordinates the Centre for Integrative Biology and Systems medicine (IBSE) at IIT Madras and is a core member of the Robert Bosch Centre for Data Science and Artificial Intelligence (RBC-DSAI). Karthik teaches courses on computational biology and systems biology at IIT Madras, and has also authored a textbook on Computational Systems Biology. Detailed Schedule
Schedule |
Modules/activities |
Duration |
| Day 1 | Introduction to the course - broad objectives/design | 30mins |
| Introduction to Antimicrobial Resistance and microbial genomics | 1hr30mins | |
| Introduction to Next Generation Sequencing (NGS), data formats and preprocessing and genome assembly | 1hr | |
| Hands-on with bacterial genomes from raw data to assembly | 1hr | |
| Day 1 | Introduction to Genome annotation - basics, file formats and tools | 1hr |
| Hands-on with genome annotation methods including specialized annotation for AMR genes | 1hr | |
| Assignment on Priority Pathogens (PPs) | 1hr | |
| Day 2 | Introduction to Metagenome and Pangenome | 1hr |
| Hands-on with Metagenome analysis & interpretation | 1hr15mins | |
| Hands-on with Pangenome analysis & interpretation | 1hr | |
| Hands-on with basic LINUX commands | 1hr30mins | |
| Review of assignments | 1hr | |
| Day 3 | Python for Biologists - I | 3hrs |
| Python for Biologists - II | 3hrs | |
| Review of assignments | 1hr | |
| Day 4 | Basics of drug discovery - I | 1hr |
| Hands-on web-based resources & their use | 1hr | |
| Drug target identification - Protein-protein interaction networks | 1hr | |
| Hands-on Protein-protein interaction data analysis | 1hr | |
| Review of assignments | 2hrs | |
| Day 5 | Drug target identification - Metabolic reconstruction | 2hrs |
| Hands-on - Metabolic reconstruction | 2hrs | |
| Review of assignments | 1hr | |
| Day 6 | Introduction to Machine Learning (ML) | 1hr15mins |
| Application of ML to target identification | 1hr | |
| Hands-on for target identification using ML | 2hrs | |
| Review of assignments | 1hr | |
| Day 7 | Application of ML to inhibitor identification | 1hr |
| Hands-on for inhibitor identification using ML | 1hr | |
| Introduction to Drug repurposing - introduction to network based inference techniques | 1hr | |
| Team presentations on the projects assigned | 3hrs | |
| Day 8 | Ensemble approach to target and inhibitor identification | 2hr |
| Applying systems-level analysis for target prediction in PPs | 2hr | |
| Day 9 | Introduction to target and inhibitor prioritization criteria and methods | 1hr |
| Development of project workflows following FAIR principles | 1hr | |
| Day 10 | Project presentation of data from at least one PP from teams | 3hrs |
| Consolidation of new results and observations | 2hrs |


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