Syllabus for GEN220: High Throughput Biological Data Processing

Course Description

This course focuses on computational skills for processing data using programming language Python and UNIX environment. No prior programming experience is required, but some basic computer skills will be useful.

With the advancement of high throughput data generation methods, a major challenge that graduate students in life sciences have to face today is to analyze large amount of biological data. The objective of this course is to provide an opportunity for graduate students with no computer science background to learn the basic skills of handling high throughput biological data. It covers the Linux/Unix environment and the importance of the com1mand line interface; the Python programming language; program design, implementation, and testing; BioPython; Strategies for analyzing genome resequencing, RNASeq, sequencing data. Students build hands-on skills by analyzing real high throughput biological data through homework assignments and team projects.

Units: 3

Instructor: Jason Stajich (jason.stajich@ucr.edu)

Time and location: W 4:00-4:50PM, F 3:00-4:50PM, ULB104

Office Hours: By Appointment, 1207K Genomics

https://biodataprog.github.io/GEN220/

Prerequisites

Resources

None of these texts are required for completion of the course but they will provide a great deal of helpful background and examples that will improve your ability to master UNIX or Programming in Python.

  1. Bioinformatics Data Skills: Reproducible and Robust Research with Open Source Tools. Vince Buffalo. 2015 O’Reilly & Associates. Available from O’Reilly and Associates, Amazon Free to read on UCR network (or use VPN) - Safari link.

  2. Unix and Perl to the Rescue: A Primer. Keith Bradnam and Ian Korf. Unix and Perl Primer for Biologists

  3. Unix and Perl to the rescue! Bradnam and Korf. Amazon

  4. Rosalind - An online platform to learn bioinformatics and programming in Python.

  5. Software Carpentry - https://software-carpentry.org/ and Data Carpentry - http://www.datacarpentry.org/.

  6. Berk Ekmekci, Charles E. McAnany, Cameron Mura. An Introduction to Programming for Bioscientists: A Python-Based Primer. PLoS Comp Bio. DOI: 10.1371/journal.pcbi.1004867

Grading

Homework

Projects

Schedule

Date Day Lecture Topic Notes
Sep-27 F Course Intro / UNIX I: Cmdline, GitHub
Oct-2 W UNIX II: Biocluster HPCC, Running programs
Oct-4 F UNIX III: Tools for data processing HW1 Assigned
Oct-9 W UNIX IV: Advanced UNIX and data processing
Oct-11 F Python 1 - Variables, running, cmdline, strings, math
Oct-16 W Python 2 - Logic, loops, lists, iterator HW1 Due
Oct-18 F Python 3 - I/O reading/writing files, directories HW2 Assigned
Oct-23 W Python 4 - Dictionaries, Arrays, functions
Oct-25 F Python 5 - Structured data (CSV, XML, GFF, BED)
Oct-30 W Python 6 - Panda, BioPython HW2 Due
Nov-1 F Alignment and Bioinformatics Algorithms HW3 Assigned
Nov-6 W Bioinformatics 1 - BLAST, cmdline & automation
Nov-8 F Bioinformatics 2 - Aligning short reads, coverage, identifying variants
Nov-13 W Bioinformatics 3 - Genome Assembly HW3 Due
Nov-15 F Data Plotting and R graphics HW4 Assigned
Nov-20 W Bioinformatics 4 - RNASeq analyses
Nov-22 F Bioinformatics 5 - Protein Sequence analyses
Nov-27 W Bioinformatics 6 - Microbiome HW4 Due
Nov-29 F Thanksgiving Holiday
Dec-4 W Bioinformatics 7 - Phylogenentic analyses
Dec-6 F Presentations
Dec-? ? Extra Presentations as needed