Review after the course
MK20200117
Misunderstanding of technical term
Metagenome != microbiome analysis by targeted amplicon sequencing (amplicon analysis of rRNA gene; meta16S/18S; community analysis)
Metagenome = ‘meta’ + ‘genome’; Genome = ‘gen’ + ‘ome’
Amplicon of rRNA gene = part of single gene, not genome!
Amplicon of rRNA gene of environment = ‘meta’ + rRNA gene, not 'meta' + 'genome'
We need to improve basic knowledge of students about molecular biology and gene analysis (before genome analysis).
It is appropriate to held the same couse “Introduction to Microbial Genomic and Metagenomic Analyses” annually, to update knowledge of genomics and metagenomics
This type of comprehensive course is more desirable than more specfic course of microbiome analysis, which is directly-related to their own research.
In depth course might be held in future (but maybe such situation will not happen soon…)
Lecture organization was appropriate
Introduction of real studies (SF and MK)
Introduction of algorithm
Practices of basics (MK and GL)
Introduction of statistics (GL)
Introduction of R
Lecture of knowledge of pangenome and related issues (MA)
Introduction of tools with graphics (MA)
Lecture based on real reasearch about statistical analysis will contribute to improvement of the effect of the course
We may update contents of the course (MK, GL)
To avoid situation that participants (who are not motivated enough) get bored and leave the course mid-way, we may improve the contents by either of the following ways.
State at the beginning that they are better to attend through the end.
Improve practice of basics of linux to keep their motivation, whereas more concise introduction of command line.
Note
To prepare
No call for participants!?
Can we fix the number of participants? max 30, because of the number of notebook at cmcc practice room.
Can we select simply those 15 who applies first?
Those with some motivation letter or sentence attached will be regarded primarily.
bowtie
tutorial data download
wifi at the room?
What computer will we use?
For R tutorial (3rd day), use CMCC 1st floor room, with 30 notebook, where Andrés has installed Rstudio on 2019/07.
Questions MK200103
Necessity of total hours
64hr = 8 days x 8hr
Instead of 8 days, we will do 9 days, with the first and the last day of half days (i.e. 4hr), and 7-days for 8hr.
Lab work e.g. 5hr
Time course of 1 day
Room reservation
About document
Program / Programación
Day 1.
Day 1. Monday 6 14:30-18:30 (4hr)
KAWAI, FUJIYOSHI
Lecture 1-1. (60-min) MK
Lecture 1-2. (60-min) SF
Lecture 2. (120-min) MK
Day 2.
Day 2. Tuesday 7 9:00 ÁVILA
Lecture 3. (120-min) AA
Sequencers, sequencing platform (Illumina, long read)
Basic data format of basic sequence data (FASTA, GENBANK)
Basic data format of 'next-generation' sequence (NGS) data (FASTQ)
Quality information of positions of reads
Lab session 1. (120-min)
Lecture 4. 14:30 (120-min) AA
Lab session 2. (120-min)
Day 3.
Day 3. Wednesday 8 9:00 KAWAI, LARAMA
Practice 1. (120-min) GL
UNIX basic command, to sniff around sequence files (cd, pwd, ls etc.)
Examine file contents of MiSeq
File organization, concept of Path
Practice 2. (120-min) GL
Text processing (grep, less, tail, head,..)
To get familiar with NGS sequences #1 (examine NGS sequence files)
Check contents of fastq
Practice 3. (120-min) MK
Text processing (wc, cut, sed, awk, redirect (> , » ) etc.), gzip
To get familiar with NGS sequences #2 (sequential commands by pipe)
count how many of reads of fastq
Practice 4. (120-min) MK
Day 4.
Day 4. Thursday 9 9:00 KAWAI, LARAMA
Practice 6. (120-min) GL
Practice 7. (120-min) GL
Lab session 3. (240-min)
Day 5.
Day 5. Friday 10 9:00 KAWAI, LARAMA, ÁVILA
Lecture 6. (120-min) GL
Commands for NGS analyses
Commands for sequence analyses
Brief review of online resources / web services
NGSToolkit (instead of FastQC)
Practice 8. (120-min) MK
Lab XX (240-min)
Day 6.
Day 6. Monday 13 9:00 ÁVILA , (LARAMA)
Lecture 7 and Practice 9. (240-min)
Lecture 8 and Practice 10. (240-min)
Day 7.
Day 7. Tuesday 14 9:00 KAWAI
Lecture 9 and Practice 11. (120-min) MK
* Protein-coding gene prediction, RNA-coding gene prediction, gene annotation → MK
Lecture 10 and Practice 12. (120-min) MK
Lab session 2. (240-min)
Day 8.
Day 8. Wednsday 15 9:00 - 13:00ABANTO
Lecture 10 and Practice 12. (240-min)
Pangenome
Phylogenetic tree
Lab session 2. (240-min)
Day 9.
Day 9. Thursday 16 9:00 KAWAI, LARAMA
Lab session 2. (240-min)
Discuss plans
groups work
proposal
paper introducce
apply what they learned
Internal meeting (120-min)