7 godzin(y) temu -
[center]![[Obrazek: _e4b500c9c88e377d29b553ff21b99048.png]](https://i126.fastpic.org/big/2025/1216/48/_e4b500c9c88e377d29b553ff21b99048.png)
Advanced Transcriptomics: Lncrna, Mirna & Psi-Seq Analysis
Published 12/2025
Created by Rafiq Ur Rehman
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Intermediate | Genre: eLearning | Language: English | Duration: 31 Lectures ( 6h 10m ) | Size: 3.7 GB [/center]
Hands-on transcriptomics with lncRNA-seq, miRNA-seq, RNA modifications, and DE analysis using Linux
What you'll learn
Understand the biology and regulatory roles of coding and non-coding RNAs, including lncRNAs and miRNAs
Build and execute Linux-based transcriptomics workflows for RNA-seq data
Perform lncRNA-seq analysis, including transcript assembly, classification, labeling, and expression quantification
Conduct differential expression analysis using industry-standard tools such as DESeq2 and edgeR
Analyze miRNA-seq data, including quality control, adapter trimming, genome mapping, and novel miRNA prediction using miRDeep2
Understand the principles of RNA modifications, with a specific focus on pseudouridylation (Ψ)
Implement a complete Ψ-seq (Psi-seq) pipeline, including RT-stop extraction, site detection using Python, and annotation of candidate Ψ sites
Integrate lncRNA expression, miRNA profiling, and RNA modification data into a unified transcriptomics analysis
Requirements
Basic understanding of molecular biology or genetics
No prior Linux experience required (a dedicated Linux section is included)
Prior RNA-seq experience is helpful but not mandatory
Description
This course offers a comprehensive, hands-on exploration of advanced transcriptomics data analysis using Linux-based bioinformatics workflows. It is designed to provide practical, real-world experience in analyzing non-coding RNAs and RNA modifications from high-throughput sequencing data.The course focuses on three major areas of modern transcriptomics: lncRNA-seq, miRNA-seq, and Ψ-seq (pseudouridine sequencing). Learners will work with real sequencing datasets and implement complete analysis pipelines starting from raw FASTQ files through quality control, trimming, alignment, transcript assembly, quantification, differential expression analysis, and biological interpretation.The curriculum begins with a strong conceptual foundation, covering coding versus non-coding RNAs, advanced transcriptomics concepts, and the regulatory roles of lncRNAs and miRNAs in gene expression. An optional Linux module is included to ensure learners are comfortable with the command line, file system navigation, genomic file handling, and environment management using Conda.The lncRNA-seq module covers transcript assembly, classification, labeling, expression quantification, and differential expression analysis using DESeq2 and edgeR. Emphasis is placed on understanding transcript structure, annotation strategies, and biological interpretation of differentially expressed lncRNAs.The miRNA-seq section introduces miRNA biology and sequencing principles, followed by hands-on analysis including quality control, adapter trimming, reference preparation, genome mapping, and novel miRNA prediction using miRDeep2. This module enables learners to perform complete miRNA profiling workflows commonly used in research studies.The course also provides a dedicated module on RNA modifications, with a specific focus on pseudouridylation (Ψ). Through the Ψ-seq (Psi-seq) pipeline, learners will perform alignment, SAM/BAM processing, RT-stop extraction, Ψ-site detection using Python, and filtering and annotation of candidate modification sites. This section bridges experimental sequencing concepts with computational detection strategies.The course concludes with a final integrated project, where learners combine lncRNA expression analysis, miRNA profiling, and RNA modification detection into a unified transcriptomics study. This project-oriented approach reinforces practical skills and prepares learners for thesis work, research publications, and professional bioinformatics projects.Overall, this course emphasizes hands-on execution, reproducible Linux workflows, and biological insight, equipping learners with the skills required to independently analyze advanced transcriptomics datasets in academic and industry settings.
Who this course is for
Students pursuing bioinformatics, genomics, or computational biology
Wet-lab biologists transitioning into data-driven RNA analysis
Researchers working on non-coding RNAs or RNA modifications
Bioinformatics professionals seeking to expand into advanced transcriptomics
Anyone who wants practical, Linux-based RNA-seq skills
![[Obrazek: _e4b500c9c88e377d29b553ff21b99048.png]](https://i126.fastpic.org/big/2025/1216/48/_e4b500c9c88e377d29b553ff21b99048.png)
Advanced Transcriptomics: Lncrna, Mirna & Psi-Seq Analysis
Published 12/2025
Created by Rafiq Ur Rehman
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Intermediate | Genre: eLearning | Language: English | Duration: 31 Lectures ( 6h 10m ) | Size: 3.7 GB [/center]
Hands-on transcriptomics with lncRNA-seq, miRNA-seq, RNA modifications, and DE analysis using Linux
What you'll learn
Understand the biology and regulatory roles of coding and non-coding RNAs, including lncRNAs and miRNAs
Build and execute Linux-based transcriptomics workflows for RNA-seq data
Perform lncRNA-seq analysis, including transcript assembly, classification, labeling, and expression quantification
Conduct differential expression analysis using industry-standard tools such as DESeq2 and edgeR
Analyze miRNA-seq data, including quality control, adapter trimming, genome mapping, and novel miRNA prediction using miRDeep2
Understand the principles of RNA modifications, with a specific focus on pseudouridylation (Ψ)
Implement a complete Ψ-seq (Psi-seq) pipeline, including RT-stop extraction, site detection using Python, and annotation of candidate Ψ sites
Integrate lncRNA expression, miRNA profiling, and RNA modification data into a unified transcriptomics analysis
Requirements
Basic understanding of molecular biology or genetics
No prior Linux experience required (a dedicated Linux section is included)
Prior RNA-seq experience is helpful but not mandatory
Description
This course offers a comprehensive, hands-on exploration of advanced transcriptomics data analysis using Linux-based bioinformatics workflows. It is designed to provide practical, real-world experience in analyzing non-coding RNAs and RNA modifications from high-throughput sequencing data.The course focuses on three major areas of modern transcriptomics: lncRNA-seq, miRNA-seq, and Ψ-seq (pseudouridine sequencing). Learners will work with real sequencing datasets and implement complete analysis pipelines starting from raw FASTQ files through quality control, trimming, alignment, transcript assembly, quantification, differential expression analysis, and biological interpretation.The curriculum begins with a strong conceptual foundation, covering coding versus non-coding RNAs, advanced transcriptomics concepts, and the regulatory roles of lncRNAs and miRNAs in gene expression. An optional Linux module is included to ensure learners are comfortable with the command line, file system navigation, genomic file handling, and environment management using Conda.The lncRNA-seq module covers transcript assembly, classification, labeling, expression quantification, and differential expression analysis using DESeq2 and edgeR. Emphasis is placed on understanding transcript structure, annotation strategies, and biological interpretation of differentially expressed lncRNAs.The miRNA-seq section introduces miRNA biology and sequencing principles, followed by hands-on analysis including quality control, adapter trimming, reference preparation, genome mapping, and novel miRNA prediction using miRDeep2. This module enables learners to perform complete miRNA profiling workflows commonly used in research studies.The course also provides a dedicated module on RNA modifications, with a specific focus on pseudouridylation (Ψ). Through the Ψ-seq (Psi-seq) pipeline, learners will perform alignment, SAM/BAM processing, RT-stop extraction, Ψ-site detection using Python, and filtering and annotation of candidate modification sites. This section bridges experimental sequencing concepts with computational detection strategies.The course concludes with a final integrated project, where learners combine lncRNA expression analysis, miRNA profiling, and RNA modification detection into a unified transcriptomics study. This project-oriented approach reinforces practical skills and prepares learners for thesis work, research publications, and professional bioinformatics projects.Overall, this course emphasizes hands-on execution, reproducible Linux workflows, and biological insight, equipping learners with the skills required to independently analyze advanced transcriptomics datasets in academic and industry settings.
Who this course is for
Students pursuing bioinformatics, genomics, or computational biology
Wet-lab biologists transitioning into data-driven RNA analysis
Researchers working on non-coding RNAs or RNA modifications
Bioinformatics professionals seeking to expand into advanced transcriptomics
Anyone who wants practical, Linux-based RNA-seq skills
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