This project focuses on analyzing sequencing data to uncover molecular mechanisms in neurological diseases and evaluate immunotherapy potential in breast cancer. It includes Python and R scripts for data processing, analysis, and visualization.
- Objective: Analyze RNA-seq data to identify molecular deficiencies in a mouse knockout model.
 - Key Steps:
- Preprocessing RNA-seq data using Python and 
kallisto. - Importing and analyzing transcript-level data in R using 
tximport. - Conducting differential gene expression analysis with 
DESeq2. 
 - Preprocessing RNA-seq data using Python and 
 
- Objective: Predict the effectiveness of immunotherapy for a breast cancer patient.
 - Key Steps:
- Preprocessing single-cell RNA-seq data with 
Seurat. - Clustering cells and identifying cell types based on marker genes.
 - Visualizing spatial distributions and answering clinical questions.
 
 - Preprocessing single-cell RNA-seq data with 
 
- Languages: Python, R
 - Tools: kallisto, tximport, DESeq2, Seurat
 - Visualization: UMAP, PCA, ggplot2
 - Platforms: GitHub for version control
 
.
├── finel_projet_part1.ipynb   # Python script for preprocessing RNA-seq data
├── genomics_project_Q1.R      # R script for Part 1 - analysis of bulk sequencing
├── genomics_project_Q2.R      # R script for Part 2 - analysis of single cell sequencing
├── Neuro Genomics Project.pdf # Detailed project report
├── neuro-genomics project instructions.pdf # Project instructions
├── README.md                  # Project documentation
- Python 3.x
 - R with the following packages installed: kallisto, tximport, DESeq2, Seurat
 
- Clone the repository:
git clone https://github.com/12danielLL/Neurogenomics_Project.git cd neuro-genomics-project - Install dependencies:
- Python: 
pip install -r requirements.txt - R: Install the required packages manually or use the script 
install_packages.R. 
 - Python: 
 - Run the Python preprocessing script:
python scripts/preprocess.py
 - Execute R scripts for analysis:
- Bulk analysis: 
Rscript scripts/bulk_analysis.R - Single-cell analysis: 
Rscript scripts/single_cell_analysis.R 
 - Bulk analysis: 
 
- Key pathways identified: lipid metabolism, neurological function, and cell structure.
 - Potential treatment strategies proposed: supporting myelin production.
 
- Immune cells comprise over 50% of the biopsy.
 - Immune cells are spatially mixed with tumor cells, increasing the likelihood of immunotherapy success.
 
This project is licensed under the MIT License - see the LICENSE file for details.
- Daniel Broker
 - Or Shachar