BBrowserX Pro: A Comprehensive Tutorial | Updated with New UI (Nov 2025)
Table of Contents
Introduction
This tutorial provides a comprehensive guide to using BBrowserX Pro, BioTuring’s software for analyzing and visualizing single-cell RNA sequencing (scRNA-seq) data. With a focus on the updated user interface as of November 2025, this step-by-step guide will help you navigate the software effectively to extract meaningful biological insights from your datasets.
Step 1: Exploring the Homepage
- Open BBrowserX Pro to access the homepage.
- Familiarize yourself with the layout and available options.
- Key features include:
- Data submission options
- Study management
- Visualization tools
Step 2: Submitting Data
You can submit data to BBrowserX Pro through several methods:
Migrate from BBrowserX
- If you are a returning user, follow the prompts to migrate your existing data from BBrowserX.
Upload from Local Storage
- Click on the "Upload" button.
- Select your file from your local storage.
- Ensure the file format is compatible with BBrowserX Pro.
Mount Cloud Storage
- Choose the option to mount cloud storage.
- Follow the instructions to connect your cloud account (e.g., Google Drive, AWS).
Using SDK
- For developers, you can utilize the Software Development Kit (SDK) to submit data programmatically.
- Refer to the SDK documentation for detailed instructions.
Step 3: Creating a Study
- After submitting your data, navigate to the "Create Study" section.
- Input the required information for your study, including:
- Study name
- Description
- Save your new study to proceed.
Step 4: Quality Control and Preprocessing
- Access the QC & preprocessing tools from the main dashboard.
- Perform necessary checks on your data to ensure quality, such as:
- Filtering low-quality cells
- Normalizing expression data
Step 5: Understanding Your Study
- Familiarize yourself with the study used in the demo.
- Explore the summary statistics and visualizations available to get an overview of your dataset.
Step 6: Navigating the User Interface
- Take time to explore the updated user interface.
- Key areas to focus on include:
- Navigation bar
- Data visualization panels
- Analysis tools
Step 7: Feature Selection and Embedding
- Use the feature selection tools to identify the most relevant genes.
- Implement embedding techniques (e.g., PCA) to reduce dimensionality.
Step 8: Performing t-SNE and UMAP
- Select the t-SNE or UMAP options for visualizing high-dimensional data.
- Adjust parameters for optimal visualization results.
Step 9: Conducting Clustering Analysis
- Use clustering algorithms to group similar cells.
- Explore various clustering methods available in the software.
Step 10: Cell Type Prediction
- Utilize the built-in cell type prediction feature.
- Analyze the predicted cell types and validate them against known markers.
Step 11: Utilizing Visualization Tools
- Access various visualization tools to present your data effectively.
- Common options include scatter plots, heatmaps, and violin plots.
Step 12: Conducting Differential Expression Analysis
- Use the differential expression analysis tools to identify significant gene expression differences.
- Interpret the results within the context of your study.
Step 13: Exploring Gene Set Enrichment Analysis
- Perform gene set enrichment analysis to discover biological pathways affected in your study.
- Review the results for insights into cellular functions.
Step 14: Analyzing Cell-Cell Communication
- Investigate cell-cell interactions using the communication analysis tools.
- Understand how different cell types interact within your dataset.
Step 15: Pseudotime Analysis
- Implement pseudotime analysis to study developmental trajectories in your data.
- Visualize the results to identify key transitions.
Step 16: Cancer Cell Prediction
- For cancer research applications, utilize the cancer cell prediction tools.
- Follow the step-by-step analysis as demonstrated in the tutorial.
Step 17: Managing Metadata
- Organize and manage metadata associated with your studies.
- Ensure that all relevant information is accurately represented.
Conclusion
In this tutorial, you learned how to effectively use BBrowserX Pro for scRNA-seq data analysis, from data submission to advanced analyses like differential expression and cell-cell communication. Experiment with the various features to leverage your datasets fully. For support, refer to the contact details provided in the software. Happy analyzing!