Blog

Research insights, technical guides, and perspectives on bioinformatics and computational biology.

Single-Cell vs. Spatial: When to Use Which (and When to Use Both)
single-cell spatial biology RNA-seq bioinformatics

Single-Cell vs. Spatial: When to Use Which (and When to Use Both)

A decision framework for choosing between single-cell RNA-seq and spatial transcriptomics for your study — based on the biological question, not the technology hype.

What to Include in a Bioinformatics Statement of Work
bioinformatics scientific consulting

What to Include in a Bioinformatics Statement of Work

A practical guide for researchers contracting bioinformatics analysis for the first time. What to define upfront, what to expect in deliverables, and how to avoid scope creep.

The Bioinformatician Bottleneck: Why Core Facilities Need Analysis Partners
bioinformatics spatial biology RNA-seq

The Bioinformatician Bottleneck: Why Core Facilities Need Analysis Partners

Core facilities generate more data than ever but often lack the bioinformatics capacity to analyze it. How external analysis partnerships solve this bottleneck without building an in-house team.

Compensation Done Right: Auto-Compensation from Single-Stain Controls
flow cytometry Cytogence FCS bioinformatics

Compensation Done Right: Auto-Compensation from Single-Stain Controls

How Cytogence FCS automates spillover matrix calculation from single-stain controls, with diagnostic metrics to verify compensation quality before analysis.

How to Choose Between Visium, GeoMx, CosMx, and MERFISH for Your Study
spatial biology GeoMx bioinformatics

How to Choose Between Visium, GeoMx, CosMx, and MERFISH for Your Study

A practical comparison of major spatial transcriptomics platforms — resolution, throughput, cost, and which biological questions each is best suited to answer.

AI-Assisted Gating: How LLMs Can Accelerate Flow Cytometry Analysis
flow cytometry AI Cytogence FCS

AI-Assisted Gating: How LLMs Can Accelerate Flow Cytometry Analysis

How Cytogence FCS integrates large language models as a copilot for flow cytometry analysis — from automated gating suggestions to population naming and strategy design.

Your GeoMx Data Failed QC — Now What?
spatial biology GeoMx bioinformatics

Your GeoMx Data Failed QC — Now What?

A practical guide for researchers whose NanoString GeoMx DSP data didn't pass quality control. What the QC metrics mean, what can be salvaged, and when to re-run.

Why We Built Cytogence FCS in Rust
flow cytometry Cytogence FCS bioinformatics

Why We Built Cytogence FCS in Rust

The technical reasoning behind choosing Rust over Electron, Python, or Java for a desktop flow cytometry application — and what it means for researchers analyzing large FCS files.

Predicting Checkpoint Inhibitor Response with Spatial Biology
spatial biology GeoMx bioinformatics

Predicting Checkpoint Inhibitor Response with Spatial Biology

A framework for using spatial transcriptomics to predict immunotherapy response, covering immune topology, checkpoint co-expression patterns, and composite scoring approaches.

Integrating Transcriptomics and Proteomics: A Practical Guide
multi-omics proteomics RNA-seq

Integrating Transcriptomics and Proteomics: A Practical Guide

Step-by-step guide to multi-omics integration covering ID mapping, correlation approaches, pathway-level analysis, and realistic expectations for RNA-protein concordance.

Differential Expression Analysis with DESeq2: Practical Lessons from Real-World RNA-seq Projects
RNA-seq bioinformatics genomics

Differential Expression Analysis with DESeq2: Practical Lessons from Real-World RNA-seq Projects

Comprehensive best practices for DESeq2 covering design formulas, normalization, outlier detection, contrast specification, and common pitfalls from dozens of projects.

Understanding Immune Cell Infiltration in Cancer Using Spatial Profiling
spatial biology GeoMx bioinformatics

Understanding Immune Cell Infiltration in Cancer Using Spatial Profiling

A comprehensive guide to characterizing tumor immune landscapes using spatial profiling with GeoMx DSP, including compartment-specific analysis and immune cell deconvolution.

Cross-Species Validation in Genomics: Bridging Mouse Models and Human Data
genomics bioinformatics RNA-seq

Cross-Species Validation in Genomics: Bridging Mouse Models and Human Data

A data-driven framework for cross-species validation covering ortholog mapping, concordance analysis, and transcription factor-level comparisons.

Modeling Disease Progression with Spatial Transcriptomics
spatial biology genomics bioinformatics

Modeling Disease Progression with Spatial Transcriptomics

How spatial transcriptomics can reconstruct disease trajectories from a single tissue section by treating spatial regions as temporal proxies.

Leveraging Local LLMs for Multi-Omics Data Interpretation
AI multi-omics bioinformatics

Leveraging Local LLMs for Multi-Omics Data Interpretation

Exploring the use of local Large Language Models as a synthesis layer in multi-omics analysis, with a consensus-based approach to reduce hallucination risk.

Moving Beyond Arbitrary Percentiles: Data-Driven Biomarker Cutoffs with Gaussian Mixture Models
bioinformatics spatial biology genomics

Moving Beyond Arbitrary Percentiles: Data-Driven Biomarker Cutoffs with Gaussian Mixture Models

How Gaussian Mixture Models provide biologically-motivated biomarker cutoffs as an alternative to arbitrary percentiles, with R and Python code examples.

RNA-Protein Concordance in Spatial Profiling: Why Multi-Omics Matters
multi-omics spatial biology proteomics

RNA-Protein Concordance in Spatial Profiling: Why Multi-Omics Matters

Why RNA and protein levels often disagree in spatial profiling, the biological mechanisms driving discordance, and practical strategies for multi-omics integration.

Spatial Deconvolution: Uncovering Hidden Cell Type Composition from Spatial Transcriptomics Data
spatial biology GeoMx bioinformatics

Spatial Deconvolution: Uncovering Hidden Cell Type Composition from Spatial Transcriptomics Data

Learn how spatial deconvolution estimates cell type proportions in tissue regions using reference expression profiles, with practical guidance on SpatialDecon and GeoMx DSP workflows.

Flow Cytometry Data Analysis with FlowCytometryTools
flow cytometry

Flow Cytometry Data Analysis with FlowCytometryTools

Learn how FlowCytometryTools revolutionizes flow cytometry data analysis with Python, now compatible with Python 3.x.

Understanding the Differences Between SBIR and STTR Grants
funding

Understanding the Differences Between SBIR and STTR Grants

Understanding the differences between SBIR and STTR grants is crucial for securing funding for your innovation.

Why Building R from Source on Linux Offers Unrivaled Performance
bioinformatics

Why Building R from Source on Linux Offers Unrivaled Performance

Discover why building R from source on Linux offers unrivaled performance.

Birmingham's Emergence as a Prominent Tech Hub
bioinformatics funding

Birmingham's Emergence as a Prominent Tech Hub

Discover how Birmingham is emerging as a leading tech hub in the United States, with a focus on bioinformatics research.

Unlocking the Power of GeoMx DSP: Understanding Multidimensional Data Analysis
spatial biology

Unlocking the Power of GeoMx DSP: Understanding Multidimensional Data Analysis

Learn about the power of the nanostring GeoMx DSP system and how Cytogence can help with multidimensional data analysis.

The Importance of Data Quality in High-Throughput Biology
proteomics genomics

The Importance of Data Quality in High-Throughput Biology

Explore the critical role of data quality in high-throughput biology and learn how it impacts scientific research and discovery.

Genomic Medicine: Applications, Limitations, and Future Possibilities
genomics

Genomic Medicine: Applications, Limitations, and Future Possibilities

Explore the applications, limitations, and future possibilities of genomic medicine with advanced data analysis services from Cytogence.

The Future of Proteomics: Trends and Technologies to Watch
RNA-seq single-cell proteomics genomics multi-omics AI

The Future of Proteomics: Trends and Technologies to Watch

Explore the latest trends and technologies shaping the future of proteomics and how Cytogence can help with advanced data analysis.

Exploring the Latest Advancements in Multi-Omic Analysis
RNA-seq single-cell proteomics genomics multi-omics AI

Exploring the Latest Advancements in Multi-Omic Analysis

Discover the latest advancements in multi-omic analysis and how Cytogence can help with advanced data analysis.

The Role of Artificial Intelligence in Precision Medicine
genomics AI

The Role of Artificial Intelligence in Precision Medicine

Learn how artificial intelligence is revolutionizing precision medicine, improving outcomes, and reducing healthcare costs.

Understanding the Benefits of Spatial Transcriptomics in Cancer Research
spatial biology RNA-seq

Understanding the Benefits of Spatial Transcriptomics in Cancer Research

Discover the power of spatial transcriptomics in cancer research and how Cytogence can help with advanced data analysis