Don't be shy to take on a little two-week side project. These five months will be the most precious three years of your academic journey.
Posts by Pablo Rodriguez-Mier
Need to visualize complex graphs, trees, or workflows in Python? easydot renders Graphviz diagrams in the browser with a single line of code. No binary install required.
Plays nicely with @marimo.io notebooks too!
π¦ github.com/pablormier/easydot
βΆοΈ demo: marimo.app/l/y20xye
Causality in biomedicine: going beyond associations is organised by:
@avakhamseh.bsky.social
@sjoerdvbeentjes.bsky.social
@pablormier.bsky.social
Apply by 21 June: www.ebi.ac.uk/training/eve...
π§¬π₯οΈππ
π§΅ See π our new preprint on shared and organ-specific gene expression programs of fibrotic diseases π§¬
π Paper: doi.org/10.64898/202...
π Explore the data: organfibrosis.saezlab.org
Interested in kinase-driven signaling interactions? Check out our (now peer-reviewed) paper together with @savitski-lab.bsky.social on reconstructing signaling networks from phosphoproteomics data and prior knowledge:
β‘οΈ doi.org/10.1038/s414...
Remember the slogan projects used to have: "Made with β€οΈ by XYZ"?
Soon weβll start seeing: "Made by humans for humans"
course schedule as a table. Available at the link in the post.
I'm teaching Statistical Rethinking again starting Jan 2026. This time with live lectures, divided into Beginner and Experienced sections. Will be a lot more work for me, but I hope much better for students.
I will record lectures & all will be found at this link: github.com/rmcelreath/s...
Unifying multi-sample network inference from prior knowledge and omics data with CORNETO
->Nature | #Data | More info from EcoSearch
π¨ New preprint
We present an extended version of ScAPE, the method that won one of the prizes π in the @neuripsconf.bsky.social 2023 Single-Cell Perturbation Prediction challenge.
π preprint: doi.org/10.1101/2025...
𧬠code: github.com/scapeML/scape
ScAPE: A lightweight multitask learning baseline method to predict transcriptomic responses to perturbations www.biorxiv.org/content/10.1101/2025.09....
We present our MetaProViz #Rpackage for #metabolomics analysis & prior knowledge integration to generate mechanistic hypotheses on how metabolic changes affect metabolite classes, pathways & environment interaction
π
www.biorxiv.org/content/10.1...
π¦
saezlab.github.io/MetaProViz/
π§΅ Thread β¬οΈ
EMBO Practical Course. Causality in biomedicine: going beyond associations. 4 - 9 October 2026. Hinxton, UK. EMBO Practical Course and EMBL-EBI logos attached.
New course announced!
We're thrilled to be hosting the @embo.org Practical Course 'Causality in biomedicine: going beyond associations' from 4 β 9 October 2026.
Register your interest and be the first to hear when the course opens for applications: www.ebi.ac.uk/training/eve...
New course βEMBO Causality in Biomedicineβ: We have organised the first EMBO course in *causal* stats/ML methods for quantitative biomedicine. @sjoerdvbeentjes.bsky.social @nimahejazi.org @pablormier.bsky.social @DariaSokolova @CarolineUhler
Very much looking forward to teaching and discussing!
This project has been in the making for quite some time. CORNETO not only integrates key concepts and methodologies in biological network inference, but also introduces a novel framework for multi-condition analysis. Congrats to the team, and especially to @pablormier.bsky.social for leading this.
π The revised version of CORNETO, our unified Python framework for knowledge-driven network inference from omics data, is published in peer reviewed form
π Paper: www.nature.com/articles/s42...
π News & Views: www.nature.com/articles/s42...
π» Code: corneto.org
π§΅ Thread π
How can we find out whatβs really going on inside cells when weβre generating so much complex data?
CORNETO is an open-source tool that uses machine learning to turn tangled omics datasets into clear maps of how genes, proteins, and signalling pathways interact.
www.ebi.ac.uk/about/news/r... π§ͺ
The latest version of the Kasumi manuscript is now published in Nature Comms www.nature.com/articles/s41... Kasumi identifies patterns in tissue patches, enabling analysis of disease progression and treatment response while providing insights into spatial coordination at cell-type or marker level
π¨ New preprint: Topography Aware Optimal Transport for Alignment of Spatial Omics Data
We present our new alignment framework TOAST www.biorxiv.org/content/10.1...
Turns out the way we usually pre-train foundational cell models adds very little information to the system - definitely not enough to make drug effect predictions work. Not what I've expected.
#virtualcells #foundationalmodels #compbio
blog.turbine.ai/p/pretrainin...
π Update on our preprint about Gene Regulatory Net (GRN) benchmarking π
We have included the original and decoupled version of SCENIC+, added a new metric and two more databases. Dictys and SCENIC+ outperformed others, but still performed poorly in causal mechanistic tasks.
doi.org/10.1101/2024... π
No need to feel bad! Also, congratulations on your work, and best wishes to Sakana!
Is someone feeling jealous? What's the beef here? π₯©
Haha, Peyman Milanfar blocked me within milliseconds after I liked a reply of somebody else defending @hardmaru.bsky.social and Sakana AI against his attacks.
Fastest block ever!
Stephen Boyd's reaction when a student says they're using Genetic Algorithms for optimization is priceless π
youtu.be/kV1ru-Inzl4?...
In many countries we're seeing voters that have never known anything other than stability and a certain level of competence voting for anti- system candidates because they have convinced themselves of two things: things right now are awful; change will only be for the better.
This is also why vaccine-denial is so prevalent. People donβt have a memory of what mass death from smallpox looked like, or post-poli disability.
No AGI until LLMs can reliably produce useful LaTeX. Havenβt seen one that truly delivers.
We need a LLM LaTeX benchmark!
"LLaDA: Large Language Diffusion Models" Nie et al.
Just read this fascinating paper.
Scaled up Masked Diffusion Language Models to 8B params, and show that it can match #LLMs (including Llama 3) while solving some key limitations!
Let's dive in... π§΅
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#genai
We are delighted to announce The Health Privacy Challenge, an interactive opportunity for advancement at the intersection of computational biology and privacy research, brought to you as a part of CAMDA Conference at #ISMB/ECCB2025 π«π
Register to participate: benchmarks.elsa-ai.eu?ch=4