📢 Our latest paper is out in @CellCellPress! Led by the multi-talented @XinheZheng, we accelerated AAV-based gene delivery to 2 days & enabled in vivo CRISPR screens with single cell-level readout, a leap from existing capabilities 🤯 How does it work? (1/8)
MLPs are so foundational, but are there alternatives? MLPs place activation functions on neurons, but can we instead place (learnable) activation functions on weights? Yes, we KAN! We propose Kolmogorov-Arnold Networks (KAN), which are more accurate and interpretable than MLPs.🧵
This is my favorite cell embedding paper! SATURN learns universal cell embeddings by coupling gene expression with pLM embeddings for cross-species integration of functionally-related genes (macrogenes). 🌟 Amazing for atlas integration!
Paper: https://t.co/4gYOkFB95R
Code: https://t.co/85MUFEzg9y
CRISPR-GPT: An LLM Agent for Automated Design of Gene-Editing Experiments
Use Agent "to facilitate the process of selecting CRISPR systems, designing guide RNAs, recommending cellular delivery methods, drafting protocols, and designing validation experiments to confirm editing outcomes."
https://t.co/RFHh3TqOHC
(1/5) Very excited to announce that our paper titled "Tandem mass spectrum prediction for small molecules using graph transformers" has been published in Nature Machine Intelligence!
Paper: https://t.co/hCYnqlcFCR
Code: https://t.co/6zCoqcyg2E
This method, MassFormer, was previously presented at the ISMB 2023 and Metabolomics 2023 conferences, and published as a preprint on Arxiv (https://t.co/5isySrlqen). It was led by my PhD student Adamo Young (@AdamoYoung), who is co-supervised by myself and Hannes Röst
(@Roestlab) at the University of Toronto.
👇👇👇
if you are trying to get into deep learning for molecules like graph neural networks and equivariant neural networks check out https://t.co/pwKBwgn2Im if you haven't already
@andrewwhite01 does an amazing job of building from the basics to E3 invariant models with e3nn (ch.19)
📢 New & improved material to dive into geometric deep learning! 💠🕸️
We (@mmbronstein@joanbruna@TacoCohen) delivered our Master's course on GDL @AIMS_Next once again & we make all materials publicly available!
https://t.co/DmQ2GQoqN5
See thread 🧵 for gems 💎 & dragons 🐉!
We’re proud to announce our method for drug response prediction, BiG DRP, has been published at Oxford Bioinformatics. Want to hear how we tackled the task? Read the thread 🧵👇 and the paper 📃 https://t.co/Hylvfy3GiI
Facebook should have a 'label' feature similar to how you label emails or cards in Trello, so that I could categorize my 'friends' according to when/where I met them and how stupid they are by voting a tax evader.
Our ICLR'22 paper (https://t.co/SVWWryW431) studies the phenomenon of dimensional collapsing in contrastive learning, in which the learned representation has a few dimensions collapsed to zero. Thanks all co-authors (@jingli9111, Pascal Vincent and @ylecun) for the great work! 1/
[New] 🚇💳✅ Starting today, only payment by credit or debit cards is allowed in our fare booths. Cash payment remains possible through our vending machines and authorized retailers.
Info ⏩ https://t.co/oHDkxmOJWU
So last week I had to do an in-person tutorial but with zoom opened, because we were not given a room with a projector.
This week they gave us a ancient projector that multiple laptops cannot seem to detect.
🙃🙃🙃🙃🙃🙃
Large new cBioPortal data release: 3,680 samples from 6 published studies: pan-cancer data from #PCAWG (@Nature 2020), gliomas from the #GLASS Consortium (@Nature 2019), as well as several @sloan_kettering MSK-IMPACT studies.
https://t.co/AWOKYEM5cS
New paper w/ @MarzyehGhassemi & @DrLukeOR where we argue against explainability for patient-level decision-making.
tl;dr: Don’t ask for explainability at the bedside, it isn’t made for that.
Paper: https://t.co/lrzJDYTaxq