Farhad Hormozdiari (@fhormozdiari) 's Twitter Profile
Farhad Hormozdiari

@fhormozdiari

ID: 3374199982

calendar_today13-07-2015 15:37:29

154 Tweet

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373 Takip Edilen

IGES (@genepisociety) 's Twitter Profile Photo

Double Fun In March! March 29th at 12:00 EDT Cory Mclean & Farhad Hormozdiari will discuss "DeepNull models non-linear covariate effects to improve phenotypic prediction and association power." (Nat Commun 2022) #IGESJournalClub Register Here: harvard.zoom.us/meeting/regist…

Andrew Carroll (@acarroll_atg) 's Twitter Profile Photo

Excited to share new phenotyping methods for COPD, improving COPD GWAS Collaborative work with IU and BWH, co-authors Justin Cosentino, B Besaz , @babak_alipanahi, Z McCaw, last author Farhad Hormozdiari, eng manager C McLean. Paper: medrxiv.org/content/10.110… Code: github.com/Google-Health/…

Farhad Hormozdiari (@fhormozdiari) 's Twitter Profile Photo

Interested in performing GWAS on high-dimensional clinical data and how to utilize deep learning to improve GWAS power. Check our new paper (medrxiv.org/content/10.110…).

Interested in performing GWAS on high-dimensional clinical data and how to utilize deep learning to improve GWAS power. Check our new paper (medrxiv.org/content/10.110…).
AJHG (@ajhgnews) 's Twitter Profile Photo

📢New in AJHG from McCaw et al. 📰An allelic-series rare-variant association test for candidate-gene discovery 👇 rb.gy/zx99a

Yossi Matias (@ymatias) 's Twitter Profile Photo

Medicine is inherently multimodal, so our #AI systems must be too. Our Health AI team at Google Research is making progress with alternative approaches to introducing multimodal capabilities to medical #LLMs: Google AI ai.googleblog.com/2023/08/multim…

Shek Azizi (@azizishekoofeh) 's Twitter Profile Photo

Med-Gemini-Polygenic is the first LMM to predict health outcomes from genomic data converted to polygenic risk scores. It beats PRS linear models, even surprisingly predicts outcomes it wasn't trained for.

Med-Gemini-Polygenic is the first LMM to predict health outcomes from genomic data converted to polygenic risk scores. It beats PRS linear models, even surprisingly predicts outcomes it wasn't trained for.
Google Health (@googlehealth) 's Twitter Profile Photo

Introducing Med-Gemini, our new family of AI research models for medicine, building on Gemini's advanced capabilities. We've achieved state-of-the-art performance on a variety of benchmarks and unlocked novel applications. #MedGemini #AIResearch #MedicalAI

Introducing Med-Gemini, our new family of AI research models for medicine, building on Gemini's advanced capabilities. We've achieved state-of-the-art performance on a variety of benchmarks and unlocked novel applications. 

#MedGemini #AIResearch #MedicalAI
Farhad Hormozdiari (@fhormozdiari) 's Twitter Profile Photo

Super excited to see our team's work on unsupervised phenotyping published (nature.com/articles/s4158……). Ted Yun and I wrote a blog explaining the work and results.

Google Research (@googleresearch) 's Twitter Profile Photo

M-REGLE is an AI method that simultaneously analyzes multiple health data streams, including ECGs and PPGs, to jointly learn rich representations and significantly boost the discovery of genetic links to disease. Learn all about it at goo.gle/4ehDwp4

M-REGLE is an AI method that simultaneously analyzes multiple health data streams, including ECGs and PPGs, to jointly learn rich representations and significantly boost the discovery of genetic links to disease. Learn all about it at goo.gle/4ehDwp4