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Sai Zhang

Researcher at Stanford University

Publications -  44
Citations -  873

Sai Zhang is an academic researcher from Stanford University. The author has contributed to research in topics: Biology & Medicine. The author has an hindex of 10, co-authored 36 publications receiving 498 citations. Previous affiliations of Sai Zhang include Tsinghua University.

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A deep learning framework for modeling structural features of RNA-binding protein targets

TL;DR: A general and flexible deep learning framework for modeling structural binding preferences and predicting binding sites of RBPs, which takes (predicted) RNA tertiary structural information into account for the first time and provides a new evidence to support the view that RBPs may own specific tertiaryStructural binding preferences.
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TITER: predicting translation initiation sites by deep learning.

TL;DR: A deep learning‐based framework, named TITER, for accurately predicting TISs on a genome‐wide scale based on QTI‐seq data and was able to identify important sequence signatures for individual types of TIS codons, including a Kozak‐sequence‐like motif for AUG start codon.
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Decoding the Genomics of Abdominal Aortic Aneurysm

TL;DR: A machine-learning framework to integrate personal genomes and electronic health record (EHR) data is developed and used to study abdominal aortic aneurysm, a prevalent irreversible cardiovascular disease with unclear etiology.
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Analysis of Ribosome Stalling and Translation Elongation Dynamics by Deep Learning

TL;DR: The genome-wide ribosome stalling landscapes of both human and yeast computed by ROSE recovered the functional interplays between ribosomes stalling and cotranslational events in protein biogenesis, including protein targeting by the signal recognition particles and protein secondary structure formation.
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Gene-Environment Interaction in the Era of Precision Medicine.

TL;DR: The insufficiency of commonly used models for disease genome analysis is investigated and a Bayesian framework is proposed to hierarchically model personalized gene-environmental interaction to enable precision health and medicine.