北京大学定量生物学中心
学术报告
题 目: Gene relationship network modeling and prediction
报告人: Ye Yuan(袁野), Ph.D.
Machine Learning Department, School of Computer Science at Carnegie Mellon University
时 间: 9月14日(周一)9:00-10:00
地 点: Online (Zoom会议)
会议 ID:640 8468 0249
https://zoom.com.cn/j/64084680249
主持人: Lucas Carey
摘 要:
In
this report, I will present how to use model-driven and data-driven
strategies to model and predict gene relationship network behavior and
structure. Specifically, I will first introduce how we modeled and
quantified a three-node ceRNA minimal network using differential
equations and synthetic gene circuits. Secondly, to deal with large
scale networks, we used deep learning to infer pairwise gene interaction
and causality with an image-like joint PDF input and it was found that
the two above approaches can get similar new discoveries. Thirdly, I
will mention how to infer extracellular gene relationship with
additional spatial information. Finally, I plan to discuss future work
that how to combine the two strategies to extend network studies,
especially on complex network behavior prediction and control.
报告人简介:
Ye
Yuan is a postdoc at Machine Learning Department, School of Computer
Science at Carnegie Mellon University, advised by Prof. Ziv Bar-Joseph.
He received his PhD from Automation Department at Tsinghua University
in 2017, advised by Prof. Yanda Li and Xiaowo Wang. He received his
bachelor degree from Automation Department at Xi’an Jiaotong University
in 2012. He also worked as a senior R&D engineer at Baidu Big Data
Lab (Beijing) in 2017.
His
research lies in bioinformatics and machine learning, focusing on
machine learning and physical model with applications to relationship
inference in genomics.