设为首页  | English
当前位置: 首页 > 学术动态 > 正文
学术动态
+
学术动态

学术讲座通知

发布时间:2021-11-17 14:32:04  浏览次数: 次  来源:


讲座题目:Meta-clustering of Genomic Data

讲座时间:20211124日(周三),上午1000-1130(北京时间)

腾讯会议:624 423 319 ,密码:123456

报告人: 魏颖颖,副教授,香港中文大学

摘要:Like traditional meta-analysis that pools effect sizes across studies to improve statistical power, it is of increasing interest to conduct clustering jointly across datasets to identify disease subtypes for bulk genomic data and discover subtypes for bulk genomic data and discover cell types for single-cell RNA-sequencing (scRNA-seq) data. Unfortunately, due to the prevalence of technical batch effects among high-throughput experiments, directly clustering samples from multiple datasets can lead to wrong results. The recent emerging meta-clustering approaches require all datasets to contain all subtypes, which is not feasible for many experimental designs.

In this talk, I will present our Batch-effects-correction-with-Unknown-Subtypes (BUS) framework. BUS is capable of correcting batch effects explicitly, grouping samples that share similar characteristics into subtypes, identifying features that distinguish subtypes, and enjoying a linear-order computational complexity. We prove the identifiability of BUS for not only bulk data but also scRNA-seq data whose dropout events suffer from missing not at random. We mathematically show that under two very flexible and realistic experimental designs—the “reference panel” and the “chain-type” designs—true biological variability can also be separated from batch effects.

邀请人: 张天啸,副教授,西安交通大学公共卫生学院



上一篇:卫健康护航 | 核酸检测期末考(kē)试(pǔ)

下一篇:微视频:我是党员,我在!

    版权所有:西安交通大学医学部公共卫生学院 地址:陕西省西安市雁塔西路76号
邮编:710061 联系电话:029-82655101 029-82655135 Email:sph_xjtu@163.com