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Biomedical Mathematics Group

Biomedical Mathematics Group

기초과학연구원 의생명수학그룹

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Journal Club

Hyun Kim, Significance analysis for clustering with single-cell RNA-sequencing data

October 27, 2023 @ 2:00 pm - 4:00 pm KST

https://www.ibs.re.kr/bimag/event/2023-10-27-jc/
  • « Hyeontae Jo, AutoScore:A Machine Learning–Based Automatic Clinical Score Generator and Its Application to Mortality Prediction Using Electronic Health Records
  • Eder Zavala, Quantitative analysis of high-resolution daily profiles of HPA axis hormones »

Speaker

Hyun Kim
ibs biomedical mathematics group
https://sites.google.com/view/hyun-kim/

We will discuss about “Significance analysis for clustering with single-cell RNA-sequencing data”, Grabski, Isabella N., Kelly Street, and Rafael A. Irizarry., Nature Methods (2023): 1-7.

Abstract

Unsupervised clustering of single-cell RNA-sequencing data enables the identification of distinct cell populations. However, the most widely used clustering algorithms are heuristic and do not formally account for statistical uncertainty. We find that not addressing known sources of variability in a statistically rigorous manner can lead to overconfidence in the discovery of novel cell types. Here we extend a previous method, significance of hierarchical clustering, to propose a model-based hypothesis testing approach that incorporates significance analysis into the clustering algorithm and permits statistical evaluation of clusters as distinct cell populations. We also adapt this approach to permit statistical assessment on the clusters reported by any algorithm. Finally, we extend these approaches to account for batch structure. We benchmarked our approach against popular clustering workflows, demonstrating improved performance. To show practical utility, we applied our approach to the Human Lung Cell Atlas and an atlas of the mouse cerebellar cortex, identifying several cases of over-clustering and recapitulating experimentally validated cell type definitions.

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Details

Date:
October 27, 2023
Time:
2:00 pm - 4:00 pm KST
Event Category:
Journal Club

Organizer

Jae Kyoung Kim
Email
jaekkim@kaist.ac.kr
  • « Hyeontae Jo, AutoScore:A Machine Learning–Based Automatic Clinical Score Generator and Its Application to Mortality Prediction Using Electronic Health Records
  • Eder Zavala, Quantitative analysis of high-resolution daily profiles of HPA axis hormones »
IBS 의생명수학그룹 Biomedical Mathematics Group
기초과학연구원 수리및계산과학연구단 의생명수학그룹
대전 유성구 엑스포로 55 (우) 34126
IBS Biomedical Mathematics Group (BIMAG)
Institute for Basic Science (IBS)
55 Expo-ro Yuseong-gu Daejeon 34126 South Korea
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