Systematic clustering algorithm for chromatin accessibility data and its application to hematopoietic cells
Genomics
2024-10-14 v2 Statistical Mechanics
Data Analysis, Statistics and Probability
Quantitative Methods
Abstract
The huge amount of data acquired by high-throughput sequencing requires data reduction for effective analysis. Here we give a clustering algorithm for genome-wide open chromatin data using a new data reduction method. This method regards the genome as a string of s and s based on a set of peaks and calculates the Hamming distances between the strings. This algorithm with the systematically optimized set of peaks enables us to quantitatively evaluate differences between samples of hematopoietic cells and classify cell types, potentially leading to a better understanding of leukemia pathogenesis.
Cite
@article{arxiv.1912.10641,
title = {Systematic clustering algorithm for chromatin accessibility data and its application to hematopoietic cells},
author = {Azusa Tanaka and Yasuhiro Ishitsuka and Hiroki Ohta and Akihiro Fujimoto and Jun-ichirou Yasunaga and Masao Matsuoka},
journal= {arXiv preprint arXiv:1912.10641},
year = {2024}
}
Comments
24 pages, 17 figures