可视化
工作流程
生物
虚假关系
规范化(社会学)
基因组
计算机科学
数据可视化
图形用户界面
计算生物学
数据挖掘
数据库
机器学习
遗传学
社会学
人类学
基因
程序设计语言
作者
Chung‐Ming Sun,Zhen Qin,Ruishan Liu,Yuanxiong Guo,Robert A. Burgelman,Yuxuan Du
摘要
Metagenomic Hi-C (metaHi-C) enables the reconstruction of microbial genome organization and interspecies interactions by capturing physical contacts between genomic fragments. However, raw metaHi-C data are often confounded by systematic biases and spurious contacts, which can obscure meaningful biological signals. Existing metaHi-C pipelines typically lack user-friendly normalization workflows and intuitive visualization tools, limiting the ability to explore microbial interaction networks. Here, we introduce MetaHiCNet, a web-based platform that supports widely used normalization methods with customizable parameters. MetaHiCNet provides a stepwise workflow for bias correction, spurious contact removal, and interactive visualization of microbial interactions. The platform supports multiple visualization modes, including taxonomic treemaps, cross-taxa networks, and cross-bin networks, enabling seamless transitions from community-wide overviews to detailed analyses of specific taxa or bins. This functionality facilitates the investigation of host-microbe interactions and the relationships between mobile genetic elements and their microbial hosts, offering deeper insights into microbial community structures and dynamics. MetaHiCNet is freely accessible at www.metahicnet.com without login.
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