...
首页> 外文期刊>Database >mAML: an automated machine learning pipeline with a microbiome repository for human disease classification
【24h】

mAML: an automated machine learning pipeline with a microbiome repository for human disease classification

机译:MAML:一种自动化机器学习管道,具有用于人类疾病分类的Microbiome存储库

获取原文
           

摘要

Due to the concerted efforts to utilize the microbial features to improve disease prediction capabilities, automated machine learning (AutoML) systems aiming to get rid of the tediousness in manually performing ML tasks are in great demand. Here we developed mAML, an ML model-building pipeline, which can automatically and rapidly generate optimized and interpretable models for personalized microbiome-based classification tasks in a reproducible way. The pipeline is deployed on a web-based platform, while the server is user-friendly and flexible and has been designed to be scalable according to the specific requirements. This pipeline exhibits high performance for 13 benchmark datasets including both binary and multi-class classification tasks. In addition, to facilitate the application of mAML and expand the human disease-related microbiome learning repository, we developed GMrepo ML repository (GMrepo Microbiome Learning repository) from the GMrepo database. The repository involves 120 microbiome-based classification tasks for 85 human-disease phenotypes referring to 12?429 metagenomic samples and 38?643 amplicon samples. The mAML pipeline and the GMrepo ML repository are expected to be important resources for researches in microbiology and algorithm developments.Database URL: http://lab.malab.cn/soft/mAML
机译:由于利用微生物特征来改善疾病预测能力的协调努力,旨在在手动执行ML任务中摆脱繁琐的自动化机器学习(Automl)系统具有很大的需求。在这里,我们开发了MAML,一个ML模型建设管道,它可以以可重复的方式自动和快速地为基于微生物组的分类任务进行优化和可解释的模型。管道部署在基于Web的平台上,而服务器是用户友好且灵活的,并且设计用于根据特定要求可扩展。该管道对13个基准数据集具有高性能,包括二进制和多级分类任务。此外,为了促进MAML的应用并扩展人类疾病相关的微生物组学习存储库,我们开发了来自GMREPO数据库的GMRepo ML存储库(GMRepo Microbiome学习存储库)。储存库涉及用于85个人疾病表型的基于120微生物的分类任务,指的是12〜429个梅蛋白样品和38〜643个扩增子样品。预计MAML管道和GMREPO ML存储库将是微生物学和算法开发研究的重要资源.Database URL:http://lab.malab.cn/soft/maml

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号