MMAP: a cloud computing platform for mining the maximum accuracy of predicting phenotypes from genotypes

Author:

Huang Wei1,Zheng Ping2,Cui Zhenhai3,Li Zhuo4,Gao Yifeng4,Yu Helong5,Tang You45,Yuan Xiaohui6,Zhang Zhiwu7ORCID

Affiliation:

1. Economic and Management School, Jilin Agricultural Science and Technology University, Jilin, China

2. Institute of Electrical and Information, Northeast Agricultural University, Harbin, China

3. College of Life Sciences and Technology, Shenyang Agricultural University, Liaoning, China

4. Electrical and Information Engineering College, JiLin Agricultural Science and Technology University, Jilin, China

5. Information Technology Academy, Jilin Agricultural University, Changchun, China

6. Department of Computer Sciences, Wuhan University of Technology, Wuhan, China

7. Department of Crop and Soil Sciences, Washington State University, Pullman, WA, USA

Abstract

Abstract Accurately predicting phenotypes from genotypes holds great promise to improve health management in humans and animals, and breeding efficiency in animals and plants. Although many prediction methods have been developed, the optimal method differs across datasets due to multiple factors, including species, environments, populations and traits of interest. Studies have demonstrated that the number of genes underlying a trait and its heritability are the two key factors that determine which method fits the trait the best. In many cases, however, these two factors are unknown for the traits of interest. We developed a cloud computing platform for Mining the Maximum Accuracy of Predicting phenotypes from genotypes (MMAP) using unsupervised learning on publicly available real data and simulated data. MMAP provides a user interface to upload input data, manage projects and analyses and download the output results. The platform is free for the public to conduct computations for predicting phenotypes and genetic merit using the best prediction method optimized from many available ones, including Ridge Regression, gBLUP, compressed BLUP, Bayesian LASSO, Bayes A, B, Cpi and many more. Users can also use the platform to conduct data analyses with any methods of their choice. It is expected that extensive usage of MMAP would enrich the training data, which in turn results in continual improvement of the identification of the best method for use with particular traits. Availability and implementation The MMAP user manual, tutorials and example datasets are available at http://zzlab.net/MMAP. Supplementary information Supplementary data are available at Bioinformatics online.

Funder

the National Science Foundation

the USDA NIFA

the Washington Grain Commission

the PhD start-up Foundation Project of Jilin Agricultural Science and Technology University

the Digital Agriculture key discipline Foundation of Jilin Province

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

Reference6 articles.

1. Ridge regression and other kernels for genomic selection in the R package rrBLUP;Endelman;Plant Genome,2011

2. GWASpro: a high-performance genome-wide association analysis server;Kim;Bioinformatics,2019

3. GAPIT: genome association and prediction integrated tool;Lipka;Bioinformatics,2012

4. GAPIT version 2: an enhanced integrated tool for genomic association and prediction;Tang;Plant J,2016

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