Literature DB >> 34345971

Predicting moisture content during maize nixtamalization using machine learning with NIR spectroscopy.

Michael J Burns1, Jonathan S Renk1, David P Eickholt2, Amanda M Gilbert1, Travis J Hattery3, Mark Holmes1, Nickolas Anderson2, Amanda J Waters2, Sathya Kalambur4, Sherry A Flint-Garcia5,6, Marna D Yandeau-Nelson3, George A Annor7, Candice N Hirsch8.   

Abstract

KEY MESSAGE: Moisture content during nixtamalization can be accurately predicted from NIR spectroscopy when coupled with a support vector machine (SVM) model, is strongly modulated by the environment, and has a complex genetic architecture. Lack of high-throughput phenotyping systems for determining moisture content during the maize nixtamalization cooking process has led to difficulty in breeding for this trait. This study provides a high-throughput, quantitative measure of kernel moisture content during nixtamalization based on NIR scanning of uncooked maize kernels. Machine learning was utilized to develop models based on the combination of NIR spectra and moisture content determined from a scaled-down benchtop cook method. A linear support vector machine (SVM) model with a Spearman's rank correlation coefficient of 0.852 between wet laboratory and predicted values was developed from 100 diverse temperate genotypes grown in replicate across two environments. This model was applied to NIR spectra data from 501 diverse temperate genotypes grown in replicate in five environments. Analysis of variance revealed environment explained the highest percent of the variation (51.5%), followed by genotype (15.6%) and genotype-by-environment interaction (11.2%). A genome-wide association study identified 26 significant loci across five environments that explained between 5.04% and 16.01% (average = 10.41%). However, genome-wide markers explained 10.54% to 45.99% (average = 31.68%) of the variation, indicating the genetic architecture of this trait is likely complex and controlled by many loci of small effect. This study provides a high-throughput method to evaluate moisture content during nixtamalization that is feasible at the scale of a breeding program and provides important information about the factors contributing to variation of this trait for breeders and food companies to make future strategies to improve this important processing trait.
© 2021. The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.

Entities:  

Mesh:

Substances:

Year:  2021        PMID: 34345971     DOI: 10.1007/s00122-021-03926-8

Source DB:  PubMed          Journal:  Theor Appl Genet        ISSN: 0040-5752            Impact factor:   5.699


  9 in total

1.  Basic local alignment search tool.

Authors:  S F Altschul; W Gish; W Miller; E W Myers; D J Lipman
Journal:  J Mol Biol       Date:  1990-10-05       Impact factor: 5.469

2.  GCTA: a tool for genome-wide complex trait analysis.

Authors:  Jian Yang; S Hong Lee; Michael E Goddard; Peter M Visscher
Journal:  Am J Hum Genet       Date:  2010-12-17       Impact factor: 11.025

3.  PLINK: a tool set for whole-genome association and population-based linkage analyses.

Authors:  Shaun Purcell; Benjamin Neale; Kathe Todd-Brown; Lori Thomas; Manuel A R Ferreira; David Bender; Julian Maller; Pamela Sklar; Paul I W de Bakker; Mark J Daly; Pak C Sham
Journal:  Am J Hum Genet       Date:  2007-07-25       Impact factor: 11.025

4.  Support vector machine regression (SVR/LS-SVM)--an alternative to neural networks (ANN) for analytical chemistry? Comparison of nonlinear methods on near infrared (NIR) spectroscopy data.

Authors:  Roman M Balabin; Ekaterina I Lomakina
Journal:  Analyst       Date:  2011-02-25       Impact factor: 4.616

5.  GAPIT: genome association and prediction integrated tool.

Authors:  Alexander E Lipka; Feng Tian; Qishan Wang; Jason Peiffer; Meng Li; Peter J Bradbury; Michael A Gore; Edward S Buckler; Zhiwu Zhang
Journal:  Bioinformatics       Date:  2012-07-13       Impact factor: 6.937

6.  Wide variability in kernel composition, seed characteristics, and zein profiles among diverse maize inbreds, landraces, and teosinte.

Authors:  Sherry A Flint-Garcia; Anastasia L Bodnar; M Paul Scott
Journal:  Theor Appl Genet       Date:  2009-08-22       Impact factor: 5.699

Review 7.  Drought or/and Heat-Stress Effects on Seed Filling in Food Crops: Impacts on Functional Biochemistry, Seed Yields, and Nutritional Quality.

Authors:  Akanksha Sehgal; Kumari Sita; Kadambot H M Siddique; Rakesh Kumar; Sailaja Bhogireddy; Rajeev K Varshney; Bindumadhava HanumanthaRao; Ramakrishnan M Nair; P V Vara Prasad; Harsh Nayyar
Journal:  Front Plant Sci       Date:  2018-11-27       Impact factor: 5.753

8.  Machine Learning Approach for Prescriptive Plant Breeding.

Authors:  Kyle A Parmley; Race H Higgins; Baskar Ganapathysubramanian; Soumik Sarkar; Asheesh K Singh
Journal:  Sci Rep       Date:  2019-11-20       Impact factor: 4.379

9.  Pfam: The protein families database in 2021.

Authors:  Jaina Mistry; Sara Chuguransky; Lowri Williams; Matloob Qureshi; Gustavo A Salazar; Erik L L Sonnhammer; Silvio C E Tosatto; Lisanna Paladin; Shriya Raj; Lorna J Richardson; Robert D Finn; Alex Bateman
Journal:  Nucleic Acids Res       Date:  2021-01-08       Impact factor: 16.971

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.