Regularized selection indices for breeding value prediction using hyper-spectral image data

被引:0
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作者
Marco Lopez-Cruz
Eric Olson
Gabriel Rovere
Jose Crossa
Susanne Dreisigacker
Suchismita Mondal
Ravi Singh
Gustavo de los Campos
机构
[1] Department of Plant,
[2] Soil and Microbial Sciences,undefined
[3] Michigan State University,undefined
[4] Department of Animal Science,undefined
[5] Michigan State University,undefined
[6] Department of Epidemiology and Biostatistics,undefined
[7] Michigan State University,undefined
[8] Institute for Quantitative Health Science and Engineering,undefined
[9] Michigan State University,undefined
[10] Department of Statistics and Probability,undefined
[11] Michigan State University,undefined
[12] International Maize and Wheat Improvement Center (CIMMYT),undefined
来源
Scientific Reports | / 10卷
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摘要
High-throughput phenotyping (HTP) technologies can produce data on thousands of phenotypes per unit being monitored. These data can be used to breed for economically and environmentally relevant traits (e.g., drought tolerance); however, incorporating high-dimensional phenotypes in genetic analyses and in breeding schemes poses important statistical and computational challenges. To address this problem, we developed regularized selection indices; the methodology integrates techniques commonly used in high-dimensional phenotypic regressions (including penalization and rank-reduction approaches) into the selection index (SI) framework. Using extensive data from CIMMYT’s (International Maize and Wheat Improvement Center) wheat breeding program we show that regularized SIs derived from hyper-spectral data offer consistently higher accuracy for grain yield than those achieved by standard SIs, and by vegetation indices commonly used to predict agronomic traits. Regularized SIs offer an effective approach to leverage HTP data that is routinely generated in agriculture; the methodology can also be used to conduct genetic studies using high-dimensional phenotypes that are often collected in humans and model organisms including body images and whole-genome gene expression profiles.
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