Application of machine learning methods for mining association rules in plant and animal data sets containing molecular genetic markers, followed by classification or prediction utilizing features created from these association rules
A technology of genetic markers and machine learning, applied in the fields of botanical equipment and methods, applications, bioinformatics, etc., can solve the problem of low accuracy
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[0280] The following examples are for illustrative purposes only and are not intended to limit the scope of the present disclosure.
[0281]Field and greenhouse screens are used to identify elite maize lines containing high and low levels of resistance to pathogens. Lines showing high levels of resistance to the pathogen are used as donors and crossed with susceptible elite lines. The progeny are then backcrossed to the same susceptible elite lines. The resulting population was crossed with haploid inducer stock and 191 fixed inbred lines were developed using chromosome doubling techniques. The level of resistance of each line to the pathogen was assessed in two replicates using field screening methodology. Forty-four replicates of susceptible elite lines were also evaluated using field screening methods. Genotype data were generated using 93 polymorphic SSR markers for all 191 doubled haploid lines, susceptible elite lines and resistant donors.
[0282] The final dataset ...
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