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Accurate quantification and detection of Septoria glycines in soybean using quantitative PCR
Heng An Lin,
Santiago X. Mideros
Crop Sciences
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Dive into the research topics of 'Accurate quantification and detection of Septoria glycines in soybean using quantitative PCR'. Together they form a unique fingerprint.
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Keyphrases
Glycine
100%
Quantitative PCR
100%
Detection Accuracy
100%
Accurate Quantification
100%
Septoria Glycines
100%
Genomic DNA (gDNA)
42%
Tubulin
28%
Actin Gene
28%
United States
14%
Disease Diagnosis
14%
Necrosis
14%
Calmodulin
14%
Necrotic Lesion
14%
Conventional PCR
14%
PCR Reaction
14%
Infection Process
14%
Disease Management
14%
Reaction Efficiency
14%
Post Inoculation
14%
Field Sampling
14%
Foliar Disease
14%
PCR Method
14%
Brown Spot
14%
Septoria
14%
Detached Leaf Assay
14%
Polymorphic Regions
14%
Bt Gene
14%
Biochemistry, Genetics and Molecular Biology
Real-Time Polymerase Chain Reaction
100%
Septoria glycines
100%
Actin
40%
Tubulin
40%
Infectious Agent
20%
Polymerase Chain Reaction
20%
Calmodulin
20%
Septoria
20%
Agricultural and Biological Sciences
Real-Time Polymerase Chain Reaction
100%
Septoria
100%
Actin
40%
Tubulin
40%
Necrosis
20%
Calmodulin
20%
Foliar Diseases
20%
Food Science
Real-Time Polymerase Chain Reaction
100%
Polymerase Chain Reaction
20%