Using vibrational spectroscopy to phenotype fusiform rust disease
resistance in loblolly pine trees
Abstract
Fusiform rust is a disease caused by the fungal pathogen Cronartium
quercuum f. sp. fusiforme (Cqf). It is considered one of the most
damaging and economically important diseases for loblolly pine (Pinus
taeda L.), causing millions of dollars in damage and loss of products
each year. Evaluating trees for disease resistance includes inoculation
trials – these trials require artificial inoculation of the pathogen
followed by visual inspection for disease incidence. Visual inspection
can lead to incorrect classification due to human error or escaped
susceptible (i.e. a susceptible individual with no symptoms). Here, we
plan to use vibrational spectroscopy tools to improve the accuracy of
phenotypic values. Vibrational spectroscopy tools allow for a user to
obtain a single, comprehensive reading based on the chemical
constituents of sample. Because pine trees mostly rely on chemical-based
defenses, the relationship between chemical makeup and resistance is
promising. We plan to collect spectra from 40 different loblolly pine
families (20 with lower rust incidence and 20 higher rust incidence)
over five different progeny test sites in the southeastern US, totaling
400 trees. We will use a handheld near-infrared (NIR) spectrometer for a
real-time, in-field reading on phloem and needle tissue. In addition,
phloem and needle tissue will be analyzed by a benchtop
Fourier-transformed infrared (FT-IR) spectrometer. Using multivariate
analyses and machine learning algorithms, spectral readings can be mined
for patterns associated with fusiform rust disease resistance or
susceptibility, which can be used to predict the phenotype of untested
trees. The results of the two tools and two tissue types will be
compared to evaluate the best method for identifying phenotype in the
system. This chemical fingerprinting and classification approach to
phenotyping loblolly pines will provide a more objective, efficient, and
more accurate way to identify disease resistance in the field, thereby
creating more robust forest stands against fusiform rust.