Prediction of stem rust infection favorability, by means of degree-hour wetness duration, for perennial ryegrass seed crops
A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible inf...
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Published in: | Phytopathology Vol. 93; no. 4; pp. 467 - 477 |
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Language: | English |
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St. Paul, MN
American Phytopathological Society
01-04-2003
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Abstract | A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible infection level set by host and inoculum. Moisture duration and temperature are combined in one factor as wet degree-hours (DH(w)) (i.e., degree-hours > 2.0°C summed only over time intervals when) moisture is present). Degree-hours are weighted as a function of temperature, based on observed rates of urediniospore germination. The pathogen Puccinia graminis subsp. graminicola requires favorable conditions of temperature and moisture during the night (dark period) and also at the beginning of the morning (light period), and both periods are included in the model. There is a correction factor for reduced favorability if the dark wet period is interrupted. The model is: proportion of maximum infection = 1 - e((-0.0031) x (DHw Index)), where DH(w) Index is the product of interruption-adjusted overnight weighted DH(w) multiplied by morning (first 2 h after sunrise) weighted DH(w). The model can be run easily with measurements from automated dataloggers that record temperature and wetness readings at frequent time intervals. In tests with three independent data sets, the model accounted for 80% of the variance in log(observed infection level) across three orders of magnitude, and the regression lines for predicted and observed values were not significantly different from log(observed) = log(predicted). A simpler version of the model using nonweighted degree hours (>2.0°C) was developed and tested. It performed nearly as well as the weighted-degree-hour model under conditions when temperatures from sunset to 2 h past sunrise were mostly between 4 and 20°C, as is the case during the growing season in the major U.S. production region for cool-season grass seed. The infection model is intended for use in combination with measured or modeled estimates of inoculum level, to derive estimates of daily infection. |
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AbstractList | A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible infection level set by host and inoculum. Moisture duration and temperature are combined in one factor as wet degree-hours (DH
w
) (i.e., degree-hours > 2.0°C summed only over time intervals when) moisture is present). Degree-hours are weighted as a function of temperature, based on observed rates of urediniospore germination. The pathogen Puccinia graminis subsp. graminicola requires favorable conditions of temperature and moisture during the night (dark period) and also at the beginning of the morning (light period), and both periods are included in the model. There is a correction factor for reduced favorability if the dark wet period is interrupted. The model is: proportion of maximum infection = 1 - e
(-0.0031) × (DHw Index)
, where DH
w
Index is the product of interruption-adjusted overnight weighted DH
w
multiplied by morning (first 2 h after sunrise) weighted DH
w
. The model can be run easily with measurements from automated dataloggers that record temperature and wetness readings at frequent time intervals. In tests with three independent data sets, the model accounted for 80% of the variance in log(observed infection level) across three orders of magnitude, and the regression lines for predicted and observed values were not significantly different from log(observed) = log(predicted). A simpler version of the model using nonweighted degree hours (>2.0°C) was developed and tested. It performed nearly as well as the weighted-degree-hour model under conditions when temperatures from sunset to 2 h past sunrise were mostly between 4 and 20°C, as is the case during the growing season in the major U.S. production region for cool-season grass seed. The infection model is intended for use in combination with measured or modeled estimates of inoculum level, to derive estimates of daily infection. A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible infection level set by host and inoculum. Moisture duration and temperature are combined in one factor as wet degree-hours (DH(w)) (i.e., degree-hours > 2.0°C summed only over time intervals when) moisture is present). Degree-hours are weighted as a function of temperature, based on observed rates of urediniospore germination. The pathogen Puccinia graminis subsp. graminicola requires favorable conditions of temperature and moisture during the night (dark period) and also at the beginning of the morning (light period), and both periods are included in the model. There is a correction factor for reduced favorability if the dark wet period is interrupted. The model is: proportion of maximum infection = 1 - e((-0.0031) x (DHw Index)), where DH(w) Index is the product of interruption-adjusted overnight weighted DH(w) multiplied by morning (first 2 h after sunrise) weighted DH(w). The model can be run easily with measurements from automated dataloggers that record temperature and wetness readings at frequent time intervals. In tests with three independent data sets, the model accounted for 80% of the variance in log(observed infection level) across three orders of magnitude, and the regression lines for predicted and observed values were not significantly different from log(observed) = log(predicted). A simpler version of the model using nonweighted degree hours (>2.0°C) was developed and tested. It performed nearly as well as the weighted-degree-hour model under conditions when temperatures from sunset to 2 h past sunrise were mostly between 4 and 20°C, as is the case during the growing season in the major U.S. production region for cool-season grass seed. The infection model is intended for use in combination with measured or modeled estimates of inoculum level, to derive estimates of daily infection. A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible infection level set by host and inoculum. Moisture duration and temperature are combined in one factor as wet degree-hours (DH sub(w)) (i.e., degree-hours > 2.0 degree C summed only over time intervals when moisture is present). Degree-hours are weighted as a function of temperature, based on observed rates of urediniospore germination. The pathogen Puccinia graminis subsp. graminicola requires favorable conditions of temperature and moisture during the night (dark period) and also at the beginning of the morning (light period), and both periods are included in the model. There is a correction factor for reduced favorability if the dark wet period is interrupted. The model is: proportion of maximum infection = 1 - e super((-0.0031) times (DHwIndex)), where DH sub(w) Index is the product of interruption-adjusted overnight weighted DH sub(w) multiplied by morning (first 2 h after sunrise) weighted DH sub(w). The model can be run easily with measurements from automated dataloggers that record temperature and wetness readings at frequent time intervals. In tests with three independent data sets, the model accounted for 80% of the variance in log(observed infection level) across three orders of magnitude, and the regression lines for predicted and observed values were not significantly different from log(observed) = log(predicted). A simpler version of the model using nonweighted degree hours (> 2.0 degree C) was developed and tested. It performed nearly as well as the weighted-degree-hour model under conditions when temperatures from sunset to 2 h past sunrise were mostly between 4 and 20 degree C, as is the case during the growing season in the major U.S. production region for cool-season grass seed. The infection model is intended for use in combination with measured or modeled estimates of inoculum level, to derive estimates of daily infection. ABSTRACT A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible infection level set by host and inoculum. Moisture duration and temperature are combined in one factor as wet degree-hours (DH(w)) (i.e., degree-hours > 2.0 degrees C summed only over time intervals when) moisture is present). Degree-hours are weighted as a function of temperature, based on observed rates of urediniospore germination. The pathogen Puccinia graminis subsp. graminicola requires favorable conditions of temperature and moisture during the night (dark period) and also at the beginning of the morning (light period), and both periods are included in the model. There is a correction factor for reduced favorability if the dark wet period is interrupted. The model is: proportion of maximum infection = 1 - e((-0.0031) (DHw Index)), where DH(w) Index is the product of interruption-adjusted overnight weighted DH(w) multiplied by morning (first 2 h after sunrise) weighted DH(w). The model can be run easily with measurements from automated dataloggers that record temperature and wetness readings at frequent time intervals. In tests with three independent data sets, the model accounted for 80% of the variance in log(observed infection level) across three orders of magnitude, and the regression lines for predicted and observed values were not significantly different from log(observed) = log(predicted). A simpler version of the model using nonweighted degree hours (>2.0 degrees C) was developed and tested. It performed nearly as well as the weighted-degree-hour model under conditions when temperatures from sunset to 2 h past sunrise were mostly between 4 and 20 degrees C, as is the case during the growing season in the major U.S. production region for cool-season grass seed. The infection model is intended for use in combination with measured or modeled estimates of inoculum level, to derive estimates of daily infection. ABSTRACT A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field environment with monitored weather. The model describes favorability of daily weather as a proportion (0.0 to 1.0) of the maximum possible infection level set by host and inoculum. Moisture duration and temperature are combined in one factor as wet degree-hours (DH(w)) (i.e., degree-hours > 2.0 degrees C summed only over time intervals when) moisture is present). Degree-hours are weighted as a function of temperature, based on observed rates of urediniospore germination. The pathogen Puccinia graminis subsp. graminicola requires favorable conditions of temperature and moisture during the night (dark period) and also at the beginning of the morning (light period), and both periods are included in the model. There is a correction factor for reduced favorability if the dark wet period is interrupted. The model is: proportion of maximum infection = 1 - e((-0.0031) (DHw Index)), where DH(w) Index is the product of interruption-adjusted overnight weighted DH(w) multiplied by morning (first 2 h after sunrise) weighted DH(w). The model can be run easily with measurements from automated dataloggers that record temperature and wetness readings at frequent time intervals. In tests with three independent data sets, the model accounted for 80% of the variance in log(observed infection level) across three orders of magnitude, and the regression lines for predicted and observed values were not significantly different from log(observed) = log(predicted). A simpler version of the model using nonweighted degree hours (>2.0 degrees C) was developed and tested. It performed nearly as well as the weighted-degree-hour model under conditions when temperatures from sunset to 2 h past sunrise were mostly between 4 and 20 degrees C, as is the case during the growing season in the major U.S. production region for cool-season grass seed. The infection model is intended for use in combination with measured or modeled estimates of inoculum level, to derive estimates of daily infection. |
Author | Pfender, W.F |
Author_xml | – sequence: 1 fullname: Pfender, W.F |
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Cites_doi | 10.1094/Phyto-85-409 10.1094/Phyto-71-577 10.1094/PHYTO.2001.91.1.77 10.1094/PDIS.2000.84.6.631 10.1094/PDIS.2000.84.12.1287 10.1007/978-3-642-95534-1_8 10.1094/PHYTO.1997.87.10.1046 10.1094/PHYTO.2000.90.2.108 10.2307/3755776 10.1146/annurev.py.30.090192.003005 10.1094/Phyto-80-1233 10.1094/PHYTO.2001.91.2.134 10.1094/Phyto-78-794 10.1016/0304-3800(93)90084-6 10.1094/PDIS.2001.85.10.1036 10.1046/j.1365-3059.1997.d01-69.x 10.1094/PHYTO.1997.87.11.1088 10.1094/PHYTO.2000.90.11.1285 10.1094/Phyto-84-260 10.1094/PHYTO.2001.91.1.111 10.1094/PD-79-0511 |
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Keywords | Fungi Monocotyledones Temperature Bioassay Gramineae Angiospermae Basidiomycetes Puccinia Spermatophyta Models Lolium perenne Thallophyta |
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References | p_23 p_24 p_20 p_21 p_22 Rowell J. B. (p_14) 1958; 48 p_16 p_17 p_2 Sharp E. L. (p_18) 1958; 48 p_1 p_19 p_4 p_12 p_3 p_13 p_6 p_5 p_15 p_8 p_7 p_9 Yirgou D. (p_25) 1968; 58 p_10 p_11 |
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Snippet | A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in a field... ABSTRACT A weather-based infection model for stem rust of perennial ryegrass seed crops was developed and tested using data from inoculated bioassay plants in... |
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SubjectTerms | Agronomy. Soil science and plant productions Biological and medical sciences climatic factors disease advisory systems disease models diurnal variation Fundamental and applied biological sciences. Psychology Fungal plant pathogens fungal spores Genetics and breeding of economic plants infection inoculum density Lolium perenne pathogenicity Pathology, epidemiology, host-fungus relationships. Damages, economic importance Pest resistance Phytopathology. Animal pests. Plant and forest protection plant pathogenic fungi Plant pathogens prediction Puccinia graminis relative humidity rust diseases seeds spore germination temperature Varietal selection. Specialized plant breeding, plant breeding aims |
Title | Prediction of stem rust infection favorability, by means of degree-hour wetness duration, for perennial ryegrass seed crops |
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