Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola

Attributes such as the nutritional quality of pastures are characteristics that can be used to select better pastures and thus obtain a greater amount of meat and milk from livestock feed. However, the laboratory analytical method by which it is calculated is not cost effective in trials with a larg...

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Autores principales: Camelo, Rodrigo A., Cardoso, Juan, Rosa Noemi, Jauregui, Espitia, Paula Andrea, Mazabel Parra, Lady Johanna
Formato: Conjunto de datos
Lenguaje:Inglés
Publicado: 2024
Materias:
Acceso en línea:https://hdl.handle.net/10568/151542
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author Camelo, Rodrigo A.
Cardoso, Juan
Rosa Noemi, Jauregui
Espitia, Paula Andrea
Mazabel Parra, Lady Johanna
author_browse Camelo, Rodrigo A.
Cardoso, Juan
Espitia, Paula Andrea
Mazabel Parra, Lady Johanna
Rosa Noemi, Jauregui
author_facet Camelo, Rodrigo A.
Cardoso, Juan
Rosa Noemi, Jauregui
Espitia, Paula Andrea
Mazabel Parra, Lady Johanna
author_sort Camelo, Rodrigo A.
collection Repository of Agricultural Research Outputs (CGSpace)
description Attributes such as the nutritional quality of pastures are characteristics that can be used to select better pastures and thus obtain a greater amount of meat and milk from livestock feed. However, the laboratory analytical method by which it is calculated is not cost effective in trials with a large number of plants, so developing methods that allow extensive evaluation and precise and non-destructive selection of nutritionally promising genotypes is a need. From 2011 to 2019, samples of Urochloa humidicola (Rendle) Morrone & Zuloaga from the breeding program have been harvested to collect near-infrared (NIR) spectroscopy data at the Alliance of Bioversity and CIAT . This data set comprises a total of 1012 samples, where each sample includes absorbance data from 400 to 2498 nanometers (nm), with step intervals of 2 nm, thus presenting only the pair values of the spectrum for a total of 1050 absorbance data for each sample. In addition, it includes wet chemistry data from, 995 samples analyzed for neutral Methodology: The grasses from which the samples were taken for this data set come from field trials of the U.humidicola breeding program of the Alliance of Bioversity International and CIAT in different locations in Colombia, to evaluate the performance of these grasses in different environments and climatic conditions. The samples were collected using a 50 by 50 cm quadrant in plots of 1m x 1 m, with 4-6 wk regrowth after cutting. The sampled tissue was dried in an air force Memmert UF750 PLUS ( GmH + Co. KG ) oven at 60°C for 72 h, ground using a Retsch SM 100 cutting laboratory mill (Retsch GmbH) with 1-mm sieve size, packed in plastic bags and labelled for later use in the chemical and spectral analyses. The chemical analyses were performed at the CIAT forages and animal nutrition quality laboratory. Concentrations of NDF and ADF were measured sequentially, according to operating instructions, using an ANKOM 2000 fiber analyzer (Ankom Technology,2011) and according to the methods of Van Soest and Robertson (1985). (2024-07)
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spelling CGSpace1515422024-11-08T13:34:11Z Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola Camelo, Rodrigo A. Cardoso, Juan Rosa Noemi, Jauregui Espitia, Paula Andrea Mazabel Parra, Lady Johanna evaluation nutritive value infrared spectrophotometry near-infrared nutricional quality massive evaluation Attributes such as the nutritional quality of pastures are characteristics that can be used to select better pastures and thus obtain a greater amount of meat and milk from livestock feed. However, the laboratory analytical method by which it is calculated is not cost effective in trials with a large number of plants, so developing methods that allow extensive evaluation and precise and non-destructive selection of nutritionally promising genotypes is a need. From 2011 to 2019, samples of Urochloa humidicola (Rendle) Morrone & Zuloaga from the breeding program have been harvested to collect near-infrared (NIR) spectroscopy data at the Alliance of Bioversity and CIAT . This data set comprises a total of 1012 samples, where each sample includes absorbance data from 400 to 2498 nanometers (nm), with step intervals of 2 nm, thus presenting only the pair values of the spectrum for a total of 1050 absorbance data for each sample. In addition, it includes wet chemistry data from, 995 samples analyzed for neutral Methodology: The grasses from which the samples were taken for this data set come from field trials of the U.humidicola breeding program of the Alliance of Bioversity International and CIAT in different locations in Colombia, to evaluate the performance of these grasses in different environments and climatic conditions. The samples were collected using a 50 by 50 cm quadrant in plots of 1m x 1 m, with 4-6 wk regrowth after cutting. The sampled tissue was dried in an air force Memmert UF750 PLUS ( GmH + Co. KG ) oven at 60°C for 72 h, ground using a Retsch SM 100 cutting laboratory mill (Retsch GmbH) with 1-mm sieve size, packed in plastic bags and labelled for later use in the chemical and spectral analyses. The chemical analyses were performed at the CIAT forages and animal nutrition quality laboratory. Concentrations of NDF and ADF were measured sequentially, according to operating instructions, using an ANKOM 2000 fiber analyzer (Ankom Technology,2011) and according to the methods of Van Soest and Robertson (1985). (2024-07) 2024 2024-08-05T18:41:45Z 2024-08-05T18:41:45Z Dataset https://hdl.handle.net/10568/151542 en Open Access Rodrigo Andrés Camelo; Juan Cardoso; Jauregui Rosa Noemi; Espitia Paula Andrea; Mazabel Parra, L.J. (2024) Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola. https://doi.org/10.7910/DVN/XPNIQY
spellingShingle evaluation
nutritive value
infrared spectrophotometry
near-infrared
nutricional quality
massive evaluation
Camelo, Rodrigo A.
Cardoso, Juan
Rosa Noemi, Jauregui
Espitia, Paula Andrea
Mazabel Parra, Lady Johanna
Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola
title Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola
title_full Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola
title_fullStr Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola
title_full_unstemmed Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola
title_short Nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of Urochloa humidicola
title_sort nutritional quality dataset by wet chemistry and near infrared measurements from dry tissue of urochloa humidicola
topic evaluation
nutritive value
infrared spectrophotometry
near-infrared
nutricional quality
massive evaluation
url https://hdl.handle.net/10568/151542
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