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Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep

SIMPLE SUMMARY: Infection by gastrointestinal nematodes is a major sanitary issue in sheep production. Therefore, improvements in the animal’s health are important to reduce losses and improve animal welfare. Thus, this study investigated the feasibility of using easy-to-measure phenotypic traits to...

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Autores principales: Freitas, Luara A., Savegnago, Rodrigo P., Alves, Anderson A. C., Costa, Ricardo L. D., Munari, Danisio P., Stafuzza, Nedenia B., Rosa, Guilherme J. M., Paz, Claudia C. P.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9913374/
https://www.ncbi.nlm.nih.gov/pubmed/36766263
http://dx.doi.org/10.3390/ani13030374
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author Freitas, Luara A.
Savegnago, Rodrigo P.
Alves, Anderson A. C.
Costa, Ricardo L. D.
Munari, Danisio P.
Stafuzza, Nedenia B.
Rosa, Guilherme J. M.
Paz, Claudia C. P.
author_facet Freitas, Luara A.
Savegnago, Rodrigo P.
Alves, Anderson A. C.
Costa, Ricardo L. D.
Munari, Danisio P.
Stafuzza, Nedenia B.
Rosa, Guilherme J. M.
Paz, Claudia C. P.
author_sort Freitas, Luara A.
collection PubMed
description SIMPLE SUMMARY: Infection by gastrointestinal nematodes is a major sanitary issue in sheep production. Therefore, improvements in the animal’s health are important to reduce losses and improve animal welfare. Thus, this study investigated the feasibility of using easy-to-measure phenotypic traits to predict sheep resistant, resilient, and susceptible to gastrointestinal nematodes, compared the classification performance of different methods, and evaluated the applicability of the best classification model on each farm. The results revealed the multinomial logistic regression and linear discriminant analysis models presented the best classification performances for the susceptible and resistant animals. The results suggest that the use of readily available records and easily measurable traits may contribute to the identification of susceptible animals, supporting management decisions at the farm level and potentially reducing the economic losses due to parasitic infection. The animals identified as resistant can also be incorporated as selection candidates into breeding programs for the genetic improvement of sheep populations. ABSTRACT: This study investigated the feasibility of using easy-to-measure phenotypic traits to predict sheep resistant, resilient, and susceptible to gastrointestinal nematodes, compared the classification performance of multinomial logistic regression (MLR), linear discriminant analysis (LDA), random forest (RF), and artificial neural network (ANN) methods, and evaluated the applicability of the best classification model on each farm. The database comprised 3654 records of 1250 Santa Inês sheep from 6 farms. The animals were classified into resistant (2605 records), resilient (939 records), and susceptible (110 records) according to fecal egg count and packed cell volume. A random oversampling method was performed to balance the dataset. The classification methods were fitted using the information of age class, the month of record, farm, sex, Famacha© degree, body weight, and body condition score as predictors, and the resistance, resilience, and susceptibility to gastrointestinal nematodes as the target classes to be predicted considering data from all farms randomly. An additional leave-one-farm-out cross-validation technique was used to assess prediction quality across farms. The MLR and LDA models presented good performances in predicting susceptible and resistant animals. The results suggest that the use of readily available records and easily measurable traits may provide useful information for supporting management decisions at the farm level.
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spelling pubmed-99133742023-02-11 Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep Freitas, Luara A. Savegnago, Rodrigo P. Alves, Anderson A. C. Costa, Ricardo L. D. Munari, Danisio P. Stafuzza, Nedenia B. Rosa, Guilherme J. M. Paz, Claudia C. P. Animals (Basel) Article SIMPLE SUMMARY: Infection by gastrointestinal nematodes is a major sanitary issue in sheep production. Therefore, improvements in the animal’s health are important to reduce losses and improve animal welfare. Thus, this study investigated the feasibility of using easy-to-measure phenotypic traits to predict sheep resistant, resilient, and susceptible to gastrointestinal nematodes, compared the classification performance of different methods, and evaluated the applicability of the best classification model on each farm. The results revealed the multinomial logistic regression and linear discriminant analysis models presented the best classification performances for the susceptible and resistant animals. The results suggest that the use of readily available records and easily measurable traits may contribute to the identification of susceptible animals, supporting management decisions at the farm level and potentially reducing the economic losses due to parasitic infection. The animals identified as resistant can also be incorporated as selection candidates into breeding programs for the genetic improvement of sheep populations. ABSTRACT: This study investigated the feasibility of using easy-to-measure phenotypic traits to predict sheep resistant, resilient, and susceptible to gastrointestinal nematodes, compared the classification performance of multinomial logistic regression (MLR), linear discriminant analysis (LDA), random forest (RF), and artificial neural network (ANN) methods, and evaluated the applicability of the best classification model on each farm. The database comprised 3654 records of 1250 Santa Inês sheep from 6 farms. The animals were classified into resistant (2605 records), resilient (939 records), and susceptible (110 records) according to fecal egg count and packed cell volume. A random oversampling method was performed to balance the dataset. The classification methods were fitted using the information of age class, the month of record, farm, sex, Famacha© degree, body weight, and body condition score as predictors, and the resistance, resilience, and susceptibility to gastrointestinal nematodes as the target classes to be predicted considering data from all farms randomly. An additional leave-one-farm-out cross-validation technique was used to assess prediction quality across farms. The MLR and LDA models presented good performances in predicting susceptible and resistant animals. The results suggest that the use of readily available records and easily measurable traits may provide useful information for supporting management decisions at the farm level. MDPI 2023-01-21 /pmc/articles/PMC9913374/ /pubmed/36766263 http://dx.doi.org/10.3390/ani13030374 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Freitas, Luara A.
Savegnago, Rodrigo P.
Alves, Anderson A. C.
Costa, Ricardo L. D.
Munari, Danisio P.
Stafuzza, Nedenia B.
Rosa, Guilherme J. M.
Paz, Claudia C. P.
Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep
title Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep
title_full Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep
title_fullStr Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep
title_full_unstemmed Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep
title_short Classification Performance of Machine Learning Methods for Identifying Resistance, Resilience, and Susceptibility to Haemonchus contortus Infections in Sheep
title_sort classification performance of machine learning methods for identifying resistance, resilience, and susceptibility to haemonchus contortus infections in sheep
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9913374/
https://www.ncbi.nlm.nih.gov/pubmed/36766263
http://dx.doi.org/10.3390/ani13030374
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