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Inferring Relationship of Blood Metabolic Changes and Average Daily Gain With Feed Conversion Efficiency in Murrah Heifers: Machine Learning Approach.
Sikka, Poonam; Nath, Abhigyan; Paul, Shyam Sundar; Andonissamy, Jerome; Mishra, Dwijesh Chandra; Rao, Atmakuri Ramakrishna; Balhara, Ashok Kumar; Chaturvedi, Krishna Kumar; Yadav, Keerti Kumar; Balhara, Sunesh.
Afiliação
  • Sikka P; Animal Biochemistry, Division of Genetics and Breeding, Central Institute for Research on Buffaloes (ICAR), Hisar, India.
  • Nath A; Department of Biochemistry, Pt. Jawahar Lal Nehru Memorial Medical College, Pt. Deendayal Upadhyay Memorial Health Sciences and Ayush University of Chhatisgarh, Raipur, India.
  • Paul SS; Poultry Nutrition, Directorate of Poultry Research (DPR), ICAR, Hyderabad, India.
  • Andonissamy J; Animal Biochemistry, Division of Genetics and Breeding, Central Institute for Research on Buffaloes (ICAR), Hisar, India.
  • Mishra DC; Indian Agricultural Statistics Research Institute, Indian Council of Agricultural Research, New Delhi, India.
  • Rao AR; Indian Agricultural Statistics Research Institute, Indian Council of Agricultural Research, New Delhi, India.
  • Balhara AK; Animal Biochemistry, Division of Genetics and Breeding, Central Institute for Research on Buffaloes (ICAR), Hisar, India.
  • Chaturvedi KK; Indian Agricultural Statistics Research Institute, Indian Council of Agricultural Research, New Delhi, India.
  • Yadav KK; Department of Bioinfromatics, School of Earth, Biological and Environmental Sciences, Central University of South Bihar, Patna, India.
  • Balhara S; Animal Biochemistry, Division of Genetics and Breeding, Central Institute for Research on Buffaloes (ICAR), Hisar, India.
Front Vet Sci ; 7: 518, 2020.
Article em En | MEDLINE | ID: mdl-32984408
ABSTRACT
Machine learning algorithms were employed for predicting the feed conversion efficiency (FCE), using the blood parameters and average daily gain (ADG) as predictor variables in buffalo heifers. It was observed that isotonic regression outperformed other machine learning algorithms used in study. Further, we also achieved the best performance evaluation metrics model with additive regression as the meta learner and isotonic regression as the base learner on 10-fold cross-validation and leaving-one-out cross-validation tests. Further, we created three separate partial least square regression (PLSR) models using all 14 parameters of blood and ADG as independent (explanatory) variables and FCE as the dependent variable, to understand the interactions of blood parameters, ADG with FCE each by inclusion of all FCE values (i), only higher FCE values (negative RFI) (ii), and inclusion of only lower FCE (positive RFI) values (iii). The PLSR model including only the higher FCE values was concluded the best, based on performance evaluation metrics as compared to PLSR models developed by inclusion of the lower FCE values and all types of FCE values. IGF1 and its interactions with the other blood parameters were found highly influential for higher FCE measures. The strength of the estimated interaction effects of the blood parameter in relation to FCE may facilitate understanding of intricate dynamics of blood parameters for growth.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Ano de publicação: 2020 Tipo de documento: Article