Energy Quality of Dog Feeds and Owner Feeding Practices: Links to Body Condition Score

Authors

  • Ester Vargová Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Branislav Gálik Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Miroslav Juráček Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Milan Šimko Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Matúš Džima Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Kristína Kolbaská Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Ella Tarišková Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia
  • Michal Rolinec Slovak University of Agriculture in Nitra, Faculty of Agrobiology and Food Resources,Institute of Nutrition and Genomics, Slovakia

Keywords:

metabolisable energy, dog nutrition, direct calorimetry, feeding practices, body condition score

Abstract

The study aimed to evaluate the energy quality of complete commercial dog feeds by comparing declared metabolisable energy (ME) values with those determined by laboratory analysis. A total of 19 dry complete commercial dog feeds formulated for adult dogs in maintenance were analysed. Gross energy (GE) was measured by direct calorimetry and recalculated to ME using a conversion coefficient of 0.82. In addition, a questionnaire survey among 32 dog owners was conducted to assess feeding practices and their association with body condition score (BCS). The results showed that declared ME concentrations (15,870 ±720 kJ/kg) were on average higher than the recalculated values (14,800 ±1,030 kJ/kg), with a mean difference of 1,070 ±1,350 kJ/kg. For a 15 kg model dog, this discrepancy translated into daily intake variations of several hundred kilojoules, potentially leading to under- or overfeeding. The questionnaire confirmed that 75% of owners provided treats and 72% used dietary supplements, both of which significantly increased total energy intake. Pearson correlation analysis demonstrated strong positive associations between BCS and the use of treats (r = 0.71, P < 0.01) as well as supplements (r = 0.69, P < 0.01), whereas the amount of complete feed alone showed no significant effect (r = 0.31, P > 0.05). These findings underline the importance of precise feed labelling and highlight the role of owner behaviour as a determinant of canine body condition. Improvements in transparency of nutritional information and targeted owner education are essential to support optimal feeding strategies and prevent obesity in dog

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Published

2026-07-01

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Section

Animal Science