Nutrigenomics in livestock: potential role in physiological regulation and practical applications
Juan J. Loor A *A Department of Animal Sciences, Division of Nutritional Sciences, University of Illinois, Urbana, IL 61801, USA.
Animal Production Science 62(11) 901-912 https://doi.org/10.1071/AN21512
Submitted: 16 October 2021 Accepted: 18 February 2022 Published: 28 March 2022
© 2022 The Author(s) (or their employer(s)). Published by CSIRO Publishing. This is an open access article distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (CC BY-NC-ND)
Abstract
The relationship among nutrition, health, and productivity of livestock is a continuously changing interaction between environment and physiology. As such, understanding how the physiological system is able to adapt to the type and amount of nutrients consumed is central to our ability to care for and manage livestock. Recognition that cells possess proteins with the ability to ‘sense’ and trigger a cascade of biological events in response to nutrient availability is at the core of nutritional genomics (or nutrigenomics) as a field of science. Nutrigenomics is generally defined as the study of the genome-wide influence of nutrition. Certain transcriptional regulators can interact with nutrients and cause large-scale alterations in gene expression, metabolic and signaling pathways, and ultimately tissue function. The advent of high-throughput technologies to study an animal’s microbiome, genome, transcriptome, proteome, and metabolome (i.e. ‘omics’ tools) has been instrumental in moving the field of nutrigenomics forward. Available data from studies with livestock species using targeted or untargeted molecular methods underscore the existence of networks of multiple transcriptional regulators at play in controlling nutrigenomics responses. Fatty acids, amino acids, trace nutrients, and level of feed and energy intake have the strongest reported nutrigenomics potential. An important goal for applying nutrigenomics at the animal level is to uncover key molecular players involved in the physiological adaptations to changes in nutrient supply and environmental conditions.
Keywords: cattle, digestion, gene, growth, lactation, microbiota, nutrients, systems biology.
Introduction
The advent of methods to study large-scale molecular adaptations in tissues of livestock in response to specific nutrients, environmental changes, and their interactions has in the past 10 years resulted in a remarkable output of biological information. Reviews as far back as 2005 (Everts et al. 2005) on the role of ‘functional genomics’ as a discrete field of study within the broader animal sciences underscored the value of molecular information in livestock species as a way to better manage growth and production performance of the animal (Cogburn et al. 2007; Tuggle et al. 2007; Loor 2010). Recognition that metabolic regulation in livestock, as in model organisms (Papin et al. 2005), relies partly on transcriptional control of gene networks (i.e. a set or sets of genes controlling specific cellular functions) that are under the control of transcription factor(s) or nuclear receptor(s) led to proposals for broader application of the ‘systems biology approach’ (Bionaz and Loor 2012; Loor et al. 2013, 2015; McNamara 2015). Conceptually, such an approach would allow for integrating information from an animal at the gene (DNA), mRNA, protein, and metabolite level with measures of performance. Thus, from a ‘nutrigenomics’ standpoint, the systems biology approach is a means to understand better how nutrients (or diet composition, e.g. energy density) can alter phenotypes such as marbling, milk composition, growth rate, and health.
The systems approach to livestock biology research has been dramatically enhanced by the development of ‘high-throughput’ technologies (also known as ‘omics’) and the completion and functional annotation of livestock genomes, i.e. ‘the process of identifying functional elements along the sequence of a genome, thus, giving biological meaning to it’ (The FAANG Consortium et al. 2015). A central aspect of the systems approach is the use of tools to infer biological meaning from the vast amount of data that can be generated (Huang et al. 2009a). For example, a number of ‘gene enrichment’ tools that use biological knowledge accumulated in public databases such as the ‘Gene Ontology Resource’ (Ashburner et al. 2000; The Gene Ontology Consortium 2021) or ‘Kyoto Encyclopedia of Genes and Genomes (KEGG)’ (Kanehisa et al. 2021) have been developed since at least 2000 (Huang et al. 2009a). Publicly accessible tools such as the ‘Database for Annotation, Visualization and Integrated Discovery (DAVID)’ (Huang et al. 2009a, 2009b) allow users to upload large gene lists and perform analyses to identify biological themes that are ‘enriched’ or ‘over-represented’ within the gene list, and also to visualise genes on the KEGG pathways. Other tools such as STRING (Szklarczyk et al. 2021) contain databases of known and predicted protein–protein interactions for a large number of organisms, including livestock (Szklarczyk et al. 2021). The user can input a list of proteins and after the tool identifies the proteins, it will display a ‘network’ encompassing all the mapped proteins and their interconnections. A similar tool for building networks with gene expression data is Ingenuity Pathway Analysis (IPA), which allows users to build causal networks constructed from individual relationships curated from the scientific literature (Krämer et al. 2014). International efforts such as the Functional Annotation of ANimal Genomes (FAANG) project have generated foundational data regarding regulatory genomic regions in farmed animal genomes (Clark et al. 2020). Although key goals of FAANG in the long-term are to link genotypes, phenotypes, and genetic merit for application in the field, knowledge on the role of specific macro- and micronutrients in contributing to a specific phenotypic outcome is still in its infancy.
The main objective of this short review is to provide a general overview of the recent advances on ‘nutrient-sensing’ transcriptional networks that affect livestock performance and health. A number of ‘nutrient-sensing’ proteins exist in cells and have a potential nutrigenomics role (non-exhaustive list in Table 1). Similarly, there has been progress in identifying compounds that can induce a nutrigenomics effect in tissues of livestock (Table 2). Additional nutrient-sensing proteins may yet be identified.
Methods for nutrigenomics
In-depth understanding of the role of a given nutrient, mixtures of nutrients, or even feed additives and diet composition on gene transcription ideally requires the application of ‘high-throughput’ techniques such as RNA sequencing, often called ‘next-generation sequencing’ (NGS; Loor et al. 2015). Application of genome-enabled NGS also requires use of bioinformatics and proper statistical analysis methods so as to generate meaningful biological data. Because the use of NGS allows for evaluating the entire genome landscape in a given tissue or cell, application of ‘omics’ generates a holistic view of the overall physiology and molecular adaptations of an organism (Loor et al. 2015). Such a view can encompass genes and genome (transcriptomics), proteins and proteome (proteomics) and metabolites and biological pathways (metabolomics). Detailed explanation of these methods, along with some historical background, in the context of livestock are available and will not be discussed in this review (Bionaz et al. 2015; Loor et al. 2015; Osorio et al. 2017). Suffice it to emphasise that transcriptomics allows for exploring changes in the profiles of mRNA, proteomics deals with evaluating changes in protein profiles, and metabolomics allows evaluation of changes in metabolite profiles. As a result, besides their application in nutrigenomics, these approaches are routinely used in studies aimed at understanding complex phenotypes such as feed efficiency, ability for fat or lean deposition, and the role of maternal nutrition on development of the offspring (‘programming effect’; Table 2).
Due to complexity and cost, most published nutrigenomics studies have relied on one of these approaches to infer how nutrients, diets, or climate impact the physiology of livestock. There are few published attempts integrating two or more technologies. One study that merits specific mention is that of Jastrebski et al. (2017), dealing with the hepatic response at the transcriptome and metabolome to a chronic heat stress challenge. That work underscored changes in cell-cycle regulation, DNA replication, and DNA repair along with immune function. When metabolomics data were integrated, it revealed important biological effects on pathways including glucose, amino acid, and lipid metabolism, along with glutathione production and β-oxidation (Jastrebski et al. 2017). Another example of the complementary use of transcriptomics and metabolomics is the study of Shahzad et al. (2019) in which these techniques were used to establish biological associations between the prepartal transcriptome/metabolome profiles in the liver and the susceptibility to clinical ketosis postpartum in Holstein cows. Among the most-salient findings, the study uncovered that a lower concentration of glucose-6-phosphate (from metabolomics) and a marked downregulation of fructose-1,6-bisphosphatase 2 and pyruvate dehydrogenase kinase 4 mRNA abundance in the liver 2 weeks prior to parturition were associated with the development of ketosis postpartum. Thus, authors inferred that impaired gluconeogenesis in the liver of cows prior to parturition could increase the risk of developing ketosis after calving. As such, practical approaches that optimise feed intake in the late prepartum period could help reduce the susceptibility to this metabolic disease. Additional examples of published studies in which various omics have been applied are listed in Table 2.
Transcriptional regulators and nutrient supply
In livestock, one of the most-studied molecular regulators of transcriptional networks responsive to nutrients are the peroxisome proliferator-activated receptors (PPAR; Bionaz et al. 2013, 2015). A comprehensive review of PPAR in ruminants is available (Bionaz et al. 2013) and it is also important to highlight that other livestock species such as pigs possess a PPAR (at least in the liver) network that is responsive to changes in nutrient supply, i.e. PPARα target genes are upregulated in response to fasting (Cheon et al. 2005). With few exceptions, the three PPAR isotypes, α, β, and γ, are expressed preferentially in a given tissue, e.g. PPARα in liver, PPARβ in muscle, and PPARγ in adipose tissue (Bionaz et al. 2013). It is that preferential expression that confers each PPAR a unique biological function, e.g. PPARα coordinates transcriptional regulation of fatty acid oxidation genes in liver, PPARβ controls fatty acid oxidation in muscle, and PPARγ coordinates processes related to lipogenesis both in adipose tissue and mammary gland of ruminants and swine (Bionaz and Loor 2008; Bionaz et al. 2013; Moisá et al. 2014; Palombo et al. 2018; Albuquerque et al. 2020).
Since the review of Bionaz et al. (2015), published data not only confirmed the potency of 16:0 and 18:0 fatty acids for activating transcriptional networks in ruminant mammary cells controlled by PPARγ, but also provided evidence for the existence of other transcriptional regulators (at least in mammary cells) that are uniquely sensitive to the supply of 16:0 (Vargas-Bello-Pérez et al. 2019). Thus, other transcription factors (TF) should be investigated to fully understand the transcriptomic effect of 16:0 on milk fat synthesis or adipogenesis (Moisá et al. 2017; Minuti et al. 2020). Such an endeavor could encompass the use of RNA sequencing, which would provide data that could be mined through bioinformatics methods and help generate information regarding putative transcriptional regulators. An example of a bioinformatics analysis focused on gene networks and TF discovery is depicted in Fig. 1. In that study, a systems approach was used to understand changes in the subcutaneous adipose tissue transcriptome in dairy cows fed a typical lower-energy diet or a higher-energy diet during a typical ∼50-day dry period (Minuti et al. 2020). Transcriptome data and bioinformatics analysis along with plasma and performance data were integrated to develop a systems view of the effect of dietary plane of energy on fat deposition. Besides the fundamental scientific questions under study, the practical relevance of the systems analysis performed is underscored by the fact that dietary energy overfeeding in confinement systems for dairy cows often increases the risk of developing disorders after calving (Drackley and Cardoso 2014).
Another important consideration in the context of long-chain fatty acid supply to the animal is the fact that tissues are actually exposed to mixtures of fatty acids, the amount of which, and profiles, are likely to change in response to physiological state or level of dietary intake. To begin addressing this complexity from a nutrigenomics standpoint, Busato and Bionaz (2021) performed an in vitro study with bovine hepatocytes to evaluate the degree of activation of PPARα in response to a wide range of saturated and unsaturated fatty acids, both individually and in combination. Results not only highlighted that 16:0 and 18:0 alone elicit the strongest activation of PPARα, but when 12:0 was combined with each of them, PPARα activation was even greater (Busato and Bionaz 2021). Thus, an exciting outcome was the recognition that some mixtures of long-chain fatty acids display a synergistic effect leading to PPAR activation greater than the sum of their individual effects. Authors speculated that such responses are partly explained by structural dynamics within the PPAR ligand-binding pocket (Busato and Bionaz 2021). The practical context of nutrigenomics studies like this one is underscored by the consistent increases in milk fat yield, without negative effects on ruminal digestion, in dairy cows fed rumen-protected lipid supplements (at ≤3% diet dry matter) with a high 16:0 content (dos Santos Neto et al. 2021).
Beyond milk fat synthesis regulation, it is evident that fat depots in livestock also possess a functional PPARγ (example for bovine in Fig. 1), and it has been demonstrated that the transcription network controlled by this transcriptional factor is not only sensitive to nutrition (e.g. high dietary starch; Moisá et al. 2014), but also responds to endocrine changes associated with a given physiological state, e.g. the transition from pregnancy (anabolic state) into lactation (catabolic state; Minuti et al. 2020). More important from a practical perspective, it is now well known that manipulation of the PPAR network not only alters aspects of lipid metabolism, but can also help control oxidative stress and inflammation (Gessner et al. 2017; Hassan et al. 2020). An example of such linkages was uncovered by the TF network analysis of Minuti et al. (2020) in which activation of PPARγ in adipose prior to calving when a higher-energy diet was fed was negatively associated with an abundance of the proinflammatory cytokine tumor necrosis alpha (TNF) and other immune-related genes (e.g. PTGS2, CCL5; Fig. 1).
Besides the well known effect of long-chain fatty acids on the PPAR network, other nutrients such as polyphenols (flavonoids) can activate the PPAR network in tissues and antagonise inflammation and oxidative stress by blocking the activation of the proinflammatory TF nuclear factor kappa B (NFKB1; Gessner et al. 2017). Dairy cow liver expresses the PPARα and PPARβ isotypes, and the latter is upregulated by inflammatory challenges such as those that occur when circulating concentrations of endotoxin increase (Graugnard et al. 2013). It could be possible that PPAR networks in a given tissue play ‘dual roles’, for example, metabolic and immune. More importantly, the fact that feeding lipids or alternative feedstuffs (e.g. crop residues, agro-industrial byproducts) to livestock have or are becoming important in the management at the farm underscores the potential nutrigenomics effect of diets fed to livestock. Although agro-industrial byproducts such as grape marc and citrus leaves in ruminant diets have received special focus for their potential role in altering methane emissions (Moate et al. 2014; Fernández et al. 2021), they contain molecules such as polyphenols and essential oils, which could have a nutrigenomics effect at the tissue level.
In addition to long-chain fatty acids, short-chain fatty acids such as butyrate have strong nutrigenomics potential. In vivo, using NGS, it was demonstrated that a sustained ruminal infusion of sodium-butyrate (at 10% of expected daily metabolisable energy intake to support lactation) in dry Holstein cows over a 7-day period led to alterations in the abundance of more than 3000 genes relative to baseline (Baldwin et al. 2018). Among the most notable changes induced by butyrate were alterations in genes controlled by PPAR, underscoring the broad biological relevance of these nuclear receptors in the coordination of nutrigenomics responses (Bionaz et al. 2013). Although most of the published work on volatile fatty acid (VFA) metabolism, and butyrate specifically, has centered on ruminants (calf and mature animal), the continued emphasis on hindgut function as it relates to carbohydrate nutrition in non-ruminant livestock suggests that butyrate availability could have a real effect (Tiwari et al. 2019). It is well accepted that, of the major VFA, butyrate elicits the most potent changes at the cellular level, e.g. cell differentiation, proliferation, motility, and induction of cell cycle arrest and apoptosis (Li and Elsasser 2005). Besides a direct effect on gene expression, potentially through a TF, butyrate inhibits the function of histone deacetylases (HDAC), which are active and essential components of transcriptional regulatory complexes (Li and Li 2014).
Transcription-factor networks and nutrigenomics
A large number of transcriptional regulators are likely to be involved in nutrient sensing, and application of various omics in studies with livestock has shown potential biological associations among transcriptional regulators that can interact with nutrients or intermediate metabolites and, subsequently, trigger a response (Table 2, Fig. 1). For instance, work with bovine mammary cells first provided evidence that PPARγ partly controls abundance of the transcriptional regulator SREBF1 (Kadegowda et al. 2009), but the production of natural agonists (i.e. long-chain fatty acids) via the SREBF1 pathway (i.e. lipogenesis) can affect the activity of PPARγ, as observed during differentiation of 3T3-L1 adipocytes (Kim et al. 1998). Perhaps the most concrete evidence for the high degree of interdependence among various transcriptional regulators arose from work with bovine and goat mammary cells, in which the use of techniques to overexpress or ‘silence’ these genes was used (Shi et al. 2013; Li et al. 2014; Cui et al. 2015; Zhu et al. 2015). It is likely that interactions among TF control biological processes such as milk fat synthesis (Bionaz and Loor 2008), intramuscular adipogenesis (Moisá et al. 2014), fat depot deposition (Moisá et al. 2017; Minuti et al. 2020), and immune cell function (Vieira-Neto et al. 2021).
The existence of networks among various TF highlights the complexity that needs to be accounted for in nutrigenomic studies and interventions. The complexity is even more evident when we consider that TF interact not only at the intracellular level, but also at the systemic level where activation of a TF in one tissue can induce the activation or repression of a TF in another tissue (i.e. tissue cross talk) by inducing expression of secreted signaling molecules. One example of this effect is the hepatokine fibroblast growth factor 21 (FGF21), a signaling molecule whose transcription is controlled by PPARα in the liver and after secretion into the circulation can affect adipose tissue metabolism (Eder et al. 2021). Adipokines such as adiponectin represent another example of a protein under control of TF (e.g. PPAR), which can affect metabolism in tissues such as the liver (Sauerwein and Häußler 2016). It is now more apparent that TF and target gene networks work in conjunction to alter physiological pathways, not only in the mature animal (Shahzad et al. 2014), but also in response to altering the nutrition of the mother during pregnancy (Namous et al. 2018; Palombo et al. 2021; Table 2).
Despite limitations in terms of availability of livestock-specific data for building networks among TF and target genes in nutrigenomics studies, ‘user-friendly’ tools such as the commercially available IPA suite are helpful, especially when advanced computational biology approaches are not readily accessible to nutrition researchers. The gene network in Fig. 1 is an example of how IPA can be used to search and build connections between a TF (PPARG, PPARGC1A) and its targets within a list of differentially expressed genes (Minuti et al. 2020). Several of these genes have been validated via RT-PCR in similar studies with dry/pregnant dairy cows (Ji et al. 2012), and together with measures of body mass, fat depot mass, and plasma biomarkers, they highlight an anabolic response in bovine adipose tissue to increased intake of dietary energy that is similar to responses in non-ruminants (Janovick et al. 2011; Drackley et al. 2014). Although not depicted in the figure, the user also has the flexibility to include molecules such as metabolites (e.g. glucose) or hormones (e.g. insulin) in the network analysis, such that changes in concentrations can be linked with a given set of TF or target genes.
There are also publicly accessible tools that allow identification of TF responsible for the observed changes in gene expression in a given nutrigenomics experiment, e.g. the ChIP-X Enrichment Analysis 3 (ChEA3) transcription-factor enrichment analysis tool (Keenan et al. 2019). Its use in a recent nutrigenomics experiment dealing with RNA sequencing data from liver of neonatal calves born to cows fed normal or greater amounts of methionine (a methyl donor) during the last 30 days of pregnancy led to identification of 72 TF that had statistically significant associations with 568 differentially expressed genes (Palombo et al. 2021). Among the TF identified were some with known nutrigenomic potential (Table 1), e.g. PPARγ, hepatocyte nuclear factor 4 α (HNF4A), or some that are responsive to changes in endocrine signals such as circulating insulin (forkhead box O1, FOXO1; E2F transcription factor 1, E2F1) and glucagon (cAMP responsive element binding protein 1, CREB1).
Clearly, generating molecular networks provides novel targets for hypothesis-driven experiments that can help better understand how nutrition of the animal may be used to achieve a given phenotype, such as e.g. alterations in marbling or milk fat composition. The application of algorithms that allow for building co-expression networks among differentially expressed genes based on correlations and information theory (e.g. PCIT) (Reverter and Chan 2008) also has allowed for identifying significant gene-to-gene associations within a tissue and among tissues. This approach has been used to study regulatory mechanisms controlling phenotypes that can be affected by nutrition, such as marbling (Cesar et al. 2015, 2018) or the mineral content of meat (Afonso et al. 2020). Besides ChEA3, identification of biologically relevant TF and target-gene networks can be conducted through implementation of regulatory impact factor (RIF) algorithms (Reverter et al. 2010). The metrics generated from the RIF analysis provide information on TF connected to target genes, and also help identify those TF with the potential to predict target-gene abundance (Reverter et al. 2010; Pérez-Montarelo et al. 2012). This approach was used recently in bovine fetal tissues (cerebrum, liver, and muscle) from beef cows underfed or fed to meet estimated dietary energy requirements from breeding to Day 50 of gestation (Diniz et al. 2021b). The greatest changes in target-gene and TF expression (e.g. PPARA, SREBF2; Table 2) due to underfeeding were detected in the liver (2319 unique differentially co-expressed gene pairs; Diniz et al. 2021b), an organ with a central role in fetal metabolism (Battaglia and Meschia 1978). Analyses also identified TF that repress gene transcription in muscle tissue along with an over-representation of co-expressed genes in nutrient-signaling pathways such as the one encompassed by PI3K-AKT-mTOR. Some TF that function as transcriptional repressors were negatively correlated with genes in these nutrient-signaling pathways, suggesting that underfeeding led to an overall repression in muscle formation and differentiation (Diniz et al. 2021b). These data provided mechanistic information to explain the reduction in the number of muscle fibres and muscle mass in beef calves exposed in utero to underfeeding between mid- and late gestation (Paradis et al. 2017).
Developmental programming and nutrigenomics
A growing body of research is underscoring how specific nutrients (e.g. ‘methyl donors’), nutritional management (e.g. dietary energy density), or environmental temperature (e.g. heat stress) at various stages of pregnancy can lead to alterations in cellular ‘epigenetics’ in the offspring of livestock (Elolimy et al. 2019; Caton et al. 2020; Dunislawska et al. 2022; Reynolds et al. 2022). Epigenetics is a key biological mechanism underlying the phenomenon of ‘developmental programming’ or ‘fetal programming’, a concept based on the idea that maternal stress, e.g. over- or under-nutrition, during critical developmental windows of the animal can have short- and long-term, positive or negative consequences for the offspring (Caton et al. 2020). Because the regulation of normal growth, development, and nutrient utilisation in mammals are programmed in utero and affect the postnatal physiology of the animal, perturbations of the maternal environment during gestation can affect fetal growth and development through epigenetic modifications (Tiffon 2018; Caton et al. 2020). In the case of poultry, because the embryo develops outside the mother factors such as incubation temperature, humidity, light, and in ovo treatments such as specific nutrients can affect normal development before hatching (Saeed et al. 2019; Dunislawska et al. 2022).
Epigenetics, the control of transcription through various chemical compounds added to the DNA or histone proteins, results in various ‘epigenomic marks’ that change the spatial conformation of chromatin (Tiffon 2018). As such, these marks can lead to compacting or opening of the chromatin complex and either prevent or allow TF binding to the DNA. Examples of epigenetic modifications include the following: DNA methylation, addition of methyl groups to cytosine on DNA, resulting in decreased transcription; and histone acetylation, addition of acetyl groups to lysine residues on histones resulting in increased transcription; and non-coding RNA, functional RNA molecules not translated into protein that modulate chromatin structure and function (Tiffon 2018). Work with ruminants and poultry in the past 10 years has confirmed the role of nutrition or other environmental factors (e.g. heat stress) on developmental programming of tissues such as brain, skeletal muscle, adipose, and the mammary gland, with pronounced consequences for the offspring (Table 2). With the increased pressure to develop efficient and sustainable approaches to raise livestock as a consequence of the expected increase in population growth worldwide (Caton et al. 2020), a greater focus on the role of nutrition and climate change before birth on efficiency of nutrient use by the offspring could prove critical.
Perspectives
As new technologies for high-throughput data generation become more affordable and user-friendly, ‘open-source’ statistical and bioinformatics tools are developed [Bioconductor suite; (Gentleman et al. 2004; Huber et al. 2015)], a growing number of animal scientists (especially younger generations) will undoubtedly embrace the systems approach; whether it is to address a nutrigenomics goal or to gather fundamental information regarding the physiology of the animal. Although genotype-to-phenotype research will continue to be important as we move towards greater understanding of functional elements in the genome of livestock species (Harrison et al. 2021), as those efforts continue to generate information, it will become more important to increase our understanding of the potential effects of management (e.g. nutrition, feed availability) and climate change on the phenome. Such a task, clearly, will be challenging; however, available data suggest that the nutrigenomics effects of dietary compounds are real and could, in the long-term, help fine-tune dietary requirements (under different environmental conditions) to optimise production and health of livestock.
Data availability
Data sharing is not applicable as no new data were generated or analysed during this study.
Conflicts of interest
The author declares no conflicts of interest.
Declaration of funding
The research described in this paper did not receive any specific funding.
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