Evolution of Genetics Organisations’ Strategies through the Implementation of Genomic Selection: Learnings and Prospects
Abstract
:1. Introduction
- define the goal–what aspects of performance or traits are important, and how we wish the change any or all of them: referred to as defining the breeding objective
- identify the individuals with superior genetic makeup for the breeding objective (i.e., for the traits in the objective): referred to as predicting breeding value
- selecting the individuals with superior genetic makeup and mating them in an optimal way to produce progeny
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- accuracy of estimation of genetic merit (or breeding value) increases with increasing size of the reference population, but with diminishing returns to scale,
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- accuracy of estimation of genetic merit (breeding value) is higher for traits with higher heritability,
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- accuracy is affected by the level of relatedness of individuals within the reference population and between the reference population and the rest of the population–higher relatedness enabling higher accuracy, and
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- the reference population needs to be maintained in terms of its relatedness to the current active population–for a population undergoing selection, the accuracy available from the reference population declines over time [6,7] (noting that drift and mutation will also contribute to reduction in relatedness over time).
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- Meuwissen et al. [8] set out the two opportunities presented by genomic selection:
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- the accuracy of prediction of genetic merit that is possible, including for individuals with and without phenotypes, with tincreased accuracy providing scope for more rapid genetic improvement, and
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- the decoupling of measurement and selection. This provides two sorts of opportunities:
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- to evaluate large numbers of individuals at the price of genotyping alone
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- to evaluate selection candidates for traits that cannot be measured on live animals or, or can only be measured some time after selection would ideally occur
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- Methods and tools for analysis of genomic data, both for genomic selection and more broadly for exploration of the genomic architecture of traits
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- Theoretical and more recently experimental investigation of changes at the gene or SNP level under genomic selection
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- Theory and tools for use of genomic data jointly for selection and management of genetic variation
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- Design of genomic reference populations on both within- and across-population basis (where population can be breed, region or country of origin)
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- Pre- and post-implementation scoping and reporting of implementation in a wide range of species, including animals (terrestrial and aquatic), plants, insects, and microorganisms
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- Traits, and methods of phenotyping, including production (both output and input), product quality, health- and disease-related, metabolic, and behavioural traits
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- and Evaluation of breeding programs for effectiveness and economic efficiency, including for economically and/or environmentally challenging situations
2. Materials and Methods
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- how has genomic selection been implemented in practice?
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- with what results so far and what impacts on how genetic improvement is being practiced?
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- Whether single enterprise or business, or including or servicing multiple enterprises or businesses. For example, an individual beef cattle stud is likely to be smaller in economic scale (e.g., turnover) than a breeding company, even though the number of animals (females) in the breeding population being managed may be similar. A breed association will provide some set of services to multiple such enterprises.
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- Whether directly involved in collecting data and/or making selection decisions, or providing services supporting such decisions. Breeders and breeding companies (or programs) are directly involved in such decisions, whereas breed associations and national genetic evaluation systems provide supporting services for those decisions.
- What level of adoption or utilisation of genomic selection, i.e., genotyping for prediction of genetic merit, has been reached in your organisation –perhaps simplest answered as what proportion of selection candidates are genotyped, and in the case of a multi-stakeholder situation, what proportion of breeders or producers are genotyping some or all candidates for selection?
- Has your organisation assisted with the uptake of genotyping–for instance via contribution to the cost of genotyping?
- Has your organisation reviewed or changed breeding goals or indexes either as part of a planned process of implementation of genomic selection, or simultaneous with it?
- If so, has there been an increase in the number of traits being evaluated?
- Has your organisation invested (or co-invested) in any specialised or designed phenotyping projects, either with members or separately?
- Does your organisation provide any incentives for phenotyping, whether broadly or for specific traits?
- Within the population you or your members work with, is there any evidence of changes of parameters of the response equation, such as:
- Reduction in average age of sires
- Increase in use of elite males and/or females via Artificial Insemination (AI) and Embryo Transfer (ET), partly or completely focussed on genotyped animals
- Increase in average accuracy of selection (in a general sense, this could reflect the average accuracy of genomic BVs in animals in the population)
- Increase(s) in rate of genetic progress, whether for some individual traits and/or overall merit index
- Changes in direction or rate of change in particular traits (an example I will be discussing is that of eating quality (EQ) in terminal sire sheep in Australia–where previously the genetic trend was unfavourable, driven by genetic correlations between EQ and traits contributing to efficiency of lean tissue growth (Lean Meat Yield or LMY), but now the availability of genomic predictions for EQ as well as for LMY has resulted in reversal of the genetic trend for EQ
- Can you comment on whether, and if possible to what extent, your organisation has drawn on government or industry funds in any aspect of the introduction of genomic selection? Additionally, if you have, do you anticipate that continuing into the future?
- Has your organisation changed its strategy as a result of or in response to, the introduction of genomic selection? If possible, can you briefly describe the key changes underway?
3. Results and Discussion
- What level of adoption or utilisation of genomic selection, i.e., genotyping for prediction of genetic merit, has been reached in your organisation–perhaps simplest answered as what proportion of selection candidates are genotyped, and in the case of a multi-stakeholder situation, what proportion of breeders or producers are genotyping some or all candidates for selection?
- 2.
- Has your organisation assisted with the uptake of genotyping–for instance via contribution to the cost of genotyping?
- 3.
- Has your organisation reviewed or changed breeding goals or indexes either as part of a planned process of implementation of genomic selection, or simultaneous with it?
- If so, has there been an increase in the number of traits being evaluated?
- 4.
- Has your organisation invested (or co-invested) in any specialised or designed phenotyping projects, either with members or separately?
- 5.
- Does your organisation provide any incentives for phenotyping, whether broadly or for specific traits?
- 6.
- Within the population you or your members work with, is there any evidence of changes of parameters of the response equation (with possible examples listed):
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- the dramatic change in genetic trend for traits related to meat eating quality in sheep in Australia [20], reversing previous unfavorable correlated responses to selection for growth and carcass leanness,
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- the equally dramatic reversal of genetic trends for fertility in dairy cattle, which while not solely due to implementation of genomic selection, have been enhanced by it [Paul Van Raden, Andrew Cromie, Matt Shaffer–pers. comm.]
- 7.
- Can you comment on whether, and if possible to what extent, your organisation has drawn on government or industry funds in any aspect of the introduction of genomic selection? Additionally, if you have, do you anticipate that continuing into the future?
- 8.
- Has your organisation changed its strategy as a result of or in response to, the introduction of genomic selection? If possible, can you briefly describe the key changes underway?
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- Greater use of young sires, more data capture from multipliers, and development of new traits
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- Having greater scope to control direction is invigorating, and we have developed better understand of both the technology and our choices, leading to increased confidence in what we are aiming for and doing
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- There is greater urgency to identify traits that need to be recorded and included in the evaluation
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- We are reviewing our business structure aiming to get the best out of the technology
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- We are developing new product lines–and can do so rapidly with genomics; and moving to having a genotype-only multiplier tier in our business
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- We are focusing more on potential new traits, especially around easy care attributes and fertility
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- Genomic selection has bought strategies related to genetic improvement more to the fore across our breed, and we are seeing increased engagement with our R&D programs; building strong Board understanding and support has been critical, expanding our range of collaborative R&D and strengthening our relationships with genotyping providers have been key strategic initiatives
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- Minimizing costs of entry to genetic evaluation, in order to encourage participation–and phenotyping–has been an important initiative; and being open to data from a wider range of sources or partners have been important
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- Managing the genomic pipeline has been critical, in parallel with faster development of new traits, increasing frequency of evaluations, being actively involved in chip design, and actively initiating R&D (rather than waiting for it to emerge from the R&D community) have all been significant strategic developments for our organization–aiming to lead rather than follow
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- We’re now working with multipliers to increase accuracy of data collection for traits that can be recorded in that tier, and investing in new phenotyping, such as individual feed intake
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- There has been a redirection of funds internally towards phenotyping, including phenotyping in end-users’ operations; defining our phenotyping strategy–what data to collect, and how to collect it most efficiently, is now central
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- Big changes are happening in our breeding program–making much more use of existing phenotypes, and this is stimulating re-defining our breeding direction; the innovation cycle is accelerating
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- We’re investing heavily in evaluating the technology, but we anticipate significant increase in our investments in phenotyping and genotyping
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- Genotyping in the commercial level is being increased, this is changing our relationship with those stakeholders
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- Our overall strategy has not changed, but we have identified new R&D
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- We are seeing increased use of sexed semen since the introduction of genomics, with producers making assigning females to different roles (breeding replacements, or breeding cross-bred progeny) based on their genetic merit
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- Genotyping is helping increase engagement across the whole population, as well as bringing new opportunities such as breeding for reduced methane
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- Investment in new high-value phenotypes is now clearly part of our R&D strategy, and the partnership with breeds becomes more important
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- We are thinking more and more about “where will data come from in the future?”, and are becoming more strategically engaged in managing data–what traits, ensuring quality of data
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- Data from research projects is now potentially shared with industry, and we are developing new evaluations based on research data
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- In the breeding programs where breeders have a role in design, there is heavier use of young males
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- firstly, relating to elements of the response equation
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- R is response to selection
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- i is standardized selection differentia
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- rIT is the correlation between the index on which selection is based on the breeding objective
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- T is the breeding objective
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- L is the generation interval
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- Secondly, relating to overall strategy, a number of themes are clear:
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- phenotyping becomes a central concern: what traits to collect data on, how to collect the data (i.e., what individuals, what equipment, what data sources), and how to fund the phenotyping effort.
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- What opportunities are most significant for an individual organization to some extent depends on their pre-existing breeding program design. In broad terms, the first opportunity grasped seems to be to make more use of younger individuals, followed by the opportunity to re-balance selection.
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- All organisations had participated in, or initiated, an R&D phase aimed predominantly at validation–discovering how genomics works and what actual changes are seen. However, importantly, this phase seems to have been relatively short, at least as purely for validation: quite rapidly, new genotyping and phenotyping effort becomes simply building gemomic reference data, and in most cases, expanding the traits being recorded. Extending this point, the organisations had essentially moved to having a continuing “R&D core” in their operations.
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- This last point in turn connects with further strategic changes: funding the phenotyping becomes a core business challenge, including to what extent organisations draw on or partner with industry or government funding; and, new data sources and hence potentially new business relationships are considered. This is most obvious in initiatives to capture more data from outside the breeding nucleus (for example, making use of data collected in the multiplier or even commercial tiers), and formalizing contractual relationships to support this.
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- A number of the organizations interviewed were beginning to evaluate opportunities to increase scale of leveraging from the nucleus–mainly via changed involvement with multipliers, exploiting the ease and in some cases lower cost of genomic evaluation.
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- A number of organisations reported use of approaches to managing inbreeding via some form of implementation of Optimal Contributions theory, and several stressed that such was an essential component of implementation of genomic selection. Reflecting the more precise knowledge of relationships available using genomic information, such information can inform design of the sampling for reference phenotyping and genotyping, and the mating design used in the nucleus [Mark Henryon, Anders Vernesen, Klara Verbyla, Brian Kinghorn—pers. comm.].
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- Finally, while this was not a direct question, it was clear that in some instances, implementation of genomic selection benefited from and also stimulated synergies with other areas of R&D. A familiar example (to the author) is the interaction between meat science and genetics in the Australian sheepmeat industry R&D–meat science assisted with identification and definition of priority traits to collect phenotypes on, genetic analyses underpinned by genomic information shed new light on variation and co-variation in different aspects of meat quality and eating quality, and the joint focus helped raise industry awareness of opportunities for wide-scale change in product quality and offerings at the consumer level [26]. It seems likely that such synergies will grow–the need to capture the most useful phenotypes to enable appropriately balanced selection, will stimulate new interactions, with the growing interest in emissions reduction and in disease resistance being obvious areas for such interactions [22].
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- Phenotyping and genotyping, to generate and maintain the genomic reference population, cost money
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- One of the attractions of genomic selection is that such evaluation effort can be focused on a relatively small number of individuals per year (there is no precise formulation to define the number, but around 1–2000 new individuals recorded and genotyped per year will provide a strong basis for selection)
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- Organizing the breeding program to exploit the additional accuracy generated by knowledge of the genomic relationships, and aim to grow commercial scale based on faster and more valuable genetic progress. This requires a level of “whole population” coordination, to generate maximum value from the program
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- Developing medium- or longer-term investment relationships with government and/or benevolent investors–drawing on justification from the scale and distribution of benefits that would not otherwise accrue to the wider farming population.
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- They are by design reflective of the genetic variation in the population of interest, and so any finding is “validated” for that population, and for the medium-term future (in comparison with doing experiments on samples that reflect current commercial generations but previous genetic generations)
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- Adding treatments–comparisons of diet or drug regime, for example–can be done in a balanced manner, at whatever scale is affordable, which effectively leverages the overhead costs of the program across more R&D outcomes
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- Additionally, by automatically including both a “genetic” and a “non-genetic” dimension, they assist researchers and industry to better appreciate the joint influence of these two dimensions on what can be achieved in terms of performance, including obviously the extent of any genetics-by-environment and/or genetics-by-management interactions.
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- Firstly, industry and the broader community will come to see genetic improvement as a more powerful, or more precisely rapid, means of change than has been generally appreciated. Despite the fact that changes under selection have been dramatic over periods of one or more decades, e.g., [29], and can mean continuous productivity or profitability improvement that more than matches the cost-price squeeze [30], genetic improvement is still widely spoken of as slow and steady, with the note that it is cumulative added as a generally misunderstood “add-on”. However, when the facts of what can be achieved become more widely appreciated, there seems no reason that focus will not increasingly be paid to how much to invest in phenotyping, which is the fuel of genomic selection. The transformation of dairy breeding–completely reversing previous trends for fertility, the impact of selection for disease resistance in several species [22], and the dramatic increase in scale already apparent in some industries [Matt McDonagh, pers. comm.], signal a technology with rapid, immediate and valuable effect.
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- A specific example is the appreciation that genetic improvement can contribute to reduced emissions in agriculture, and can do so without requiring a permanent treatment cost (of some mitigant) at the animal level [31].
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- Secondly, the appreciation that essentially any problem can be tackled provided appropriate phenotyping is in place, coupled with the “naturalness” of change via genomic selection, could significantly improve confidence that challenges of sustainable food production with minimal undesirable side-effects can be overcome. This will stimulate more thinking about the true, or complete, breeding goals–expanding beyond simply producing more of the main product(s) to much more “holistic” goals incorporating product, product quality, reduction in disease, reduced environmental footprint, etc. [32], consistent with the more comprehensive approach to valuing changes that has been labelled “Doughnut Economics” [33].
4. Conclusions
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- Increased accuracy of selection (noted above) and the ability to re-balance selection, both contribute to the opportunity to make genetic progress more valuable–both in terms of speed but also in economic value of each unit of change. (In terms of the response equation, this simply means that either i/L and/or riT.sigmaT can be increased, the first ratio expressing speed of change, and the second more the direction and value of change).
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- New challenges emerge, or become more obvious:
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- definition of breeding goals becomes even more important both because genomic selection offers the “opportunity” to move faster in the wrong direction, and at the same time offers scope to improve traits previously intractable to selection
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- investment in phenotyping becomes more obviously the underlying rate-limiting parameter, in turn highlighting any challenges in return on investment for breeders or other stakeholders, and potentially requiring new investment relationships, particularly in extensive, multi-stakeholder industries
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- Synergies with other disciplines: genomic selection leverages data, and so the more data that is relevant to income and cost in the species production system the better–meaning that drawing on knowledge of a range of disciplines will almost invariably increase value creation.
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- The significance of the observation that genomic selection decouples recording from selection takes time to be appreciated, but is profound. As that appreciation grows, the opportunities in terms of both what can be changed through genetic improvement, and the rate at which those traits can be changed, are very clearly re-energising and engender a sense of excitement about opportunities. Genetic improvement can be seen more and more clearly as a “design” enterprise [34], design in the sense of being able to think expansively about what changes are possible.
Funding
Acknowledgments
Conflicts of Interest
Appendix A
Appendix B
Breeders | |
Ian Locke, Wirruna Poll Herefords | https://wirruna.com/ |
Tom Gubbins, Te Mania Angus | https://www.temaniaangus.com/ |
Lucinda Corrigan, Rennylea Angus | https://www.rennylea.com.au/ |
Alf Collins, CBV Brahmans | https://cbv.com.au/ |
Mark Mortimer, CentrePlus Merinos | https://www.centreplus.com.au/ |
Tom Bull, Lambpro | https://www.lambpro.com.au/ |
John Keiller, Cashmore-Oaklea | https://www.cashmoreoaklea.com.au/ |
Breed Associations: | |
Andrew Byrne and Peter Parnell, Angus Australia | https://www.angusaustralia.com.au/ |
Kelli Retallick and Steve Miller (now AGBU), Angus Genetics Inc. | https://www.angus.org/agi |
Matt McDonagh, Australian Wagyu Association | https://www.wagyu.org.au/ |
Breeding Companies or Projects: | |
Anders Vernesen and Mark Henryon, Danish Agriculture nd Food Council–re Danbred | https://danbred.com/about-us/ |
Pieter Knap, PIC | https://www.pic.com/ |
Matthew Cleveland, ABS Global | https://www.absglobal.com/ |
Lewis Rands, Peter Kube and Klara Verbyla, re SALTAS | https://tassalgroup.com.au/our-planet/our-operations/ |
Rachel Hawken, Cobb-Vantress | https://www.cobb-vantress.com/ |
Tony McRae, Tree Breeding Australia | http://www.treebreeding.com/ |
Wallace Cowling, Faba bean breeding | https://research.aciar.gov.au/rapidcookingbeans/news/brio-news-release |
National evaluation centres and organisations: | |
Andrew Cromie, Irish Cattle Breeding Federation | https://www.icbf.com/ |
Laurent Journaux, INRAE and IDELE–now GenEval | https://www.geneval.fr/english |
Hamish Chandler, Meat and Livestock Australia | www.mla.com.au |
Joao Durr, Council on Dairy Cattle Breeding | https://www.uscdcb.com/ |
Mark Thallman, USDA Meat Animal Research Center | U.S. Meat Animal Research Center: USDA ARS |
Matt Shaffer, DataGene | https://datagene.com.au/ |
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Single Enterprise | Multiple Enterprise | |
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Decision maker | Breeders Breeding Companies/projects | |
Decision support | Breed associations National evaluation |
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Banks, R. Evolution of Genetics Organisations’ Strategies through the Implementation of Genomic Selection: Learnings and Prospects. Agriculture 2022, 12, 1524. https://doi.org/10.3390/agriculture12101524
Banks R. Evolution of Genetics Organisations’ Strategies through the Implementation of Genomic Selection: Learnings and Prospects. Agriculture. 2022; 12(10):1524. https://doi.org/10.3390/agriculture12101524
Chicago/Turabian StyleBanks, Robert. 2022. "Evolution of Genetics Organisations’ Strategies through the Implementation of Genomic Selection: Learnings and Prospects" Agriculture 12, no. 10: 1524. https://doi.org/10.3390/agriculture12101524
APA StyleBanks, R. (2022). Evolution of Genetics Organisations’ Strategies through the Implementation of Genomic Selection: Learnings and Prospects. Agriculture, 12(10), 1524. https://doi.org/10.3390/agriculture12101524