History
Although work on natural populations had been done previously, it is acknowledged that the field was founded by the English biologist E.B. Ford (1901–1988) in the early 20th century. Ford started research on the genetics of natural populations in 1924 and worked extensively to develop his formal definition of genetic polymorphism.Ford E.B. 1940. Polymorphism and taxonomy. In Huxley J. ''The new systematics''. Oxford University Press. Ford's magnum opus was '' Ecological Genetics'', which ran to four editions and was widely influential.Ford E.B. 1975. ''Ecological genetics'', 4th ed. Chapman and Hall, London. Other notable ecological geneticists include R. A. Fisher and Theodosius Dobzhansky. Fisher helped form what is known as the modern synthesis of ecology, by mathematically merging the ideas of Darwin and Mendel. Dobzhansky worked onResearch
Inheritance and Natural Selection
Ecological genetics is closely tied to the concept ofIndustrial Melanism in Peppered Moths
Polygenic Selection
Research on ecologically important traits has traditionally focused on single alleles. However, in many cases, phenotypes are controlled by multiple alleles. Complex traits, such as traits involved in morphology, behaviour, life history or disease are often controlled by multiple alleles and are therefore polygenic traits. Through the use of genome-wide association studies (GWAS), researchers are able to scan genomes and identify loci associated with complex traits. Observing changes in allele frequency across a population can provide insight into polygenic adaptation. A major line of evidence for polygenic traits can be drawn from artificial selection. Many experiments involving artificial selection have shown that traits often respond rapidly and steadily, suggesting they are influenced by many genes with small effects. For example, between 1957 and 2001, the weight of eight-week-old chickens increased by 4 times. This sustained improvement over time wouldn’t make sense if only a few alleles of large effect were responsible for this phenotype, as the alleles would rapidly reach fixation, causing phenotypic change to plateau. The prevalence of traits with a polygenic basis poses some issues when researching traits and adaptation in natural populations. With complex traits, it may be hard to separate the effects of genes, environmental factors, and randomTechnology
Ecological genetics combines various technologies to study the genetics underlying adaptive behaviours in populations.Animal Tracking Technologies
Animal instrumentation provides different types of biological information, involving migration patterns, habitat selection, energy spent and temporal patterns, which are used to study population dynamics. These tools include: * Heart-rate monitors: Assesses stress levels. * Accelerometers: Measures acceleration of an object for activities such as diving or foraging. * Acoustic recorders: Captures communication between organisms. * Video recorders: Observes foraging behaviour, habitat interface and social interaction. * Temperature loggers: Devices that measure body temperature patterns. * Automated image-based tracking: Tracks behavioural patterns, social interactions and predator-prey interactions.DNA Sequencing
Once data is collected using the animal tracking technologies, DNA sequencing technologies are used to analyze the genetic composition of the studied populations. DNA sequencing provides insight into the relationship between behaviour, migration patterns, and gene flow.SNP Genotyping
Single nucleotide polymorphism (SNP) genotyping is a technique used to look at the nucleotides at specific loci, used as a marker for genetic variation in a population. SNP genotyping allows researchers to observe changes in genotype frequencies throughout different habitats. One example of the application of SNP genotyping is the ecological genetic study by Park et al. on the Rocky Mountain Apollo butterfly (''Parnassius smintheus''). The researchers performed a removal experiment on certain patches to see the effect of population reduction on the neighbouring patches. 4,830 butterflies were removed from two specific patches, P and Q over the course of eight years. They genotyped a sample of the population from patch P and Q over the years, as well as samples from neighbouring patches to assess the impact of the population reduction on genetic composition. They used 152 SNP loci to study the genetic variation in the populations. When analyzing the SNPs, the researchers noticed there was no significant change in mean allelic richness or expected heterozygosity between populations despite constant removal. The percentage of loci out of Hardy-Weinberg equilibrium and percentage of SNP pairs in linkage disequilibrium increased with each year, suggesting demographic changes may have influenced the population. Other ecological genetics studies have used SNP genotyping to understand the relationship between genetic diversity in a population and environmental pressures.Environmental DNA
Environmental DNA (eDNA) is genetic material that is collected from the environment, rather than directly from an organism. In ecological genetics, eDNA provides a non-invasive way to assess variation in population structures, detect species presence, and monitor gene flow or diversity in natural habitats. This makes eDNA a valuable tool in modern ecological genetics, becoming especially useful when direct sampling is impractical or invasive. Tissue based analysis and eDNA methods both consistently produce similar allele frequencies and genetic variation patterns within and between populations. This reinforces the reliability of eDNA as an alternative to the traditional way of sampling techniques. The ability to assess ecological and evolutionary processes across multiple levels of biological organization, where individuals to entire ecosystems can be studied, offers a powerful approach to understanding biodiversity and genetic dynamics. As a result, eDNA is useful in detection of species but can further be utilized in exploring how evolutionary processes enable genetic patterns in shaping natural systems.Generative AI and Ecological Genetics
Generative artificial intelligence (AI) refers to models that are capable of generating new content, such as text, images, data, based on patterns learned from existing information. These models are being investigated as potential complementary tools in ecological genetics, where they may support research related to evolutionary processes and environmental interactions. By learning from large data sets, generative AI can be applied to predict or classify outcomes, which may include modeling scenarios such as genetic divergence, speciation, or genetic flow under various ecological condition. In some contexts, agent-based and generative models have been used to simulate patterns such as adaptive radiation, contributing to hypothetical ecological populations. Generative models also have been used to explore relationships between complex traits and environmental factors, potentially linking phenotypic traits to ecological function and evolutionary patterns. In addition, they may assist in addressing missing data issues resulting from limited sampling, species, rarity, or constraints in data collection methods.Applications and Related Fields
Ecological genetics has important applications in several fields and helps address practical problems. One major applied area is conservation biology, where principles of ecological genetics inform the management of endangered species and biodiversity. Conservation genetics – a subfield that emerged in the 1980s – draws on ecological genetic studies to maintain or increase the genetic diversity of small populations, thereby enhancing their ability to adapt to changing environments. For example, knowing the extent of local adaptation in different populations of a species can guide translocations or captive breeding, ensuring that released individuals have genetic makeup suited to their habitat. Conservation biologists also use molecular markers (like those used in ecological genetics research) to monitor inbreeding levels, gene flow between habitat fragments, and adaptive variation (such as disease resistance genes) in vulnerable wildlife populations. By integrating genetic data into species vulnerability assessments under climate change, researchers can better predict which populations have the evolutionary potential (adaptive genetic variants) to cope with new conditions. For instance, Razgour et al. (2019) showed that accounting for adaptive genetic variation in climate models altered projections of range loss for bat species, emphasizing the need to preserve locally adapted gene complexes to facilitate “evolutionary rescue” under climate change. Another application is in agriculture and medicine, specifically in understanding and slowing the evolution of pesticide and antibiotic resistance. Pests and pathogens are essentially natural populations undergoing strong selection from human-used chemicals, making this a direct case of ecological genetics at work. Studies of insect pest populations have documented how genetic variants conferring pesticide resistance can increase in frequency within just a few generations of pesticide application. Similarly, bacteria exposed to antibiotics evolve resistance through selection of resistant mutants or gene transfer of resistance elements. By applying ecological genetic principles, scientists and policymakers devise strategies to manage resistance evolution – for example, using refuges of non-treated crops to maintain susceptible alleles in pest populations (diluting resistance genes), or cycling drugs to prevent any one resistance genotype from becoming fixed. These strategies stem from models of gene frequency dynamics in populations, a core subject of ecological genetics. The emergence of resistance is also a vivid reminder that evolutionary change can be very rapid when selection pressures are intense, underscoring the practical importance of understanding genetics in the wild. Ecological genetics has significant overlap with and has given rise to several related disciplines. Molecular ecology is one such field – it uses molecular genetic tools (DNA sequences, molecular markers) to address ecological questions, often in natural populations. In many respects, molecular ecology can be seen as the modern extension of ecological genetics, adding the ability to directly analyze DNA to the existing toolkit of the field. The boundaries between the two are fuzzy; for instance, a study on the population structure and local adaptation of a fish species using genome sequencing could be called molecular ecology, ecological genetics, or both. Another related area is evolutionary ecology, which generally focuses on how evolutionary processes (like adaptation, competition, coevolution) shape ecological patterns. Ecological genetics can be considered a subset of evolutionary ecology that zeroes in on genetic mechanisms. Indeed, some authors treat the terms as nearly synonymous. In recent years, the term ecological genomics or environmental genomics has gained usage for studies that employ whole-genome approaches to multiple individuals from natural populations, linking gene function to ecological context. For example, researchers might sequence the genomes of many individuals of a plant species across an environmental gradient to find gene variants associated with climate adaptation (a genomic scan for selection). This approach builds on ecological genetic principles and takes advantage of high-throughput sequencing technology. Fields like landscape genetics (which studies how geographical features affect gene flow and genetic structure) and genetic monitoring (tracking genetic metrics of populations over time) also owe much to the integration of ecology and genetics pioneered by ecological genetics. Through these related fields, ecological genetics contributes to our understanding of broad issues such as how species will adapt (or fail to adapt) to global change, how new species arise (speciation can involve divergent adaptation in different environments), and how humans can better conserve and manage the Earth's biota. It remains a critical link between the laboratory and the field, bringing rigorous genetic analysis to the study of natural populations and thereby enriching both evolutionary theory and ecological management.Challenges and Limitations
Ecological genetic research faces several challenges and limitations, many of which stem from the complexity of studying evolution in nature. One practical challenge is that such work often requires long-term studies and extensive data collection. Detecting evolutionary changes or genetic shifts in wild populations may demand monitoring across multiple generations – sometimes decades – which can exceed the typical duration of research funding or careers. Some famous study systems (for example, butterfly mimicry) have been observed for over a century, yet still yield new insights. Sustained support (financial and logistical) is needed to maintain experiments like field enclosures, pedigree tracking, or multi-year genome sequencing efforts in the wild. Historically, Ford and colleagues noted that obtaining continuous funding for such “outdoor genetics” was difficult, though today the value of long-term ecological research is more widely recognized. Another challenge is the requirement for expertise across disciplines. Ecological geneticists must be well-versed in ecology (to understand the organism’s environment and natural history) and genetics (to design crosses or molecular assays), as well as statistics and bioinformatics (to analyze complex data). This interdisciplinary nature can be demanding – experiments must be carefully designed to isolate genetic effects amid environmental variation, and analyses must distinguish genetic changes from random demographic fluctuations. For instance, separating the signal of natural selection from genetic drift or gene flow in a wild population’s data can be statistically tricky, especially for polygenic traits where changes are subtle. The rise of genomic data has, in some ways, amplified this issue: huge numbers of genetic markers provide power to detect selection, but also increase the risk of false signals if not properly controlled. Ecological context is crucial; failing to account for factors like population structure or seasonal environmental changes can lead to misattributing causes to observed genetic patterns. A limitation that became apparent in the mid-20th century was the difficulty of detecting balanced polymorphisms and their maintaining forces. By definition, if multiple alleles are maintained by selection (e.g. heterozygote advantage or frequency-dependent selection), their frequency might remain stable over time, making selection hard to detect without perturbation experiments. Ecological genetics often relies on observing changes (e.g. allele frequency shifts after an environmental change) or differences between populations. When selection maintains a status quo, it can be invisible to a short-term observer. Experimental manipulations – such as altering predation pressure or transplanting individuals to new environments – are sometimes needed to reveal these cryptic selective forces. Despite the challenges, modern techniques have greatly expanded the toolkit available, mitigating some limitations. High-throughput DNA sequencing and advanced statistical models allow researchers to scan entire genomes for selection signatures that would have been impossible to discern with earlier methods. Common garden and reciprocal transplant experiments can control for environmental variation to tease out genetic differences. Moreover, collaborative projects and data-sharing mean that even if individual studies are short-term, data can be combined or continued by others (for example, the LTEE – long-term evolution experiment – withSee also
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Further reading
* Cain A.J. and W.B. Provine 1992. Genes and ecology in history. In: R.J. Berry, T.J. Crawford and G.M. Hewitt (eds). ''Genes in ecology''. Blackwell Scientific: Oxford. Provides a good historical background. {{Authority control