| Literature DB >> 30266097 |
Lisa E Wagar1, Robert M DiFazio2, Mark M Davis3,4,5.
Abstract
There are fundamental differences between humans and the animals we typically use to study the immune system. We have learned much from genetically manipulated and inbred animal models, but instances in which these findings have been successfully translated to human immunity have been rare. Embracing the genetic and environmental diversity of humans can tell us about the fundamental biology of immune cell types and the elasticity of the immune system. Although people are much more immunologically diverse than conventionally housed animal models, tools and technologies are now available that permit high-throughput analysis of human samples, including both blood and tissues, which will give us deep insights into human immunity in health and disease. As we gain a more detailed picture of the human immune system, we can build more sophisticated models to better reflect this complexity, both enabling the discovery of new immunological mechanisms and facilitating translation into the clinic.Entities:
Mesh:
Year: 2018 PMID: 30266097 PMCID: PMC6162943 DOI: 10.1186/s13073-018-0584-8
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
An overview of animal models for translational studies for human immunology
| Model system | Advantages | Disadvantages | Suggested model use | Translatability | Environmental factors |
|---|---|---|---|---|---|
| Conventional inbred, wildtype, and knock-out mice | • Consistency | • Poorly represent many human diseases | Fundamental immunology, pre-clinical work in some cases | + | Co-housing and diet may impact microbiota |
| Next-generation mice (humanized through genetic and/or tissue engineering) | • More potential for translation to humans | • More expensive than conventional mice | Single-organ infections, such as liver cancer, especially metastasis; individual aspects of an immune response, such as Ig or HLA loci | ++ | Similar factors to conventional mice |
| Nonhuman primates (NHP) | • Human-like model | • Larger MHC than humans (most species) | HIV, tuberculosis, many arthropod-borne viruses | ++/+++ | Typically not co-housed, but length in colony may impact response to perturbations |
| Other animal models | May model particular diseases more accurately than mice or NHP | Reagents limited or non-existent | Non-immunologic disease models, transmission studies (e.g., ferrets for influenza transmission studies recapitulate many features of human infection) | Up to +++ | Many, as typically are not bred for research |
Translatability (from weak (+) to strong (+++)) refers to the relative frequency of successfully identifying an immune phenomenon in the model system that closely mimics the relevant disease or condition in humans
HLA human leukocyte antigen, Ig immunoglobulin, MHC major histocompatibility complex
Fig. 1The wealth of human data for translational immunology. Consented cohorts of healthy donors and people in immune-perturbed conditions such as during illness, treatment, and immunization can provide insights into human immunity and disease-specific immune responses. Technologies now exist that allow us to study numerous sample types, including blood, tissue biopsies, saliva, urine, and feces, among others. Such samples are usually processed and banked, then run all together to limit batch variation. Depending on the questions to be answered, various assays can be run individually or in combination to gain insights into health or disease processes. These can include immune-cell-specificity assays (restimulation, tetramer staining, or repertoire analysis), broad phenotyping (flow and mass cytometry, RNAseq), functional readouts (cytotoxicity, metabolite detection, proliferation, or differentiation), or environmental contributions (microbiome or virome)
Fig. 2The shifting paradigm of translational human models. In the past, animal models were almost exclusively used for pre-clinical analyses, with limited success in translation to humans. NHP often served as a more relevant model for safety testing prior to attempts to test in humans, although on rare occasions this led to unanticipated and devastating effects in human trials. Currently, more strategies are incorporated into translational models, including sampling from people for in vitro assays. The data derived from human ex vivo and in vitro testing is often used to inform animal models and vice versa. As more high throughput data are made publicly available, computational models can contribute to the translational effort as well. In the future, it may be possible to bypass animal models entirely as more information is gathered from a variety of people of diverse health, genetic, and environmental backgrounds. As we gather broad data from human cohorts, our hope is that our predictive abilities and computational models will improve such that we no longer rely on animal models, although they will undoubtedly continue to play at least a supplemental role in translation