| Literature DB >> 28603140 |
Abstract
Current pharmacological options for type 2 diabetes do not cure the disease. Despite the availability of multiple drug classes that modulate glycemia effectively and minimize long-term complications, these agents do not reverse pathogenesis, and in practice they are not selected to correct the molecular profile specific to the patient. Pharmaceutical companies find drug development programs increasingly costly and burdensome, and many promising compounds fail before launch to market. Human genetics can help advance the therapeutic enterprise. Genomic discovery that is agnostic to preexisting knowledge has uncovered dozens of loci that influence glycemic dysregulation. Physiological investigation has begun to define disease subtypes, clarifying heterogeneity and suggesting molecular pathways for intervention. Convincing genetic associations have paved the way for the identification of effector transcripts that underlie the phenotype, and genetic or experimental proof of gain or loss of function in select cases has clarified the direction of effect to guide therapeutic development. Genetic studies can also examine off-target effects and furnish causal inference. As this information is curated and made widely available to all stakeholders, it is hoped that it will enhance therapeutic development pipelines by accelerating efficiency, maximizing cost-effectiveness, and raising ultimate success rates.Entities:
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Year: 2017 PMID: 28603140 PMCID: PMC5482091 DOI: 10.2337/dbi16-0069
Source DB: PubMed Journal: Diabetes ISSN: 0012-1797 Impact factor: 9.461
Challenges to drug development in type 2 diabetes
| Unclear heterogeneity of the disease |
| Type 2 diabetes is used as a “catch-all” diagnosis. |
| Metabolic state changes with disease progression. |
| Disease subclassification is not routine in clinical practice. |
| Molecular pathogenesis is not fully elucidated. |
| Cost of drug development |
| Comparison with standard of care requires larger studies to demonstrate clinical benefit. |
| Proof of cardiovascular safety demands costly and complex trials. |
| Impact on diabetes complications takes too long to achieve. |
| The multiplicity of available pharmacological options constrains the therapeutic niche for novel agents, undermining viability. |
| Inadequacy of current practices |
| Preclinical models may not be relevant to the human situation. |
| Modulating glycemia may not be the critical end point. |
| Emergence of side effects in humans threatens new agents, as hyperglycemia does not confer immediate serious risk and can be controlled via other means. Initial evaluation of these side effects in phase 1 and 2 trials may be inefficient, insufficient, and expensive. |
Types of genetic studies
| Type | Alleles captured | Advantages | Limitations |
|---|---|---|---|
| Targeted genotyping | Specific variants | Inexpensive, hypothesis driven | Constrained by current knowledge, cannot use genome to control for population effects |
| Genome-wide genotyping (GWAS) | Common; coding and noncoding | Affordable, comprehensive, agnostic, can control for population effects, streamlined analysis | Requires large sample sizes to detect modest effects at genome-wide statistical significance ( |
| Exome-wide genotyping | Common and low-frequency; coding | Affordable, comprehensive as far as genes are concerned, agnostic, can control for population effects, can conduct individual variant testing as well gene burden tests, easier interpretation of functional effects | Requires large sample sizes to detect modest effects at exome-wide statistical significance ( |
| Whole-exome sequencing | Common, low-frequency, and rare; coding | Expensive; comprehensive as far as genes are concerned; agnostic; can control for population effects; can conduct individual variant testing as well gene burden tests; can discover novel variants in an individual, a family, or a group; easier interpretation of functional effects | Requires large sample sizes to detect modest effects at exome-wide statistical significance ( |
| Whole-genome sequencing | Common, low-frequency, and rare; coding and noncoding | Very expensive, most comprehensive, agnostic, can control for population effects, can discover novel variants in an individual, a family, or a group | Unresolved threshold for statistical significance in the low-/rare frequency spectrum, challenging interpretation of functional effects |
Figure 1Chronological listing of type 2 diabetes–associated loci, plotted by year of definitive publication and approximate effect size. They are named by the nearest gene, though this convention does not indicate that the causal gene has been found at the locus. Candidate loci are shown in green, loci discovered via agnostic genome-wide association approaches in blue, loci identified by exome sequencing in orange, and loci identified by whole-genome sequencing in red. TCF7L2 (shown in purple) was discovered by dense fine-mapping under a linkage signal. TBC1D4 (shown in pink) was identified by exome sequencing of a locus found to be associated with a diabetes-related quantitative trait. Gene names that are underlined denote identification in population isolates. T2D, type 2 diabetes.
Evidence of utility of genetic approaches in drug target identification in type 2 diabetes and related traits
| Retrospective: Genetic studies have yielded associated genes that are known targets for currently marketed medications. |
| Prospective: Genetic studies (in Mendelian disease) have yielded target genes for which novel drugs have been developed and approved. |
| Genes that encode existing drug targets are enriched for variants that are associated with type 2 diabetes. |
| Unbiased genomic searches can uncover loci associated with drug response. |
Figure 2Schema illustrating the concept of Mendelian randomization. Left: A risk factor X is observed to co-occur with a clinical outcome Y. The relationship between the two is unclear, as the risk factor could cause the outcome, be caused by it, or both could be driven by occult confounding factors U. Right: However, if a genetic instrument Z is found that determines levels of the risk factor and meets a number of assumptions (e.g., no pleiotropy), then detecting an association of the instrument with the outcome (dashed arrow) places the risk factor on the causal pathway for the outcome (bold arrow).
Human genetic applications in drug discovery
| Detection of genomic regions associated with the phenotype of interest |
| Evaluation of strength of association of the same region with endophenotypes, related traits, or other clinical outcomes |
| Fine-mapping of the region to focus on the likely causal variant |
| Assessment of coding variation or eQTL in relevant tissues to identify the causal transcript |
| Study of protein-truncating variants to determine direction of effect |
| Integration of other genomic data to explore potential off-target effects |
| Use of Mendelian randomization to establish causality |