10 KiB
Target Annotations and Features
Overview
Open Targets defines a target as "any naturally-occurring molecule that can be targeted by a medicinal product." Targets are primarily protein-coding genes identified by Ensembl gene IDs, but also include RNAs and pseudogenes from canonical chromosomes.
Core Target Annotations
1. Tractability Assessment
Tractability evaluates the druggability potential of a target across different modalities.
Modalities Assessed:
Small Molecule
- Prediction of small molecule druggability
- Based on structural features, chemical precedence
- Buckets: Clinical precedence, Discovery precedence, Predicted tractable
Antibody
- Likelihood of antibody-based therapeutic success
- Cell surface/secreted protein location
- Precedence categories similar to small molecules
PROTAC (Protein Degradation)
- Assessment for targeted protein degradation
- E3 ligase compatibility
- Emerging modality category
Other Modalities
- Gene therapy, RNA-based therapeutics
- Oligonucleotide approaches
Tractability Levels:
- Clinical Precedence - Target of approved/clinical drug with similar mechanism
- Discovery Precedence - Target of tool compounds or compounds in preclinical development
- Predicted Tractable - Computational predictions suggest druggability
- Unknown - Insufficient data to assess
2. Safety Liabilities
Safety information aggregated from multiple sources to identify potential toxicity concerns.
Data Sources:
ToxCast
- High-throughput toxicology screening data
- In vitro assay results
- Toxicity pathway activation
AOPWiki (Adverse Outcome Pathways)
- Mechanistic pathways from molecular initiating event to adverse outcome
- Systems toxicology frameworks
PharmGKB
- Pharmacogenomic relationships
- Genetic variants affecting drug response and toxicity
Published Literature
- Expert-curated safety concerns from publications
- Clinical trial adverse events
Safety Flags:
- Organ toxicity - Liver, kidney, cardiac effects
- Target safety liability - Known on-target toxic effects
- Off-target effects - Unintended activity concerns
- Clinical observations - Adverse events from drugs targeting gene
3. Baseline Expression
Gene/protein expression across tissues and cell types from multiple sources.
Data Sources:
Expression Atlas
- RNA-Seq expression across tissues/conditions
- Normalized expression levels (TPM, FPKM)
- Differential expression studies
GTEx (Genotype-Tissue Expression)
- Comprehensive tissue expression from healthy donors
- Median TPM across 53 tissues
- Expression variation analysis
Human Protein Atlas
- Protein expression via immunohistochemistry
- Subcellular localization
- Tissue specificity classifications
Expression Metrics:
- TPM (Transcripts Per Million) - Normalized RNA abundance
- Tissue specificity - Enrichment in specific tissues
- Protein level - Correlation with RNA expression
- Subcellular location - Where protein is found in cell
4. Molecular Interactions
Protein-protein interactions, complex memberships, and molecular partnerships.
Interaction Types:
Physical Interactions
- Direct protein-protein binding
- Complex components
- Sources: IntAct, BioGRID, STRING
Pathway Membership
- Biological pathways from Reactome
- Functional relationships
- Upstream/downstream regulators
Target Interactors
- Direct interactors relevant to disease associations
- Context-specific interactions
5. Gene Essentiality
Dependency data indicating if gene is essential for cell survival.
Data Sources:
Project Score
- CRISPR-Cas9 fitness screens
- 300+ cancer cell lines
- Scaled essentiality scores (0-1)
DepMap Portal
- Large-scale cancer dependency data
- Genetic and pharmacological perturbations
- Common essential genes identification
Essentiality Metrics:
- Score range: 0 (non-essential) to 1 (essential)
- Context: Cell line specific vs. pan-essential
- Therapeutic window: Selectivity between disease and normal cells
6. Chemical Probes and Tool Compounds
High-quality small molecules for target validation.
Sources:
Probes & Drugs Portal
- Chemical probes with characterized selectivity
- Quality ratings and annotations
- Target engagement data
Structural Genomics Consortium (SGC)
- Target Enabling Packages (TEPs)
- Comprehensive target reagents
- Freely available to academia
Probe Criteria:
- Potency (typically IC50 < 100 nM)
- Selectivity (>30-fold vs. off-targets)
- Cell activity demonstrated
- Negative control available
7. Pharmacogenetics
Genetic variants affecting drug response for drugs targeting the gene.
Data Source: ClinPGx
Information Included:
- Variant-drug pairs
- Clinical annotations (dosing, efficacy, toxicity)
- Evidence level and sources
- PharmGKB cross-references
Clinical Utility:
- Dosing adjustments based on genotype
- Contraindications for specific variants
- Efficacy predictors
8. Genetic Constraint
Measures of negative selection against variants in the gene.
Data Source: gnomAD
Metrics:
pLI (probability of Loss-of-function Intolerance)
- Range: 0-1
- pLI > 0.9 indicates intolerant to LoF variants
- High pLI suggests essentiality
LOEUF (Loss-of-function Observed/Expected Upper bound Fraction)
- Lower values indicate greater constraint
- More interpretable than pLI across range
Missense Constraint
- Z-scores for missense depletion
- O/E ratios for missense variants
Interpretation:
- High constraint suggests important biological function
- May indicate safety concerns if inhibited
- Essential genes often show high constraint
9. Comparative Genomics
Cross-species gene conservation and ortholog information.
Data Source: Ensembl Compara
Ortholog Data:
- Mouse, rat, zebrafish, other model organisms
- Orthology confidence (1:1, 1:many, many:many)
- Percent identity and similarity
Utility:
- Model organism studies transferability
- Functional conservation assessment
- Evolution and selective pressure
10. Cancer Annotations
Cancer-specific target features for oncology indications.
Data Sources:
Cancer Gene Census
- Role in cancer (oncogene, TSG, fusion)
- Tier classification (1 = established, 2 = emerging)
- Tumor types and mutation types
Cancer Hallmarks
- Functional roles in cancer biology
- Hallmarks: proliferation, apoptosis evasion, metastasis, etc.
- Links to specific cancer processes
Oncology Clinical Trials
- Drugs in development targeting gene for cancer
- Trial phases and indications
11. Mouse Phenotypes
Phenotypes from mouse knockout/mutation studies.
Data Source: MGI (Mouse Genome Informatics)
Phenotype Data:
- Knockout phenotypes
- Disease model associations
- Mammalian Phenotype Ontology (MP) terms
Utility:
- Predict on-target effects
- Safety liability identification
- Mechanism of action insights
12. Pathways
Biological pathway annotations placing target in functional context.
Data Source: Reactome
Pathway Information:
- Curated biological pathways
- Hierarchical organization
- Pathway diagrams with target position
Applications:
- Mechanism hypothesis generation
- Related target identification
- Systems biology analysis
Using Target Annotations in Queries
Query Template: Comprehensive Target Profile
query = """
query targetProfile($ensemblId: String!) {
target(ensemblId: $ensemblId) {
id
approvedSymbol
approvedName
biotype
# Tractability
tractability {
label
modality
value
}
# Safety
safetyLiabilities {
event
effects {
dosing
organsAffected
}
}
# Expression
expressions {
tissue {
label
}
rna {
value
level
}
protein {
level
}
}
# Chemical probes
chemicalProbes {
id
probeminer
origin
}
# Known drugs
knownDrugs {
uniqueDrugs
rows {
drug {
name
maximumClinicalTrialPhase
}
phase
status
}
}
# Genetic constraint
geneticConstraint {
constraintType
score
exp
obs
}
# Pathways
pathways {
pathway
pathwayId
}
}
}
"""
variables = {"ensemblId": "ENSG00000157764"}
Annotation Interpretation Guidelines
For Target Prioritization:
-
Druggability (Tractability):
- Clinical precedence >> Discovery precedence > Predicted
- Consider modality relevant to therapeutic approach
- Check for existing tool compounds
-
Safety Assessment:
- Review organ toxicity signals
- Check expression in critical tissues
- Assess genetic constraint (high = safety concern if inhibited)
- Evaluate clinical adverse events from drugs
-
Disease Relevance:
- Combine with association scores
- Check expression in disease-relevant tissues
- Review pathway context
-
Validation Readiness:
- Chemical probes available?
- Model organism data supportive?
- Known drugs provide mechanism insight?
-
Clinical Path Considerations:
- Pharmacogenetic factors
- Expression pattern (tissue-specific is better for selectivity)
- Essentiality (non-essential better for safety)
Red Flags:
- High essentiality + ubiquitous expression - Poor therapeutic window
- Multiple safety liabilities - Toxicity concerns
- High genetic constraint (pLI > 0.9) - Critical gene, inhibition may be harmful
- No tractability precedence - Higher risk, longer development
- Conflicting evidence - Requires deeper investigation
Green Flags:
- Clinical precedence + related indication - De-risked mechanism
- Tissue-specific expression - Better selectivity
- Chemical probes available - Faster validation
- Low essentiality + disease relevance - Good therapeutic window
- Multiple evidence types converge - Higher confidence