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gh-k-dense-ai-claude-scient…/skills/adaptyv/reference/experiments.md
2025-11-30 08:30:10 +08:00

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Experiment Types and Workflows

Overview

Adaptyv provides multiple experimental assay types for comprehensive protein characterization. Each experiment type has specific applications, workflows, and data outputs.

Binding Assays

Description

Measure protein-target interactions using biolayer interferometry (BLI), a label-free technique that monitors biomolecular binding in real-time.

Use Cases

  • Antibody-antigen binding characterization
  • Receptor-ligand interaction analysis
  • Protein-protein interaction studies
  • Affinity maturation screening
  • Epitope binning experiments

Technology: Biolayer Interferometry (BLI)

BLI measures the interference pattern of reflected light from two surfaces:

  • Reference layer - Biosensor tip surface
  • Biological layer - Accumulated bound molecules

As molecules bind, the optical thickness increases, causing a wavelength shift proportional to binding.

Advantages:

  • Label-free detection
  • Real-time kinetics
  • High-throughput compatible
  • Works in crude samples
  • Minimal sample consumption

Measured Parameters

Kinetic constants:

  • KD - Equilibrium dissociation constant (binding affinity)
  • kon - Association rate constant (binding speed)
  • koff - Dissociation rate constant (unbinding speed)

Typical ranges:

  • Strong binders: KD < 1 nM
  • Moderate binders: KD = 1-100 nM
  • Weak binders: KD > 100 nM

Workflow

  1. Sequence submission - Provide protein sequences in FASTA format
  2. Expression - Proteins expressed in appropriate host system
  3. Purification - Automated purification protocols
  4. BLI assay - Real-time binding measurements against specified targets
  5. Analysis - Kinetic curve fitting and quality assessment
  6. Results delivery - Binding parameters with confidence metrics

Sample Requirements

  • Protein sequence (standard amino acid codes)
  • Target specification (from catalog or custom request)
  • Buffer conditions (standard or custom)
  • Expected concentration range (optional, improves assay design)

Results Format

{
  "sequence_id": "antibody_variant_1",
  "target": "Human PD-L1",
  "measurements": {
    "kd": 2.5e-9,
    "kd_error": 0.3e-9,
    "kon": 1.8e5,
    "kon_error": 0.2e5,
    "koff": 4.5e-4,
    "koff_error": 0.5e-4
  },
  "quality_metrics": {
    "confidence": "high|medium|low",
    "r_squared": 0.97,
    "chi_squared": 0.02,
    "flags": []
  },
  "raw_data_url": "https://..."
}

Expression Testing

Description

Quantify protein expression levels in various host systems to assess producibility and optimize sequences for manufacturing.

Use Cases

  • Screening variants for high expression
  • Optimizing codon usage
  • Identifying expression bottlenecks
  • Selecting candidates for scale-up
  • Comparing expression systems

Host Systems

Available expression platforms:

  • E. coli - Rapid, cost-effective, prokaryotic system
  • Mammalian cells - Native post-translational modifications
  • Yeast - Eukaryotic system with simpler growth requirements
  • Insect cells - Alternative eukaryotic platform

Measured Parameters

  • Total protein yield (mg/L culture)
  • Soluble fraction (percentage)
  • Purity (after initial purification)
  • Expression time course (optional)

Workflow

  1. Sequence submission - Provide protein sequences
  2. Construct generation - Cloning into expression vectors
  3. Expression - Culture in specified host system
  4. Quantification - Protein measurement via multiple methods
  5. Analysis - Expression level comparison and ranking
  6. Results delivery - Yield data and recommendations

Results Format

{
  "sequence_id": "variant_1",
  "host_system": "E. coli",
  "measurements": {
    "total_yield_mg_per_l": 25.5,
    "soluble_fraction_percent": 78,
    "purity_percent": 92
  },
  "ranking": {
    "percentile": 85,
    "notes": "High expression, good solubility"
  }
}

Thermostability Testing

Description

Measure protein thermal stability to assess structural integrity, predict shelf-life, and identify stabilizing mutations.

Use Cases

  • Selecting thermally stable variants
  • Formulation development
  • Shelf-life prediction
  • Stability-driven protein engineering
  • Quality control screening

Measurement Techniques

Differential Scanning Fluorimetry (DSF):

  • Monitors protein unfolding via fluorescent dye binding
  • Determines melting temperature (Tm)
  • High-throughput capable

Circular Dichroism (CD):

  • Secondary structure analysis
  • Thermal unfolding curves
  • Reversibility assessment

Measured Parameters

  • Tm - Melting temperature (midpoint of unfolding)
  • ΔH - Enthalpy of unfolding
  • Aggregation temperature (Tagg)
  • Reversibility - Refolding after heating

Workflow

  1. Sequence submission - Provide protein sequences
  2. Expression and purification - Standard protocols
  3. Thermostability assay - Temperature gradient analysis
  4. Data analysis - Curve fitting and parameter extraction
  5. Results delivery - Stability metrics with ranking

Results Format

{
  "sequence_id": "variant_1",
  "measurements": {
    "tm_celsius": 68.5,
    "tm_error": 0.5,
    "tagg_celsius": 72.0,
    "reversibility_percent": 85
  },
  "quality_metrics": {
    "curve_quality": "excellent",
    "cooperativity": "two-state"
  }
}

Enzyme Activity Assays

Description

Measure enzymatic function including substrate turnover, catalytic efficiency, and inhibitor sensitivity.

Use Cases

  • Screening enzyme variants for improved activity
  • Substrate specificity profiling
  • Inhibitor testing
  • pH and temperature optimization
  • Mechanistic studies

Assay Types

Continuous assays:

  • Chromogenic substrates
  • Fluorogenic substrates
  • Real-time monitoring

Endpoint assays:

  • HPLC quantification
  • Mass spectrometry
  • Colorimetric detection

Measured Parameters

Kinetic parameters:

  • kcat - Turnover number (catalytic rate constant)
  • KM - Michaelis constant (substrate affinity)
  • kcat/KM - Catalytic efficiency
  • IC50 - Inhibitor concentration for 50% inhibition

Activity metrics:

  • Specific activity (units/mg protein)
  • Relative activity vs. reference
  • Substrate specificity profile

Workflow

  1. Sequence submission - Provide enzyme sequences
  2. Expression and purification - Optimized for activity retention
  3. Activity assay - Substrate turnover measurements
  4. Kinetic analysis - Michaelis-Menten fitting
  5. Results delivery - Kinetic parameters and rankings

Results Format

{
  "sequence_id": "enzyme_variant_1",
  "substrate": "substrate_name",
  "measurements": {
    "kcat_per_second": 125,
    "km_micromolar": 45,
    "kcat_km": 2.8,
    "specific_activity": 180
  },
  "quality_metrics": {
    "confidence": "high",
    "r_squared": 0.99
  },
  "ranking": {
    "relative_activity": 1.8,
    "improvement_vs_wildtype": "80%"
  }
}

Experiment Design Best Practices

Sequence Submission

  1. Use clear identifiers - Name sequences descriptively
  2. Include controls - Submit wild-type or reference sequences
  3. Batch similar variants - Group related sequences in single submission
  4. Validate sequences - Check for errors before submission

Sample Size

  • Pilot studies - 5-10 sequences to test feasibility
  • Library screening - 50-500 sequences for variant exploration
  • Focused optimization - 10-50 sequences for fine-tuning
  • Large-scale campaigns - 500+ sequences for ML-driven design

Quality Control

Adaptyv includes automated QC steps:

  • Expression verification before assay
  • Replicate measurements for reliability
  • Positive/negative controls in each batch
  • Statistical validation of results

Timeline Expectations

Standard turnaround: ~21 days from submission to results

Timeline breakdown:

  • Construct generation: 3-5 days
  • Expression: 5-7 days
  • Purification: 2-3 days
  • Assay execution: 3-5 days
  • Analysis and QC: 2-3 days

Factors affecting timeline:

  • Custom targets (add 1-2 weeks)
  • Novel assay development (add 2-4 weeks)
  • Large batch sizes (may add 1 week)

Cost Optimization

  1. Batch submissions - Lower per-sequence cost
  2. Standard targets - Catalog antigens are faster/cheaper
  3. Standard conditions - Custom buffers add cost
  4. Computational pre-filtering - Submit only promising candidates

Combining Experiment Types

For comprehensive protein characterization, combine multiple assays:

Therapeutic antibody development:

  1. Binding assay → Identify high-affinity binders
  2. Expression testing → Select manufacturable candidates
  3. Thermostability → Ensure formulation stability

Enzyme engineering:

  1. Activity assay → Screen for improved catalysis
  2. Expression testing → Ensure producibility
  3. Thermostability → Validate industrial robustness

Sequential vs. Parallel:

  • Sequential - Use results from early assays to filter candidates
  • Parallel - Run all assays simultaneously for faster results

Data Integration

Results integrate with computational workflows:

  1. Download raw data via API
  2. Parse results into standardized format
  3. Feed into ML models for next-round design
  4. Track experiments with metadata tags
  5. Visualize trends across design iterations

Support and Troubleshooting

Common issues:

  • Low expression → Consider sequence optimization (see protein_optimization.md)
  • Poor binding → Verify target specification and expected range
  • Variable results → Check sequence quality and controls
  • Incomplete data → Contact support with experiment ID

Getting help:

  • Email: support@adaptyvbio.com
  • Include experiment ID and specific question
  • Provide context (design goals, expected results)
  • Response time: <24 hours for active experiments