PKPD Modeling Pharmacometrics Lead

Mercor

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profile Job Location:

London - UK

profile Monthly Salary: Not Disclosed
Posted on: 13 hours ago
Vacancies: 1 Vacancy

Job Summary

This person complements the clients Translational / Clinical Pharmacology Decision-Maker team by grounding dose selection and exposureresponse analysis in quantitative structure and parameter plausibility.

Who were looking for

  • Deep hands-on experience in PK PD exposureresponse modeling and ideally population PK or QSP.

  • Expert at model fitting sensitivity analysis and identifying non-plausible parameter spaces.

  • Can evaluate the validity of doseexposure predictions and detect high-risk extrapolations.

  • Comfortable designing model evaluation rubrics that distinguish between acceptable vs. non-credible outputs.

  • Able to articulate how quantitative checks should complement narrative decision logic.

Nice-to-have:

  • Experience supporting translational or clinical pharmacology leads in dose justification.

  • Familiarity with integrating nonclinical PK/PD data (2-species GLP human FIH extrapolation).

Experience level

  • 812 years of quantitative pharmacology experience in pharma CROs or modeling consultancies.

  • Strong portfolio in population PK/PD exposureresponse and parameter estimation using NONMEM Monolix or equivalent tools.

  • Demonstrated ability to interpret model results for decision-making not just fit data.

  • Can create fit-for-purpose models and critique model structures or assumptions under uncertainty.

Expectations

  • Design and refine micro-evaluations for PK/PD performance (curve fits parameter checks error taxonomies).

  • Encode quantitative sanity checks into model rubrics for automated evaluation.

  • Define failure conditions (e.g. unsafe extrapolation poor coverage curves invalid assumptions).

Inputs we give:

  • PK/PD datasets tox summaries and performance prompts (e.g. fit exposureresponse curves interpret safety margins).

  • Example model outputs from automated systems.

Expected outputs:

  • Quantitative Rubrics: clear thresholds for acceptable parameter fits coverage curve quality and model integrity checks.

  • Golden Fit Examples: representative ideal PK/PD model outputs and visualizations for calibration.

  • Error Taxonomy: structured list of typical modeling or fitting errors with root-cause annotations.

  • Meta-Layer Commentary: short note per rubric capturing how expert modelers recognize implausible or unsafe fits beyond numeric error values.

Engagement Model & Compensation

  • Contract / part-time remote outcome-based deliverables.
This person complements the clients Translational / Clinical Pharmacology Decision-Maker team by grounding dose selection and exposureresponse analysis in quantitative structure and parameter plausibility. Who were looking for Deep hands-on experience in PK PD exposureresponse modeling and ideally...
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