opendose_poppk.bayesian
opendose_poppk.bayesian
Bayesian individual parameter estimation.
Classes
MAPEstimator : Maximum A Posteriori individual parameter estimation
- class opendose_poppk.bayesian.MAPEstimator(pk: PKModel | None = None, covariate_model: CovariateModel | None = None, sigma_obs: float = 1.0)
Bases:
objectBayesian individual parameter estimation (Maximum A Posteriori).
- Finds individual etas that minimize:
- obj = Σ[(C_obs − C_pred)² / σ²] + Σ[ηᵢ² / ωᵢ²]
└─ data fidelity ──────┘ └─ population prior ─┘
Example
>>> est = MAPEstimator(pk, covariate_model=cov) >>> res = est.fit( ... times=np.array([1, 2, 4, 6]), ... obs =np.array([6.8, 7.5, 5.9, 4.1]), ... patient_covariates={"weight": 90, "crcl": 50}, ... dose=1000.0 ... ) >>> print(res["params_map"])
- fit(times: ndarray, obs: ndarray, patient_covariates: dict, dose: float, n_iter: int = 3000) dict
Fit individual parameters for a patient.
- Parameters:
times (observation times (h))
obs (observed concentrations)
patient_covariates (patient's covariate values)
dose (administered dose)
n_iter (maximum optimizer iterations)
- Return type:
dict with params_map, eta_map, pop_adjusted, converged, obj_value