:orphan: 





.. _blq_pk_norm_fit_half_fit:



Depot One Comp PK with BLQ observations set to 0.5*LLQ
######################################################

[Generated automatically as a Fitting summary]

Model Description
*****************


:Name: blq_pk_norm_fit_half

:Title: Depot One Comp PK with BLQ observations set to 0.5*LLQ

:Author: PoPy for PK/PD

:Abstract: 

| Depot One Comp PK model, with BLQ (below level of quantification)
| observations set to 0.5*LLQ (lower limit of quantification).

:Keywords: tutorial; pk; advan4; dep_two_cmp; blq

:Input Script: :download:`blq_pk_norm_fit_half.pyml <blq_pk_norm_fit_half.pyml>`

:Diagram: 


.. thumbnail:: blq_pk_norm_fit_half.pyml_output/compartment_diagram.svg
    :width: 200px


Comparison
**********



Compare Main f[X]
=================


===============  ================  ==============  ============  =============
Variable Name      Starting Value    Fitted Value    Abs Change    Prop Change
===============  ================  ==============  ============  =============
f[KA]                      1.0000          1.0467        0.0467         0.0467
f[CL]                      1.0000          1.6694        0.6694         0.6694
f[V1]                     20.0000         81.9258       61.9258         3.0963
===============  ================  ==============  ============  =============

Compare Noise f[X]
==================


===============  ================  ==============  ============  =============
Variable Name      Starting Value    Fitted Value    Abs Change    Prop Change
===============  ================  ==============  ============  =============
f[PNOISE]                  0.1000          0.3225        0.2225         2.2247
===============  ================  ==============  ============  =============

Compare Variance f[X]
=====================


================  ================  ==============  ============  =============
Variable Name       Starting Value    Fitted Value    Abs Change    Prop Change
================  ================  ==============  ============  =============
f[KA_isv]                   0.0500          0.2479        0.1979         3.9573
f[KA_isv;CL_isv]            0.0100          0.0438        0.0338         3.3760
f[KA_isv;V1_isv]            0.0100          0.1067        0.0967         9.6689
f[CL_isv;KA_isv]            0.0100          0.0438        0.0338         3.3760
f[CL_isv]                   0.0500          0.0077        0.0423         0.8452
f[CL_isv;V1_isv]            0.0100          0.0188        0.0088         0.8834
f[V1_isv;KA_isv]            0.0100          0.1067        0.0967         9.6689
f[V1_isv;CL_isv]            0.0100          0.0188        0.0088         0.8834
f[V1_isv]                   0.0500          0.0459        0.0041         0.0814
================  ================  ==============  ============  =============

Individual simulated (sim) plots
================================



.. thumbnail:: images/fit_sim_grph_outputs/indOBS_vs_TIME/000001.svg
    :width: 200px


.. thumbnail:: images/fit_sim_grph_outputs/indOBS_vs_TIME/000002.svg
    :width: 200px


.. thumbnail:: images/fit_sim_grph_outputs/indOBS_vs_TIME/000003.svg
    :width: 200px


Alternatively see :ref:`blq_pk_norm_fit_half_simulated_sim_plots`

Population simulated (sim) plots
================================


(No population graphs were requested.)

Outputs
*******



Final objective value
=====================

.. code-block:: pyml

    28107.5222


which required 1.30 iterations and took 78.22 seconds

Fitted f[X] values (after fitting)
==================================


.. code-block:: pyml

    f[KA] = 1.0467
    f[CL] = 1.6694
    f[V1] = 81.9258
    f[KA_isv,CL_isv,V1_isv] = [
        [ 0.2479, 0.0438, 0.1067 ],
        [ 0.0438, 0.0077, 0.0188 ],
        [ 0.1067, 0.0188, 0.0459 ],
    ]
    f[PNOISE] = 0.3225
    f[ANOISE] = 0.0100



Fitted parameter .csv files
===========================


:Fixed Effects: :download:`fx_params.csv (fit) <blq_pk_norm_fit_half.pyml_output/solN/fx_params.csv>`

:Random Effects: :download:`rx_params.csv (fit) <blq_pk_norm_fit_half.pyml_output/solN/rx_params.csv>`

:Model params: :download:`mx_params.csv (fit) <blq_pk_norm_fit_half.pyml_output/solN/mx_params.csv>`

:State values: :download:`sx_params.csv (fit) <blq_pk_norm_fit_half.pyml_output/solN/sx_params.csv>`

:Predictions: :download:`px_params.csv (fit) <blq_pk_norm_fit_half.pyml_output/solN/px_params.csv>`

:Likelihoods: :download:`lx_params.csv (fit) <blq_pk_norm_fit_half.pyml_output/solN/lx_params.csv>`



Inputs
******


:Input Data: :download:`synthetic_data.csv <synthetic_data.csv>`


Starting f[X] values (before fitting)
=====================================


.. code-block:: pyml

    f[KA] = 1.0000
    f[CL] = 1.0000
    f[V1] = 20.0000
    f[KA_isv,CL_isv,V1_isv] = [
        [ 0.0500, 0.0100, 0.0100 ],
        [ 0.0100, 0.0500, 0.0100 ],
        [ 0.0100, 0.0100, 0.0500 ],
    ]
    f[PNOISE] = 0.1000
    f[ANOISE] = 0.0100

