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  • Issues interpreting coefplot after generating a partial proportional odds ordinal logistic model.

    Hi everyone,

    I would just like to clarify about the use of coefplot after generating a Partial Proportional Odds Ordinal Logistic model using gologit2.

    I generated a partial proportional odds model using gologit2 after finding that my model for outcome Q12 violates the proportional odds assumption. The model computes odds ratios for each experimental arm with arm 8 as the reference.

    The following is my code:

    gologit2 Q12 Q3A ib8.Arm, or

    My output shows that some of the odds ratio for the experimental arms (e.g. arm 4 & 13) are different for each cut off point(I have 3 cut off points in the dependent variable). I have omitted the output for Q3A and _cons in the output below.
    Q12 exp(b) Std. Err. z P>z [95% Conf. Interval]
    Definitely No
    Arm
    1 .6852644 .1560102 -1.66 0.097 .4386013 1.070647
    2 1.100562 .2524957 0.42 0.676 .7019856 1.725444
    3 .9526014 .2201017 -0.21 0.834 .605673 1.49825
    4 .2128189 .089902 -3.66 0.000 .0929894 .4870651
    5 1.102713 .2497955 0.43 0.666 .7073617 1.71903
    6 .9582241 .2176879 -0.19 0.851 .6138926 1.495691
    7 .865716 .1986142 -0.63 0.530 .5521934 1.35725
    9 .8472162 .1917797 -0.73 0.464 .5436413 1.32031
    10 .8490981 .1937738 -0.72 0.474 .5428803 1.328041
    11 .5910764 .135689 -2.29 0.022 .3769117 .9269315
    12 .7848461 .1785581 -1.06 0.287 .5024932 1.225854
    13 .3507189 .1593813 -2.31 0.021 .1439255 .8546352
    14 .7711762 .1788714 -1.12 0.263 .4894638 1.215029
    Maybe no
    Arm
    1 .6852644 .1560102 -1.66 0.097 .4386013 1.070647
    2 1.100562 .2524957 0.42 0.676 .7019856 1.725444
    3 .9526014 .2201017 -0.21 0.834 .605673 1.49825
    4 .5377783 .1854247 -1.80 0.072 .2735967 1.05705
    5 1.102713 .2497955 0.43 0.666 .7073617 1.71903
    6 .9582241 .2176879 -0.19 0.851 .6138926 1.495691
    7 .865716 .1986142 -0.63 0.530 .5521934 1.35725
    9 .8472162 .1917797 -0.73 0.464 .5436413 1.32031
    10 .8490981 .1937738 -0.72 0.474 .5428803 1.328041
    11 .5910764 .135689 -2.29 0.022 .3769117 .9269315
    12 .7848461 .1785581 -1.06 0.287 .5024932 1.225854
    13 1.445648 .5312158 1.00 0.316 .7035275 2.970598
    14 .7711762 .1788714 -1.12 0.263 .4894638 1.215029
    Maybe yes
    Arm
    1 .6852644 .1560102 -1.66 0.097 .4386013 1.070647
    2 1.100562 .2524957 0.42 0.676 .7019856 1.725444
    3 .9526014 .2201017 -0.21 0.834 .605673 1.49825
    4 .7674514 .1927372 -1.05 0.292 .4691166 1.255512
    5 1.102713 .2497955 0.43 0.666 .7073617 1.71903
    6 .9582241 .2176879 -0.19 0.851 .6138926 1.495691
    7 .865716 .1986142 -0.63 0.530 .5521934 1.35725
    9 .8472162 .1917797 -0.73 0.464 .5436413 1.32031
    10 .8490981 .1937738 -0.72 0.474 .5428803 1.328041
    11 .5910764 .135689 -2.29 0.022 .3769117 .9269315
    12 .7848461 .1785581 -1.06 0.287 .5024932 1.225854
    13 .984204 .2462258 -0.06 0.949 .6027449 1.607077
    14 .7711762 .1788714 -1.12 0.263 .4894638 1.215029
    However, when I executed the coefplot command:

    coefplot, eform drop(Q3A _cons) xline(1)

    ...it generates the following odds ratio plots, with only a single point estimate (below).

    Click image for larger version

Name:	coeffplot OR.png
Views:	1
Size:	21.9 KB
ID:	1642714

    My question is, how do I interpret these single point estimates, when my partial proportional odds models have various odds ratios at different cut off points? Is the single point estimate an average odds ratio of a particular arm? I have been trying to find the answer online but failed. Any expert guidance on this matter is much appreciated. Thank you very much!
    Last edited by Nicholas Hing; 28 Dec 2021, 22:09.
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