Beyond logistic regression: structural equations modelling for binary variables and its application to investigating unobserved confounders
Emil Kupek
     This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
   
       
Abstract
Background
Structural equation modelling (SEM) has been increasingly used in medical statistics
         for solving a system of related regression equations. However, a great obstacle for
         its wider use has been its difficulty in handling categorical variables within the
         framework of generalised linear models.
      
Methods
A large data set with a known structure among two related outcomes and three independent
         variables was generated to investigate the use of Yule's transformation of odds ratio
         (OR) into Q-metric by (OR-1)/(OR+1) to approximate Pearson's correlation coefficients
         between binary variables whose covariance structure can be further analysed by SEM.
         Percent of correctly classified events and non-events was compared with the classification
         obtained by logistic regression. The performance of SEM based on Q-metric was also
         checked on a small (N = 100) random sample of the data generated and on a real data
         set.
      
Results
SEM successfully recovered the generated model structure. SEM of real data suggested
         a significant influence of a latent confounding variable which would have not been
         detectable by standard logistic regression. SEM classification performance was broadly
         similar to that of the logistic regression.
      
Conclusion
The analysis of binary data can be greatly enhanced by Yule's transformation of odds
         ratios into estimated correlation matrix that can be further analysed by SEM. The
         interpretation of results is aided by expressing them as odds ratios which are the
         most frequently used measure of effect in medical statistics.
      
Background
Statistical problems that require going beyond standard logistic regression
Although logistic regression has become the cornerstone of modelling categorical outcomes
         in medical statistics, separate regression analysis for each outcome of interest is
         hardly challenged as a pragmatic approach even in the situations when the outcomes
         are naturally related. This is common in process evaluation where the same variable
         can be an outcome at one point in time and a predictor of another outcome in future.
         For example, preterm delivery is both an important obstetric outcome and a risk factor
         for low birthweight, which in turn can adversely affect future health. Sequential
         nature of these outcomes is not encompassed by repeated measures models which deal
         with the same outcome at different time points. Another example of a research problem
         difficult to handle by logistic regression model is when an outcome is determined
         not only by direct influences of the predictor variables but also by their unobserved
         common cause. For example, survival time since the onset of an immune system disease
         may be adversely affected by concomitant occurrence of various markers of disease
         progression indicating immunosupression as an underlying common factor, the latter
         being an unobserved latent variable whose estimation requires solving a system of
         related regression equations.
      
Structural equation modelling (SEM) is a very general statistical framework for dealing
         with above issues. In recent years, it has been increasingly used in medical statistics.
         In addition to traditional areas such as psychometric properties of health questionnaires
         and tests, behavioural genetics [1], measurement errors [2] and covariance structure in mixed regression models [3] have received particular attention. In addition to specific applications, important
         research methodology issues in SEM have been given more space in medical statistics,
         among which a comparison with multiple regression [4], the relevance of latent variable means in clinical trials [5] and power of statistical tests [6] deserve special attention.
      
However, a great obstacle for wider use of SEM has been its difficulty in handling
         categorical variables. The aim of this paper is to briefly review main aspects of
         this difficulty and to demonstrate a new approach to this problem based on a simple
         transformation. Two examples with both simulated and real data are provided to illustrate
         this approach.
      
SEM includes both observed and unobserved (latent) variables such as common factors
         and measurement errors. The Linear Structural Relationships (LISREL) model [7] was the first to spread in psychometric applications due to the availability of software.
         Other formulations of SEM and corresponding software emerged (see [8] for an overview). The details of these models, as well as important issues regarding
         their identifiability, estimation and robustness, are beyond the scope of this work
         but an illustration of the situations where SEM is needed is presented instead (Figure
         1). As a general rule, SEM is indicated when more than one regression equation is necessary
         for statistical modelling of the phenomena under investigation.
      
The left part of Figure 1 shows a situation where two outcomes, denoted Y1 and Y2, are mutually related (a feed-back loop) and influenced by two predictors, denoted
         X1 and X2. For example, the outcomes could be demand and supply of a particular health service
         or risk perception and incidence of a particular health problem. The predictor variables'
         error terms, denoted e1 and e2, may be correlated (r) if an important variable influencing both predictors is omitted, i.e. in the case
         of bias in exposure measures. The terms d1 and d2 indicate disturbances of the two outcomes. The right part of Figure 1 illustrates a combination of common factors and regression model. In this case, it
         is of interest to test whether the outcome Y is determined not only by direct influences of the predictor variables, denoted X1, X2, X3 and X4, but also by their latent determinant as indicated by the regression coefficient
         b.
      
SEM has received many criticisms, most of which have been concerned with vulnerability
         of complex models relying on many assumptions, as well as with uncritical use and
         interpretation of SEM. These are well placed concerns but are not intrinsic to SEM;
         even well known and widely applied techniques such as regression share the same concerns.
         Complex phenomena require complex models whose inferential aspects are more prone
         to error as the number of parameters increases. SEM is often the only statistical
         framework by which many of these issues can be addressed by testing and comparing
         the models obtained [9].
      
Handling categorical variables in SEM
Specific criticism regarding the treatment of categorical and ordinal variables in
         SEM has been a strong deterrent for its wider use. Naive treatment of binary and ordered
         categorical variables as if they were normally distributed in some SEM applications
         was partly due to the lack of viable alternatives in its early days. Inadequate use
         of standardized regression coefficients as the measures of effect in some SEM applications
         was also criticised [10]. Even when distributional properties of categorical variables were taken into account,
         the interpretation of SEM parameter estimates in terms of impact measures such as
         attributable risk was not applied. Standard errors and confidence limits – rarely
         used in SEM – are generally underestimating structural model uncertainties such as
         selection of relevant variables and correct specification of their influences.
      
A recent review of handling categorical and other non-normal variables in SEM [11] listed four main strategies: a) asymptotic distribution free (ADF) estimators adjusting
         for non-normality by taking into account kurtosis in joint multivariate distribution
         [12], b) the use of robust maximum likelihood estimation or resampling techniques such
         as jacknife or bootstrap to obtain the standard errors of SEM parameters as these
         are most affected by departure from multivariate normality [13], c) calculating polyserial, tetrachoric or polychoric correlations for pairs of variables
         with non-normal joint distribution by assuming that these have an underlying (latent)
         continuous scale whose large sample joint distribution is bivariate normal, then using
         these correlations as the input for SEM [14], and d) estimating probit or logit model scores for observed categorical variables
         as the first level, then proceeding with SEM based on these scores as the second-level
         [15]. The ADF estimation generally requires large samples to keep the type II error at
         a reasonable level and extremely non-normal variables such as binary may be difficult
         to handle with sufficient precision. The last two strategies critically depend on
         how well the first-level model fits the data.
      
A review of statistical models for categorical data reveals the lack of a method capable
         of handling more than one regression equation [16]. Although log-linear models for contingency tables may analyse related categorical
         outcomes and their relationship with independent variables, possibly complex interactions
         between the variables in the model do not indicate the direction of influences as
         in regression models. This underlines the need for a SEM framework for categorical
         data analysis in order to handle both dimensionality reduction and regression techniques
         within the same model (cf. the right part of Figure 1).
      
Two major recent developments in handling categorical data include Muthen's extension
         of SEM to the 'latent variable modeling' approach [17] and an extension of generalized linear models to latent and mixed variables under
         GLLAMM (Generalized Linear Latent And Mixed Models) framework [18]. Despite coming from different statistical backgrounds, both Muthén's Mplus software
         [19] and GLLAMM are capable of modelling a mixture of continuous, ordinal and nominal
         scale variables, multiple groups (including clusters) and hierarchical (multi-level)
         data, random effects, missing data, latent variables (including latent classes and
         latent growth models) and discrete-time survival models. Both of these developments
         are based on the vision of generalized linear models as a unifying framework for both
         continuous and categorical variables, where the latter are first transformed into
         continuous linear functions and subsequently modelled by SEM. This paper follows the
         same line but proposes a different transformation for categorical variables, so far
         unused in SEM. A simulated and a real data example with a latent confounding variable
         are presented.
      
Methods
Data generation and transformation
This work illustrates the application of SEM for binary variables using Yule's transformation
         to approximate the matrix of Pearson's correlation coefficients from odds ratio (OR)
         by a well known formula (OR-1)/(OR+1). The first example is based on known data generating
         processes to avoid uncertainty about true model, virtually inevitable for empirical
         data. A data set with 5000 observations was generated to allow normal theory approximation.
         First, three continuous random variables, denominated x1 to x3, were created from the uniform distribution. The variables were uncorrelated in the
         population. Their binary versions, denominated BIN1 to BIN3, were obtained by coding the values above the mean as one versus zero otherwise.
         Two continuous dependent variables were created by the following equations: m = 1.5 x1 + 2 x2 + e1 and y = 0.5 x2 - 2.5 x3 + 1.3 m + e2, with e1 and e2 being normally distributed random errors (N~0,1), generated from different seeds.
         The binary versions of the dependent variables, denominated MBIN and YBIN, were created by applying the logistic regression classification rule, i.e. score
         1 if exp(m)/(1+exp(m)) and exp(y)/(1+exp(y)) exceed 0.5 versus 0 otherwise, where 'exp' stands for 'exponentiation'.
      
Observed odds ratios between the variables of interest in the generated data sets
         are reported in table 1. The structural relationships among the variables in the second data set are depicted
         in Figure 2.
      
Table 1. Simulated data: Observed odds ratios (OR), associated 95% confidence intervals (CI)
         and SEM regression coefficients with corresponding standard errors (SE) obtained via
         ML estimation (N = 5000)
      
In addition, a random sample of 100 observations was taken from the generated data
         set with 5000 observations in order to illustrate small sample performance of the
         SEM based on Yule's transformation compared to logistic regression. Finally, a real
         data example with related binary obstetric outcomes, including premature birth, lower
         segment Caesarian section, low birthweight (<2500 10574="" 1="" a="" and="" applied="" as="" baby="" between="" care="" compare="" data.="" data="" delivered="" extracted="" from="" g="" logistic="" multiparous="" obstetric="" of="" pregnancies="" records="" regression="" sem="" singleton="" special="" standard="" sup="" technique="" the="" this="" to="" type="" unit="" used="" utilization="" was="" were="" who="" with="" women="">st 2500>
Yule's transformation was used to estimate the matrix of Pearson's correlation coefficients
         for both simulated and real obstetric data. The correlations were used as input for
         SEM. For the simulated data, both logistic and SEM analysis were repeated for a random
         subset of 100 observations taken from the original data set. Maximum likelihood (ML)
         estimation was used.
      
SEM raw regression coefficients were back-transformed from Q-metric into odds metric
         by (1+Q)/(1-Q) to get an impact measure for the binary predictor variables. SAS software
         procedures CALIS and LOGISTIC were used for SEM and logistic analysis, respectively
         [21].
      
Evaluation of classification performance
Raw data residuals were calculated as the difference between observed and SEM-predicted
         values for both data sets. The predicted values were calculated by multiplying the
         raw regression parameters obtained in SEM with corresponding observed values of the
         predictor variables. The back-transformation from SEM parameters, denoted S, to the
         odds metric is given by (1+S)/(1-S) and provides the odds of being the case for each
         independent variable; summing these odds over the independent variables gives the
         odds of being the case for each profile of independent variables. The odds greater
         than one were classified as SEM predicted cases versus otherwise.
      
For logistic regression, the percent of correctly classified outcomes was calculated
         using the cut-off point of 0.5 for the estimated probability of outcome variables.
      
The classification performance of SEM and logistic regression was compared on a real
         data set with several obstetric outcomes of interest [20] and on a small random sample of 100 observations taken from the simulated data set
         of 5000 observations.
      
Power analysis
Statistical power analysis used a calculation based on non-central chi-squared distribution,
         providing the number of observations required to achieve the 90% power (beta or type
         II error of 0.10), denoted as N [22,23]. If n denotes the number of observations used in SEM, k denotes the multiplying factor for a chosen power level, degrees of freedom and alpha
         (type I error), and d denotes the chi-square difference between the SEM with and without the parameter(s)
         of interest, then N = k*n/d gives the required sample size. Releasing one parameter at a time (one degree of freedom),
         with fixed type I error of 5% and type II error of 10%, point to the tabulated k-value of 10.51 [23]. This approach assumes that the model is correctly specified.
      
Results
Table 1 contains observed odds ratios for the simulated data set and their decomposition
         into regression effects based on SEM using Yule's transformation of odds ratios.
      
A standard approach to the analysis of binary variables using multivariate logistic
         regression for the simulated data is presented in Table 2.
      
Table 2. Multivariate logistic regression for generated data: parameter estimates (standard
         errors) for large (N = 5000) and small (N = 100) samples
      
The normal probability plot of raw data residuals between observed outcomes and the
         estimated probability of outcome based on SEM for simulated data showed some departure
         from the normal distribution (Figure 3). On the other side, the residuals fall within the normal range. Both SEM and logistic
         regression models for real obstetric data (Figure 4) showed satisfactory fit regarding individual data residuals.
      
The comparison of classification performance for SEM versus logistic regression showed
         slightly better results with the latter for one outcome in a small sample analysis
         and very similar results for all other comparisons (Table 4). True positive fraction for events was always considerably higher for SEM compared
         to logistic regression, albeit at the expense of lower true negative fraction for
         non-events.
      
Table 3. Small sample (N = 100) parameter estimates and their standard errors (SE) for SEM
         using Q-statistic input (correlations estimated via Yule's transformation)
      
Table 4. Percentage of correctly classified events for logistic regression (LR) models in table
         2 versus SEM in tables 1 and 3
      
Logistic regression showed better overall classification rate due to better prediction
         of non-events (Table 5). On the other hand, events were better predicted by SEM.
      
Table 5. Classification performance for the obstetric data example (N = 10574): logistic regression
         (LR) and SEM with Q-metric input (see Figure 4)
      
SEM permitted further investigation of the unobserved determinant of observed obstetric
         risk factors in predicting the need for specialised neonatal care through a latent
         variable. A model was tested assuming that a common cause of some of the risk factors
         is a latent confounding variable influencing both observed risk factors and the outcome
         of interest (special baby care unit) and adding predictive power over and above the
         observed risk variables (Figure 5). The estimation was possible upon solving the observed variables' parameters first
         (so-called path analysis) and fixing the factor loading for preterm delivery to the
         value of one – a convention allowing the comparison of the contribution of the other
         two observed risk variables to the unobserved latent risk using premature birth as
         unit risk. The factor loadings (standard errors) for Caesarian section and low birthweight
         were -0.3948 (0.003) and 0.8630 (0.001), respectively.
      
The relevance of the latent variable for predicting the use of special care baby unit
         was also tested by linear regression with raw data SEM residuals (observed minus SEM
         predicted probability of using special care baby unit) as the dependent variable and
         the latent variable scores as the predictor variable. The predictor was estimated
         at 0.0874 (standard error 0.0053) and was highly significant (p < 0.001).
      
The model suggested that propensity for premature birth resulting in low birthweight
         upon delivery which did not use Caesarian section increased the chances of special
         neonatal care utilization. The raw SEM coefficient representing this effect, denominated
         b4 on Figure 5, was estimated at 0.0956 with corresponding standard error of 0.016, leading to a
         highly significant t-value of 61.54. Transforming back to odds metric via (1+b4)/(1-b4) resulted in odds ratio of 1.21 and corresponding 95% confidence intervals from 1.14
         to 1.29. Although a multivariate logistic regression model for the special baby care
         unit utilization did not find the above combination of risk factors statistically
         significant when it was added as interaction term to the risk factors themselves (odds
         ratio 1.16 with 95% confidence intervals from 0.72 to 1.86), it should be stressed
         that this is a model different from the above SEM.
      
Statistical power analysis found that only the b3 parameter in table 3 would require a larger sample size (N = 5918) than the one available to achieve the
         90% power.
      
Discussion
The analysis demonstrated the viability of SEM using Yule's Q-transformation of odds
         ratio as input for binary variables models. On the level of individual data points,
         the raw data residuals were within the normal range and the discriminant rule for
         classification of outcomes into events and non-events based on SEM Q-scores performed
         slightly worse but still similarly to the results based on standard approach using
         logistic regression. The conclusion holds for the small sample example with generated
         data and for the real data set tested here. All these elements point out to the feasibility
         and utility of SEM using Yule's transformation for binary data, principally when complex
         relationships between the variables are present. For example, the investigation of
         the common cause of obstetric risk indicators on the outcome of interest identified
         a latent confounding variable which increased the chances of utilizing special neonatal
         care over and above the impact of the same risk indicators taken as independent predictors
         (Figure 5). The interpretation of the latent variable may lead to hypothesising a health service
         routine of treating premature births in a particular way (i.e. restraining from Caesarian
         section) or a biological propensity for birth complications, with both of these alternatives
         leading to an increased need for intensive neonatal care. This illustrates how SEM
         helps generating and investigating complex hypothesis not available by other methods.
         Yule's transformation may be helpful in preparing binary data for SEM. By using odds
         ratio both as a starting point and for the results presentation, the proposed transformation
         facilitates the interpretation of effects in the model.
      
For alpha level <0 .05="" and="" both="" em="" for="" likelihood="" ratio="" t-test="" test="" the="" univariate="">b0>
The advantage of SEM over separate logistic regression models for each outcome is
         twofold. First, SEM can model all regression equations simultaneously, thus providing
         a flexible framework for testing a range of possible relationships between the variables
         in the model, including mediating effects and possible latent confounding variables.
         Second, on a more general level, SEM parameters can quantify the contribution of each
         predictor to the covariance structure such as common factors model (Figure 5 is an example), whereas neither the interaction of continuous variables, defined
         as their crossproduct, nor the interaction terms for categorical independent variables
         in a regression model, can do this. The modelling of a common cause of observed risk
         factors and its influence on the outcome of interest is impossible outside SEM framework.
         Genetic propensity for various diseases is probably the most vivid example of the
         need for above model, enabling an investigation of the latent confounding variables
         frequently cited in the study design literature. This includes latent growth models
         with a relatively long sequence of indicators of an evolving process such as disease
         whose symptoms are typically binary indicators used for statistical modelling of the
         outcomes of interest. It is no coincidence that some recent developments in regression
         modelling have been marked by the efforts to integrate regression with a variety of
         covariance structure models [1-3].
      
Another advantage of SEM using Yule's Q-transformation of odds ratios for binary variables
         over two-level approach, based on probit or logit model or estimated correlations
         for non-normal variables as first level and SEM as second level modeling, may lay
         in the fact that the former is based on data transformation rather than estimation,
         thus avoiding the sources of error due to the latter. However, this view is not universally
         accepted and the discussion goes back to the beginning of the 20th century when Karl Pearson and George Udney Yule argued whether a measure of association
         of two binary variables needs to assume underlying continuum and bivariate normal
         distribution [16]. While the former based his calculation of tetrachoric correlation on these assumptions,
         the latter disagreed, saying that some categorical variables are inherently discrete,
         so that the continuum assumption is tenuous and in fact unnecessary because a measure
         of association for such cases can be obtained directly from cell counts in a 2 by
         2 table as in odds ratio and its transformation, today known as Yule's Q. Although
         the popularity of odds ratio over Pearson's correlation in medical statistic points
         to a prevailing tendency of embracing Yule's view in this field, an attempt to reconcile
         the two viewpoints has been made [16].
      
The fact that Yule's transformation is well known and allows an easy back-transformation
         of model parameters to odds metric makes it easier to interpret them as effect measures.
         Although SEM estimates based on already existing methods for handling categorical
         variables could be converted to an odds ratio metric for the purpose of interpretation,
         it has been used very rarely in the publications in the field and almost exclusively
         with GLLAMM.
      
Usual tools for evaluating SEM fit such as the analysis of residuals are available
         not only for input covariance matrix but also for individual data points. When classification
         of outcomes into events and non-events is of interest, sensitivity and specificity
         parameters can easily be obtained, thus making this approach applicable to a wide
         range of research problems.
      
Although other measures of comparative model fit, abundant in the SEM literature [9], may also be useful to assess various aspects of this important issue, classification
         performance is a preferred measure of predictive power in practice, particularly if
         cross-validated. For example, both data sets analysed here used saturated models which
         perfectly predicted the input correlation matrices, so the fit indices based on the
         discrepancy between observed and SEM-predicted correlation matrices obtained maximum
         values possible, but this was not particularly informative. On the other hand, SEM
         fit indices may be useful to select the best model in many other situations.
      
Despite the advantages of SEM mentioned above, there are several limitations of this
         work. First, Yule's Q is not exactly Pearson's correlation coefficient but rather
         an approximation to it which seems reasonable in large samples and for the types of
         models tested. Although the illustration of a small sample size performance seems
         satisfactory compared to logistic regression models, it is yet to be tested fully
         for a much wider range of dependency structures than presented here in order to evaluate
         the robustness of the parameters obtained. However, this requirement is a consequence
         of complex modelling issues which often arise in SEM as Yule's Q is no new estimator.
         Therefore, the findings about the properties of ML, ADF and least squares estimators
         in SEM, accumulated for almost three decades of research, apply here. This is the
         main reason why no attempt of a simulation study of SEM parameter estimates has been
         made in this work. Second, the lack of a simple rule for variable selection in SEM
         and the need to test a variety of models before selecting the acceptable ones can
         make it difficult to use this approach for quick decision making often favoured in
         routine applications of medical statistics. Model selection based on Bayes factors
         [27] may be helpful in this situation. Finally, although logit is the most popular transformation
         in modelling binary outcomes in medical statistics, there are many other link functions
         which may be more suitable for a particular model. GLLAMM [18] theory and software seem to be the most complete framework for such investigation
         up to date.
      
When the scale of SEM variables is not equal or their variances differ significantly,
         covariance matrix input should be preferred instead of correlation matrix input. Although
         SEM standard errors are less accurate with the latter even with the sample size of
         few hundreds, the data used here had much larger sample sizes and therefore are less
         influenced by the type of input matrix. In addition, the input of all SEM variables
         was on the same scale, i.e. in the odds metric. On the other hand, many SEM applications
         are performed on moderate and small samples, so the covariance matrix input would
         be preferable. With multivariate normal distribution, sample covariance matrix contains
         all the necessary information for SEM. However, with non-normal data, kurtosis was
         shown to be the most relevant parameter to be taken into account to correct the standard
         errors of SEM parameters, as in ADF estimators [12]. If means are of interest in SEM, input covariance matrix can be augmented with this
         information as well. Another way of dealing with SEM standard errors from non-normal
         data is bootstrapping, already included in several statistical packages with SEM module.
      
If the raw regression parameters from SEM exceed the domain of the inverse of Yule's
         transformation function, i.e. the interval from -1 to 1, then standardized SEM parameters
         can be used to get the odds metric via (1+Q)/(1-Q). Alternatively, a transformation
         mapping the raw SEM coefficients to this interval may be used, such as Yule's or logit,
         with corresponding back-transformation of the results to odds metric.
      
Although this work does not address the question of the association between continuous
         and dichotomous variables, extensions to include this case can be envisaged. One strategy
         would be to transform continuous variables into ordered categories with one of them
         serving as a baseline and then calculate odds ratios using logistic regression. Subsequently,
         Yule's transformation can be used to convert the odds into correlation metric to be
         analyzed by SEM. Another strategy would be to use polychoric or poliserial correlation
         for above situation and only substitute tetrachoric correlation by Yule's Q, particularly
         when the structural relationships of interest are between binary variables in the
         model and some exogenous variables are ordered or continuous.
      
Further research is needed to elucidate various aspects of the SEM based on Q-metric
         input, particularly small sample performance for a wide range of statistical models
         and their classification performance. In addition, the variance of odds ratios may
         be used to weight the estimated correlation matrix, so that Q-metric input for SEM
         takes into account the precision of the original scale and not only the magnitude
         of association between two binary variables. Relative fit measures such as those recently
         proposed by Agresti & Caffo [28] may help selecting among competing models of different kind.
      
Conclusion
SEM based on Q-transformation of odds ratios can be used to investigate complex dependency
         structures such as latent confounding factors and their influences on both observed
         risk factors and categorical outcome variables.
      
Competing interests
The author(s) declare that they have no competing interest.
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