Description:
In any scientific field, demonstrating cause-and-effect relationships is of the utmost
importance, however difficult to achieve. The present study aims to establish an objective
approach to substantiate cause-and-effect relationships. Our approach consisted of ranking
published studies and subsequently using the best performing studies to construct and
validate a statistical model. For the first part, studies on the association between vitamin D status and COVID-19 severity (morbidity/mortality) in hospitalized patients were identi
f
ied and ranked using a combination of physiological and statistical relevance, including
dose-dependency, power evaluation, confounding, physiological mechanisms, and target
population. The various ranking criteria were developed in an iterative process, taking
into account the Bradford Hill criteria. For the second part, a two-step statistical modelling
strategy was implemented. Firstly, a multivariate model was constructed and secondly, this
model was validated using data from at least one other independent study with a similar
design. The sensitivity (percentage of correctly detected cases by the model) and specificity
(percentage of correctly detected non-cases by the model) was assessed in both studies, and
the results of both studies (model-making and model-testing) were compared using the
Chi-square test with expectation. Five ranking criteria were defined with a maximum score
of 67 points. Six studies were selected with scores ranging between 27 and 47 points [1–6].
The highest score was obtained by Hernandez et al., 2021 [1]. Unfortunately, it was not
possible to obtain complete independent datasets of these studies. Therefore, to evaluate
our approach in cause- and-effect relationships, two datasets were selected of studies on
the effects of postbiotic intake on the incidence of pulmonary and gastrointestinal infections
in children aged 1 to 4 years [7,8]. A logistic confounding model in combination with
a discriminant analysis was applied on the first (model-making) study resulting in an
internal sensitivity and specificity of 78% and 100%, respectively (p < 0.001), showing a
treatment effect on the reduction of infections (p < 0.001). An external validation of the
acquired model in a second independent (model-testing) study showed sensitivity and
specificity of 76% and 80% (p < 0.001), again showing a treatment effect (p < 0.001). The
sensitivity and specificity were not statistically different indicating similarity of the impact
by the explanatory variables in both datasets. Overall, the combination of ranking studies
and statistical modelling supports the validation of cause-and-effect relationships using objective criteria. Demonstrating consistency in associations by replication and robustness
testing contributes to proof of concept in causative relations.
URL:
http://103.158.96.210:88/web_repository/uploads/proceedings-91-00096.pdf
Type:
Procceding
Document:
Diploma III Farmasi
Date:
23-06-2024
Author:
Wim Calame