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Two multivariable logisticmodels were evaluated to predict the likelihood of PSMs.
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Multivariable three-level logisticmodels with random intercepts were run separately by sex.
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Multivariable logisticmodels were used after adjusting for potentially confounding factors.
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Strength of associations was assessed using odds ratios derived from conditional logisticmodels.
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Results: Five logisticmodels were fitted for the resistance to each of the antibiotic drugs.
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We developed simple logisticmodels and multinomial logisticmodels.
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Case-control differences in self-reporting were analyzed with logisticmodels.
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Based on multivariate logisticmodels, the nomogram was generated.
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Risk factors were confirmed in multivariate logisticmodels.
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Multilevel linear and logisticmodels were constructed adjusting for covariates and accounting for clustering within worksites.
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Ordinal logisticmodels were applied with three groups of response corresponding to three ordered levels of HIV-risk perception.
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Multivariate logisticmodels were used to estimate the association between homeless experience and housed patients with readmission following surgery.
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The concordance indices and the Hosmer- Lemeshow statistics of both logisticmodels indicated a good fit to the observed data.
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The shape of dose-response relationships was assessed using a continuous exposure variable in generalised additive logisticmodels with penalised splines.
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Backward feature selection was used to identify variables to be included in logisticmodels for moderate-severe (scores⩾4) urinary symptoms.
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The Baranyi model appeared to fit the overall experimental data better than did the modified Gompertz and the modified logisticmodels.