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      "title": "Individual-level patient data for binary outcome, continuous covariates",
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      "page": "calculate_trial_variance_binary",
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        "calculate_trial_variance_count"
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      "page": "estimate_var_sandwich",
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    {
      "page": "get_treatment_effect",
      "title": "Get treatment effect scale corresponding to a link function",
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