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  "Title": "Synthesizing Causal Evidence in a Distributed Research Network",
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    "plotPosterior",
    "plotPreparedPs",
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    "sequentialFitBiasDistribution",
    "simulateMetaAnalysisWithNegativeControls",
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      "title": "Example profile likelihoods for negative control outcomes",
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      "class": [
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      ],
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      "table": false,
      "tojson": true
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      "title": "Fit Bias Distribution",
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