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  "documentTitle": "MTA Financial Impact COVID-19",
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      "text": "(4/28/20) Please see disclaimer on page 3. These analyses represent only potential scenarios based on discrete data from one point in time. They are not intended as a prediction or forecast, and the situation is changing daily.",
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