The impact of electronic medical records data sources on an adverse ...
pubmed.ncbi.nlm.nih.gov › ...
Objective: To examine the impact of billing and clinical data extracted from an electronic medical record system on the calculation of an adverse drug event ( ...
To examine the impact of billing and clinical data extracted from an electronic medical record system on the calculation of an adverse drug event (ADE) ...
Trigger tools are used to screen for patient safety events and are also used to calculate rates of certain safety problems (such as adverse drug events).
[PDF] The impact of electronic medical records data sources on an ...
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Examination of billing and clinical data extracted from an electronic medical record system on the calculation of an adverse drug event (ADE) quality ...
To examine the impact of billing and clinical data extracted from an electronic medical record system on the calculation of an adverse drug event (ADE) ...
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How do electronic medical records affect the quality of patient care?
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The impact of electronic medical records data sources on an adverse drug event quality measure. https://doi.org/10.1136/jamia.2009.002451 · Full text.
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