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UK data driving real-world evidence
Bibliography
Research using CPRD data has informed drug safety guidance and clinical practice and resulted in over 2,600 peer-reviewed publications. The CPRD bibliography is updated on a monthly basis (last updated 4 January 2021) and papers are listed below and in the PDF below.
If you have published papers using CPRD data which are not included in this list, please contact us at enquiries@cprd.com so that we can update the bibliography.
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(PDF, 3MB, 218 pages)This work uses data provided by patients and collected by the NHS as part of their care and support. CPRD encourages researchers to use this citation in all publications using CPRD data. Find out more about acknowledging the use of patient data at the Understanding Patient Data website.
“An algorithm to derive a numerical daily dose from unstructured text dosage instructions”, Pharmacoepidemiol Drug Saf, vol. 15, pp. 161-6, 2006.
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“Data resource profile: cardiovascular disease research using linked bespoke studies and electronic health records (CALIBER)”, Int J Epidemiol, vol. 41, pp. 1625-38, 2012.
, “An electronic health records cohort study on heart failure following myocardial infarction in England: incidence and predictors”, BMJ Open, vol. 8, p. e018331, 2018.
, “Extracting diagnoses and investigation results from unstructured text in electronic health records by semi-supervised machine learning”, PLoS One, vol. 7, p. e30412, 2012.
, “The freetext matching algorithm: a computer program to extract diagnoses and causes of death from unstructured text in electronic health records”, BMC Med Inform Decis Mak, vol. 12, p. 88, 2012.
, “Natural language processing for disease phenotyping in UK primary care records for research: a pilot study in myocardial infarction and death”, J Biomed Semantics, vol. 10, p. 20, 2019.
, “Threshold haemoglobin levels and the prognosis of stable coronary disease: two new cohorts and a systematic review and meta-analysis”, PLoS Med, vol. 8, p. e1000439, 2011.
, “UK phenomics platform for developing and validating electronic health record phenotypes: CALIBER”, J Am Med Inform Assoc, 2019.
, “Using electronic health records to predict costs and outcomes in stable coronary artery disease”, Heart, vol. 102, pp. 755-62, 2016.
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