Japanese Journal of Pharmacoepidemiology/Yakuzai ekigaku
Online ISSN : 1882-790X
Print ISSN : 1342-0445
ISSN-L : 1342-0445
Original Article
Signal Detection of Adverse Drug Reactions through LASSO Logistic Regression Using an Electronic Health Records DatabaseA Case-Control Study
Hiroshi HAYASHITatsuo HIRAMATSUDaisuke KOIDEKatsuya TANAKAKazuhiko OHE
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JOURNAL FREE ACCESS

2017 Volume 21 Issue 2 Pages 51-62

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Abstract

Objective:The objective of this study was to apply Least Absolute Shrinkage and Selection Operator (LASSO)logistic regression to detection of adverse drug reaction (ADR) signals using an electronic health records database as a comprehensive and quantitative method to supplement the current pharmacovigilance activities in Japan.

Design:case-control study

Methods:We analyzed data from 40767 inpatients using a single-institution hospital database and identified two ADRs, suspected pancreatitis and thrombocytopenia, using abnormal laboratory test results. LASSO logistic regression analysis was applied to detect ADR signals with adjustment for age, sex, comorbidities and medical procedures. The positive predictive value (PPV) was calculated using reference standard of known drug-ADR associations based on drug product labels.

Results:The number of case group was 6735 for suspected pancreatitis and 11561 for thrombocytopenia. The number of ADR signals detected using LASSO logistic regression was 27 for suspected pancreatitis and 40 for thrombocytopenia. The calculated PPV was 3.7% for suspected pancreatitis and 55.0% for thrombocytopenia.

Conclusion:LASSO logistic regression analysis efficiently detects ADR signals by adjusting for confounding factors such as comorbidities and medical procedures. The false positive signals may contain unknown signals and further signal assessment will be needed.

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© 2017 Japanese Society for Pharmacoepidemiology
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