Abstract

BackgroundPattern mining utilizes multiple algorithms to explore objective and sometimes unexpected patterns in real-world data. This technique could be applied to electronic medical record data mining; however, it first requires a careful clinical assessment and validation.ObjectiveThe aim of this study was to examine the use of pattern mining techniques on a large clinical dataset to detect treatment and medication use patterns for childhood pneumonia.MethodsWe applied 3 pattern mining algorithms to 680,138 medication administration records from 30,512 childhood inpatients with diagnosis of pneumonia during a 6-year period at a children’s hospital in China. Patients’ ages ranged from 0 to 17 years, where 37.53% (11,453/30,512) were 0 to 3 months old, 86.55% (26,408/30,512) were under 5 years, 60.37% (18,419/30,512) were male, and 60.10% (18,338/30,512) had a hospital stay of 9 to 15 days. We used the FP-Growth, PrefixSpan, and USpan pattern mining algorithms. The first 2 are more traditional methods of pattern mining and mine a complete set of frequent medication use patterns. PrefixSpan also incorporates an administration sequence. The newer USpan method considers medication utility, defined by the dose, frequency, and timing of use of the 652 individual medications in the dataset. Together, these 3 methods identified the top 10 patterns from 6 age groups, forming a total of 180 distinct medication combinations. These medications encompassed the top 40 (73.66%, 500,982/680,138) most frequently used medications. These patterns were then evaluated by subject matter experts to summarize 5 medication use and 2 treatment patterns.ResultsWe identified 5 medication use patterns: (1) antiasthmatics and expectorants and corticosteroids, (2) antibiotics and (antiasthmatics or expectorants or corticosteroids), (3) third-generation cephalosporin antibiotics with (or followed by) traditional antibiotics, (4) antibiotics and (medications for enteritis or skin diseases), and (5) (antiasthmatics or expectorants or corticosteroids) and (medications for enteritis or skin diseases). We also identified 2 frequent treatment patterns: (1) 42.89% (291,701/680,138) of specific medication administration records were of intravenous therapy with antibiotics, diluents, and nutritional supplements and (2) 11.53% (78,390/680,138) were of various combinations of inhalation of antiasthmatics, expectorants, or corticosteroids. Fleiss kappa for the subject experts’ evaluation was 0.693, indicating moderate agreement.ConclusionsUtilizing a pattern mining approach, we summarized 5 medication use patterns and 2 treatment patterns. These warrant further investigation.

Highlights

  • Childhood pneumonia remains the single largest cause of death in young children worldwide [1,2]

  • We explored the utility of a pattern mining approach to the entire record of inpatient Electronic medical record (EMR)-based medications administered for childhood pneumonia in a large children’s hospital in China across several years

  • Ethical approval from the regional ethical review board is not needed for this type of study of deidentified EMRs according to Chinese legislation, we still applied for and received approval from the Institutional Review Board of the Children’s Hospital of Shanghai (CHS)

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Summary

Introduction

Childhood pneumonia remains the single largest cause of death in young children worldwide [1,2]. According to a recent World Health Organization (WHO) report, an estimated 922,000 children under the age of 5 passed away because of pneumonia in 2015 alone, accounting for 16% of all deaths in this age group [2,3]. Multiple medication therapies are common practice and may provide more effective treatment with a lower concentration of individual components lessening the risk of side effects and toxicity [9,10]. What is missing is the knowledge derived directly from real-world clinical practice. Pattern mining utilizes multiple algorithms to explore objective and sometimes unexpected patterns in real-world data. This technique could be applied to electronic medical record data mining; it first requires a careful clinical assessment and validation

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