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Deep learning classification of drug-related problems from pharmaceutical interventions issued by hospital clinical pharmacists during medication prescription review: a large-scale descriptive retrospective study in a French university hospital
  1. Ahmad Alkanj1,2,
  2. Julien Godet2,3,4,
  3. Erin Johns2,
  4. Benedicte Gourieux1,5,
  5. Bruno Michel1,2,5
    1. 1Laboratoire de Pharmacologie et Toxicologie NeuroCardiovasculaire UR7296, Strasbourg, France
    2. 2Université de Strasbourg, Strasbourg, France
    3. 3ICube - IMAGeS, UMR 7357 & Groupe Méthode Recherche Clinique, Pôle de Santé Publique, Strasbourg, France
    4. 4Hôpitaux Universitaires de Strasbourg, Strasbourg, France
    5. 5Pharmacie, Hôpitaux Universitaires de Strasbourg, Strasbourg, France
    1. Correspondence to Professor Bruno Michel; bruno.michel{at}unistra.fr

    Abstract

    Objectives Pharmaceutical interventions are proposals made by hospital clinical pharmacists to address sub-optimal uses of medications during prescription review. Pharmaceutical interventions include the identification of drug-related problems, their prevention and resolution. The objective of this study was to exploit a newly developed deep neural network classifier to identify drug-related problems from pharmaceutical interventions and perform a large retrospective descriptive analysis of them in a French university hospital over a 3-year period.

    Methods Data were collected from prescription support software from 2018 to 2020. A classifier running in Python 3.8 and using Keras library was then used to automatically categorise drug-related problems from pharmaceutical interventions according to the coding of the French Society of Clinical Pharmacy.

    Results 2 930 656 prescription lines were analysed for a total of 119 689 patients. Among these prescription lines, 153 335 (5.2%) resulted in pharmaceutical interventions (n=48 202 patients; 40.2%). Pharmaceutical interventions were predominantly observed in patients aged 65 years or older (n=26 141 patients out of 53 186; 49.1%) and in patients taking five or more medications (44 702 patients out of 93 419; 47.8%). The most frequently identified types of drug-related problems associated with pharmaceutical interventions were ‘Non-conformity to guidelines or contra-indication’ (n=88 523; 57.7%), ‘Overdosage’ (16 975; 11.1%) and ‘Improper administration’ (13 898; 9.1%). The most frequently encountered drugs were: paracetamol (n=10 585; 6.9%), esomeprazole (6031; 3.9%), hydrochlorothiazide (2951; 1.9%), enoxaparin (2191; 1.4%), tramadol (1879; 1.2%), calcium (2073; 1.3%), perindopril (1950; 1.2%), amlodipine (1716; 1.1%), simvastatin (1560; 1.0%) and insulin (1019; 0.7%).

    Conclusions The deep neural network classifier used met the challenge of automatically classifying drug-related problems from pharmaceutical interventions from a large database without mobilising significant human resources. The use of such a classifier can lead to alerting caregivers about certain risky practices in prescription and administration, and triggering actions to improve patients’ therapeutic outcomes.

    • PHARMACY SERVICE, HOSPITAL
    • Quality of Health Care
    • Pharmacovigilance
    • MEDICATION SYSTEMS, HOSPITAL
    • GERIATRICS

    Data availability statement

    Data are available upon reasonable request.

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