A machine learning–based clinical decision support system to identify prescriptions with a high risk of medication error

Author:

Corny Jennifer1ORCID,Rajkumar Asok1,Martin Olivier2,Dode Xavier34,Lajonchère Jean-Patrick5,Billuart Olivier6,Bézie Yvonnick1,Buronfosse Anne6

Affiliation:

1. Pharmacy Department, Groupe Hospitalier Paris Saint Joseph, Paris, France

2. Lumio Medical, Paris, France

3. Centre National Hospitalier d’Information sur le Médicament, Paris, France

4. Pharmacy Department, Hospices Civils de Lyon University Hospital, Lyon, France

5. Groupe Hospitalier Paris Saint Joseph, Paris, France

6. Medical Information Department, Groupe Hospitalier Paris Saint Joseph, Paris, France

Abstract

Abstract Objective To improve patient safety and clinical outcomes by reducing the risk of prescribing errors, we tested the accuracy of a hybrid clinical decision support system in prioritizing prescription checks. Materials and Methods Data from electronic health records were collated over a period of 18 months. Inferred scores at a patient level (probability of a patient’s set of active orders to require a pharmacist review) were calculated using a hybrid approach (machine learning and a rule-based expert system). A clinical pharmacist analyzed randomly selected prescription orders over a 2-week period to corroborate our findings. Predicted scores were compared with the pharmacist’s review using the area under the receiving-operating characteristic curve and area under the precision-recall curve. These metrics were compared with existing tools: computerized alerts generated by a clinical decision support (CDS) system and a literature-based multicriteria query prioritization technique. Data from 10 716 individual patients (133 179 prescription orders) were used to train the algorithm on the basis of 25 features in a development dataset. Results While the pharmacist analyzed 412 individual patients (3364 prescription orders) in an independent validation dataset, the areas under the receiving-operating characteristic and precision-recall curves of our digital system were 0.81 and 0.75, respectively, thus demonstrating greater accuracy than the CDS system (0.65 and 0.56, respectively) and multicriteria query techniques (0.68 and 0.56, respectively). Discussion Our innovative digital tool was notably more accurate than existing techniques (CDS system and multicriteria query) at intercepting potential prescription errors. Conclusions By primarily targeting high-risk patients, this novel hybrid decision support system improved the accuracy and reliability of prescription checks in a hospital setting.

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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