Identification of high-risk patients for referral through machine learning assisting the decision making to manage minor ailments in community pharmacies
Metadatos
Mostrar el registro completo del ítemEditorial
Frontiers
Materia
Machine learning Community pharmacy services Triage Primary healthcare General practice
Fecha
2023-07-11Referencia bibliográfica
Amador-Fernández N, Benrimoj SI, García-Cárdenas V, Gastelurrutia MÁ, Graham EL, Palomo-Llinares R, Sánchez-Tormo J, Baixauli Fernández VJ, Pérez Hoyos E, Plaza Zamora J, Colomer Molina V, Fuertes González R, García Agudo Ó and Martínez-Martínez F (2023), Identification of high-risk patients for referral through machine learning assisting the decision making to manage minor ailments in community pharmacies. Front. Pharmacol. 14:1105434. [doi: 10.3389/fphar.2023.1105434]
Patrocinador
Spanish Society of Clinical, Family and Community Pharmacy and the Pharmaceutical Associations of Valencia, Madrid, Gipuzkoa, Malaga, Castellon and Valladolid; University of Granada; Open access funding by University of Lausanne.Resumen
Background: Data analysis techniques such as machine learning have been used
for assisting in triage and the diagnosis of health problems. Nevertheless, it has not
been used yet to assist community pharmacists with services such as the Minor
Ailment Services These services have been implemented to reduce the burden of
primary care consultations in general medical practitioners (GPs) and to allow a
better utilization of community pharmacists’ skills. However, there is a need to
refer high-risk patients to GPs.
Aim: To develop a predictive model for high-risk patients that need referral
assisting community pharmacists’ triage through a minor ailment service.
Method: An ongoing pragmatic type 3 effectiveness-implementation hybrid study
was undertaken at a national level in Spanish community pharmacies since
October 2020. Pharmacists recruited patients presenting with minor ailments
and followed them 10 days after the consultation. The main outcome measured
was appropriate medical referral (in accordance with previously co-designed
protocols). Nine machine learning models were tested (three statistical, three
black box and three tree models) to assist pharmacists in the detection of high-risk
individuals in need of referral.
Results: Over 14′000 patients were included in the study. Most patients were
female (68.1%). With no previous treatment for the specific minor ailment (68.0%)
presented. A percentage of patients had referral criteria (13.8%) however, not all of
these patients were referred by the pharmacist to the GP (8.5%). The pharmacists
were using their clinical expertise not to refer these patients. The primary
prediction model was the radial support vector machine (RSVM) with an
accuracy of 0.934 (CI95 = [0.926,0.942]), Cohen’s kappa of 0.630, recall equal to 0.975 and an area under the curve of 0.897. Twenty variables (out of
61 evaluated) were included in the model. radial support vector machine could
predict 95.2% of the true negatives and 74.8% of the true positives. When evaluating
the performance for the 25 patient’s profiles most frequent in the study, the model
was considered appropriate for 56% of them.
Conclusion: A RSVM model was obtained to assist in the differentiation of patients
that can be managed in community pharmacy from those who are at risk and
should be evaluated by GPs. This tool potentially increases patients’ safety by
increasing pharmacists’ ability to differentiate minor ailments from other medical
conditions