Cargando…

Detection of overdose and underdose prescriptions—An unsupervised machine learning approach

Overdose prescription errors sometimes cause serious life-threatening adverse drug events, while underdose errors lead to diminished therapeutic effects. Therefore, it is important to detect and prevent these errors. In the present study, we used the one-class support vector machine (OCSVM), one of...

Descripción completa

Detalles Bibliográficos
Autores principales: Nagata, Kenichiro, Tsuji, Toshikazu, Suetsugu, Kimitaka, Muraoka, Kayoko, Watanabe, Hiroyuki, Kanaya, Akiko, Egashira, Nobuaki, Ieiri, Ichiro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8604308/
https://www.ncbi.nlm.nih.gov/pubmed/34797894
http://dx.doi.org/10.1371/journal.pone.0260315
_version_ 1784601930449813504
author Nagata, Kenichiro
Tsuji, Toshikazu
Suetsugu, Kimitaka
Muraoka, Kayoko
Watanabe, Hiroyuki
Kanaya, Akiko
Egashira, Nobuaki
Ieiri, Ichiro
author_facet Nagata, Kenichiro
Tsuji, Toshikazu
Suetsugu, Kimitaka
Muraoka, Kayoko
Watanabe, Hiroyuki
Kanaya, Akiko
Egashira, Nobuaki
Ieiri, Ichiro
author_sort Nagata, Kenichiro
collection PubMed
description Overdose prescription errors sometimes cause serious life-threatening adverse drug events, while underdose errors lead to diminished therapeutic effects. Therefore, it is important to detect and prevent these errors. In the present study, we used the one-class support vector machine (OCSVM), one of the most common unsupervised machine learning algorithms for anomaly detection, to identify overdose and underdose prescriptions. We extracted prescription data from electronic health records in Kyushu University Hospital between January 1, 2014 and December 31, 2019. We constructed an OCSVM model for each of the 21 candidate drugs using three features: age, weight, and dose. Clinical overdose and underdose prescriptions, which were identified and rectified by pharmacists before administration, were collected. Synthetic overdose and underdose prescriptions were created using the maximum and minimum doses, defined by drug labels or the UpToDate database. We applied these prescription data to the OCSVM model and evaluated its detection performance. We also performed comparative analysis with other unsupervised outlier detection algorithms (local outlier factor, isolation forest, and robust covariance). Twenty-seven out of 31 clinical overdose and underdose prescriptions (87.1%) were detected as abnormal by the model. The constructed OCSVM models showed high performance for detecting synthetic overdose prescriptions (precision 0.986, recall 0.964, and F-measure 0.973) and synthetic underdose prescriptions (precision 0.980, recall 0.794, and F-measure 0.839). In comparative analysis, OCSVM showed the best performance. Our models detected the majority of clinical overdose and underdose prescriptions and demonstrated high performance in synthetic data analysis. OCSVM models, constructed using features such as age, weight, and dose, are useful for detecting overdose and underdose prescriptions.
format Online
Article
Text
id pubmed-8604308
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-86043082021-11-20 Detection of overdose and underdose prescriptions—An unsupervised machine learning approach Nagata, Kenichiro Tsuji, Toshikazu Suetsugu, Kimitaka Muraoka, Kayoko Watanabe, Hiroyuki Kanaya, Akiko Egashira, Nobuaki Ieiri, Ichiro PLoS One Research Article Overdose prescription errors sometimes cause serious life-threatening adverse drug events, while underdose errors lead to diminished therapeutic effects. Therefore, it is important to detect and prevent these errors. In the present study, we used the one-class support vector machine (OCSVM), one of the most common unsupervised machine learning algorithms for anomaly detection, to identify overdose and underdose prescriptions. We extracted prescription data from electronic health records in Kyushu University Hospital between January 1, 2014 and December 31, 2019. We constructed an OCSVM model for each of the 21 candidate drugs using three features: age, weight, and dose. Clinical overdose and underdose prescriptions, which were identified and rectified by pharmacists before administration, were collected. Synthetic overdose and underdose prescriptions were created using the maximum and minimum doses, defined by drug labels or the UpToDate database. We applied these prescription data to the OCSVM model and evaluated its detection performance. We also performed comparative analysis with other unsupervised outlier detection algorithms (local outlier factor, isolation forest, and robust covariance). Twenty-seven out of 31 clinical overdose and underdose prescriptions (87.1%) were detected as abnormal by the model. The constructed OCSVM models showed high performance for detecting synthetic overdose prescriptions (precision 0.986, recall 0.964, and F-measure 0.973) and synthetic underdose prescriptions (precision 0.980, recall 0.794, and F-measure 0.839). In comparative analysis, OCSVM showed the best performance. Our models detected the majority of clinical overdose and underdose prescriptions and demonstrated high performance in synthetic data analysis. OCSVM models, constructed using features such as age, weight, and dose, are useful for detecting overdose and underdose prescriptions. Public Library of Science 2021-11-19 /pmc/articles/PMC8604308/ /pubmed/34797894 http://dx.doi.org/10.1371/journal.pone.0260315 Text en © 2021 Nagata et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Nagata, Kenichiro
Tsuji, Toshikazu
Suetsugu, Kimitaka
Muraoka, Kayoko
Watanabe, Hiroyuki
Kanaya, Akiko
Egashira, Nobuaki
Ieiri, Ichiro
Detection of overdose and underdose prescriptions—An unsupervised machine learning approach
title Detection of overdose and underdose prescriptions—An unsupervised machine learning approach
title_full Detection of overdose and underdose prescriptions—An unsupervised machine learning approach
title_fullStr Detection of overdose and underdose prescriptions—An unsupervised machine learning approach
title_full_unstemmed Detection of overdose and underdose prescriptions—An unsupervised machine learning approach
title_short Detection of overdose and underdose prescriptions—An unsupervised machine learning approach
title_sort detection of overdose and underdose prescriptions—an unsupervised machine learning approach
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8604308/
https://www.ncbi.nlm.nih.gov/pubmed/34797894
http://dx.doi.org/10.1371/journal.pone.0260315
work_keys_str_mv AT nagatakenichiro detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT tsujitoshikazu detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT suetsugukimitaka detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT muraokakayoko detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT watanabehiroyuki detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT kanayaakiko detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT egashiranobuaki detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach
AT ieiriichiro detectionofoverdoseandunderdoseprescriptionsanunsupervisedmachinelearningapproach