Cargando…

Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases

In cases of food poisoning, it is important for food sanitation inspectors to determine the causative pathogen as early as possible and take necessary measures to minimize outbreaks. Interviews are usually conducted to obtain epidemiological information to aid in the rapid determination of the cause...

Descripción completa

Detalles Bibliográficos
Autores principales: INOUE, Hideya, SUZUKI, Tomoyuki, HYODO, Masashi, MIYAKE, Masami
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Japanese Society of Veterinary Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6115259/
https://www.ncbi.nlm.nih.gov/pubmed/29887580
http://dx.doi.org/10.1292/jvms.17-0653
_version_ 1783351348525268992
author INOUE, Hideya
SUZUKI, Tomoyuki
HYODO, Masashi
MIYAKE, Masami
author_facet INOUE, Hideya
SUZUKI, Tomoyuki
HYODO, Masashi
MIYAKE, Masami
author_sort INOUE, Hideya
collection PubMed
description In cases of food poisoning, it is important for food sanitation inspectors to determine the causative pathogen as early as possible and take necessary measures to minimize outbreaks. Interviews are usually conducted to obtain epidemiological information to aid in the rapid determination of the cause. However, the current method of determining the causative pathogen has the disadvantage of being reliant upon the experience and knowledge of food sanitation inspectors. Here, we analyzed 529 infectious food poisoning incidents reported in five municipalities in the Kinki region to develop a tool for evaluation using a multinomial logistic regression model, which can predict the causative pathogen based on the patients’ epidemiological information. This tool predicts the most probable cause of the incident by generating a list of pathogens with the highest probability. As a result of leave-one-out cross validation, the agreement ratio with the actual pathogen was 86.4%, and this ratio increased to 97.5% when the agreement was judged by including the true pathogen within the top three pathogens with the highest probability. In cases where the difference of probability between the first and second candidate pathogen was ≥50%, the agreement ratio increased to 94.2%. Using this tool, it is possible to accurately estimate the causative pathogen at an early stage based on patient information, and this will further help narrow the target of investigations to identify causative agent, thereby leading to a prompt identification, which can prevent the spread of food poisoning.
format Online
Article
Text
id pubmed-6115259
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher The Japanese Society of Veterinary Science
record_format MEDLINE/PubMed
spelling pubmed-61152592018-09-24 Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases INOUE, Hideya SUZUKI, Tomoyuki HYODO, Masashi MIYAKE, Masami J Vet Med Sci Public Health In cases of food poisoning, it is important for food sanitation inspectors to determine the causative pathogen as early as possible and take necessary measures to minimize outbreaks. Interviews are usually conducted to obtain epidemiological information to aid in the rapid determination of the cause. However, the current method of determining the causative pathogen has the disadvantage of being reliant upon the experience and knowledge of food sanitation inspectors. Here, we analyzed 529 infectious food poisoning incidents reported in five municipalities in the Kinki region to develop a tool for evaluation using a multinomial logistic regression model, which can predict the causative pathogen based on the patients’ epidemiological information. This tool predicts the most probable cause of the incident by generating a list of pathogens with the highest probability. As a result of leave-one-out cross validation, the agreement ratio with the actual pathogen was 86.4%, and this ratio increased to 97.5% when the agreement was judged by including the true pathogen within the top three pathogens with the highest probability. In cases where the difference of probability between the first and second candidate pathogen was ≥50%, the agreement ratio increased to 94.2%. Using this tool, it is possible to accurately estimate the causative pathogen at an early stage based on patient information, and this will further help narrow the target of investigations to identify causative agent, thereby leading to a prompt identification, which can prevent the spread of food poisoning. The Japanese Society of Veterinary Science 2018-06-11 2018-08 /pmc/articles/PMC6115259/ /pubmed/29887580 http://dx.doi.org/10.1292/jvms.17-0653 Text en ©2018 The Japanese Society of Veterinary Science This is an open-access article distributed under the terms of the Creative Commons Attribution Non-Commercial No Derivatives (by-nc-nd) License. (CC-BY-NC-ND 4.0: https://creativecommons.org/licenses/by-nc-nd/4.0/)
spellingShingle Public Health
INOUE, Hideya
SUZUKI, Tomoyuki
HYODO, Masashi
MIYAKE, Masami
Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
title Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
title_full Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
title_fullStr Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
title_full_unstemmed Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
title_short Evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
title_sort evaluation of multinomial logistic regression models for predicting causative pathogens of food poisoning cases
topic Public Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6115259/
https://www.ncbi.nlm.nih.gov/pubmed/29887580
http://dx.doi.org/10.1292/jvms.17-0653
work_keys_str_mv AT inouehideya evaluationofmultinomiallogisticregressionmodelsforpredictingcausativepathogensoffoodpoisoningcases
AT suzukitomoyuki evaluationofmultinomiallogisticregressionmodelsforpredictingcausativepathogensoffoodpoisoningcases
AT hyodomasashi evaluationofmultinomiallogisticregressionmodelsforpredictingcausativepathogensoffoodpoisoningcases
AT miyakemasami evaluationofmultinomiallogisticregressionmodelsforpredictingcausativepathogensoffoodpoisoningcases