論文

基本情報

氏名 種村 菜奈枝
氏名(カナ) タネムラ ナナエ
氏名(英語) Tanemura Nanae
所属 社会学部 メディア社会学科
職名 教授
researchmap研究者コード 7000025167
researchmap機関

題名

Extracting the latent needs of dementia patients and caregivers from transcribed interviews in Japanese: an initial assessment of the availability of morpheme selection as input data with Z-scores in machine learning

担当区分

 

著者

Nanae Tanemura
Tsuyoshi Sasaki
Ryotaro Miyamoto
Jin Watanabe
Michihiro Araki
Junko Sato
Tsuyoshi Chiba

概要

Abstract

 Background

 Given the increasing number of dementia patients worldwide, a new method was developed for machine learning models to identify the ‘latent needs’ of patients and caregivers to facilitate patient/public involvement in societal decision making.

 Methods

 Japanese transcribed interviews with 53 dementia patients and caregivers were used. A new morpheme selection method using Z-scores was developed to identify trends in describing the latent needs. F-measures with and without the new method were compared using three machine learning models.

 Results

 The F-measures with the new method were higher for the support vector machine (SVM) (F-measure of 0.81 with the new method and F-measure of 0.79 without the new method for patients) and Naive Bayes (F-measure of 0.69 with the new method and F-measure of 0.67 without the new method for caregivers and F-measure of 0.75 with the new method and F-measure of 0.73 without the new method for patients).

 Conclusion

 A new scheme based on Z-score adaptation for machine learning models was developed to predict the latent needs of dementia patients and their caregivers by extracting data from interviews in Japanese. However, this study alone cannot be used to assign significance to the adaptation of the new method because of no enough size of sample dataset. Such pre-selection with Z-score adaptation from text data in machine learning models should be considered with more modified suitable methods in the near future.

発表雑誌等の名称

BMC Medical Informatics and Decision Making

出版者

Springer Science and Business Media LLC

23

203

開始ページ

 

終了ページ

 

発行又は発表の年月

2023-10

査読の有無

true

招待の有無

 

記述言語

 

掲載種別

研究論文(学術雑誌)

国際・国内誌

 

国際共著

 

ISSN

 

eISSN

 

ISBN

 

DOI

10.1186/s12911-023-02303-3

Cinii Articles ID

 

Cinii Books ID

 

Pubmed ID

 

PubMed Central 記事ID

 

形式

DOI
URL
URL

無償ダウンロード



JGlobalID

 

arXiv ID

 

ORCIDのPut Code

 

DBLP ID

 

主要業績フラグ

false