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

Development of an electronic medical record-based algorithm to identify patients with Stevens-Johnson syndrome and toxic epidermal necrolysis in Japan.

担当区分

 

著者

Toshiki Fukasawa
Hayato Takahashi
Norin Kameyama
Risa Fukuda
Shihori Furuhata
Nanae Tanemura
Masayuki Amagai
Hisashi Urushihara

概要

Stevens-Johnson syndrome (SJS) and toxic epidermal necrolysis (TEN), severe drug reactions, are often misdiagnosed due to their rarity and lack of information on differential diagnosis. The objective of the study was to develop an electronic medical record (EMR)-based algorithm to identify patients with SJS/TEN for future application in database studies. From the EMRs of a university hospital, two dermatologists identified all 13 patients with SJS/TEN seen at the Department of Dermatology as the case group. Another 1472 patients who visited the Department of Dermatology were identified using the ICD-10 codes for diseases requiring differentiation from SJS/TEN. One hundred of these patients were then randomly sampled as controls. Based on clinical guidelines for SJS/TEN and the experience of the dermatologists, we tested 128 algorithms based on the use of ICD-10 codes, clinical courses for SJS/TEN, medical encounters for mucocutaneous lesions from SJS/TEN, and items to exclude paraneoplastic pemphigus. The sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and diagnostic odds ratio (DOR) of each algorithm were calculated, and the optimal algorithm was defined as that with high PPV and maximal sensitivity and specificity. One algorithm, consisting of a combination of clinical course for SJS/TEN, medical encounters for mucocutaneous lesions from SJS/TEN, and items to exclude paraneoplastic pemphigus, but not ICD-10 codes, showed a sensitivity of 76.9%, specificity of 99.0%, PPV of 40.5%, NPV of 99.8%, and DOR of 330.00. We developed a potentially optimized algorithm for identifying SJS/TEN based on clinical practice records. The almost perfect specificity of this algorithm will prevent bias in estimating relative risks of SJS/TEN in database studies. Considering the small sample size, this algorithm should be further tested in different settings.

発表雑誌等の名称

PloS one

出版者

PLoS ONE

14

8

開始ページ

e0221130

終了ページ

 

発行又は発表の年月

2019

査読の有無

true

招待の有無

false

記述言語

英語

掲載種別

研究論文(学術雑誌)

国際・国内誌

true

国際共著

 

ISSN

 

eISSN

 

ISBN

 

DOI

10.1371/journal.pone.0221130

Cinii Articles ID

 

Cinii Books ID

 

Pubmed ID

 

PubMed Central 記事ID

 

形式

DOI
PubMed URL
PubMed Central 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