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JDR Vol.10 No.5 pp. 900-918
(2015)
doi: 10.20965/jdr.2015.p0900

Paper:

Sustainable Training-Model Development Based on Analysis of Disaster Medicine Training

Shoichi Ohta*1, Munekazu Takeda*2, Ryo Sasaki*3, Hirotaka Uesugi*1, Hironobu Kamagata*1, Kentaro Kawai*1, Satomi Kuroshima*4, Michie Kawashima*5, Masaki Onishi*6, and Ikushi Yoda*6

*1Department of Emergency and Critical Care Medicine, Tokyo Medical University
6-7-1 Nishishinjuku, Shinjuku-ku, Tokyo 160-0023, Japan

*2Tokyo Women's Medical University, Tokyo, Japan

*3Center Hospital of the National Center for Global Health and Medicine, Tokyo, Japan

*4Japan Society for the Promotion of Science / Chiba University, Chiba, Japan

*5Kansai Gaidai College, Osaka, Japan

*6National Institute of Advanced Industrial Science and Technology (AIST), Ibaraki, Japan

Received:
May 15, 2015
Accepted:
August 25, 2015
Published:
October 1, 2015
Keywords:
disaster medical training, training model, disaster medicine, communication, triage
Abstract
In the Shinjuku Station West Exit Medical Relief Training, a disaster medical (triage) training that includes ordinary citizens as well as medical professionals has been conducted on a continual basis. However, updating and improving the training contents and maintaining the participants’ interest levels were challenged because there were no baseline evaluations on post-training accomplishments. The purpose of this study is to develop a training model which facilitate updates to the training contents in a sustainable manner and increase the number of participants by raising satisfaction levels. Peer evaluations and self-evaluations were introduced into the training framework to develop a training model that can be sustainably improved using scientific evaluation methods. The term “scientific” refers to introducing scientific methods to analyze training drills to increase the quantitative measurement of the participants’ post-training evaluations. This paper reports on the results of the actual implementation of the training model.
Cite this article as:
S. Ohta, M. Takeda, R. Sasaki, H. Uesugi, H. Kamagata, K. Kawai, S. Kuroshima, M. Kawashima, M. Onishi, and I. Yoda, “Sustainable Training-Model Development Based on Analysis of Disaster Medicine Training,” J. Disaster Res., Vol.10 No.5, pp. 900-918, 2015.
Data files:
References
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Last updated on Apr. 22, 2024