The University of Southampton
University of Southampton Institutional Repository

Analysis of effect on infectious diseases outbreak detection performance by classifying provinces for moving percentile method.

Analysis of effect on infectious diseases outbreak detection performance by classifying provinces for moving percentile method.
Analysis of effect on infectious diseases outbreak detection performance by classifying provinces for moving percentile method.
Optimizing the threshold by different diseases and provinces for MPM in CIDARS could reduce the number of signals while maintaining the same sensitivity and time to detection.
0253-9624
265-269
Zhang, Honglong
35d0ccf0-0422-4fcd-a949-a74a83f75e51
Sun, Qiao
0aca0484-8c58-42ed-84fe-2ae405bf60ce
Lai, Shengjie
b57a5fe8-cfb6-4fa7-b414-a98bb891b001
Ren, Xiang
79e57eaa-a085-47b3-a8b3-274840938696
Zhou, Dinglun
4dcccc41-a503-4e9b-aca4-7c06f8ae3bf8
Ye, Xianfei
4fe57a89-5c21-4bee-a629-7436a48974a1
Zeng, Lingjia
a2c6f34d-0ec7-4bbe-8251-57c8aa45321e
Yu, Jianxing
992198dd-6055-4905-ab28-11ced790c57c
Wang, Liping
ef5828b8-d874-42db-bb25-713890281af2
Yu, Hongjie
f6a43c0c-0da8-4124-bd15-cd832d6fee7c
Li, Zhongjie
f89a98f7-f6d3-4312-995a-bc658ae9a93f
Lyu, Wei
28964c82-36cc-4565-81b7-9049292d69ff
Lan, Yajia
1c3b4eec-04e2-4852-898d-af5ab6a95b07
Yang, Weizhong
65d18fbc-d752-42a7-ac38-01534ceda15c
Zhang, Honglong
35d0ccf0-0422-4fcd-a949-a74a83f75e51
Sun, Qiao
0aca0484-8c58-42ed-84fe-2ae405bf60ce
Lai, Shengjie
b57a5fe8-cfb6-4fa7-b414-a98bb891b001
Ren, Xiang
79e57eaa-a085-47b3-a8b3-274840938696
Zhou, Dinglun
4dcccc41-a503-4e9b-aca4-7c06f8ae3bf8
Ye, Xianfei
4fe57a89-5c21-4bee-a629-7436a48974a1
Zeng, Lingjia
a2c6f34d-0ec7-4bbe-8251-57c8aa45321e
Yu, Jianxing
992198dd-6055-4905-ab28-11ced790c57c
Wang, Liping
ef5828b8-d874-42db-bb25-713890281af2
Yu, Hongjie
f6a43c0c-0da8-4124-bd15-cd832d6fee7c
Li, Zhongjie
f89a98f7-f6d3-4312-995a-bc658ae9a93f
Lyu, Wei
28964c82-36cc-4565-81b7-9049292d69ff
Lan, Yajia
1c3b4eec-04e2-4852-898d-af5ab6a95b07
Yang, Weizhong
65d18fbc-d752-42a7-ac38-01534ceda15c

Zhang, Honglong, Sun, Qiao, Lai, Shengjie, Ren, Xiang, Zhou, Dinglun, Ye, Xianfei, Zeng, Lingjia, Yu, Jianxing, Wang, Liping, Yu, Hongjie, Li, Zhongjie, Lyu, Wei, Lan, Yajia and Yang, Weizhong (2014) Analysis of effect on infectious diseases outbreak detection performance by classifying provinces for moving percentile method. Chinese Journal of Preventive Medicine (Zhonghua Yu Fang Yi Xue Za Zhi), 48 (4), 265-269. (PMID:24969448)

Record type: Article

Abstract

Optimizing the threshold by different diseases and provinces for MPM in CIDARS could reduce the number of signals while maintaining the same sensitivity and time to detection.

This record has no associated files available for download.

More information

Published date: April 2014
Organisations: WorldPop, Population, Health & Wellbeing (PHeW)

Identifiers

Local EPrints ID: 373593
URI: http://eprints.soton.ac.uk/id/eprint/373593
ISSN: 0253-9624
PURE UUID: 01cdc04d-757b-44f1-bc5f-6edfb075a7fc
ORCID for Shengjie Lai: ORCID iD orcid.org/0000-0001-9781-8148

Catalogue record

Date deposited: 26 Jan 2015 11:27
Last modified: 23 Jul 2022 02:21

Export record

Contributors

Author: Honglong Zhang
Author: Qiao Sun
Author: Shengjie Lai ORCID iD
Author: Xiang Ren
Author: Dinglun Zhou
Author: Xianfei Ye
Author: Lingjia Zeng
Author: Jianxing Yu
Author: Liping Wang
Author: Hongjie Yu
Author: Zhongjie Li
Author: Wei Lyu
Author: Yajia Lan
Author: Weizhong Yang

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×