Stephen P Brooks
Overview
Explore the profile of Stephen P Brooks including associated specialties, affiliations and a list of published articles.
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Articles
17
Citations
326
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0
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Recent Articles
1.
Deardon R, Brooks S, Grenfell B, Keeling M, Tildesley M, Savill N, et al.
Stat Sin
. 2015 Sep;
20(1):239-261.
PMID: 26405426
Individual Level Models (ILMs), a new class of models, are being applied to infectious epidemic data to aid in the understanding of the spatio-temporal dynamics of infectious diseases. These models...
2.
Luo L, Hong X, Chen C, Brooks S, Song Y
Environ Toxicol Pharmacol
. 2013 Mar;
35(3):380-7.
PMID: 23467115
To determine whether diesel exhaust particles (DEPs) could be a toxic agent to the bladder, rats were exposed to different concentrations of DEPs for one month or three months. When...
3.
Barnas J, Simpson-Abelson M, Brooks S, Kelleher Jr R, Bankert R
J Immunol
. 2010 Aug;
185(5):2681-92.
PMID: 20686130
Fibroblasts are a dominant cell type in most human solid tumors. The possibility that fibroblasts have the capacity to interact with and modulate the function of tumor-associated T lymphocytes makes...
4.
Bernstein J, Brooks S, Lehman H, Pope L, Sands A, Shultz L, et al.
Ann Otol Rhinol Laryngol
. 2010 Feb;
118(12):866-75.
PMID: 20112521
Objectives: The objective was to develop a model with which to study the cellular and molecular events associated with nasal polyp progression. To accomplish this, we undertook to develop a...
5.
Tildesley M, Deardon R, Savill N, Bessell P, Brooks S, Woolhouse M, et al.
Proc Biol Sci
. 2008 Mar;
275(1641):1459-68.
PMID: 18364313
Since 2001 models of the spread of foot-and-mouth disease, supported by the data from the UK epidemic, have been expounded as some of the best examples of problem-driven epidemic models....
6.
Karakousis C, Sharma S, Brooks S
J Med
. 2007 Aug;
34(1-6):15-22.
PMID: 17682307
Background: It is generally assumed that the immune response by a host to the tumor depends on their antigenic differences. Whether quantitative aspects in this relationship play any role remains...
7.
Karakousis C, Sharma S, Brooks S
J Med
. 2007 Aug;
34(1-6):3-14.
PMID: 17682306
Background: Some of the questions still open to investigation are: 1) Does the clinical appearance of a tumor nodule require a prior overwhelming of a systemic host response? 2) Does...
8.
Savill N, Shaw D, Deardon R, Tildesley M, Keeling M, Woolhouse M, et al.
J R Soc Interface
. 2007 Jan;
4(13):235-41.
PMID: 17251150
Most of the mathematical models that were developed to study the UK 2001 foot-and-mouth disease epidemic assumed that the infectiousness of infected premises was constant over their infectious periods. However,...
9.
Tildesley M, Savill N, Shaw D, Deardon R, Brooks S, Woolhouse M, et al.
Nature
. 2006 Mar;
440(7080):83-6.
PMID: 16511494
Foot-and-mouth disease (FMD) in the UK provides an ideal opportunity to explore optimal control measures for an infectious disease. The presence of fine-scale spatio-temporal data for the 2001 epidemic has...
10.
Savill N, Shaw D, Deardon R, Tildesley M, Keeling M, Woolhouse M, et al.
BMC Vet Res
. 2006 Jan;
2:3.
PMID: 16412245
Background: A key challenge for modelling infectious disease dynamics is to understand the spatial spread of infection in real landscapes. This ideally requires a parallel record of spatial epidemic spread...