© Benaki Phytopathological Institute
INRA, UMR 211 INRA AgroParisTech 78850 Thiverval-
Grignon, France
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Hellenic Plant Protection Journal
4:
1-11, 2011
REVIEW ARTICLE
Uncertainty and sensitivity analysis for models used in pest
risk analysis
D. Makowski
Summary
Quantitative models have several advantages compared to qualitative methods for pest
risk analysis; quantitative models do not require the definition of categorical ratings and can be used to
compute numerical probabilities of entry and establishment, and to quantify spread and impact. How-
ever, quantitative models include several sources of uncertainty that need to be taken into account by
risk assessors. In this paper, we review the four main sources of uncertainty in models used for pest risk
analysis, namely input variables, parameter values estimated from expert knowledge, parameter val-
ues estimated from data and equations. We discuss the practical interest of uncertainty and sensitivity
analysis for pest risk assessors. Uncertainty analysis consists in describing the different uncertain ele-
ments of a model, and deducing an uncertainty distribution for each output variable rather than a sin-
gle value. The aim of sensitivity analysis is to determine how sensitive the output of a model is with re-
spect to elements of the model which are subject to uncertainty. Uncertainty analysis typically com-
prises three main steps: i) definition of uncertainty ranges and/or of probability distributions for uncer-
tain model elements, ii) generation of values of the uncertain model elements, iii) model output com-
putation and description of model output distribution. Sensitivity analysis includes another step to
compute sensitivity indices (step iv). When several model equations are available for predicting a given
quantity of interest, a further step is to analyse uncertainty about model equations using specific tech-
niques. Several methods were illustrated in a case study on
Sclerotinia sclerotiorum
. Results showed
that a moderate uncertainty on parameter values can induce a large uncertainty on model output.
Additional keywords
: biological invasion, model prediction, model selection
Introduction
Risk analysis includes a series of steps from
initiation, throughqualitative or quantitative
assessments of risk, to the resultant man-
agement decisions. It also includes com-
munications with stakeholders throughout
the process. In plant health, Pest Risk Anal-
ysis (PRA) consists of the assessment of the
probabilities of entry and establishment of
an invasive species, the magnitude of the
impact resulting from an invasive species,
and of management options. Both quanti-
tative and qualitative methods have been
used for PRA. Qualitative methods based
on scoring systems are a primary choice for
assessing risk in plant health but, in several
cases, quantitative models have been devel-
oped and used in PRA (e.g. Stansbury
et al
.,
2002; Peterson
et al
., 2009).
Qualitative methods for PRA are based
on categorical ratings (e.g. low, moderate,
high) and the use of such ratings may lead to
problems of consistency due to inaccurate
definitions of ratings. Qualitative methods
also make the computation of an overall risk
level difficult because categorical ratings
can be combined using many different tech-
niques which may lead to different conclu-
sions (Holt, 2006). In addition, the perform-
ance of qualitative PRA methods depends
on the technique chosen for combining cat-
1,2 4,5,6,7,8,9,10,11,12,13,...34