Adaptive sampling method to monitor low‐risk pathways with limited surveillance resources

Author:

Le Thao P.123ORCID,Waring Thomas K.123ORCID,Bondell Howard23ORCID,Robinson Andrew P.1ORCID,Baker Christopher M.123ORCID

Affiliation:

1. The Centre of Excellence for Biosecurity Risk Analysis The University of Melbourne Parkville Victoria Australia

2. Melbourne Centre for Data Science The University of Melbourne Parkville Victoria Australia

3. School of Mathematics and Statistics The University of Melbourne Parkville Victoria Australia

Abstract

AbstractThe rise of globalization has led to a sharp increase in international trade with high volumes of containers, goods, and items moving across the world. Unfortunately, these trade pathways also facilitate the movement of unwanted pests, weeds, diseases, and pathogens. Each item could contain biosecurity risk material, but it is impractical to inspect every item. Instead, inspection efforts typically focus on high‐risk items. However, low risk does not imply no risk. It is crucial to monitor the low‐risk pathways to ensure that they are and remain low risk. To do so, many approaches would seek to estimate the risk to some precision, but increasingly lower risks require more samples. On a low‐risk pathway that can be afforded only limited inspection resources, it makes more sense to assign fewer samples to the lower risk activities. We approach the problem by introducing two thresholds. Our method focuses on letting us know whether the risk is below certain thresholds, rather than estimating the risk precisely. This method also allows us to detect a significant change in risk. Our approach typically requires less sampling than previous methods, while still providing evidence to regulators to help them efficiently and effectively allocate inspection effort.

Funder

Department of Agriculture, Fisheries and Forestry, Australian Government

Ministry for Primary Industries

University of Melbourne

Australian Research Council

Publisher

Wiley

Reference38 articles.

1. Burne A. R.(2019).Pest risk assessment: Halyomorpha halys (brown marmorated stink bug). (Biosecurity New Zealand Technical Paper No: 2019/43.) Ministry for Primary Industries New Zealand.https://www.mpi.govt.nz/dmsdocument/38075‐Pest‐risk‐assessment‐Halyomorpha‐halys‐Brown‐marmorated‐stink‐bug‐Technical‐Paper

2. One-sided confidence intervals in discrete distributions

3. Department of Agriculture Fisheries and Forestry. (2018).15‐2018 ‐ Implementation of new import conditions for fresh cut flowers and foliage from 1 March 2018.https://www.agriculture.gov.au/biosecurity‐trade/import/industry‐advice/2018/15‐2018

4. Department of Agriculture Fisheries and Forestry. (2023).Country Action List (CAL).https://www.agriculture.gov.au/biosecurity‐trade/import/arrival/pests/cal

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