First Expert Elicitation of Knowledge on Drivers of Emergence of Bovine Besnoitiosis in Europe.
Claude SaegermanJulien EvrardJean-Yves HoutainJean-Pierre AlzieuJuana BianchiniSerge Eugène MpouamGereon ScharesEmmanuel LiénardPhilippe JacquietLuca VillaGema Alvarez GarciaAlessia Libera GazzonisArcangelo GentileLaurent DeloozPublished in: Pathogens (Basel, Switzerland) (2022)
Bovine besnoitiosis (BB) is a chronic and debilitating parasitic disease in cattle caused by the protozoan parasite Besnoitia besnoiti . South European countries are affected and have reported clinical cases of BB. However, BB is considered as emerging in other countries/regions of central, eastern and northern Europe. Yet, data on drivers of emergence of BB in Europe are scarce. In this study, fifty possible drivers of emergence of BB in cattle were identified. A scoring system was developed per driver. Then, the scoring was elicited from eleven recognized European experts to: (i) allocate a score to each driver, (ii) weight the score of drivers within each domain and (iii) weight the different domains among themselves. An overall weighted score was calculated per driver, and drivers were ranked in decreasing order of importance. Regression tree analysis was used to group drivers with comparable likelihoods to play a role in the emergence of BB in cattle in Europe. Finally, robustness testing of expert elicitation was performed for the seven drivers having the highest probability to play a key role in the emergence of BB: i.e., (i) legal/illegal movements of live animals from neighbouring/European Union member states or (ii) from third countries, (iii) risk of showing no clinical sign and silent spread during infection and post infection, (iv) as a consequence, difficulty to detect the emergence, (v) existence of vectors and their potential spread, (vi) European geographical proximity of the pathogen/disease to the country, and (vii) animal density of farms. Provided the limited scientific knowledge on the topic, expert elicitation of knowledge, multi-criteria decision analysis, cluster and sensitivity analyses are very important to prioritize future studies, e.g., the need for quantitative import risk assessment and estimation of the burden of BB to evidence and influence policymaking towards changing (or not) its status as a reportable disease, with prevention and control activities targeting, firstly, the top seven drivers. The present methodology could be applied to other emerging animal diseases.
Keyphrases
- growth factor
- recombinant human
- risk assessment
- healthcare
- body mass index
- weight loss
- machine learning
- clinical practice
- magnetic resonance
- physical activity
- weight gain
- electronic health record
- computed tomography
- cancer therapy
- risk factors
- mass spectrometry
- candida albicans
- big data
- heavy metals
- data analysis
- current status
- toxoplasma gondii