Abstract:
Enset (Ensete ventricosum Welw. Cheesman) is a perennial crop, cultivated by
millions of smallholder farmers in South, Central and Southwestern Ethiopia.
However, its production has been endangered by one of the overwhelming Enset
bacterial wilt (EXW) disease caused by Xanthomonas campestris pv. musacearum
(Xcm). Although EXW has been described in Ethiopia for about five decades, the
current disease burden and geographical distribution; and main causing
environmental factors are not precisely known. Understanding the geographical
distribution and identifying the environmental correlation of the disease distribution
is important. Therefore, this study aims to determine the magnitude of Enset bacterial
wilt (EXW) and identification of biophysical factors, which affect its spatial
distribution using spatial statistical analysis techniques Yem Special Wereda,
Southwest Ethiopia. Representative Kebele administrations were selected using
purposive sampling method and spatial random sampling method was used to
determine the households or enset plots. Data on EXW prevalence and incidence was
collected from 135 enset plots found in 11 selected Kebeles. EXW prevalence and
incidence were tested for spatial autocorrelation using the global Moran’s I and
Getis-Ord G* statistics. The relationship between EXW and predicting environmental
variables was modeled using logistic and linear regression analysis. Logistic
regression was used to model the relationship between EXW prevalence and response
variables, whereas both Ordinary Least Square (OLS) and Generalized Linear Model
(GLM) were used to analyze the relationship between EXW incidence and response
variables. 95% confidence interval and p-values, 0.05 were considered as significant.
In the study area the EXW disease was widely distributed at varied degree of
intensity. 135 enset plots assessed, 87 of them were found to be infected by EXW
disease. The overall EXW prevalence and incidence rate in the study area was 64.4%
and 20.11%, respectively. The highest prevalence was recorded for Kerewa Kebele
(8
9%) and lowest for Asher Kebele (29%). The scale of EXW incidence ranges from
0% – 100% at enset plots, and 6.20% – 38.86% at Kebele level. Based on the spatial
analysis results, the pattern of EXW prevalence and incidence were clustered and the
null hypotheses were rejected. Predicting variables such as relative humidity,
altitude, total annual precipitation and silty texture were positively correlated with
EXW prevalence and significantly contributed to the model. Relative humidity, total
annual precipitation, altitude, silty texture, soil pH and insect vector (leafhopper)
were positively correlated with EXW incidence and significantly contributed to the
model. Other variables such as agro-ecology, clayey soil textures and soil type were
not significant predictors of EXW prevalence and incidence in the study area. Based
on the finding, the concerned bodies should provide management options to control
the spread of disease, for more vulnerable areas due to environmental factors.
Particularly, providing insecticide where leafhopper is found. In addition, it could be
concluding that the findings contribute to the growing research on the aetiology of
EXW, and provide new starting points for further exploration of EXW aetiology using
laboratory studies.