Classification of Honeybee Infestation by Varroa Destructor using Gas
Sensor Array
Andrzej Szczurek
1a
, Monika Maciejewska
1b
, Beata Bąk
2c
, Jakub Wilk
2d
, Jerzy Wilde
2e
and Maciej Siuda
2f
1
Faculty of Environmental Engineering, Wroclaw University of Science and Technology, Wyb. Wyspiańskiego 27,
50-370 Wrocław, Poland
2
Apiculture Department, Warmia and Mazury University in Olsztyn, Sloneczna 48, 10-957 Olsztyn, Poland
Keywords: Semiconductor Gas Sensor, Beehive, Indoor Air, Varroosis, Measurement.
Abstract: Infestation of bee colony with Varroa destructor proceeds exponentially. It is important to detect the disease
at its very early stage. However, the distinction of later infestation stages is also practical. We proposed to
apply gas sensor array measurements of beehive air as the source of information which may be useful for this
kind of assessment. Honeybee infestation was classified into three categories: ‘low’, ‘medium’ and ‘high’,
two categories: ‘low’ and ‘medium to high’, and another two categories: ‘high’ and ‘medium to low’.
Responses of gas sensor array to beehive air were used as the input data of the classifier, which was trained
to distinguish the categories. The results of the analysis demonstrated that category ‘low’ was determined
most effectively, with an error rate of about 10%. Category ‘high’ was most difficult to determine. In this case
the lowest error rate was about 20%. Based on our analysis, the approach based on binary classification was
favoured and SVM outperformed ensemble of classification trees. It was found, that first several minutes of
gas sensors exposure to beehive air were sufficient to attain effective classification. The presented method of
varroosis determination, based on beehive air sensing with gas sensors is innovative and has high potential of
application in beekeeping.
1 INTRODUCTION
Bees are critically important for the environment and
to the economy. They play a vital role in the
environment by pollinating both wild flowers and
many crops. Honey bees also provide honey and other
apiculture products such as pollen, wax, propolis and
royal jelly. Unfortunately, the population of these
insects is decreasing at an alarming rate throughout the
world. This phenomenon is still poorly understood
(EPILOBEE, 2016). Probably, it is caused by the
combined effect of interrelated factors, e.g. shifting
flowering seasons due to climate change, reduced
floral diversity, use of pesticides, habitat loss, lack of
genetic diversity, insect parasites and harmful
microorganisms.
a
https://orcid.org/ 0000-0002-7486-4552
b
https://orcid.org/ 0000-0001-6472-7944
c
https://orcid.org/ 0000-0002-9383-5335
d
https://orcid.org/ 0000-0003-4692-5474
e
https://orcid.org/ 0000-0002-3137-7957
f
https://orcid.org/ 0000-0002-1903-8688
The best source of highly reliable information
about the condition of bee colony, events that may
require the beekeeper's action and environmental
conditions affecting the colony health is beehive
monitoring. It can be based on regular inspection or
measurements of the appropriate parameters
(Sperandio et al., 2019 ). The first approach requires a
great experience. It is time-intensive and subject to
observer error. Hence, the measurement strategy is
preferred. In practice, beehive monitoring is focused
on the continuous, automatic determination of
temperature, air humidity and gas content, analysis of
sound and vibration of a beehive, counting of outgoing
and incoming bees, video observation, weighing the
colony (Cecchi et al., 2019; Kviesis, 2015). The data
Szczurek, A., Maciejewska, M., B ˛ak, B., Wilk, J., Wilde, J. and Siuda, M.
Classification of Honeybee Infestation by Varroa Destructor using Gas Sensor Array.
DOI: 10.5220/0009171100610068
In Proceedings of the 9th International Conference on Sensor Networks (SENSORNETS 2020), pages 61-68
ISBN: 978-989-758-403-9; ISSN: 2184-4380
Copyright
c
2022 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
61
can be provided in real time and used for individual bee
colony maintenance.
Substantial information about honeybee colony is
included in the chemical composition of air inside the
hive. Usually, this gas is a mixture of compounds
emitted by the bees themselves (e.g. pheromones, other
chemicals released to repel pests and predators,
metabolites, etc.), substances originating from hive
stores (e.g. honey, nectar, larvae, sealed brood,
beeswax, pollen, beebread and propolis), and volatile
compounds from hives construction materials (wood,
paint, plastic, etc.). The beehive atmosphere also
contains compounds which come from vehicles, farms,
industries, and households located in the hive vicinity.
The combination of gaseous mixture inside the
hive is unique. Sometimes bee diseases can influence
the indoor air of a hive. For example, foulbrood has a
characteristic odor, and experienced beekeepers, with
a good sense of smell, can detect the disease upon
opening a hive. It is known, that the notorious varroa
mites can change their surface chemicals to match the
development stage of their hosts. It is interesting to
know if, despite this, the information about infestation
is included in the chemical composition of the air
surrounding bees inside the hive. Potentially, changes
of the chemical properties of the indoor air could be the
basis for detection of varroosis (Szczurek et al. 2019a;
Szczurek et al. 2019b). This most destructive disease
of honey bees worldwide is caused by a Varroa
destructor (V.d.).
Generally speaking, the determination of the
chemical indicators of varroosis can be based on the
detection of specific volatile chemicals, qualitative and
quantitative gas analysis and qualitative classification
of indoor air. Today, there are a number of well-
established methods which are capable of detecting the
specific chemical species or analysing the complex
gaseous mixture. They offer very good detection limit,
accuracy, sensitivity and repeatability. Unfortunately,
the available methods and instruments are expensive
and require trained, experienced personnel. In practice,
they are beyond the reach of average users -
beekeepers.
In this situation, the measurement instruments
based on gas sensors offer wider usefulness and
applicability. Chemiresistors are especially promising
in this field of application (Yunusa et al., 2014). These
devices present high sensitivity, detection at the level
of ppm, small sizes, low cost, simplicity of their use.
The serious shortcomings of the semiconductor gas
sensors is poor selectivity, resulting from the sensing
mechanism. For that reason, it is impossible to detect
individual chemical species using a single
semiconductor sensor. The measurement potential of
devices based on chemiresistors may be improved by
the application of the multi-sensor array, the
appropriate operation mode, signal processing and data
analysis. The instruments established on this idea are
particularly useful for the pattern recognition.
The aim of this study is to show that the
measurement instrument consisting of the sensor array
and the appropriate data classification module allows
to detect varroosis. The term detection in this work is
understood as the action of accessing information
about the rate of infestation. The effective detection
can include the determination of several levels of
infestation. We expected that the accuracy and
sensitivity of the detection process is strongly
influenced by the number of the assumed categories.
The determination of this relationship can be of major
importance in respect of the practical application of
sensor device as bee disease detector.
The main advantages of the presented method of
Varroa destructor classification based on gas sensing
are related to its cost-effectiveness, availability and low
detection limit. Continuous measurement may be
accomplished and the measurement data is provided in
real time. On-site detection can be performed. These
features are the good basis for establishing the honey
bee dieses monitoring system.
2 EXPARIMENTAL PART
2.1 Gas Sensor Device
Prototype Multisensor detector of air quality was used
in the study. The construction was developed in the
Laboratory of Sensor Technique and Indoor Air
Quality Studies at Wroclaw University of Science and
Technology, Poland. This autonomous,
multifunctional and programmable device is based on
gas sensors. It allows for continuous measurements of
gas samples and remote access to the recorded data.
The prototype was designed to operate in field
conditions. For this purpose, it was fitted with solar
panels, battery and the cover, which protects against
the meteorological conditions. The general view of the
instrument is presented in Figure 1.
The instrument was composed of several
functional modules: 1) multichannel recorder of gas
sensor signals MCA-8, 2) communication controller
Beecom, 3) charging regulator for solar panel, Steca
Solsum 6.6 , 4) gel battery, HZY EV12-33, with the
nominal power 36 Ah and voltage 12V and battery
level indicator, 5) photovoltaic solar panel, CL050-
12P, with the nominal power 50W, 7) AC adapters and
6) casing.
SENSORNETS 2020 - 9th International Conference on Sensor Networks
62
The major functional unit of the device was the
multichannel recorder of gas sensor signals MCA-8.
It included the following gas sensors TGS832,
TGS2602, TGS823, TGS826, TGS2603, and
TGS2600. They were mounted in individual sensor
chambers, made of aluminum. Gas sensors heaters
temperature was stabilized.
The device was dedicated to operate continuously
and perform measurements in the dynamic mode. A
peristaltic pump was mounted inside in order to
enforce the gas flow. The instrument was fitted with
8 gas inlet ports, which could be individually
connected to gas sensors chambers by means of a set
of valves. This solution allows for an intermittent gas
sampling from 8 locations.
Figure 1: General view of the instrument based on gas
sensors.
As default, the measurement data is recorded on
the instrument’s SD card, with the temporal
resolution of 1s. Optionally, the remote data transfer
could be realized using GSM (5s resolution). The
operation of the gas sensor device is programmable.
The user has to define the following parameters:
duration of gas intake through individual inlet ports,
pump operation rate as well as the power of gas
sensors heaters. The program is executed from SD
card. The instrument may be also operated in an
interactive mode using a PC based software.
Three options of powering the device are
available: mains power supply, battery and
photovoltaic solar panel. The last two solutions were
aimed to secure the autonomous operation of the
device in field conditions.
2.2 Field Experiments
Fifteen honey bee colonies were chosen for the
experiment. They belonged to three groups called A,
B and C. Each group included five colonies. Groups
differed in respect of the degree of Varroa destructor
infestation. The infestation rates of individual
colonies are shown in Table 1, Table 2 and Table 3.
The Varroa destructor infestation rates of honey
bee colonies were determined using a flotation
method. It involves shaking a sample of dead bees
with a detergent or alcohol and then rinsing them on
a sieve (COLOSS BEEBOOK, 2013; Fries et al.,
1991). The infestation rate is the number of mites
found in a sample of bees, divided by the number of
bees and expressed as the percentage.
Table 1: Honey bee colonies which belonged to group A.
Colony V.d. infestation rate
A1 0.0
A2 0.6
A3 0.0
A4 0.3
A5 0.2
Table 2: Honey bee colonies which belonged to group B.
Colony V.d. infestation rate
B1 4.9
B2 4.7
B3 4.4
B4 3.8
B5 4.3
Table 3: Honey bee colonies which belonged to group C.
Colony V.d. infestation rate
C1 60.3
C2 52.0
C3 11.0
C4 11.5
C5 13.0
The air of beehives occupied by bees was
measured using gas senor device.
The measurement experiment lasted five days.
Each day, three bee colonies, were investigated, one
from group A, B and C. A single measurement of a
bee colony consisted of two phases: 1) the exposure
of gas sensors to beehive air (600 s), 2) the exposure
of gas sensors to the regeneration air (900 s). The
measurements of three individual colonies were
performed in sequence. The sequence was repeated,
Classification of Honeybee Infestation by Varroa Destructor using Gas Sensor Array
63
therfore multiple measurements were done for each
bee colony.
During measurements, gas sensor device was
connected to beehives by means of polyethylene
tubing. One inlet port was used to deliver the air
sampled from one beehive. The gas sampling points
were located inside hives, in their central, upper parts,
between brood combs. In this location, the bee colony
infestation should be most strongly reflected in the
quality of beehive air, because the mite proliferates
on the brood. One additional inlet port of gas sensor
device was dedicated to the delivery of ambient air
for sensors regeneration. Dedicated filter, filled with
charcoal allowed for air preparation. Inlet ports of the
device were protected by particle filters.
The experiment was run in field condidtions.
3 DATA ANALYSIS
3.1 Varroa Destructor Infestation
Categories
We examined three approaches to categorization of
bee colonies infestation by V.d..
The first approach consisted in distinguishing
three categories of infestation: ‘low’, ‘medium’ and
‘high’. The range of bee colonies infestation rate,
associated with individual categories, was suggested
by professional beekeepers, as displayed in Table 4.
The recognition between three categories of V.d.
infestation ‘low’, ‘medium’ and ‘high’ with one
classifier would be very attractive in a beekeeping
practice.
Table 4: Categorization of bee colonies infestation by V.d
using three categories: ‘low’, ‘medium’ and ‘high’.
Category
V.d. infestation rate of bee
colony [%]
Low 0-2
Medium 2-6
High >6
Table 5: Categorization of honey bee colonies infestation
by V.d using two categories: ‘low’ and ‘medium to high’.
Category
V.d. infestation rate of bee
colony [%]
Low 0-2
Medium to high >2
With reference to the experimental data, the
category ‘low’ was represented by bee colonies group
A. In this group the V.d. infestation rate was from 0%
Table 6: Categorization of honey bee colonies infestation
by V.d using two categories: ‘high’ and ‘medium to low’.
Category
V.d. infestation rate of bee
colony [%]
High >6
Medium to low 0-6
to 0.6%, see Table 1. The category ‘medium’ was
represented by colonies group B. In this group the
V.d. infestation rate was from 3.8% to 4.9%, see
Table 2. The category ‘high’ was represented by bee
colonies group C. Here, the V.d. infestation rate was
from 11% to 60.3%, see Table 3.
The problem of recognition of three categories of
infestation was represented by a three-class
classification task.
Second approach consisted in distinguishing two
categories of V.d. infestation , which were ‘low’ and
‘medium to high’, as shown in Table 5. This approach
could be used to filter out bee colonies which are not
infested or slightly infested, perhaps not yet requiring
treatment, from all other infested colonies.
The third approach also consisted in
distinguishing two categories of V.d. infestation.
However, the considered categories were ‘high’ and
‘medium to low’, as shown in Table 6. This approach
could be used to detect bee colonies which are
severely infested, and should be subject to a radical
treatment, from other less infested or even healthy
colonies.
The problem of recognition of two categories of
infestation was represented by a binary classification
task. The distinction of two categories is less
attractive for the beekeeper. However, this approach
is likely to offer a trade off in terms of smaller
classification error. Two-class problems may be
solved using wide range of classifiers, which are not
available in case of multiclass classification.
3.2 Classification
Classification was based on responses of all sensors,
which were elements of gas sensor array. In order to
form a feature vector, a 3 min long fragment was
extracted from the signal of each gas sensor. It
consisted of 180 responses recorded one after another
with temporal resolution of 1s. Fragments of signals
of all sensors were combined to form one feature
vector.
Several feature vectors were considered in this
work as the basis of classification. They included
fragments associated with first, second, third, fourth
etc. three minutes of gas sensor array exposure to the
test gas – beehive air.
SENSORNETS 2020 - 9th International Conference on Sensor Networks
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Two classifiers were applied. Ensemble of
classification trees (Ren et al., 2016) and support
vecor machine (SVM) (Nalepa and Kawulok, 2019).
The first classifier was utilised for solving three-class
as well as two-class classification problems. SVM
was applied for binary problems solving, exclusively.
The performance of classification was evaluated
based on confusion matrices, as shown in Table 7 and
Table 8.
Table 7: Confusion matrix for two-class problem.
Predicted cat. 1 Predicted cat. 2
True cat. 1 n
1,1
n
1,2
True cat. 2 n
2,1
n
2,2
Regarding two-class problem (see Table 7), the
rate of correct classification (TC) of data representing
category 1 was called TC1 rate and it was given by
eq. 1.
TC1 rate = n
1,1
/(n
1,1
+n
1,2
) (1)
TC2 rate was determined analogically.
Table 8: Confusion matrix for three-class problem.
Predicted
cat. 1
Predicted
cat. 2
Predicted
cat. 3
True cat. 1 n
1,1
n
1,2
n
1,3
True cat. 2 n
2,1
n
2,2
n
2,3
True cat. 3 n
3,1
n
3,2
n
3,3
In case of three-class problem (see Table 8), the
rate of correct classification of data representing
category 1 was given by eq. 2.
TC1 rate = n
1,1
/(n
1,1
+n
1,2
+n
1,3
) (2)
TC2 rate and TC3 rates were determined
analogically.
Classification models were validated using ten-
folds cross-validation procedure. It was repeated
fifteen times for each classifier, when using a
particular feature vector as input. The results of
repeated cross-validations were averaged and
standard deviation was computed. Following,
confusion matrices were prepared which included the
averaged results as well as the information about their
spread.
4 RESULTS
4.1 Three Categories of Varroa
Destructor Infestation: ‘Low’,
‘Medium’ and ‘High’
Three categories of V.d. infestation: ‘low’, ‘medium’
and ‘high’ were recognized using one classifier,
ensemble of classification trees. The classification
performance was examined with respect to different
fragments of gas sensors signals, utilised as the basis
of classification. Figure 2 presents the results of
classification in terms of True Category rates for each
category.
As shown in Figure 2, three considered infestation
categories were distinguished with various
efficiencies. The rate of correct classifications was
the best in case of category ‘low’ (on average, TC1
rate was from 80% to 87%). Smaller rates were
associated with category ‘medium’ (on average TC2
rate was from 72% to 76%) and the worst results were
attained in case of category ‘high’ (on average, TC3
rate was from 66% to 74%).
Similar results were obtained when using
different fragments of gas sensors signals as the bass
of classification. TC rates varied as a function of the
duration of gas sensors exposure to beehive air, but
no clear relationship was observed between the two.
Based on the obtained results (see Figure 2), first
three minutes of gas sensors exposure could be
considered sufficient for collecting the informative
measurement data, useful for classification.
Figure 2: Results of classification for three categories of
V.d. infestation: ‘low’, ‘medium’ and ‘high’. Ensemble of
classification trees was applied and various fragments of
gas sensors signals recorded during exposure to beehive air
were utilised as the classifier input.
Table 9 presents a confusion matrix for
classification based on first three minutes of gas
Classification of Honeybee Infestation by Varroa Destructor using Gas Sensor Array
65
sensor array exposure to beehive air. As shown,
misclassified data, truly belonging to class ‘low’ were
mostly allocated to class ‘medium’ (12.1%) and the
remaining 7.9% was assigned to class ‘high’.
Majority of misclassified items, truly belonging to
class ‘medium’ was recognized as members of
category ‘high’ (19.8%) and only 6.2% of them were
allocated to class ‘low’. In case of category ‘high’,
also 24.3% of misclassified data were allocated to
class ‘medium’ and only 7.6% were assigned to class
‘low’.
Table 9: Confusion matrix for recognition of three
categories of V.d. infestation: ‘low’, ‘medium’ and ‘high’.
Mean±standard deviation for 15 cross-validations are
shown. Ensemble of classification trees was applied. Input
data consisted of first three minutes of gas sensor array
responses to beehive air.
Predicted
‘low’
Predicted
‘medium’
Predicted
‘high’
True ‘low’ 80.0±3.1 12.1±2.3 7.9±2.3
True ‘medium’ 6.2±1.6 74±4.9 19.8±5.0
True ‘high’ 7.6±1.9 24.3±3.9 68.1±5.0
It should be noted that regarding extreme
categories ‘low’ and ‘high’, the structure of
misclassified items allocation was logical. Namely,
most of overlaps were between the directly
neighbouring classes, ‘low’ with ‘medium’ and ‘high’
with ‘medium’. In case of category ‘medium’, the
misclassified items mostly fell in the category ‘high’
and much less of them was recognized as members of
category ‘low’. This asymmetry indicates
considerable similarity of categories ‘medium’ and
‘high’, while category ‘low’ was more distinct than
the two.
4.2 Two Categories of Varroa
Destructor Infestation: ‘Low’ and
‘Medium to High’
Another approach consisted in determining two
categories of V.d. infestation, namely ‘low’ and
‘medium to high’. Classification was realised using
ensemble of classification trees and SVM. The results
are shown in Figure 3 and Figure 4, respectively.
From the comparison of TC rates obtained when
using ensemble of classification trees, infestation
categories ‘low’ and ‘medium to high’ were
distinguished more effectively (see Figure 3) than
categories ‘low’, ’medium’ and ‘high’(see Figure 2),.
TC rates associated with the recognition of categories
‘low’ and ‘medium to high’ were similar, at the level
of about 83%, see Figure 5. Still, a considerable
improvement could be achieved by applying another
classifier. In case of using SVM, TC rate was 93% for
category ‘low’ and 88% for category ‘medium to
high’, see Figure 4. This result shall be recognized as
very good.
Figure 3: Results of classification for two categories of V.d.
infestation: ‘low’ and ‘medium to high’. Ensemble of
classification trees was applied and various fragments of
gas sensors signals recorded during exposure to beehive air
were utilised as the classifier input.
Figure 4: Results of classification for two categories of V.d.
infestation: ‘low’ and ‘medium to high’. SVM was applied
and various fragments of gas sensors signals recorded
during exposure to beehive air were utilised as the classifier
input.
It has to be added that the ensemble of
classification trees was relatively insensitive to the
fragment of gas sensor signal utilised as the source of
input data. SVM favoured the information acquired
during early stages of gas sensors exposure.
SENSORNETS 2020 - 9th International Conference on Sensor Networks
66
4.3 Two Categories of Varroa
Destructor Infestation: ‘High’ and
‘Medium to Low’
Additionally, the distinction of V.d. infestation
categories ‘high’ and ‘medium to low’ was
considered. Classification was based on gas sensor
array measurements and it was realised using
ensemble of classification trees and SVM. The results
are shown in Figure 5 and Figure 6, respectively.
Figure 5: Results of classification for two categories of V.d.
infestation: ‘high’ and ‘medium to low’. Ensemble of
classification trees was applied and various fragments of
gas sensors signals recorded during exposure to beehive air
were utilised as the classifier input.
Figure 6: Results of classification when two categories of
V.d. infestation are distinguished: ‘high’ and ‘medium to
low’. SVM was applied and various fragments of gas
sensors signals recorded during exposure to beehive air
were utilised as the classifier input.
From the comparison of TC rates obtained when
using ensemble of classification trees, infestation
categories ‘high’ and ‘medium to low’ (see Figure 5)
were determined more effectively than categories
‘high’ and ‘medium’ (see Figure 2). However, the
attained improvement was not substantial. True
Category rate was, on average, 74% for recognition
of category ‘high’ and 80% for category ‘medium to
high’, see Figure 5. The change of classifier to SVM
resulted in the increase of the classification
performance indicators, up to the level of 80% and
84%, respectively (see Figure 6). In case of both
classifiers, late fragments of gas sensor array signals
were favoured as the sources of information.
5 DISCUSSION
Three approaches to classification of V.d. infestation
of bee colonies were compared in this work. They
consisted in the determination of:
1. three categories of infestation: ‘low’, ‘medium’
and ‘high’;
2. two categories of infestation: ‘low’ and ‘medium
to high’;
3. two categories of infestation: ‘high’ and
‘medium to low’.
The first approach was realised using ensemble of
classification trees. In case of the second and third
approach SVM was applied, additionally.
Ensemble of classification trees is applicable to
both binary and multi class problems. Nevertheless,
when using this method for binary problems (second
and third approach) better results were attained, as
compared with the multi class problem (first
approach). Regarding binary classification tasks,
further improvement was possible by applying SVM.
Clearly, the best discernible V.d. infestation
category was ‘low’, no matter if binary or three class
classification problem was formulated and solved. In
this case, the best attained TC1 rates were at the level
of 90%. This result indicates that conditions of no
infestation or very weak infestation are quite clearly
discernible from the conditions of medium or
advanced infestation, based on gas sensor array
responses.
The detection of V.d. infestation category ’high’,
was most difficult. The analysis of assignment of
misclassified data, truly belonging to this category
indicated a considerable overlap with the category
‘medium’ and vice versa. When realised in the
framework of binary classification task, the detection
of ‘high’ infestation rate was more effective. In
particular, the use of SVM allowed for achieving
TC1 rate about 80%.
The classification performance was examined for
several fragments of gas sensors signals utilised as the
sources of input data for the classifier. Clearly, the
Classification of Honeybee Infestation by Varroa Destructor using Gas Sensor Array
67
duration of gas sensors exposure to beehive air had an
influence on the recognition of infestation categories.
However, we have not identified any fragment which
could be definitely preferred. One could notice, that
the measurement data collected during first three
minutes of gas sensors exposure to beehive air is a
reasonable source of information about the
infestation. This result justifies the measurement
procedure which includes a relatively short period of
gas sensors exposure to beehive air. This observation
is highly beneficial from practical point of view.
6 CONCLUSIONS
The paper was dedicated to the recognition of several
categories of bee colonies infestation by Varroa
destructor, based on responses of gas sensor array to
beehive air.
The results of the analysis demonstrated that first
several minutes of gas sensors exposure to beehive air
were sufficient to attain effective classification.
Category representing ‘low’ infestation was
determined most effectively, with an error rate of
about 10%. Category ‘high’ was most difficult to
determine. In this case the lowest error rate was about
20%. The approach based on binary classification
granted higher performance as compared with three
class classification. SVM outperformed ensemble of
classification trees.
ACKNOWLEDGEMENTS
This work was supported by the National Centre for
Research and Development under the grant nr
BIOSTRATEG3/343779/10/NCBR/2017
“Developing innovative, intelligent tools to
monitoring the occurrence of malignant foulbrood
and elevated levels of infestation with Varroa
destructor in honey bee colonies.”
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