foods
Article
Development of a Probiotic Beverage Using
Breadfruit Flour as a Substrate
Yifeng Gao, Nazimah Hamid * , Noemi Gutierrez-Maddox, Kevin Kantono
and Eileen Kitundu
Department of Food Science, Auckland University of Technology, Private Bag 92006,
Auckland 1142, New Zealand;
[email protected] (Y.G.);
[email protected] (N.G.-M.);
[email protected] (K.K.);
[email protected] (E.K.)
* Correspondence:
[email protected]; Tel.: +64-9-921-9999 (ext. 6453)
Received: 4 May 2019; Accepted: 10 June 2019; Published: 17 June 2019
Abstract: A fermented beverage was developed using breadfruit flour as a substrate by optimising
sucrose, inoculum concentrations, and fermentation temperature in the formulation by utilising the
D-optimal mixture design. The optimisation was carried out based on CFU counts, pH, titratable
acidity, lactic acid, and sugar concentration of the different fermented breadfruit substrate formulations.
Results showed that the optimised values based on the contour plots generated were: 7% breadfruit
flour, 1% inoculum, and 15% sugar after fermentation at 30 ◦ C for 48 h. Sensory projective mapping
results showed that the fermented breadfruit substrate beverage was characterised by a pale-yellow
appearance, fruity flavour, and sweet and sour taste. The hedonic test was not significantly different
(p > 0.05) for almost all formulations except for formulation 4 (5% sugar, 3% inoculum, 7% breadfruit
flour at 30 ◦ C), which was described as bitter and had the lowest acceptance rating. This study
successfully demonstrated the development of a novel fermented breadfruit-based beverage with
acceptable sensory characteristics and cell viability using a mixture strain of L. acidophilus and
L. plantarum DPC 206.
Keywords: breadfruit; probiotic foods; lactic acid bacteria; non-dairy functional beverage
1. Introduction
The global market of probiotic foods in the 21st century has been estimated to be worth over
40 billion USD, with consumption forecasted to exceed 12 million tons by 2024, and an estimated
growth potential of 11.7% per year [1–3]. The most common functional foods manufactured are
probiotic foods and beverages. It has been recorded that probiotics can enhance immune system
function, nourish beneficial intestinal flora, stimulate their development, reinforce their action, and
assist in the absorption of vitamins and minerals [4]. For health benefits, the minimum dose of 107
colony forming per unit (CFU)/g or mL probiotic bacteria in food is recommended [5,6]. Strains of
lactic acid bacteria (LAB) belonging to the genera Lactobacillus and Bifidobacterium are commonly used
as probiotics.
Commercial functional foods in the food market are mainly dairy-based products, although
consumers are increasingly requiring new functional products that are non-dairy [7]. With the
increase in lactose intolerance and allergies, attempts had been made to develop fruit-based foods as
an alternative to traditional dairy functional foods [7].
Breadfruit (Artocarpus altilis) is a nutritious fruit cultivated by Pacific Islanders for over 3000 years
and is abundant in Polynesia, Jamaica, and the Caribbean Islands [8]. Breadfruit belongs to the
Moraceae family and consists of more than 50 species. Amusa et al. [9] reported that breadfruit can
be propagated through stem-cuttings and the first fruiting average period of the crop is from four to
Foods 2019, 8, 214; doi:10.3390/foods8060214
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six years. Every year, a single breadfruit tree produces 150–200 kg of fresh fruit. The fruit is usually
ovoid or oblong [10]. It is now recognised as a staple food and can be consumed cooked, roasted, fried,
boiled, dried, or pickled [11].
Breadfruit is high in carbohydrate and contains protein, 2.2–5.9% on a dry weight basis. It has been
known to be a good source of amino acids, specifically histidine and lysine, which are crucial for infant
growth. Depending on the cultivar, breadfruit has been reported to be a rich source of vitamins and
minerals such as copper, magnesium, phosphorous, potassium, calcium, iron, and manganese [12–14].
Breadfruit also contains various bioactive compounds such as phytate, oxalate, and tannin [15], ascorbic
acid [16], and high contents of carotenoids [17].
Although breadfruit is nutritious, it rapidly undergoes physiological deterioration after harvesting.
As a way of minimising post-harvest losses and increasing the utilisation of breadfruit, the fruit can be
processed into flour, which is more shelf stable. The suitability of the flour for use in food depends
on its functional properties. Interestingly, breadfruit flour had a higher water content, oil absorption
capacity, foaming capacity, and emulsion activity compared to wheat flour [18] and yam flour [19].
Considering the rich nutritional content and health benefits of breadfruit as a non-dairy fermented
media, this study aimed to investigate lactic acid fermentation using breadfruit flour as a substrate,
and monitor the changes in terms of physicochemical (pH, organic acids, sugar concentration),
and sensory properties of selected fermented beverages.
2. Materials and Methods
2.1. Breadfruit Flour
Breadfruit flour was sourced from a local company (Maiden South Pacific Company) located in
Auckland, New Zealand. The breadfruit flour was imported from Natural Foods International Limited,
Samoa. Mature breadfruit were harvested, peeled, cored and sliced before being air dried, and then
hand milled into powder form (G. Percival, personal communication, 25 January 2019).
2.2. Microorganisms
Three lactic acid bacteria were used in this research, namely Lactobacillus plantarum DPC 206 (Bioactive
Research, Auckland, New Zealand), Lactobacillus acidophilus “de Winkel” (De Winkel yoghurt, Fonterra
Cooperative Group, Auckland, New Zealand) and Lactobacillus casei Shirota (Yakult, Tokyo, Japan). All lactic
acid bacteria were grown in MRS broth (Merck, Darmstadt, Germany). The bacteria were selected as they
were common starter bacteria in existing commercial fermented products.
2.3. Preparation of Lactobacilli-Fermented Breadfruit Beverages
2.3.1. Preliminary Studies on the Selection of Lactobacillus Strains
Each strain from the stock cultures was activated prior to preparation of the breadfruit-based
beverage. This was done by adding 1% v/v inoculum into breadfruit supernatant and incubation at
37 ◦ C for 24 h. The steps in making the fermented breadfruit beverages are summarised in Figure 1.
During fermentation, aliquot of samples (50 mL) were taken at 0, 12, 24, 48, and 72 h intervals for
chemical and microbiological analyses. A selection of lactic acid strains to be used in probiotic beverage
production was performed based on the viable cell number and preliminary sensory quality evaluation.
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Breadfruit flour (BFF) sterilized at 121 ℃ for 15 min
Sterilized breadfruit flour (6.5%) was blended in 1litre (L) tap
water and boiled 1 h
Centrifugation at 4000 rpm
for 30 min
Collect supernatant of starch free breadfruit extracts and
sterilized at 121 ℃ for 15 min
Seven inoculums of lactic acid strains (1% v/v) added into
breadfruit supernatant and incubated at 37 ℃ for 24 h
Inoculum (1%) and white sugar (10%) added into sterilized
breadfruit supernatant and incubated at 37 ℃ for 72 h
Fermented breadfruit beverage
Screen selected strains
BFF-L.A
BBF-L.C
BBF-L.P
BFF-L.A+L.C
BFF-L.A+L.P
BFF-L.C+L.P
BFFL.A+L.C+L.P
Figure 1. Production of seven Lactobacilli-fermented beverage formulations using breadfruit flour as
a substrate. L.A (Lactobacillus acidophilus), L.C (Lactobacillus casei) and L.P (Lactobacillus plantarum DPC
206) were both used as monocultures and mixtures (i.e., L.A + L.C + L.P).
2.3.2. Viable Cell Count Determination
Determination of the number of viable cells was carried out using the plate count technique.
Suspensions of fermented beverage were decimally diluted in sterile peptone water up to 10−5 dilution.
−
Aliquots of the diluted fermented beverage (0.1 m) L were inoculated on De Man, Rogosa and Sharpe
(MRS) agar plates using the spread plate method (Merck, Darmstadt, Germany). The plates were
incubated at 37 ◦ C for 72 h in the CO2 incubator. Plates were counted manually and recorded as
colony-forming units (CFU) per mL of culture. Viable cell count was obtained using triplicate plates
for each beverage sampled periodically at 0, 12, 24, 48, and 72 h.
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2.4. Preliminary Sensory Evaluation of Samples
Preliminary sensory evaluation of the fermented breadfruit beverage was carried out in a sensory
testing facility. Seven beverage samples with the maximum number of viable cells were chosen. Samples
were served in plastic portion cups labelled with three-digit random numbers. Twelve panellists described
differences between the samples of fermented beverages in terms of smell, colour and taste.
2.5. Determination of pH
The pH of beverages was determined throughout the fermentation using a digital pH meter
(Eutech pH 700 meter, Thermo Fisher Scientific Inc., Waltham, MA, United States) with a glass
electrode (Electrode ECFC7252101B, Thermo Fisher Scientific Inc, Waltham, MA, United States). Before
measurement, the pH meter was calibrated with buffers (Thermo Fisher Scientific Inc, New Zealand)
at pH 4.0 and 7.0. pH determination was performed in triplicates for each fermented beverage sample
(20 mL) at 0, 12, 24, 48, and 72 h.
2.6. Experimental Design for the Optimisation of the Fermentation Process for the Production of Probiotic Beverages
The D-optimal design (value 0.95) was applied to investigate the influence of breadfruit, sugar,
temperature and inoculum concentrations, using the Unscrambler X v10.1 (CAMO ASA, Oslo, Norway)
software. This design minimises the covariance of the parameter estimates for a specified model [20].
In this experimental design, breadfruit (2% to 7%), sugar (5% to 15%), temperature (30 to 37 ◦ C,
and inoculum (1% to 3%) were used as experimental variables. D-optimal design was utilised with the
constraints for the following: Sugar (X1 ) + Inoculum (X2 ) + Breadfruit (X3 ). Unscrambler designed
19 runs with two replicates (Table 1).
Y = λ1 X1 + λ2 X2 + λ3 X3 (linear),
Y = λ1 X1 + λ2 X2 + λ3 X3 + λ1 X1 λ2 X2 + λ1 X1 λ3 X3 + λ2 X2 λ3 X3 (quadratic),
Y = λ1 X1 + λ2 X2 + λ3 X3 + λ1 X1 λ2 X2 + λ1 X1 λ3 X3 + λ2 X2 λ3 X3 + λ1 X1 λ2 X2 λ3 X3 (special cubic),
(1)
where Y represents the responses of the experiment (CFU, pH, Titratable acidity, Lactic Acid, and Sugar),
λ is the constant coefficients, and X is the proportions of the components.
Table 1. Experimental design for formulation of probiotic beverages in this study.
Experiment
Number
Sugar
Concentration
(% v/v)
Inoculum
Concentration
(% v/v)
Breadfruit
Concentrations
(% v/v)
Temperature
(◦ C)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
5
15
15
5
15
15
5
10
5
15
15
5
15
15
5
10
10
10
10
1
3
1
3
3
1
1
1
1
3
1
3
3
1
1
1
2
2
2
2
2
7
7
2
7
2
2
2
2
7
7
2
7
2
2
4.5
4.5
4.5
30
30
30
30
37
37
33.5
30
30
30
30
30
30
37
33.5
30
33.5
33.5
33.5
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2.7. Determination of Titratable Acidity
Titratable Acidity (TA) of fermented beverages was carried out using the AOAC 937.05 method [21].
0.1 N NaOH solution was used as titration solution. The percentage titratable acidity, as lactic acid was
determined using the following equation:
% Titratable Acidity, as lactic acid =
N × V × 90.08
,
W × 10
(2)
where: N = normality of titrant, 0.1 N NaOH; V = volume of titrant (mL); W = mass of breadfruit
substrate beverage (g).
2.8. Determination of Sugar Concentration
High-Performance Liquid Chromatography (HPLC, Agilent Technologies, Inc., Santa Clara,
CA, USA) was used to analyse the sugars in the 48-h-fermented beverage samples based on the AOAC
980.13 method [22]. This method was capable of detecting fructose, glucose, lactose, maltose and
sucrose sugars. However, sucrose was the only sugar detected in the samples, and thus the only
sugar reported in this study. In each run, sugars were quantified by a R401 refractive index detector,
and separated on a Shodex Asahipak (250 × 4.6 mm) column. The mobile phase used was a 80%
acetonitrile solution that was passed through the column at a flow rate of 1.5 mL/min. Prior to injection,
samples were centrifuged for 10 min at 2000 rpm and filtered through a 0.45-µm Swinney syringe filter.
2.9. Determination of Lactic Acid Concentration
The methyl chloroformate (MCF) method was used in this study to derivatise metabolites [23].
This method involved a fast alkylation reaction, where amino acid and non-amino organic acids are quickly
reacted with MCF to form esters and carbamates [23]. Derivatised samples were analysed using the gas
chromatography–mass spectrometry (GC-MS) method (Model 5977B, Agilent Technologies Inc.), equipped
with a column (Model122-5532G, length 30 m, diameter 0.250 mm, film 0.25 µm, Agilent Technologies Inc.).
After MCF derivatisation, GC-MS analysis was carried out using a temperature program that started at
30 ◦C and held for 4 min, followed by a 10 ◦C/min increase to 250 ◦C, and maintained at 250 ◦C for 3 min.
The mobile phase used was helium at a flow rate of 54.4 mL/min.
2.10. Sensory Evaluation
2.10.1. Projective Mapping
The projective mapping of samples in this study followed the protocol described by Balbas et al. [24].
In addition to differentiating products in terms of their similarities and differences, products were also
described in terms of their sensory attributes. Product profiles from projective mapping have been reported
to show a high degree of similarity to results obtained by descriptive analysis [25]. In this study, projective
mapping was carried out by a semi-trained panel that comprised of 17 panellists (aged from 20 to 29,
with equal numbers of males and females). Six different beverage samples fermented for 48 h were selected.
Panellists were served samples (20 mL each) in portion cups labelled with random three-digit numbers
and served in a random order at room temperature. Panellists were also asked to describe attributes that
differentiated the beverage samples.
2.10.2. Consumer Testing
Consumer testing was carried out on 50 consumers. Consumers rated their response to the
beverages in terms of overall liking, and liking of appearance, odour, flavour, texture and aftertaste
using a 15-cm unstructured line scale, anchored “extremely dislike” on the left and “extremely like”
on the right. Panellists were served samples (20 mL each) in portion cups labelled with three-digit
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random numbers and served in a randomised order at room temperature. Data were collected using
the FIZZ Acquisition system v 2.46c (Biosystèmes, Couternon, France).
2.11. Statistical Analysis.
Two-way analysis of variance was used to explore the main and interaction effects of fermentation
time and bacterial species mix based on CFU counts and pH. Product optimisation was carried out
using the d-optimal design. In addition, contour plots were generated to explore the relationship
between sugar, breadfruit flour, and inoculum concentration. All product optimisation statistical
analysis was carried out using the Unscrambler X v10.1 software (Camo Analytics AS, Oslo, Norway).
Analysis of projective mapping results was performed according to Balbas et al. [24] using XLSTAT
version 2018.1 (Addinsoft Inc, Brooklyn, NY, USA). Multiple Factor Analysis (MFA), Generalised
Procrustes Analysis (GPA), and Principal Component Analysis (PCA) were carried out to 1) determine
panel agreement, 2) extract product coordinates, and 3) visualise product coordinates with correlative
sensory attribute (at a minimum frequency of five times).
3. Results and Discussion
3.1. Growth of Lactic Acid Bacteria
Three probiotic strains (L. acidophilus, L. casei and L. plantarum DPC 206) were selected for
fermentation of a probiotic drink using a water extract of breadfruit flour fermented at 37 ◦ C from 0
to 72 h. The viability of cells during fermentation are presented in Table 2. After fermentation from
48 to 72 h, the maximum number of L. acidophilus, L. casei and L. plantarum DPC 206 were between
7.931 and 8.029 log10 CFU/mL respectively with no significant difference (p > 0.05). The most rapid
growth occurred with L. acidophilus, which started off with the lowest viable cell number and reached
a maximum of 8.029 log10 CFU/mL after 72 h fermentation. L. casei and L. plantarum DPC 206 showed
similar maximum cell viability in the fermented beverage. L. plantarum DPC 206 started with a relatively
low viable cell number and reached a maximum after two days fermentation, while numbers of L. casei
reached a maximum after 72 h fermentation.
In the four groups of mixed strains fermentation (L. acidophilus + L. casei, L. acidophilus +
L. plantarum DPC 206, L. casei + L. plantarum DPC 206, and L. acidophilus + L. casei + L. plantarum
DPC 206), the maximum number of the mixed Lactobacilli were between 7.962 and 8.238 log10
CFU/mL. The beverages fermented with a mixture of three Lactobacilli presented the highest cell counts
(8.238 log10 CFU/mL) compared to those fermented with a mixture of two Lactobacilli. L. acidophilus
with L. casei and L. acidophilus with L. plantarum DPC 206, but showed similar characteristics in bacteria
growth. During the fermentation, both groups reached maximum viable counts, with L. acidophilus
and L. casei showing a higher growth at 8.014 Log10 CFU/mL than a mixture of L. acidophilus and
L. plantarum DPC 206 (7.962 Log10 CFU/mL), but with no significant difference (p > 0.05). After 24 h
fermentation, the viability of both groups showed a moderate decrease between 7.435 and 7.701 Log10
CFU/mL. The L. casei and L. plantarum DPC 206 group as well as the mixture strains group of three
Lactobacilli at 48 h fermentation, showed similar bacteria growth and achieved high number of viable
cell counts of 8.22 Log10 CFU/mL and 8.238 Log10 CFU/mL, respectively.
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Table 2. The number of bacteria cells in fermented breadfruit beverage over 72 h of fermentation.
Fermentation Time (FT)/H (Log10 CFU/mL)
Bacteria Species (BS)
0
L. acidophilus
L. casei
L. plantarum DPC 206
L. acidophilus + L. casei
L. acidophilus + L. plantarum DPC 206
L. casei + L. plantarum DPC 206
L. acidophilus+ L. casei +
L. plantarum DPC 206
12
Cd
24
Bc
F Value
48
Bbc
72
Ab
BS
FT
BS × FT
5.82 *
96.7 *
1.155
Aa
5.275 ± 0.052
6.055 ± 0.222 Ab
5.555 ± 0.093 BCb
5.857 ± 0.091 ABb
5.955 ± 0.231 ABb
5.868 ± 0.031 ABb
6.761 ± 0.031
7.48 ± 0.474 Aa
7.856 ± 0.157 Aa
7.994 ± 0.188 Aa
7.826 ± 0.196 Aa
7.957 ± 0.091 Aa
6.846 ± 0.031
7.597 ± 0.432 Aa
7.888 ± 0.156 Aa
8.014 ±0.217 Aa
7.872 ± 0.103 Aa
8.126 ± 0.122 Aa
7.379 ± 0.338
7.845 ± 0.239 Aa
7.931 ± 0.118 Aa
7.644 ± 0.571 Aa
7.962 ± 0.173 Aa
8.220 ± 0.166 Aa
8.029 ± 0.096
7.952 ± 0.247 Aa
7.764 ± 0.121 Aa
7.435 ± 0.688 Aa
7.701 ± 0.297 Aa
7.998 ± 0.229 Aa
5.847 ± 0.139 ABb
8.003 ± 0.142 Aa
8.098 ± 0.083 Aa
8.238 ± 0.112 Aa
8.106 ± 0.198 Aa
The values given above are reported as means and standard deviations. Values with a different letter are significantly different (p < 0.05) according to the Fisher’s Least Significant Difference
(LSD) post hoc test. Uppercase superscript represent a statistically significant effect within column and lowercase superscripts across each row. * Symbol represents p value (*p < 0.01).
Foods 2019, 8, 214
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For all seven groups of bacteria culture or their mixtures, the cell concentration of samples showed no
significant difference (p > 0.05) when fermented for 72 h. A significantly (p < 0.05) low cell concentration of
L. acidophilus was found at 24 h, compared to other groups. Significantly (p < 0.05) rapid growth occurred for
most strains for L. acidophilus and L. plantarum DPC 206 from 0 to 12 h. Cell viability increased in the early
stage of fermentation and contained enough probiotics (7 log10 CFU/mL). This result was in agreement with
previous studies [26,27]. Mousavi et al. [28] reported that, once lactic acid bacteria, such as L. acidophilus and
L. plantarum, successfully grew under new conditions, they enter the exponential growing phase. For all
seven groups, no significant difference (p > 0.05) was observed between 12 and 24 h. When probiotic cell
counts increased to a maximum, the viability of probiotic bacteria decreased slightly due to the production
of inhibitory substances, such as lactic acid [3]. Usually, the growth capacity of L. acidophilus and L. plantarum
mainly depend on the nutrient content in the medium [29]. Probiotic species and fermentation time
were however significantly influenced in terms of cell concentration (F value 5.82 **, 96.7 **, p < 0.01
in Table 2, respectively).
For all seven groups of individual probiotic bacteria and their mixtures, the total number of
viable cells were over 7 Log10 CFU/mL in the final product. Thus, the results demonstrated that
the selected Lactobacilli were able to grow in breadfruit substrate beverages successfully. The results
also showed that the mixed culture of lactic acid bacteria grew faster than single lactic acid bacteria
strains in the breadfruit substrate beverages. Mixed cultures have been reported to contain more
than the recommended probiotic cell level (7Log10 CFU/mL) after fermentation [5]. In general, mixed
cultures are involved in the interaction mechanism that may stimulate or inhibit bacteria growth [30].
Mixed strains presented fast growth that could be due to the interaction mechanism that can produce
different metabolites. For example, L. acidophilus is a homofermentative bacteria that produces lactic
acid by glycolysis ([31]. L. plantarum is a heterofermentative bacteria that produces lactic acid and
other end-products [31]. During fermentation, these metabolites can stimulate the growth of mixed
cultures. In conclusion, the three Lactobacilli strains and mixed strains used in this study exhibited good
adaptation to the breadfruit substrate, and the viability of cells in the fermented beverages yielded
a satisfactory probiotic value.
3.2. Acidification in Fermented Breadfruit Beverage
The change in pH values during fermentation is presented in Table 3. For all the beverages
containing three probiotic strains and mixture strains, fermentation started at a similar pH and dropped
between 4.62 and 3.49 at the end of 72 h fermentation. This decrease in pH can be due to the lactic
acid bacteria producing organic acids, which is mainly lactic acid. L. acidophilus pH was significantly
(p < 0.05) higher than other strains at all fermentation times of 12, 24, 48 and 72 h. Interestingly, although
a higher cell growth was found with L. acidophilus at all fermentation times, a lower acidification was
produced. This can be explained due to differences in metabolism and production of organic acids
in the different strains [32]. The pH of mixture strains containing L. plantarum DPC 206, except for
a mixture of L. acidophilus and L. plantarum DPC 206 strains, were significantly (p < 0.05) the lowest
at 48 and 72 h. The type of probiotic bacteria, fermentation time, and their interaction significantly
influenced pH (F value 92.1 ***, 549.8 ***, and 5.5 ***, p < 0.0001 in Table 2).
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Table 3. The changes in pH during fermentation in of breadfruit (5%) beverage over 72 h.
Fermentation Time (Hour)
Bacteria Species (BS)
0
L. acidophilus
L. casei
L. plantarum DPC 206
L. acidophilus + L. casei
L. acidophilus + L. plantarum DPC 206
L. casei + L. plantarum DPC 206
L. acidophilus+ L. casei + L. plantarum
DPC 206
12
ABa
24
Ab
F Value
48
Ac
72
Ad
BS
FT
BS × FT
92.1 ***
549.8 ***
5.5 ***
Ad
5.41 ± 0.02
5.38 ± 0.05 ABa
5.43 ± 0.03 Aa
5.40 ± 0.00 ABa
5.39 ± 0.02 ABa
5.37 ± 0.02 Ba
5.24 ± 0.01
4.3 ± 0.07 Bb
4.18 ± 0.04 BCb
4.34 ± 0.11 Bb
4.13 ± 0.02 Cb
4.06 ± 0.01 Cb
4.94 ± 0.02
4.06 ± 0.09 Bbc
3.92 ± 0.03 Bc
4.05 ± 0.19 Bbc
3.95 ± 0.06 Bc
3.81 ± 0.05 Bc
4.70 ± 0.05
3.84 ± 0.19 Bc
3.68 ± 0.01 Bd
3.84 ± 0.21 Bbc
3.69 ± 0.06 Bd
3.53 ± 0.04 Bd
4.62 ± 0.09
3.7 ± 0.10 BCc
3.55 ± 0.05 BCe
3.72 ± 0.13 Bc
3.57 ± 0.01 BCd
3.47 ± 0.00 Cd
5.38 ± 0.03 ABa
4.09 ± 0.02 Cb
3.82 ± 0.06 Bc
3.58 ± 0.04 Bd
3.49 ± 0.05 BCd
The values given above are reported as means and standard deviations. Values with a different letter are significantly different (p < 0.05) according to the Fisher’s Least Significant
Difference (LSD) post hoc test. Uppercase superscripts represent a statistically significant effect within column and lowercase superscripts across each row. *** Symbol represents p value
(*** p < 0.0001).
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3.3. Preliminary Sensory Evaluation
Preliminary sensory testing was carried out to screen a suitable starter culture for the development
of the probiotic beverage. The fermented beverages fermented by L. casei, and a mix of L. casei and
other strains were found to have an undesirable smell that panellists found unacceptable. The negative
perception of L. casei fermented beverage might be due to probiotic off-flavour and higher lactic acid
content that can decrease acceptability. L. casei fermented with litchi juice has also been reported to
result in unfavourable flavour amongst panellists [33].
Both L. plantarum DPC 206 and a mix of L. acidophilus and L. plantarum DPC 206 fermented beverages
were reported to have a fruity character and pleasant flavour that panellists found favourable. However,
since the L. acidophilus and L. plantarum DPC 206 mix strains in the beverage was fast growing, and only
required 48 h of fermentation to reach a maximum viable cell count, this inoculum was used for further
optimisation experiments for production of a fermented breadfruit substrate beverage. In fermentation
procedures, it is desirable to have short fermentation periods as this can enhance output and prevent
microbial contamination [34]. The co-cultured organisms grew the quickest under these conditions
to gain ascendance and predominated because organisms must compete for nutrients or produce
metabolites that stimulate each other’s growth [35]. In addition, L. plantarum adapt DPC 206 has been
reported to do well in various environments because of its metabolic flexibility [36].
3.4. Optimisation of Fermented Breadfruit Beverage Using a Mixture Design Experiment
Cell viability results in this study, decreased linearly with temperature increase, with no significant
(p > 0.05) effect. Hence optimisation of the fermented beverage was further carried out using CFU, pH,
TA, LA and sugar concentration instead. Our results are in agreement with previous researches [37,38]
for vegetable juice and cashew apple juice [39]. In their study, mixed probiotic strains were observed at
moderate fermentation temperature, with maximum cell viability at 30 ◦ C. Temperatures higher than
30 ◦ C can cause viability losses.
The D-optimal mixture experimental design is often applied in food fermentation as it is an effective
tool for optimisation [40]. This design was employed in this research using a mixed culture grown at
30 ◦ C after 48 h fermentation. Seven percent breadfruit flour was used because proportions higher
than that resulted in a more viscous product that cannot be fermented. Sugar was added at 15% to the
fermented beverage to give a balanced sweet and sour taste, as recommended by the focus group that
carried out preliminary sensory testing who also found that the mixture strains of L. acidophilus and
L. plantarum DPC 206 resulted in acceptable fermented beverage sensory attributes.
Experiments runs were generated using the Unscrambler X v10.1 (CAMO ASA) software. The fitted
models obtained for each response were fitted to a model based on SS and R2 . Table 4 presents the
equations and adjusted coefficients of determination of models. Results showed that the five response
variables measured (CFU, TA, pH, LA, and sugar concentration) belonged to either quadratic, quartic
and special cubic models (Table 5). The polynomial models that explained the relationship between
response and the variables are presented in Table 4.
Table 4. Cubic, quadratic and quartic models obtained from the D-optimal design model.
Response
Equation
CFU
CFU = 0.075692 × A a + 0.076848 × B a + 0.080568 × C a + 1.01665E-004 × AB +1.75774E-004 ×
AC + 5.32542E-005 × BC − 5.77027E-006 × ABC + 1.21489E-006 × AB(A−B) + 4.20509E-006 ×
AC(A−C) a + 5.41514E-007 × BC(C−B)
pH
pH = 0.036188 × A + 0.036682 × B + 0.035848 × C + 2.24981E-005 × AB +1.25414E-004 × AC a +
2.76765E-005 × BC
TA
TA = 1.12385E-003 × A + 1.16534E-003 × B + 1.85367E-003 × C + 3.27095E-005 × AB a −
2.09864E-006 × AC + 5.00860E-006 × BC
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Table 4. Cont.
Response
Equation
LA
LA = 0.53 × A + 0.53 × B + 0.48 × C − 0.13 × AB +1.23 × AC − 0.30 × BC − 0.55 × AB(A−B) +
1.78 × AC(A−C) − 0.57 × BC(B−C) + 13.05 × A2 BC − 18.68 × AB2 C + 6.39 × ABC2 − 0.73 ×
AB(A−B)2 − 12.09 × AC(A−C)2 a + 3.39 × BC(B−C)2
S
S = 0.050304 × A + 0.043473 × B + 0.042798 × C + 3.32747E-003 × AB a +1.51232E-003 × AC +
2.02706E-003 × BC – 1.02840E-004 × ABC
A = sugar, B = inoculum, C = breadfruit. Lowercase superscript a represents a statistically significant effect (p < 0.05).
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Table 5. ANOVA of the regression models and regression coefficients for parameter used in the optimisation of fermented breadfruit beverages. A = sugar,
B = inoculum, C = breadfruit. ** p < 0.01; * 0.01 ≤ p < 0.05; p ≥ 0.10.
Response
Model
A
B
C
AB
AC
BC
ABC
AB(A−B)
AC(A−C)
BC(B−C)
A2 BC
AB2 C
ABC2
AB(A−B)2
AC(A−C)2
BC(B−C)2
Mean
Experimental
Value
Predicted
Model Value
CFU
Cubic
7.57 *
7.68 *
8.06 *
1.02
1.76 *
0.53
−5.77
1.21
4.21 **
0.54
—
—
—
—
—
—
7.924
log CFU/mL
8.208
log CFU/mL
pH
Quadratic
3.62
3.67
3.58
0.22
1.25 **
0.28
—
—
—
—
—
—
—
—
—
—
3.82
3.877
TA
Quadratic
0.11
0.12
0.19
0.33 **
−0.02
0.05
—
—
—
—
—
—
—
—
—
—
0.177%
0.156%
LA
Quartic
0.53
0.53
0.48
−0.13
1.23
−0.30
—
−0.55
1.78
−0.57
13.05
−18.68
6.39
−0.73
−12.09 *
3.39
0.70 g/mL
0.87 g/mL
S
Special
Cubic
5.03
4.35
4.28
33.27 **
15.12
20.27
−102.84
—
—
—
—
—
—
—
—
—
8.373%
8.142%
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Optimisation of Five Response Variables (CFU, pH, TA, LA and Sugar Concentration) in Breadfruit
Substrate Beverage Fermented for 48 h
In Figure 2, the mixture contour plots presented a two-dimension view wherein all points located
in the same shade regions are related to the cubic model. The effect of sugar, inoculum and breadfruit
flour concentration and their interactions were investigated to understand the changes in growth of
L. acidophilus and L. plantarum DPC 206 using a cubic model. Each side of the triangle represented
maximum values of fermentation parameters and the opposite side represented the minimum value.
The regression model equations for CFU, pH, titratable acidity, lactic acid and sucrose concentration
are presented in Table 4.
a)
b)
A: Sugar
15
Component Coding: Actual
cfu
Design Points
8.30374
7.8
7.57186
A: Sugar
15
Component Coding: Actual
pH
Design Points
3.94
3.59667
X1 = A: Sugar
X2 = B: Inoculum
X3 = C: Breadfruit
8.2
3.7
X1 = A: Sugar
X2 = B: Inoculum
X3 = C: Breadfruit
8.4
Prediction 8.20802
Prediction 3.8776
8
2
1
3.9
2
1
3.8
7.8
3.7
3.7
8
5
8
B: Inoculum
c)
9
C: Breadfruit
cfu
d)
A: Sugar
15
Component Coding: Actual
TA
Design Points
0.237838
8
B: Inoculum
0.12
0.114715
5
pH
A: Sugar
15
Component Coding: Actual
LA
Design Points
0.895
0.2
0.3
0.14
X1 = A: Sugar
X2 = B: Inoculum
X3 = C: Breadfruit
3.6
9
C: Breadfruit
0.4
X1 = A: Sugar
X2 = B: Inoculum
X3 = C: Breadfruit
Prediction 0.15607
Prediction 0.870492
0.16
2
2
1
0.8
0.18
e)
0
0.4
0.16
0.18
0.14
8
B: Inoculum
1
0.6
5
9
C: Breadfruit
TA
0.2
0.6
8
B: Inoculum
-0.2
0.6
5
LA
9
C: Breadfruit
A: Sugar
15
Component Coding: Actual
S
Design Points
12.75
6
3.91
8
X1 = A: Sugar
X2 = B: Inoculum
X3 = C: Breadfruit
Prediction 8.14203
2
12
1
10
8
8
6
6
8
B: Inoculum
5
S
9
C: Breadfruit
Figure 2. Contour plot showing the effect of sugar, inoculum and breadfruit flour concentration on the
CFU (a), pH (b), titratable acidity (TA) (c), lactic acid (LA) (d), and sucrose (S) concentration (e) in the
48-h-fermented beverage.
As seen in Figure 2a, the area with the highest CFU was located on the right-hand side of the
triangle plot. The maximum value was located near the top region of this line. Decreasing breadfruit
and inoculum contributed to a significant (p < 0.05) increase in CFU of fermented beverage. Sugar
content was also found to significantly (p < 0.05) increase CFU in the fermented breadfruit beverage.
Angelov et al. [26] similarly showed that increasing sugar concentration enhanced cell growth. In their
study, a significantly higher cell count was observed with 2% sucrose at 2.81 log orders compared to
1.5% and 1% sucrose for the newly developed oat-based probiotic drink.
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As seen in Figure 2b, the area with the highest pH was located on the right-hand side of the
triangle plot. The maximum pH region was located midway. pH reached a maximum at around
5.5% breadfruit and 13% sugar concentration. According to Table 5, only breadfruit proportion and
sugar concentration significantly (p < 0.05) influenced pH values. The optimum value of pH in the
contour plot was found at 3.88. Kailasapathy and Chin [41] pointed out that pH values between 3.5–4.5
increased the stability of probiotics in the gastrointestinal tract, which enhances survival of probiotic
strains consumed. Although lower pH resulted in probiotic bacteria loss, L. acidophilus and L. plantarum
were able to tolerate the lower pH because a proton gradient existed in the cell in order to counteract
the large amount of lactate in the food medium [42].
As seen in Figure 2c, the area with the highest TA was located at the middle range of the triangle
plot. The increase in TA was only significantly (p < 0.05) affected by sugar and inoculum interaction
(Table 5). The maximum value of TA in the contour plot was 0.2%. These TA values were similar to
those found in fermented soy-based products (0.08–0.19%) [43]. The differences in TA value may be
due to different nutrient content as well as the different fermentation parameters used for the different
probiotic strains [30].
As seen in Figure 2d, the area with the highest LA was located midway on the right-hand side of
the triangle plot. LA was at a maximum with around 5.5% of breadfruit and 13% sugar concentration.
The highest value of LA was 0.89 g/mL. Results showed that 5% of sugar was enough for lactic acid
bacteria to grow and accumulate lactic acid. Significance was only observed in the quartic interaction
(sugar × breadfruit × (sugar – breadfruit)2 ) as seen in Table 5. Sugar and breadfruit had the most
significant effect on LA at a mid-range content (also known as a turning point in polynomial equations).
On contrary, the lowest LA points were observed in the lowest and highest content of sugar and
breadfruit, respectively.
As seen in Figure 2e, the area with the highest sucrose concentration was located midway on
the left-hand side of the triangle plot. The maximum sucrose concentration region was located in the
middle range of sugar and inoculum. According to Table 5, it was the interaction between sugar and
inoculum that significantly influenced sucrose concentration. Maximum sucrose concentration was
found in formulations with mid-level concentrations of inoculum (1.5%) indicating that higher counts
of starter culture resulted in low viable growth rate [26].
The data shown in Table 5 compared the experimental value with the D-optimal prediction value.
Predicted values were calculated for the optimised design based on CFU, pH, TA, LA, and sucrose
concentration. In this study, CFU was set as the most important variable while TA, LA, and sucrose
concentration results were set as second priority variables. The optimum experimental values of CFU,
pH, and LA were slightly lower than the predicted values, except for TA and sugar concentration.
Overall, the optimum fermentation parameters for the fermented breadfruit beverage were found to be
7% breadfruit, 15% sugar and 1% sugar on 48 h fermentation at 30 ◦ C, based on the optimised results
using the D optimal design.
4. Sensory Quality Evaluation
Six of the 19 formulations (Formulations 1, 2, 3, 4, 6 and 18) in the experimental design that had
high viable counts were subjected to sensory testing. The selected formulations were those fermented
for 48 h.
4.1. Projective Mapping
Figure 3 shows the results of descriptive sensory attributes of beverages from formulations 1, 2, 3,
4, 6 and 18 obtained from sensory projective mapping based on appearance, aroma, taste and flavour
attributes. As seen in Figure 3, a total of 58.64% of the variation between samples was explained.
The first axis explained 31.35% of the total variation, and the second axis up to 27.29% variance.
The first component (F1) separated bitter from sour, honey, fruity and sweet. As for the second axis,
appearance characteristics of opaque were separated from pale yellow.
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According to Figure 3, Formulations 1, 3 and 6 were characterised primarily by mint, sour,
creamy appearance, honey, fruity flavour and sweet. Formulation 4 was mainly separated by the
appearance—pale yellow and bitter. Costa et al. [44] reported that juices with added sugar that tasted
sweet helped reduce the perception of sour. Formulation 4 presented a bitter taste that may have been
caused by some metabolites produced during fermentation. This could be due to the long fermentation
time (48 h). Bitter peptides (peptides aS1-CN) in the beverages have been reported to contribute to
bitterness [32]. Lactic acid bacteria growth can lead to consumption or formation of compounds that
may change flavour or aroma [1].
Biplot (axes F1 and F2: 58.64 %)
1.5
2
Sweet
Fruity
Honey
F2 (27.29 %)
-2
Creamy Appearance 0.5
3
Sour
-1
0
-0.5
6
Mint
1
-1.5
Opaque
1
0
0.5
1
1.5
2
Bitter
-0.5
18
Pale Yellow
-1
-1.5
4
-2
F1 (31.35 %)
Active
Supplementary variables
Figure 3. Sample configuration in the first and second dimensions of the Principal Components
Analysis plot obtained from projective mapping data. The main sensory attributes were projected as
supplementary variables in the analysis. Formulations 1, 2, 3, 4, 6, and 18 were analysed.
4.2. Sensory Acceptance
Figure 4 summarises the results of the hedonic test. There were no significant differences in
acceptance (p > 0.05) among the different formulations when evaluated for appearance and odour.
This indicated that different fermentation conditions and sugar addition did not affect the appearance
and odour of breadfruit beverage. Sensorially, Formulation 4 was consistently significantly lower
(p < 0.05) in acceptability than the other formulations based on liking of appearance, flavour and
aftertaste, as well as overall liking. Formulation 4 happened to contain low sugar and higher
concentration of cultures, which may explain why it was the least acceptable. Other studies on
probiotic cashew apple juice have reported that increasing sucrose led to increased overall taste
acceptance [45]. In addition, Formulation 4 (7% breadfruit, 3% inoculum and 5% sugar) was also
described as being bitter from the projective mapping results. According to Cruz et al. [46], metabolites
from lactic acid bacteria can negatively contribute to the aroma, off-flavour and taste of a probiotic
product. Hence, the amount of sucrose added is critical to the acceptability of the fermented breadfruit
beverage developed in this study.
Foods 2019, 8, 214
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6.00
Scale Rating
5.00
A
A A
A A
4.00
A
A
A
A
A A
A
A
A
A
A
B
3.00
A
A
A A
A
B
A
A
A A
A A
B
2.00
1.00
0.00
Overall Liking
Appearance
Odour
Flavour
Aftertaste
Sensory Attributes
1
2
3
4
6
18
Figure 4. Hedonic testing carried out based on liking of appearance, odour, flavour, aftertaste and
overall liking. Values labelled with a different letter represent significant differences (p < 0.05) according
to the Tukey’s multiple range comparison test. Formulation 1: 5%S, 1%I, 2%BF at 30 ◦ C, Formulation 2:
15%S, 3%I, 2%BF at 30 ◦ C, Formulation 3: 15%S, 1%I, 7%BF at 30 ◦ C, Formulation 4: 5%S, 3%I, 7%BF at
30 ◦ C, Formulation 6: 15%S, 1%I, 7%BF at 37 ◦ C, and Formulation 18: 10%S, 2%I, 4.5%BF at 33.5 ◦ C,
where S: Sugar concentration, I: Inoculum concentration, BF: Breadfruit concentration.
5. Conclusions
This study demonstrated the use of breadfruit flour as a novel substrate for fermentation to produce
a non-dairy probiotic beverage. The beverage formulated was found to have acceptable sensory
characteristic and good cell viability using a mixture strain of L. acidophilus and L. plantarum DPC 206.
The optimisation for production of the fermented beverage in terms of CFU, pH, titratable acidity, lactic
acid and sucrose concentration was successfully achieved using the D-optimal mixture design approach.
Sensory characterisation revealed that the beverage had favourable sensory characteristics with good
consumer acceptability. The market demand for non-dairy fermented beverages is mainly driven by
the increasing number of health-conscious consumers demanding for food products with added value
and improved functionality. With increased awareness of the health benefits of consuming beverages
that are naturally fermented, the market for these products is expected to increase in health-oriented
Western countries. Future research should investigate changes in both micro- and macronutrient
content of the fermented breadfruit beverage pre- and post-fermentation, the cell viability of probiotic
strains and native microbiota, additional organic acid measurements, and the survivability of probiotic
microorganisms when carrying out further shelf-life trials.
Author Contributions: Conceptualisation, N.H. and N.G.-M.; Data curation, K.K.; Formal analysis, K.K.;
Investigation, Y.G. and E.K.; Methodology, N.G.-M.; Project administration, Y.G.; Supervision, N.H. and N.G.-M.;
Writing—original draft, Y.G. and N.H.; Writing—review & editing, K.K.
Funding: This research received no external funding.
Acknowledgments: The authors acknowledge the School of Science at AUT for the PBRF funds that supported
this research.
Conflicts of Interest: The authors declare no conflict of interest.
Foods 2019, 8, 214
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References
1.
2.
3.
4.
5.
6.
7.
8.
9.
10.
11.
12.
13.
14.
15.
16.
17.
18.
19.
20.
21.
22.
De Souza Neves Ellendersen, L.; Granato, D.; Bigetti Guergoletto, K.; Wosiacki, G. Development and sensory
profile of a probiotic beverage from apple fermented with Lactobacillus casei. Eng. Life Sci. 2012, 12, 475–485.
[CrossRef]
Dongmo, S.N.; Procopio, S.; Sacher, B.; Becker, T. Flavor of lactic acid fermented malt based beverages:
Current status and perspectives. Trends Food Sci. Technol. 2016, 54, 37–51. [CrossRef]
Gökmen, V.; Acar, J.; Taydas, E. Science and research presence and formation of lactic acid in apple juices.
Fruit Proc. 2003, 2, 114–117.
Luckow, T.; Delahunty, C. Consumer acceptance of orange juice containing functional ingredients. Food Res. Int.
2004, 37, 805–814. [CrossRef]
Madureira, A.R.; Amorim, M.; Gomes, A.M.; Pintado, M.E.; Malcata, F.X. Protective effect of whey cheese
matrix on probiotic strains exposed to simulated gastrointestinal conditions. Food Res. Int. 2011, 44, 465–470.
[CrossRef]
Sanz, Y.; Dalmau, J. Los probióticos en el marco de la nueva normativa europea que regula los alimentos
funcionales. Acta Pediatr. Esp. 2008, 66, 27–31.
Prado, F.C.; Parada, J.L.; Pandey, A.; Soccol, C.R. Trends in non-dairy probiotic beverages. Food Res. Int.
2008, 41, 111–123. [CrossRef]
Bakare, H.A.; Osundahunsi, O.F.; Adegunwa, M.O.; Olusanya, J.O. Batter rheology, baking, and sensory
qualities of cake from blends of breadfruit and wheat flours. J. Culin. Sci. Technol. 2013, 11, 203–221.
[CrossRef]
Amusa, N.; Kehinde, I.; Ashaye, O. Bio-deterioration of breadfruit (Artocarpus communis) in storage and its
effects on the nutrient composition. Afr. J. Biotechnol. 2002, 1, 57–60. [CrossRef]
Singh, H. Tapping into Breadfruit’s Bounty. Available online: https://www.universityaffairs.ca/news/newsarticle/tapping-into-breadfruits_bounty/ (accessed on 20 May 2019).
Turi, C.E.; Liu, Y.; Ragone, D.; Murch, S.J. Breadfruit (Artocarpus altilis and hybrids): A traditional crop with
the potential to prevent hunger and mitigate diabetes in Oceania. Trends Food Sci. Technol. 2015, 45, 264–272.
[CrossRef]
Huang, A.; Titchenal, C.; Meilleur, B. Nutrient composition of taro corms and breadfruit. J. Food Compos. Anal.
2000, 13, 859–864. [CrossRef]
Oladunjoye, I.; Ologhobo, A.; Olaniyi, C. Nutrient composition, energy value and residual antinutritional
factors in differently processed breadfruit (Artocarpus altilis) meal. Afr. J. Biotechnol. 2010, 9, 4259–4263.
Ragone, D.; Cavaletto, C.G. Sensory evaluation of fruit quality and nutritional composition of 20 breadfruit
(Artocarpus, Moraceae) cultivars. Econ. Bot. 2006, 60, 335–346. [CrossRef]
Ayoade, G.; Aderibigbe, A.; Amoo, I. Effects of Different Processing Operations on Chemical Composition
and Functional Properties of African Breadfruit (Treculia africana) Seed. Am. J. Food Sci. Nutr. Res. 2015, 2,
180–185.
Clerici, M.T.P.S.; Carvalho-Silva, L. Nutritional bioactive compounds and technological aspects of minor
fruits grown in Brazil. Food Res. Int. 2011, 44, 1658–1670. [CrossRef]
Azevedo-Meleiro, C.H.; Rodriguez-Amaya, D.B. Confirmation of the identity of the carotenoids of tropical
fruits by HPLC-DAD and HPLC-MS. J. Food Compos. Anal. 2004, 17, 385–396. [CrossRef]
Akubor, P.; Isolokwu, P.; Ugbane, O.; Onimawo, I. Proximate composition and functional properties of
African breadfruit kernel and flour blends. Food Res. Int. 2000, 33, 707–712. [CrossRef]
Adebowale, A.; Sanni, S.; Oladapo, F. Chemical, functional and sensory properties of instant yam-breadfruit
flour. Niger. Food J. 2008, 26. [CrossRef]
Sarteshnizi, R.A.; Hosseini, H.; Bondarianzadeh, D.; Colmenero, F.J. Optimization of prebiotic sausage
formulation: Effect of using β-glucan and resistant starch by D-optimal mixture design approach.
LWT-Food Sci. Technol. 2015, 62, 704–710. [CrossRef]
AOAC. Official Methods of Analysis of the Association of Official Analytical Chemists, 17th ed.; Association of
Official Analytical Chemists, Inc.: Arlington, VA, USA, 2002; Volume 2, p. 2200. ISBN 0-935584-67-6.
AOAC. Determination of mono- and disaccharides in foods by interlaboratory study: Quantitation of bias
components for liquid chromatography. J. AOAC Int. 1992, 75, 443.
Foods 2019, 8, 214
23.
24.
25.
26.
27.
28.
29.
30.
31.
32.
33.
34.
35.
36.
37.
38.
39.
40.
41.
42.
43.
18 of 19
Smart, K.F.; Aggio, R.B.; Van Houtte, J.R.; Villas-Bôas, S.G. Analytical platform for metabolome analysis
of microbial cells using methyl chloroformate derivatization followed by gas chromatography-mass
spectrometry. Nat. Protoc. 2010, 5, 1709. [CrossRef] [PubMed]
Balbas, J.; Hamid, N.; Liu, T.; Kantono, K.; Robertson, J.; White, W.L.; Ma, Q.; Lu, J. Comparison of
physicochemical characteristics, sensory properties and volatile composition between commercial and
New Zealand made wakame from Undaria pinnatifida. Food Chem. 2015, 186, 168–175. [CrossRef] [PubMed]
Risvik, E.; McEwan, J.A.; Rødbotten, M. Evaluation of sensory profiling and projective mapping data.
Food Qual. Prefer. 1997, 8, 63–71. [CrossRef]
Angelov, A.; Gotcheva, V.; Kuncheva, R.; Hristozova, T. Development of a new oat-based probiotic drink.
Int. J. Food Microbiol. 2006, 112, 75–80. [CrossRef] [PubMed]
Helland, M.H.; Wicklund, T.; Narvhus, J.A. Growth and metabolism of selected strains of probiotic bacteria,
in maize porridge with added malted barley. Int. J. Food Microbiol. 2004, 91, 305–313. [CrossRef] [PubMed]
Mousavi, Z.; Mousavi, S.; Razavi, S.; Emam-Djomeh, Z.; Kiani, H. Fermentation of pomegranate juice by
probiotic lactic acid bacteria. World J. Microbiol. Biotechnol. 2011, 27, 123–128. [CrossRef]
Gokavi, S.; Zhang, L.; Huang, M.K.; Zhao, X.; Guo, M. Oat-based Symbiotic Beverage Fermented by
Lactobacillus plantarum, Lactobacillus paracasei ssp. casei, and Lactobacillus acidophilus. J. Food Sci. 2005,
70, M216–M223. [CrossRef]
Angelov, A.; Gotcheva, V.; Hristozova, T.; Gargova, S. Application of pure and mixed probiotic lactic acid
bacteria and yeast cultures for oat fermentation. J. Sci. Food Agric. 2005, 85, 2134–2141. [CrossRef]
Rathore, S.; Salmerón, I.; Pandiella, S.S. Production of potentially probiotic beverages using single and mixed
cereal substrates fermented with lactic acid bacteria cultures. Food Microbiol. 2012, 30, 239–244. [CrossRef]
Ong, L.; Henriksson, A.; Shah, N. Development of probiotic Cheddar cheese containing Lactobacillus
acidophilus, Lb. casei, Lb. paracasei and Bifidobacterium spp. and the influence of these bacteria on
proteolytic patterns and production of organic acid. Int. Dairy J. 2006, 16, 446–456. [CrossRef]
Zheng, X.; Yu, Y.; Xiao, G.; Xu, Y.; Wu, J.; Tang, D.; Zhang, Y. Comparing Product Stability of
Probiotic Beverages Using Litchi Juice Treated by High Hydrostatic Pressure and Heat as Substrates.
Innov. Food Sci. Emerg. Technol. 2014, 23, 61–67. [CrossRef]
Do Amaral Santos, C.C.A.; da Silva Libeck, B.; Schwan, R.F. Co-culture fermentation of peanut-soy milk for
the development of a novel functional beverage. Int. J. Food Microbiol. 2014, 186, 32–41. [CrossRef] [PubMed]
Kedia, G.; Wang, R.; Patel, H.; Pandiella, S.S. Use of mixed cultures for the fermentation of cereal-based
substrates with potential probiotic properties. Process Biochem. 2007, 42, 65–70. [CrossRef]
Kleerebezem, M.; Boekhorst, J.; van Kranenburg, R.; Molenaar, D.; Kuipers, O.P.; Leer, R.; Tarchini, R.;
Peters, S.A.; Sandbrink, H.M.; Fiers, M.W. Complete genome sequence of Lactobacillus plantarum WCFS1.
Proc. Natl. Acad. Sci. USA 2003, 100, 1990–1995. [CrossRef]
Charernjiratrakul, W.; Kantachote, D.; Vuddhakul, V. Probiotic Lactic Acid Bacteria for Applications in
Vegetarian Food Products. 2007. Available online: https://agris.fao.org/agris-search/search.do?recordID=
TH2014000205 (accessed on 16 May 2019).
Pereira, A.L.F.; Maciel, T.C.; Rodrigues, S. Probiotic beverage from cashew apple juice fermented with
Lactobacillus casei. Food Res. Int. 2011, 44, 1276–1283. [CrossRef]
Anadón, A.; Castellano, V.; Martínez-Larrañaga, M. Regulation and guidelines of probiotics and prebiotics.
In Probiotics and Prebiotics in Food, Nutrition Health; 2013; Available online: https://www.taylorfrancis.com/
books/e/9780429069291/chapters/10.1201/b15561-7 (accessed on 16 May 2019).
Kamoun, A.; Chaabouni, M.; Sergent, M.; Phan-Tan-Luu, R. Mixture design applied to the formulation of
hydrotropes for liquid detergents. Chemom. Intell. Lab. Syst. 2002, 63, 69–79. [CrossRef]
Kailasapathy, K.; Chin, J. Survival and therapeutic potential of probiotic organisms with reference to
Lactobacillus acidophilus and Bifidobacterium spp. Immunol. Cell Biol. 2000, 78, 80. [CrossRef] [PubMed]
Giraud, E.; Champailler, A.; Moulard, S.; Raimbault, M. Development of a miniaturized selective counting
strategy of lactic acid bacteria for evaluation of mixed starter in a model cassava fermentation. J. Appl. Microbiol.
1998, 84, 444–450. [CrossRef]
Wang, Y.-C.; Yu, R.-C.; Yang, H.-Y.; Chou, C.-C. Sugar and acid contents in soymilk fermented with lactic
acid bacteria alone or simultaneously with bifidobacteria. Food Microbiol. 2003, 20, 333–338. [CrossRef]
Foods 2019, 8, 214
44.
45.
46.
19 of 19
Costa, M.G.M.; Fonteles, T.V.; de Jesus, A.L.T.; Rodrigues, S. Sonicated pineapple juice as substrate for L. casei
cultivation for probiotic beverage development: Process optimisation and product stability. Food Chem. 2013,
139, 261–266. [CrossRef]
Pereira, A.L.F.; Almeida, F.D.L.; de Jesus, A.L.T.; da Costa, J.M.C.; Rodrigues, S. Storage stability and
acceptance of probiotic beverage from cashew apple juice. Food Bioprocess Technol. 2013, 6, 3155–3165.
[CrossRef]
Cruz, A.G.; Cadena, R.S.; Walter, E.H.; Mortazavian, A.M.; Granato, D.; Faria, J.A.; Bolini, H. Sensory analysis:
Relevance for prebiotic, probiotic, and synbiotic product development. Compr. Rev. Food Sci. Food Saf. 2010,
9, 358–373. [CrossRef]
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