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Kineticmodelingcandescribeinvivoglycolysis in
Entamoeba histolytica
Emma Saavedra
1
, Alvaro Marı
´n-Herna
´
ndez
1
, Rusely Encalada
1
, Alfonso Olivos
2
,
Guillermo Mendoza-Herna
´
ndez
3
and Rafael Moreno-Sa
´
nchez
1
1 Departamento de Bioquı
´
mica, Instituto Nacional de Cardiologı
´
a, Me
´
xico DF, Me
´
xico
2 Departamento de Medicina Experimental, Facultad de Medicina, Universidad Nacional Auto
´
noma de Me
´
xico, Me
´
xico DF, Me
´
xico
3 Departamento de Bioquı
´
mica, Facultad de Medicina, Universidad Nacional Auto
´
noma de Me
´
xico, Me
´
xico DF, Me
´
xico
Keywords
ATPases; drug targeting; hexokinase;
phosphoglycerate mutase
Correspondence
E. Saavedra, Departamento de Bioquı
´
mica,
Instituto Nacional de Cardiologı
´
a, Juan
Badiano no. 1 Col. Seccio
´
n XVI, CP 14080,
Tlalpan, Me
´
xico DF, Me
´
xico
Fax: +5255 5573 0926
Tel: +5255 5573 2911 ext. 1422
E-mail: emma_saavedra2002@yahoo.com
Note
The mathematical model described here
has been submitted to the Online Cellular
Systems Modelling Database and can be
accessed at http://jjj.biochem.sun.ac.za/
database/saavedra/index.html free of charge
(Received 7 November 2006, revised
13 July 2007, accepted 27 July 2007)
doi:10.1111/j.1742-4658.2007.06012.x
Glycolysis in the human parasite Entamoebahistolytica is characterized by
the absence of cooperative modulation and the prevalence of pyrophosphate-
dependent (over ATP-dependent) enzymes. To determine the flux-control dis-
tribution of glycolysis and understand its underlying control mechanisms, a
kinetic model of the pathway was constructed by using the software gepasi.
The model was based on the kinetic parameters determined in the purified
recombinant enzymes, and the enzyme activities, and steady-state fluxes and
metabolite concentrations determined in amoebal trophozoites. The model
predicted, with a high degree of accuracy, the flux and metabolite concentra-
tions found in trophozoites, but only when the pyrophosphate concentration
was held constant; at variable pyrophosphate, the model was not able to
completely account for the ATP production ⁄ consumption balance, indicating
the importance of the pyrophosphate homeostasis for amoebal glycolysis.
Control analysis by the model revealed that hexokinase exerted the highest
flux control (73%), as a result of its low cellular activity and strong AMP
inhibition. 3-Phosphoglycerate mutase also exhibited significant flux control
(65%) whereas the other pathway enzymes showed little or no control. The
control of the ATP concentration was also mainly exerted by ATP consum-
ing processes and 3-phosphoglycerate mutase and hexokinase (in the produc-
ing block). The model also indicated that, in order to diminish the amoebal
glycolytic flux by 50%, it was required to decrease hexokinase or 3-phospho-
glycerate mutase by 24% and 55%, respectively, or by 18% for both
enzymes. By contrast, to attain the same reduction in flux by inhibiting the
pyrophosphate-dependent enzymes pyrophosphate-phosphofructokinase
and pyruvate phosphate dikinase, they should be decreased > 70%. On the
basis of metabolic control analysis, steps whose inhibition would have
stronger negative effects on the energy metabolism of this parasite were
identified, thus becoming alternative targets for drug design.
Abbreviations
ADH, alcohol dehydrogenase; AK, adenylate kinase; ALDO, fructose 1,6-bisphosphate aldolase; AldDH, aldehyde dehydrogenase; ATP-PFK,
ATP-dependent phosphofructokinase; DHAP, dihydroxyacetone phosphate; ENO, enolase; EtOH, ethanol; F6P, fructose 6-phosphate;
F(1,6)P
2
, fructose 1,6-bisphosphate; G6P, glucose 6-phosphate; G6PDH, glucose 6-phosphate dehydrogenase; G3P, glyceraldehyde
3-phosphate; GAPDH, glyceraldehyde 3-phosphate dehydrogenase; Gly3PDH, glycerol 3-phosphate dehydrogenase; HK, hexokinase;
HPI, hexose 6-phosphate isomerase; HXT, hexose transporter; LDH, lactate dehydrogenase; MCA, metabolic control analysis; PGAM,
3-phosphoglycerate mutase; PGK, phosphoglycerate kinase; PGM, phosphoglucomutase; 3PGDH, 3-phosphoglycerate dehydrogenase;
PEP, phosphoenolpyruvate; 2PG, 2-phosphoglycerate; 3PG, 3-phosphoglycerate; PPi, pyrophosphate; PPi-PFK, pyrophosphate-dependent
phosphofructokinase; PPP, pentose phosphate pathway; PFOR, pyruvate:ferredoxin oxidoreductase; PFOR-AldDH, lumped reaction of PFOR
and AldDH; PPDK, pyruvate phosphate dikinase; PYK, pyruvate kinase; TPI, triosephosphate isomerase.
4922 FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS
The protist parasite Entamoebahistolytica is the causa-
tive agent of human amoebiasis. Approximately one
billion people are currently at risk of acquiring the dis-
ease; the parasite causes severe illness in 48 million
people each year and the number of annual deaths is
in the range 40 000–100 000 [1,2]. Metronidazole ther-
apy to control the disease is relatively effective; how-
ever, in 40–60% of treated patients, the microorganism
persists in the intestinal lumen, generating parasite car-
rier states [3]. Recent reports describe the induction
in vitro of E. histolytica resistant strains to this drug
[4,5]. If clinical resistance of E. histolytica to metroni-
dazole becomes prevalent, there is no alternative drug
still available. The search for better drugs is a continu-
ous process and further scientific research to under-
stand parasite biology and host–parasite interactions is
required to develop more effective treatment.
Trophozoites of E. histolytica lack functional mito-
chondria and have neither Krebs cycle, nor oxidative
phosphorylation enzyme activities; thus, glycolysis is
the only pathway able to generate ATP for cellular
work [6–8]. In terms of regulation of glycolysis, the
amoebal pathway diverges in two important aspects
from that of the human host: First, it has the enzymes
pyrophosphate-dependent phosphofructokinase (PPi-
PFK) [9,10] and pyruvate phosphate dikinase (PPDK)
[11,12], which catalyze reversible reactions under physi-
ological conditions and are not subjected to allosteric
regulation as their mammalian counterparts ATP-
dependent phosphofructokinase (ATP-PFK) and pyru-
vate kinase (PYK), respectively. In mammalian cells,
ATP-PFK and PYK catalyze irreversible reactions
under physiological conditions; these enzymes also dis-
play cooperative modulation by several physiological
metabolites and, together with hexokinase (HK) and
glucose transporter, have been identified as the main
flux-controlling steps of glycolysisin some human cell
types [13–16]. Although ATP-PFK and PYK activities
have also been detected in E. histolytica [17,18], their
activities in amoebal extracts are low in comparison to
their PPi-dependent counterparts and probably do not
significantly contribute to the total glycolytic flux. Sec-
ond, like the human glucokinase (HK IV), amoebal
HK is not inhibited by its product glucose 6-phosphate
(G6P) [19]; instead, AMP and ADP are potent
inhibitors of the amoebal HK at physiological
concentrations [19,20].
Other relevant differences of the amoebal glucose
catabolism are the presence of a metal-dependent
class II fructose 1,6-bisphosphate aldolase (ALDO)
and a 2,3-bisphosphoglycerate-independent 3-phospho-
glycerate mutase (PGAM), which have no homologues
with the enzymes present in human cells [21]. More-
over, pyruvate is converted to acetyl-CoA by pyru-
vate:ferredoxin oxidoreductase (PFOR) instead of a
pyruvate dehydrogenase complex; and acetyl-CoA is
further metabolized to ethanol (EtOH) and acetate
[6,7].
The differences found in amoebal glycolytic enzymes
in comparison to those of its host suggest that these
enzymes might be appropriate drug targets for thera-
peutic intervention of this energetically important
pathway in the parasite [22,23]. However, it should be
initially established whether the proposed target
enzymes display high control on both the glycolytic
flux and ATP concentration in amoebas and low con-
trol in the host pathway. If a difference in the control
distribution is found in the parasite versus host, then
the specific inhibition of the parasite’s enzymes with
the highest control may lead to a successful perturba-
tion of the parasite energy metabolism and growth.
Despite glycolysis being a pathway present in all cells,
subtle differences in glycolytic enzymes in, for example,
parasite versus host or tumor versus normal cells, have
been the basis in the search for drugs that affect prin-
cipally the pathologic cells with minor effects on the
normal cells.
Metabolic control analysis (MCA) [24] provides the
tools to infer the prospects of decreasing a pathway
flux by inhibiting any individual enzyme. MCA allows
to quantitatively determining the degree of control that
a given enzyme (Ei) exerts over the pathway flux (J),
namely the flux-control coefficient (C
J
Ei
). C
J
Ei
is a value
that represents the impact on flux of infinitely small
changes in an enzyme activity by factors such as exter-
nal inhibition or decreased expression. An enzyme with
a C
J
Ei
¼ 1 means that the enzyme might indeed be the
only rate-limiting step of the pathway. To date, how-
ever, MCA studies have shown that there are no rate-
limiting steps; instead, the flux control of a given
pathway is distributed among different enzymes [24].
The summation theorem of MCA states that the sum
of the C
J
Ei
of all pathway steps is equal to one. This
may include steps from other pathways (such as
branches or end-product consuming processes) as long
as they are linked by a metabolite or enzyme. Conse-
quently, some pathway steps may have C
J
Ei
values
greater than one whereas those of branching steps have
negative values, but the summation of all C
J
Ei
has to be
unity [24].
Metabolic modeling (i.e. in silico biology) uses the
kinetic parameters of the complete set of enzymes
belonging to a pathway (preferentially measured from
the same source and under the same experimental con-
ditions) to build kinetic models that can predict the
system behavior. In this sense, kineticmodeling is a
E. Saavedra et al. ModelingEntamoeba glycolysis
FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS 4923
useful tool to establish predictions about which,
why, by how much and under what conditions one
enzyme exerts control over the pathway flux. Kinetic
models have been constructed for glycolysis from
erythrocytes [25], rat heart [15], the slime-mold
Dictyostelium discoideum [26], the parasite Hymenolepis
diminuta [27], potato [28], the human parasite Trypano-
soma brucei [29–31], and Saccharomyces cerevisiae
[32,33].
Until 2004, the kinetic properties of most of the
amoebal glycolytic enzymes were scarce; however, we
recently reported the kinetic characterization of the ten
recombinant E. histolytica glycolytic enzymes from
internal glucose to pyruvate under conditions that
resemble those of the amoebal trophozoites [21]. In the
present study, a kinetic model of amoebal glycolysis
was constructed by using the kinetic properties of these
ten enzymes [21] and their V
m
values for the forward
and reverse reactions determined in cellular extracts.
By fixing the PPi concentration, the model was able to
reach stable steady states under a variety of near phys-
iological conditions, thus allowing the estimation of
the flux-control, concentration-control and elasticity
coefficients for each enzyme. With this strategy, it was
possible to quantitatively identify the main flux-con-
trolling enzymes of the amoebal glycolysis, as well as
the underlying biochemical mechanisms determining
why some enzymes exert high control and others do
not.
The mathematical model described here has been
submitted to the Online Cellular Systems Modelling
Database and can be accessed at http://jjj.biochem.
sun.ac.za/database/saavedra/index.html free of charge.
Results
Glycolytic flux, enzyme activities and
intermediary concentrations in vivo
Glycolytic flux was measured as EtOH production in
amoebas incubated in the presence of 10 mm glucose
and a representative time-course is shown in Fig. 1.
The experimentally determined rate of flux was calcu-
lated by considering that 1 · 10
6
amoebal cells corre-
spond to 2 ± 0.8 mg of total protein (n ¼ 4). This
glycolytic flux value was six- to ten-fold higher than
the recalculated value previously reported by Montalvo
et al. [34] in bacteria-grown amoebas under anaerobic
conditions at 37 °C after 1 h in the presence of 2.5 mm
glucose (3–6 nmol EtOHÆmin
)1
Æmg protein
)1
; for calcu-
lations, see Experimental procedures). These two
amoebal flux values were low in comparison with the
reported glycolytic fluxes displayed under anaerobic
conditions by yeast (500 nmol EtOHÆmin
)1
Æmg pro-
tein
)1
) [32] or T. brucei (71 nmol pyruvateÆmin
)1
Æ
mg protein
)1
) [29], but similar to the glycolytic flux
determined in some tumor cell lines (21–32 nmol
lactateÆmin
)1
Æmg protein
)1
) [35].
The maximal activity values for the glycolytic
enzymes (Table 1) were evaluated in at least three cel-
lular extracts obtained from different cultures of amoe-
bal cells. These activities were determined under the
same experimental conditions of buffer, temperature
(37 °C) and physiological pH values (pH 6.0 and 7.0)
used for the characterization of the pure enzymes [21].
For the reactions from hexose 6-phosphate isomer-
ase (HPI) to PPDK, the activities were determined in
the forward and reverse reactions (Table 1). ATP-PFK
and PYK activities (Table 1) were also evaluated; how-
ever, their activities were less than 10% of those
displayed by PPi-PFK and PPDK. Therefore, these
parallel reactions were not included in the kinetic
model.
The steps following PPDK are PFOR, aldehyde
(AldDH) and alcohol (ADH) dehydrogenases (Fig. 2).
PFOR activity in the amoebal HM1:IMSS strain used
in the present study has not yet been determined. In
our hands, AldDH activity was difficult to detect with
acetyl-CoA as substrate and could only be determined
in the reverse reaction. Both, NADH- or NADPH-
dependent ADHs displayed almost the same activity
using acetaldehyde as substrate. Notably, the reported
activities for these ADHs in 200:NIH strain (6.9 and
0.96 UÆmg
)1
, respectively) [36] were one order of mag-
nitude higher than those displayed in Table 1.
100806040200 120
0.0
0.5
1.0
1.5
2.0
2.5
3.0
µmoles etoh / 10
6
cells
Incubation time (min)
Fig. 1. Time-course of EtOH production by E. histolytica trophozo-
ites. Amoebas were incubated at 35 °C in NaCl ⁄ P
i
buffer at pH 7.4
in the presence of 10 m
M glucose. At the indicated times, aliquots
were withdrawn and mixed with perchloric acid as described in the
Experimental procedures. EtOH was determined enzymatically with
ADH. The plot shown is a representative experiment with tripli-
cates. The solid line represents the fitting of the experimental
points to a Hill equation using
MICROCAL ORIGIN, version 5.0; this fit-
ting has no mechanistic meaning.
Modeling Entamoebaglycolysis E. Saavedra et al.
4924 FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS
The V
m
value for ATP-consuming processes (ATP-
ases) was higher (Table 1) than the estimated rate of
ATP production by glycolysis, suggesting kinetic
modulation of ATPases by the products ADP and
Pi. NAD(P)H-consuming activity (DHases) was mea-
sured by following the oxidation of the coenzymes
after adding the amoebal extract (Table 1); however,
the actual activity was probably underestimated
because most DHases require a second substrate for
activity. The adenylate kinase (AK) activity was
measured in both directions, ATP ⁄ AMP production
or 2ADP production; however, the specificity of the
assay using extract samples could not be directly
ascribed to this reaction (see Experimental proce-
dures).
The activities of some branches of amoebal glycoly-
sis were explored. It is well documented that amoebas
contain large amounts of glycogen as the main carbo-
hydrate storage (Table 2) [37]. Therefore, glycogen
metabolism (synthesis and degradation) is an active
branch of the first section of glycolysis at the level
of G6P. Indeed, a high phosphoglucomutase (PGM)
activity in the direction of G6P production (glycogen-
olysis) was determined (Table 1).
Recently, the activity of 3-phosphoglycerate dehy-
drogenase (3PGDH) involved in the synthesis of serine
was described in E. histolytica [38]. In the direction of
3PG oxidation under our assay conditions, this activity
was below the limit of detection in amoebal extracts
(Table 1).
The oxidative section of pentose phosphate pathway
(PPP) is probably absent in E. histolytica because no
G6P dehydrogenase (G6PDH) activity has been
detected [6,7]. Moreover, after exhaustive experimental
retesting, we were unable to detect G6PDH activity in
the soluble fraction of amoebal extracts (Table 1); in
addition, a gene coding G6PDH could not be identi-
fied in the genome sequence database [39]. In amoebas,
ribose 5-phosphate is synthesized from the glycolytic
intermediaries fructose 6-phosphate (F6P) and glycer-
aldehyde 3-phosphate (G3P) in a series of reactions
catalyzed by PPi-PFK, aldolase and transketolase [40].
However, the flux through this modified PPP has not
been explored in the parasite.
Table 1. Specific activity of glycolytic enzymes determined in amoebal clarified extracts [mU · (mg protein)
)1
]. Values in parenthesis indicate
the number of individual clarified extracts assayed. NA, not applicable; ND, not detected; NM, not measured.
Enzyme
Forward reaction Reverse reaction
pH 7.0 pH 6.0 pH 7.0 pH 6.0
HK 200 ± 32 (5) 95 ± 18 (4) NA NA
HPI 489 (2) 233 (2) 451 ± 48 (4) 206 ± 26 (4)
PPi-PFK 479 ± 165 (6) 213 ± 35 (5) 612 346
ATP-PFK 37 ± 22 (5) 1.4 ± 0.4 (3) NA NA
ALDO (–Co
2+
) 57 (2) 0 (3) NM NM
ALDO (+Co
2+
)
a
591 ± 78 (3) 160 ± 24 (3) 804 284
TPI 7235 4366 21 780 ± 7400 (4) 6098 ± 3000 (6)
GAPDH 576 ± 77 (6) 405 ± 46 (5) 3968 3680
PGK 12 107 ± 3500 (4) 3182 ± 1350 (4) 1675 1742
PGAM 115 ± 51 (3) 116 ± 37 (3) 49 104
ENO 672 ± 41 (5) 508 ± 93 (5) 108 103
PPDK 341 ± 119 (4) 304 ± 62 (5) 4.5 19
PYK [+F(1,6)P
2
] 32 ± 16 (5) 28 ± 15 (5) NA NA
AldDH NM NM 74 NM
ADH (NADH) 176 171 14 7.6
ADH (NADPH) 199 202 NM NM
ATPases 149 (2) 122 (2) NM NM
DHases (NADH) 10 ± 2 (3 7 ± 2 (3) NM NM
DHases (NADPH) 25 ± 5 (3) 26 ± 6 (3) NM NM
3PGDH ND ND NM 26.6
b
AK –
c
–
c
–
c
–
c
PGM NM NM 867 312
G6PDH ND ND NA NA
Gly3PDH ND ND ND ND
Alanine transaminase NM NM ND ND
a
The concentration of CoCl
2
was 0.2 mM.
b
Values reported by Ali et al. [38] at pH 6.5 and 25 °C.
c
No reliable determination (see Experimen-
tal procedures).
E. Saavedra et al. ModelingEntamoeba glycolysis
FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS 4925
In agreement with Reeves and Lobelle-Rich [41],
NAD
+
-dependent glycerol 3-phosphate dehydrogenase
(Gly3PDH) activity in the soluble fraction of amoebal
clarified extracts tested under different experimental
conditions was below the limit of detection (Table 1; see
Experimental procedures). However, putative Gly3PDH
and glycerol kinase genes have been identified in the
E. histolytica genome sequence database [8], which sug-
gests the presence of glycerol metabolism in the parasite.
Alternatively, triglyceride synthesis might initiate from
dihydroxyacetone phosphate (DHAP) instead of Gly3P
as described for several mammalian cells [42].
Alanine transaminase activity in the direction of pyru-
vate synthesis was below the limit of detection (Table 1).
However, a putative gene codifying for this enzyme has
also been identified in the amoebal genome [8].
Glycolytic intermediary concentrations (Table 2)
were determined in perchloric acid extracts after incu-
bating trophozoites for 1 h in the presence of 10 mm
glucose. Although after 1 h the steady-state glycolytic
flux was about to end (Fig. 1), it allowed the detection
of metabolites whose concentration was low [fructose
1,6-biphosphate, F(1,6)P
2
, G3P, pyruvate].
Model properties
The kinetic model of E. histolyticaglycolysis was built
by using the computer software gepasi, version 3.3,
PA
i
PGAM
+
P
F6P
Gluc
F1,6P
2
DHAP G3P
HK
ALDO
PPi-PFK
HPI
TPI
G6P
2ADP
ATPAMP
AK
ATP ADP
ATPases
NADH
NAD
+
DHases
PAAT MP + PPi
PPi synthesis
ADP
ATP
i
Pi
PP
glycogen synthesis
2PG
1,3BPG
3PG
PEP
PGK
PPDK
GAPDH
ENO
PGAM
+
NADH
NAD
PAT
ADP
ATP + Pi
AMP + PPi
etoh
pyr
PFOR-AldDH
acald
ADH
NAD
+
NADH
NAD
+
NADH
3POHpyr
NAD
+
NADH
3PGDH
glycogen
ATP ADP + PPi
glycogen degradation
Pi
Fig. 2. Pathway reactions included in the
kinetic model of E. histolytica glycolysis.
Dotted boxes represent the reactions that
are branches of the main pathway. The
PFOR and AldDH reactions were lumped
into one reaction (PFOR-AldDH). 1,3 BPG,
1,3-bisphosphoglycerate; acald, acetalde-
hyde; ATPases; ATP consuming activities;
DHases; NAD(P)H consuming activities; PPi
synthesis, ATP consuming activities that
produce AMP and PPi; 3POHpyr, 3-phos-
phohydroxypyruvate; pyr, pyruvate.
Modeling Entamoebaglycolysis E. Saavedra et al.
4926 FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS
for metabolic modeling [43]. A scheme of the pathway
reactions considered is shown in Fig. 2. Table S1A in
the Supplementary Material displays the model reac-
tions as written in gepasi, whereas Table S1B summa-
rizes the kinetic parameters values incorporated in the
model. The detailed rate equations are described in the
Experimental procedures.
The model included the K
m
values for substrates
and products for the reactions from HK to PPDK,
which were previously reported by our group at
pH 6.0 [21]. The V
m
values present in the parasite in
the forward and reverse directions, also determined at
pH 6.0 (Table 1), were used. These reactions, including
that of HK, were considered as reversible. The activity
used for ALDO was that determined in the presence of
saturating Co
2+
, because, at the total concentration of
the heavy metals Co
2+
,Zn
2+
and Cu
2+
found in
amoebas (Table 2), this enzyme is expected to be fully
activated [21].
The last glycolytic steps from pyruvate to EtOH cat-
alyzed by PFOR, AldDH and ADH involve the oxida-
tion of NADH. Because there is little kinetic
information on E. histolytica PFOR and AldDH, these
reactions were lumped in a reversible bisubstrate reac-
tion involving NADH oxidation, with its V
m
value
adjusted around 1 UÆmg
)1
as reported for PFOR activ-
ity determined in amoebal 200:NIH strain [36]. Some
kinetic data for amoebal NAD(P)H-ADHs has been
described [44]. These reactions were included as an
irreversible bisubstrate reaction, also involving NADH
oxidation, and using as V
m
the sum of the determined
NADH and NADPH-ADH activities (Table 2). In
addition, the kinetic model required a reversible, gen-
eral NADH consumption reaction (DHases) for bal-
ancing the pool of oxidized and reduced pyridine
nucleotides.
Cellular ATP consuming (ADP generating) processes
(e.g. cellular work, ion ATPases) were included in the
model as ATPases reaction; its rate equation was irre-
versible mass-action with a fitted rate constant.
Entamoeba histolytica lacks cytosolic pyrophosphatases
and relies on PPi as phosphate donor in several meta-
bolic reactions [6,7]; therefore, the most probable PPi
supply comes from biosynthetic processes that also
consume ATP (e.g. DNA and protein synthesis). In
the kinetic model, this PPi supply was explicitly repre-
sented as an ATP-consuming reaction that produces
AMP and PPi (PPi synthesis). The AK reaction was
included to maintain the balance in the adenine-nucleo-
tide pool; its rate equation was dependent on the
equilibrium constant.
To simulate a glycolytic pathway that closer resem-
bles that occurring within the parasite, three glycolytic
branches (glycogen synthesis, glycogen degradation
and serine synthesis) were included in the model; in
their absence, nonphysiological hexose- and triose-
phosphate concentrations were attained.
The glycogen synthesis branch was modeled as an
irreversible mass-action reaction that consumes G6P
and ATP to produce glycogen, ADP and PPi (an
additional source of PPi to that of PPi synthesis);
the glycogen degradation branch was also modeled
as an irreversible mass-action reaction (Fig. 2). There
is high PGM activity (Table 1) but the fluxes
through these branches have not yet been studied in
amoebas. By introducing the PGM V
m
values of 0.3
and 0.87 UÆmg
)1
cellular protein determined at
pH 6.0 and 7.0, respectively, as the glycogen synthe-
sis rate constant (Table 1), severe diminution of all
glycolytic intermediaries to micromolar levels and
one order of magnitude lower glycolytic flux were
observed. Therefore, the glycogen synthesis and gly-
cogen degradation rate constants were fitted (1.5 and
0.1 nmol min
)1
Æmg protein
)1
, respectively) to attain
the physiological metabolite concentrations.
Table 2. Glycolytic metabolite concentrations. NM, not measured;
NS, not simulated; 1,3BPG, 1,3-bisphosphoglycerate.
Metabolite (m
M) Amoebal extracts Model
G6P 6.2 ± 4.1 (5) 1.33
F6P 1.1 ± 0.5 (5) 0.88
F(1,6)P
2
0.43 ± 0.16 (4) 0.12
DHAP 1.15 ± 0.4 (3) 0.42
G3P 0.36 ± 0.09 (3) 0.21
1,3BPG NM 0.09
3PG < 0.28 (6) 0.45
2PG < 0.28 (6) 0.005
PEP < 0.28 (6) 0.0005
Pyruvate 0.92 ± 0.4 (6) 0.7
Acetaldehyde NM 0.02
ATP 5 ± 2 (5) 5.1
ADP 3.3 ± 1.2 (5) 2.4
AMP 1.6 ± 0.2 (3) 2.5
PPi 0.45 ± 0.1 (3) 0.45 (fixed)
Pi 5.4
a
5 (fixed)
NADH NM 0.08
NAD
+
1.5 (2) 1.47
Glycogen 3400
b
1 (fixed)
G1P 0.42 ± 0.15 (3) NS
GTP 1.8 (2) NS
GDP 0.7 (2) NS
Co
2+
0.023 (2) NS
Zn
2+
1.6 (2) NS
Cu
2+
0.12 (2) NS
EtOH flux [nmolÆmin
)1
Æ(mg
cellular protein)
)1
]
39 ± 12 (5) 37
a
Recalculated from [63].
b
Glucose equivalents.
E. Saavedra et al. ModelingEntamoeba glycolysis
FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS 4927
The V
m
value of the 3PGDH branch for serine syn-
thesis was adjusted within the same order of magnitude
of the activity value reported by Ali et al. [38] to obtain
the closest physiological concentration of 3PG
(< 0.28 mm ; Table 2). In the absence of this reaction,
3PG elevated to 0.6 mm, which indicated a relevant role
for this branch in the control of metabolite concentra-
tions in the final reactions of the parasite’s glycolysis.
The effect of other amoebal glycolytic branches on
glycolytic flux and intermediary concentrations were
explored: PPP, triglyceride synthesis, alanine transami-
nase and malic enzyme. Because experimental data on
fluxes through these other branches are not available,
their rate constants were fitted; however, their inclu-
sion in the model showed negligible effects on the
intermediary concentrations, glycolytic flux and flux-
control distribution (data not shown).
The metabolites were initialized at the physiological
concentrations displayed in Table 2. Fixed metabolite
concentrations were: 5 mm glucose; 10 mm EtOH;
1mm glycogen; 1 mm 3-phosphohydroxypyruvate;
5mm Pi and 0.45 mm PPi. The conserved moieties
were ATP + ADP + AMP ¼ 9.9 mm and NADH+
NAD
+
¼ 1.55 mm. It is worth noting that, when
including PPi concentration as a dynamic variable of
the model, it was not possible to attain a physiological
stable steady state because the PPi consumption by
PPi-PFK and PPDK (and glycolytic ATP synthesis)
was exceeded by the PPi synthesis rate. Due to the
variety of PPi-generating biosynthetic processes, a true
PPi synthesis rate is difficult to determine; moreover,
further adjustments of the PPi synthesis rate constant
compromised the physiological values of metabolites
and fluxes. Thus, these modeling results indicate the
importance of defining the PPi metabolism in the para-
site because only the absence of cytoplasmic pyrophos-
phatases [6,7] has been characterized, but participating
enzymes and their rate equations and kinetic parame-
ters have not been described.
The present central model does not include the hexose
transport reaction because there are a lack of data
regarding kinetic parameters and difficulties in deter-
mining the actual activity in the absence of glucose
phosphorylation. However, the inclusion of the glucose
transport may have an impact on the control distribu-
tion [30,32] and therefore the effects of its incorporation
in the model were evaluated by using the few available
data (for the model, see supplementary Doc S1).
Steady-state properties of the kinetic model
In most of the explored conditions the simulations
reached an asymptotically stable steady state, indicat-
ing that the kinetic simulation displays a hyperbolic
pattern that is able to reach an asymptote.
To validate the construction of the kinetic model
described above, the metabolite concentrations and
glycolytic flux, experimentally determined when the
cells were under glycolytic steady-state conditions,
were used as reference. The predicted glycolytic flux
(37 nmol EtOHÆmin
)1
Æmg protein
)1
) agreed with the
values determined in amoebas (Table 2). Model simu-
lations approached 0.2- to one-fold the level of
the invivo metabolite concentrations for G6P, F6P,
F(1,6)P
2
, DHAP, G3P, 3PG, pyruvate, ATP, ADP
and NAD
+
(Table 2). The model also predicted very
low concentrations for 2-phosphoglycerate (2PG) and
phosphoenolpyruvate (PEP), which are below the lim-
its of detection of the experimental assays, but they
were similar to the low values reported in other cells
[35,45]. Significant deviation was attained for AMP,
which was 1.6-fold higher than the physiological value
(Table 2).
Flux-control distribution
Analysis of the enzyme activities at pH 6.0 as
determined in amoebal clarified extracts (Table 1)
and the modeled fluxes through the enzymes
(Table 3) indicated that HK and PGAM were work-
ing at 32–33% of their V
m
values and that these
enzymes were working closer to saturation than the
other pathway enzymes (see below). In consequence,
the HK and PGAM elasticities were lower in com-
parison with those of the other pathway enzymes
(Table 3). The low elasticities determined their high
flux-control coefficients (C
J
HK
¼ 0.73; C
J
PGAM
¼ 0.65;
Table 3), indicating that HK and PGAM were
indeed the main controlling steps of amoebal glyco-
lysis. Other glycolytic enzymes displayed small but
significant flux-control coefficients in the interval of
0.08–0.13 [PPi-PFK, ALDO, glyceraldehyde 3-phos-
phate dehydrogenase (GAPDH), enolase (ENO),
HPI; Table 3].
For reactions outside the pathway, the glycogen syn-
thesis and 3PGDH reactions showed high control
(C
J
glycogen synthesis
¼ –0.32; C
J
3PGDH
¼ –0.18). Notoriously,
glycogen synthesis mainly modulated the hexosephos-
phate concentrations, with a stronger effect on the
F(1,6)P
2
level. On the other hand, the flux through the
3PGDH reaction affected the 3PG and pyruvate con-
centrations, and final EtOH flux. The glycogen degra-
dation reaction displayed low flux control under these
conditions; however, at low HK activities, this branch
became important in supplying G6P for glycolysis. The
model predictions indicated that the ATP demand for
Modeling Entamoebaglycolysis E. Saavedra et al.
4928 FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS
cellular processes (cellular function represented by
ATPases and PPi synthesis) exhibited high flux control
over glycolysis (C
J
ATPases þ PPi synt
¼ –0.32; Table 3). PPi
provides a link between glycolysis and anabolic path-
ways and hence, variation in its steady-state concentra-
tion (by modulating the PPi synthesis reaction) may
affect the control distribution of glycolysis.
The model predicted that most enzymes displayed
over-capacity for the glycolytic flux (Tables 1 and 3)
and, in particular, the fluxes through PPi-PFK and
PPDK were 10% their forward V
m
values in amoebas.
The steady-state intracellular amoebal concentrations
of their respective substrates and products for these
two enzymes (Table 2) were all above or around the
K
m
values (Table S1B). Under these conditions, their
elasticity coefficients were still relatively high (Table 3)
and then they were not significant flux-controlling
steps.
Why an enzyme controls flux?
The elasticity coefficient (e
Ei
X
) is defined as the ratio of
relative change in the local rate of a pathway enzyme
(Ei) to the relative change in a ligand, denoted as X (the
concentration of an effector, e.g. substrates, products,
inhibitors or activators) [24]. The connectivity theorem
states that the sum of the flux-control coefficients of all
pathway enzymes (Ei) affected by a common metabolite
X and multiplied by their respective elasticity coeffi-
cients towards X, is zero ð
P
i
C
J
Ei
e
Ei
X
¼ 0Þ [24]. The phy-
siological significance of the connectivity theorem is
easily visualized when considering that an enzyme satu-
rated by its substrate cannot further increase its rate (it
is working at maximal capacity or under V
m
conditions,
and its elasticity is near zero), thus establishing a con-
straint to the pathway flux; therefore, such an enzyme
displays high flux-control coefficient.
Table 3. Fluxes, elasticity coefficients for substrates (e
Ei
S
) and products (e
Ei
P
) and flux-control coefficients (C
J
Ei
) of the kinetic model.
Enzyme Flux (nmolÆmin
)1
) e
Ei
S
e
Ei
P
C
J
Ei
HK 31.4 Gluc 0.12 G6P )0.0008 0.73
ATP 0.55 ADP )0.001
AMP )0.66
HPI 21.8 G6P 4.1 F6P )3.9 0.08
PPi-PFK 21.8 F6P 2.3 F(1,6)P
2
)1.9 0.13
PPi 2.3 Pi )2.0
ALDO 21.8 F(1,6)P
2
2.8 DHAP )2.6 0.09
G3P )2.4
TPI 21.8 DHAP 72 G3P )71 0.003
GAPDH 43.6 G3P 5.7 1,3BPG )5.5 0.08
NAD 5.6 NADH )5.5
PGK 43.6 1,3BPG 12.1 3PG )11.5 0.04
ADP 11.9 ATP )11.9
PGAM 37 3PG 0.74 2PG )0.11 0.65
ENO 37 2PG 0.94 PEP )0.01 0.08
PPDK 37 PEP 1.0 Pyruvate )0.65 0.0009
AMP 1.0 ATP )1.0
PPi 1.0 Pi )1.0
PFOR-AldDH 37 Pyruvate 0.62 Acetaldehyde )0.14 0.001
NADH 0.88 NAD )0.53
ADH 37 Acetaldehyde 0.91 0.0001
NADH 0.34
Glycogen synthesis 10 G6P 1.0 )0.32
ATP 1.0
Glycogen degradation 0.5 Glycogen 1.0 0.01
Pi 1.0
3PGDH 6.7 3PG 0.33 )0.18
NAD
+
0.02
ATPases 10 ATP 1.0 )0.04
AK 4 ADP 6286 ATP )3142 0.0001
AMP )3142
PPi synthesis 33 ATP 1.0 )0.28
DHases 24 NAD+ 6.2 NADH )5.2 )0.08
E. Saavedra et al. ModelingEntamoeba glycolysis
FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS 4929
The elasticity coefficients of the pathway enzymes
for effectors are shown in Table 3. As expected for the
high flux control displayed by HK, the values of its
elasticity coefficients were the lowest among all the
enzymes, with values of 0.12 and 0.55 for glucose and
ATP, respectively. HK also exhibited low sensitivity
towards its products G6P and ADP and modulator
AMP. PGAM also showed relatively low elasticities
towards 3PG and 2PG.
As deducted from their low flux-control coefficients,
the other pathway enzymes showed comparatively
higher elasticity coefficients towards their substrates
whereas their elasticities towards products displayed
essentially similar values to those for the substrates but
with a negative sign.
Together, the results indicated that HK strongly
flux-controlled amoebal glycolysis because of its low
activity in amoebal extracts and because of the low
sensitivity toward its substrates and AMP derived from
saturation (Table 3). Due to the similar elasticity
towards ATP and AMP, HK inhibition by AMP
might have physiological significance because the
enzyme is strongly inhibited by this metabolite with a
K
i
value of 36 lm at pH 6.0 [21], a value three-fold
lower than the K
m
for ATP (121 lm at pH 6.0) [21],
and because the physiological AMP steady-state level
(1.6 mm) is 44-fold higher than the K
i AMP
. Amoebal
HK exhibits a mixed-type inhibition by AMP [21];
therefore, the influence of the competitive inhibitory
component (effect on K
m ATP
) might be not as determi-
nant on the enzyme activity because physiological ATP
concentration (5 mm; Table 2) might overcome this
inhibition; however, the noncompetitive inhibitory
component (effect on V
m
) might still be relevant to
modulate the HK activity.
Concentration control coefficients
Similarly to the flux-control distribution (Table 3), the
control of the concentration of most glycolytic metab-
olites mainly resided in HK, PGAM, glycogen synthe-
sis, ATPases, PPi synthesis and 3PGDH reactions
(Table 4). The pyruvate concentration was also signifi-
cantly controlled by the lumped reaction of PFOR and
AldDH (PFOR-AldDH) and DHases reactions. In
turn, the controlling order for the ATP concentration
was PPi synthesis > PGAM > glycogen synthe-
sis % HK (Table 4).
Variations to the HK rate expression
The kinetic model was used to determine the effect of
varying the HK activity on flux rate and flux-control
distribution in an attempt to further understand the
underlying mechanism by which this enzyme has high
control on the flux.
As described in the construction of the amoebal
model, the HK equation was considered as a reversible
Table 4. Concentration control coefficients obtained with the kinetic model. The values shown are the concentration control coefficients, for
which the net sum gives approximately 0. TPI, PGK, glycogen degradation and AK reactions did not exert significant control on the metabo-
lite concentrations and therefore they were not included.
Enzyme
Metabolite
G6P F6P F(1,6)P
2
DHAP G3P 1,3BPG 3PG 2PG PEP Pyruvate Acetaldehyde ATP ADP AMP NADH NAD
+
HK 2.5 2.4 2.59 1.29 1.29 1.38 1.1 0.81 2.3 1.6 0.87 0.2 )0.07 )0.33 )0.17 –
HPI 0.09 0.33 0.36 0.18 0.18 0.19 0.12 0.34 0.17 0.092 0.06 )0.098 – –
PPi-PFK 0.15 0.13 0.61 0.3 0.3 0.33 0.2 0.15 0.58 0.29 0.16 0.1 )0.03 )0.17 – –
ALDO 0.1 0.09 0.06 0.2 0.2 0.23 0.14 0.1 0.4 0.2 0.1 0.07 )0.02 )0.11 – –
GAPDH 0.09 0.08 0.05 0.02 0.01 0.2 0.12 0.09 0.35 0.18 0.095 0.06 )0.02 )0.1 – –
PGAM 0.79 0.69 0.55 0.2 0.2 0.31 )0.36 0.74 2.9 1.5 0.79 0.46 )0.16 )0.79 )0.2 0.01
ENO 0.09 0.08 0.06 0.02 0.02 0.04 – )0.98 0.33 0.17 0.09 0.05 )0.02 )0.09 – –
PPDK – – – – – – – – )0.98 – – – – – – –
PFOR-AldDH – – – – – – – – )1.0 )1.6 – – – – – –
ADH – – – – – – – – – )0.25 )1.1 – – – – –
Glycogen
synthesis
)1.36 )1.35 )1.5 )0.76 )0.8 )0.8 )0.49 )0.36 )1.4 )0.7 )0.38 )0.24 0.08 0.4 – –
3PGDH )0.3 )0.3 )0.37 )0.2 )0.2 )0.36 )0.27 )0.2 )0.7 )0.5
)0.25 )0.07 0.13 0.14 –
ATPases )0.28 )0.29 )0.33 )0.17 )0.18 )0.18 – – )0.34 – – )0.09 0.03 0.15 – –
PPi
synthesis
)1.8 )1.9 )2.14 )1.1 )1.1 )1.18 )0.42 )0.32 )2.2 )0.6 )0.33 )0.57 0.2 0.97 – –
DHases )0.09 – – – – )0.2 )0.13 – )0.54 )0.46 )0.17 )0.06 – 0.1 0.2 )0.01
Modeling Entamoebaglycolysis E. Saavedra et al.
4930 FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS
reaction because it has been previously documented
that significant changes in the control structure of a
pathway are attained by introducing reversibility in all
pathway reactions, even in those with very large K
eq
values [46–48]. It should be remarked, however, that
including reversibility in reactions with high K
eq
requires the fitting and some times the guessing of
kinetic parameters that cannot be easily determined
(K
m
for products, V
m
in the reverse reaction). Under
near-physiological conditions, the HK reaction is
quasi-irreversible due to its high K
eq
value (1.6–
3.9 · 10
2
) [49]. Therefore, it was interesting to evaluate
the effect of changing the rate equation of this step in
the pathway behavior.
The reversible HK rate equation with mixed inhibi-
tion by AMP was replaced for an irreversible rate
equation with mixed-type inhibition by AMP and
competitive inhibition by ADP (which was previously
demonstrated in studies with the purified enzyme)
[21]. In comparison to the model with HK revers-
ible reaction, this kinetic model predicted two orders
of magnitude lower flux through HK, with a conco-
mitant diminution in the glycolytic flux
(1.1 nmol EtOHÆmin
)1
Æmg cellular protein
)1
) and three
orders of magnitude decrease in the intermediary con-
centrations. Under these conditions, the glycogen deg-
radation reaction was the main flux-control step
(C
J
glycogen degradation
¼ 0.78). The cause for the drastic
decreased in HK rate when using the irreversible equa-
tion was that the AMP inhibition predominated
because two orders of magnitude increase in the HK
K
i AMP
value restored the flux and metabolite concen-
trations values to those obtained when using the HK
reversible equation. To further evaluate the contribu-
tion of AMP inhibition to the HK flux-control coeffi-
cient in the main model with HK reversible reaction,
two conditions were explored.
First, the inhibitory component of AMP was elimi-
nated from the bireactant reversible reaction of HK
(see Experimental procedures); in other words, K
i AMP
became very large. Under this condition, there was a
2.3-fold increase in the flux through HK, an increase
in the glycolytic flux (58 nmol EtOHÆmin
)1
) and two-
to four-fold increase in the intermediary concentra-
tions. The HK reaction still retained the highest flux
control.
Second, using the HK reversible equation with
mixed inhibition by AMP, the effect of varying the
HK K
i AMP
value was examined (Fig. 3). The pathway
flux was highly sensitive to variation in the HK K
i AMP
value. Under these conditions, the glycogen degrada-
tion reaction gained flux control at the lowest HK
K
i AMP
values.
These results indicated that HK inhibition by AMP,
in addition to modulating the activity of the enzyme,
may also be a mechanism for regulating the pathway
metabolite concentrations and flux-control distribution.
Because no cooperative modulation has been detected
in amoebal glycolytic enzymes, the AMP inhibition of
HK appears to be the sole mechanism of direct trans-
ference of information from outside (ATPases, PPi
synthesis, glycogen synthesis) and the end (PPDK) to
the initial part of the pathway. Consequently, the mod-
ulation of the AMP concentration might be an addi-
tional mechanism for controlling the glycolytic flux in
this parasite.
Enzyme titration for the identification
of drug targets
MCA of the kinetic model allows for the determina-
tion of the flux-control coefficients of the pathway
enzymes. In addition, the kinetic model is a helpful
tool for predicting the pathway behavior when inhibi-
tion of some enzymes is evaluated. If the model closely
reproduces the invivo behavior, then the metabolic
modeling approach would be an adequate tool for iden-
tifying the best drug targets in a metabolic pathway
0.016 0.020 0.024 0.028 0.032 0.036
0
20
40
60
80
100
% flux
HK Ki
AMP
(mM)
Fig. 3. Effect of varying the HK K
i
for AMP on glycolytic flux. An
interval of 1–36 l
M is reported for the K
i AMP
values of amoebal
HKs, either native or recombinant, at the pH range of 6.0–8.5 [19–
21]. For these simulations, 100% glycolytic flux was 37 nmol
EtOH ⁄ (minÆmg cellular protein
)1
). The b-values (i.e. the K
m
modifier
in the interaction between glucose and AMP with the enzyme in
the HK rate equation; see Experimental procedures) were 1 (line)
and 1.5 (dashed). By contrast, changing the c-value (i.e. the K
m
modifier in the interaction between ATP and AMP with the
enzyme) did not induce significant alteration of the K
i AMP
versus
pathway flux plot (data not shown).
E. Saavedra et al. ModelingEntamoeba glycolysis
FEBS Journal 274 (2007) 4922–4940 ª 2007 The Authors Journal compilation ª 2007 FEBS 4931
[...]... Perez-Montfort R (2004) Kinetic mechanism and metabolic role of pyruvate phosphate dikinase from Entamoebahistolytica J Biol Chem 279, 54124– 54130 Supplementary material The following supplementary material is available online: Table S1 (A) E histolyticaglycolysis model reactions as written in gepasi (B) Kinetic parameters used in the model 4940 Doc S1 Variations to the kinetic model Table S2 Flux-control... Determining and understanding the control of glycolysisin fastgrowth tumor cells Flux control by an over-expressed but strongly product-inhibited hexokinase FEBS J 273, 1975–1988 36 Lo H-S & Reeves RE (1978) Pyruvate to ethanol pathway inEntamoebahistolytica Biochem J 171, 225–230 37 Bakker-Grunwald T, Martin JB & Klein G (1995) Characterization of glycogen and amino acid pool of Entamoeba histolytica. .. values taken from the literature, which, in most cases, were determined under nonphysiological conditions In addition, the Km values for some products were only adjusted because they were not experimentally determined In the kinetic model described in the present work, the in uence of using Keq in the rate equations was eliminated by introducing the actual Vm FEBS Journal 274 (2007) 4922–4940 ª 2007 The... strategy for killing the parasites may be to simultaneously target the two main controlling enzymes, HK and PGAM With this strategy, the model predicted that glycolytic flux and ATP concentration can be drastically decreased by only inhibiting 18% these two enzymes (cf Fig 4) We conclude that the present kinetic model of E histolytica glycolysis, with a fixed PPi concentration, candescribe the invivo pathway... NADP+ and 3 U G6PDH The reaction was started by adding 4 mm G1P ModelingEntamoebaglycolysis Alanine transaminase was measured in buffer mixture in the presence of 0.15 mm NADH, 0.11 mm pyridoxal 5-phosphate, 15 mm 2-oxoglutarate and 3 U LDH The activity was not detected in the soluble fraction of amoebal extracts after adding up to 50 mm alanine Intermediary metabolite concentrations under steady-state... clearly indicated that the amoebal PPi metabolism should be experimentally evaluated for further refinement of the present kineticglycolysis model Then, the available in vitro kinetics did not fully account for the invivo observed behavior However, by fixing the PPi concentration, the model closely reproduced the pathway behavior under the experimental conditions tested in live parasites Several kinetic. .. degradation, serine synthesis and ATP consuming and PPi-generating reactions for further rigorous validation of the model In addition, it is difficult to extrapolate the modeled behavior of glycolysis, which was based on data from amoebal cultures, to a more realistic situation in which the parasites are colonizing the intestine because of the impossibility of reproducing the intestine’s microenvironment in the... experimental conditions in which the parasites were evaluated (using external glucose as carbon source) However, in addition to maintaining constant the PPi concentration, another deficiency of the present model rests on the adjusted steps necessary to achieve the metabolite concentrations found invivo According to the modeling results, it is relevant to experimentally determine the fluxes through glycogen... been described for glycolysisin erythrocytes [25], tuber tissue potato [28], trypomastigote stage of the parasite T brucei [29–31] and S cerevisiae [32,33] An improvement introduced in the models of T brucei and yeast was that most of the kinetic parameters used were determined in enzymes from the same source and under similar experimental conditions This certainly circumvented the problem of combining... least ten-fold the Km value, and in the absence of products) In addition, glycolytic flux and metabolite concentrations were determined in trophozoites under steady-state conditions In the present model, adjusting the kinetic parameters of the glycolytic enzymes to achieve a better model fitting to the measured metabolite concentrations was kept to a minimum However, the kinetic properties of the PFOR and . Kinetic modeling can describe in vivo glycolysis in
Entamoeba histolytica
Emma Saavedra
1
, Alvaro Marı
´n-Herna
´
ndez
1
,. that can predict the
system behavior. In this sense, kinetic modeling is a
E. Saavedra et al. Modeling Entamoeba glycolysis
FEBS Journal 274 (2007) 4922–4940