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Mapping Determinants of Variation in Energy Metabolism, Respiration and Flight in Drosophila
Kristi L. Montootha, James H. Mardenb, and Andrew G. Clarkaa Department of Molecular Biology and Genetics, Cornell University, Ithaca, New York 14853
b Department of Biology, Pennsylvania State University, University Park, Pennsylvania 16802
Corresponding author: Kristi L. Montooth, 227 Biotechnology Bldg., Cornell University, Ithaca, NY 14853., klm58{at}cornell.edu (E-mail)
Communicating editor: G. CHURCHILL
| ABSTRACT |
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We employed quantitative trait locus (QTL) mapping to dissect the genetic architecture of a hierarchy of functionally related physiological traits, including metabolic enzyme activity, metabolite storage, metabolic rate, and free-flight performance in recombinant inbred lines of Drosophila melanogaster. We identified QTL underlying variation in glycogen synthase, hexokinase, phosphoglucomutase, and trehalase activity. In each case variation mapped away from the enzyme-encoding loci, indicating that trans-acting regions of the genome are important sources of variation within the metabolic network. Individual QTL associated with variation in metabolic rate and flight performance explained between 9 and 35% of the phenotypic variance. Bayesian QTL analysis identified epistatic effects underlying variation in flight velocity, metabolic rate, glycogen content, and several metabolic enzyme activities. A region on the third chromosome was associated with expression of the glucose-6-phosphate branchpoint enzymes and with metabolic rate and flight performance. These genomic regions are of special interest as they may coordinately regulate components of energy metabolism with effects on whole-organism physiological performance. The complex biochemical network is encoded by an equally complex network of interacting genetic elements with potentially pleiotropic effects. This has important consequences for the evolution of performance traits that depend upon these metabolic networks.
CELLULAR processes, including energy metabolism, entail complex networks of interacting components, and these networks appear to be organized as a hierarchy of functional modules (![]()
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Quantitative genetic analyses of metabolic enzyme activities in Drosophila have suggested that there is a large pool of trans-acting regulatory variation that may be an important source of variation for evolutionary change. Analysis of metabolic enzyme activity variation in chromosome-extracted lines of Drosophila melanogaster demonstrated that many enzymes involved in energy metabolism have activity modifiers that are unlinked to the enzyme-encoding loci (![]()
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Quantitative trait locus (QTL) mapping approaches are revealing that the genetic architecture of transcriptome and proteome variation involves both regulatory loci and epistatic interactions between genomic regions in maize and Arabidopsis (for reviews see ![]()
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Regulatory and epistatic genetic effects may then be the rule rather than the exception within metabolic networks, and these effects may have pleiotropic effects on performance phenotypes related to metabolism. This has important consequences for the evolution of complex phenotypes that are influenced by metabolic pathways. It suggests that evolutionary modification of metabolic performance may occur largely at regulatory regions of the genome. A large component of epistatic variance impacts the response to both artificial and natural selection and can appear as either an inflation or diminution of realized heritability (![]()
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Metabolic performance phenotypes, such as metabolic rate and flight performance, must be important components of fitness in natural populations of Drosophila. Flight in insects mediates dispersal, predator evasion, and mating and places high demand on energy metabolism (![]()
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Here we report findings from a study of D. melanogaster recombinant inbred lines for which we have quantified genetic variation in a hierarchy of functionally related metabolic phenotypes, including flight performance, resting metabolic rate, triacylglyceride levels, glycogen content, and metabolic enzyme activities. QTL maps for these traits reveal the extent of trans-regulatory effects on metabolic enzyme activities, epistatic effects on physiological phenotypes, and potentially pleiotropic effects of QTL upon multiple phenotypes within the hierarchy. These results give insight as to where in the genome evolution of metabolic performance may occur and what may be the genetic response to selection on complex physiological traits. In addition, this study points to regions of the genome to which fine-scale mapping can be applied to discover the genes and/or regulatory elements underlying metabolic rate, flight performance, and relationships within the metabolic network.
| MATERIALS AND METHODS |
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Drosophila recombinant inbred lines:
We measured all phenotypes for 4- to 6-day-old males in 95 D. melanogaster recombinant inbred lines (RILs) generated from the parental lines Oregon-R and 2b (![]()
Molecular markers and map:
We used roo transposable element insertion sites that were polymorphic between parental lines as genetic markers (![]()
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1 marker per 3 cM.
Measuring flight performance:
We measured flight velocity and mean angle of trajectory for individual free-flying male Drosophila in a flight arena described by ![]()
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Metabolic rate measurements:
We measured basal metabolic rate as CO2 production using a flow-through respirometer (Sable Systems International, Henderson, NV). The respirometry system consisted of eight 10-ml respirometry chambers from which we sampled seven groups of five flies plus an empty baseline chamber. Flow regulators controlled the flow of CO2-free air through the chambers at 100 ml/min and a LICOR 6250 infrared CO2 gas analyzer detected CO2 produced by the flies within the chambers. The gas analyzer was calibrated using a known CO2 gas standard. We also recorded the temperature at which measurements were made and the live weight of the flies measured to an accuracy of ±1 µg. The mean temperature during measurements was 23.9° ± 0.11° (±1 SE). We measured metabolic rate for two replicate groups of five males for 87 of the RILs. We calculated VCO2 as the mean fractional increase in CO2 in a constant rate of air flow for each replicate over a 5-min interval, corrected for any drift in the baseline measures.
Biochemical assays:
We scored total protein (PRO), triglyceride levels (TRI), glycogen content (GLY), and maximal in vitro enzyme activities for alcohol dehydrogenase (ADH; E.C. 1.1.1.1), glucose-6-phosphate dehydrogenase (G6PD; E.C. 1.1.1.49),
-glycerol-3-phosphate dehydrogenase (GPDH; E.C. 1.1.1.8), glycogen phosphorylase (GP; E.C. 2.4.1.1), glycogen synthase (GS; E.C. 2.4.1.11), hexokinase (HEX; E.C. 2.7.1.1), malic enzyme (ME; E.C. 1.1.1.40), 6-phosphogluconate dehydrogenase (PGD; E.C. 1.1.1.44), phosphoglucoisomerase (PGI; E.C. 5.3.1.9), phosphoglucomutase (PGM; E.C. 5.4.2.2), and trehalase (TRE; E.C. 3.2.1.28), using spectrophotometric assays described in ![]()
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For each of the 95 lines, six replicate groups of five male flies were etherized, weighed, and homogenized in 1 ml of homogenization buffer (0.01 M KH2PO4, 1 mM EDTA pH 7.4). The homogenates were centrifuged at 2000 rpm for 2 min and the supernatant distributed as 25-µl aliquots into 96-well plates in a 4° cold room. Microtiter plates were stored at -70° and were equilibrated to 29° immediately prior to use for a kinetic assay. Reactions were run in the microtiter plates and the change in optical density over time was quantified using a Vmax kinetic microtiter plate reader in a temperature-controlled cabinet (Molecular Devices, Sunnyvale, CA). The enzyme assays were designed to yield consistent linear changes in optical density over time and to minimize variance in slopes (![]()
Statistical analysis:
We calculated descriptive statistics for all traits using the SAS/STAT package v. 6.03 (SAS Institute, Cary, NC). Analysis of variance was performed with the GLM procedure, variance components were estimated with the VARCOMP procedure, partial correlations were obtained with the CORR procedure, and regression models were fitted with the REG procedure. Principal components of the correlation matrix were calculated in MINITAB.
To adjust enzyme activities and metabolic storage pool concentrations for fly weight and total protein levels we obtained the residuals from the model

where w is live weight, p is total protein content, and the ß's are the respective regression coefficients. We log transformed VCO2 measurements and adjusted for fly weight and measurement temperature by using the residuals from the model

where w is log live weight and T is temperature during measurement. Line means from these residuals were used as phenotypic measures for QTL mapping. Mapping of residuals could lead to conservative estimates of the relationship between phenotype and genotype when the genotype and the variables corrected for are strongly correlated (![]()
We employed a combination of statistical approaches to test for associations between phenotypic variation and inferred genotypes at loci located between the observed genetic markers. Interval mapping (IM) tests the null hypothesis of no genetic effect of putative QTL between two markers using maximum-likelihood estimation (![]()
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We performed IM and CIM with the QTL Cartographer software (![]()
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We do not report measures of the genetic effect of the QTL, because using the weight and protein adjusted line means, which are residuals from a regression model, does not result in biologically meaningful units. Rather, we report the proportion of the phenotypic variance explained by a given QTL, conditioned on background genetic effects. This measure was calculated as
where s2 is the total trait variance, and s20 and s21 are the sample variances of the residuals from the null model including background markers and from the alternative model including the QTL in addition to the background marker effects, respectively. Linkage analysis involves the joint estimation of QTL location and genetic effect from the same data set. This can lead to upwardly biased estimates of genetic effect and proportion of variance explained, as the maximization of the likelihood of a QTL at a given position also results in a maximization of the genetic effect at that position (![]()
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For a subset of the phenotypes, for which we identified QTL by CIM, we used the pseudomarker statistical framework of ![]()
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| RESULTS |
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Comparison of QTL mapping methodologies:
The profiles of the likelihood-ratio test statistic across the genome produced by IM and CIM are qualitatively similar (Fig 2). However, the magnitude of the test statistic can be affected by the choice of both method and method parameters. For example, the choice of exclusion window size is critical. A narrow exclusion window may result in a model that conditions on the QTL itself and, as a consequence, underestimates the QTL effect. A large exclusion window may fail to include important background genetic effects. A striking example is glycogen content, for which a small exclusion window is needed to include the two X-linked loci that have opposite genetic effects on glycogen content. In this case, both IM and CIM with a 50-cM exclusion window show peaks in the LR profile at the same genetic positions, but fail to detect the loci as significant QTL (Fig 2). For other traits, such as the first principal component of the glucose-6-phosphate branchpoint enzymes, all methods detect the same significant QTL (Fig 2).
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Results from both IM and CIM are presented in Table 1 and discussed below. We observed the greatest quantitative differences between IM and CIM when there were linked loci with effects in opposite directions on a single phenotype or when epistatic interactions were also detected. We feel that it is important to condition on background genetic effects, but also warn that choice of exclusion window size and the presence of epistasis can affect the estimation. Extensive simulations are needed to understand how CIM behaves in the presence of epistasis and linked loci with opposite effects. CIM may work best when marker density is high (as simulated in ![]()
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Extensive trans-regulatory variation in metabolic enzyme activity:
Measures of maximal enzyme activity from whole-fly homogenates reflect variation that may be present at the levels of transcription, translation, and enzyme kinetics, as well as potential interactions with other enzymes. In this sense maximal enzyme activity is a quantitative trait that is likely influenced by multiple loci. Because the genomic locations of the structural genes encoding these metabolic enzymes are known, QTL maps of enzyme activity variation reveal whether variation in enzyme activity maps at or trans to the enzyme-encoding loci.
We found significant or suggestive QTL underlying variation in glycogen synthase, hexokinase, phosphoglucomutase, and trehalase activity (Fig 3, Table 1). In each case variation maps away from the enzyme-encoding loci, demonstrating that trans-acting effects are a significant source of variability for many metabolic enzymes. For example, variation in glycogen synthase activity was associated with regions on the second chromosome (43A48D) and regions of the third chromosome (63A65A and 94D96A) that do not overlap the enzyme-encoding locus at 88E2 (Fig 3A). Variation in hexokinase activity was most strongly associated with cytological positions 1B3E on the X chromosome, and there was a QTL for phosphoglucomutase activity on the second chromosome at cytological positions 57CF (Fig 3B and Fig C). In both cases, the QTL peaks do not overlap the genomic location of the enzyme-encoding loci. Detection of QTL underlying trehalase activity may be problematic due to the presence of epistatic effects detected between X and third chromosome loci (see below). However, CIM detected a significant QTL on the X chromosome that does not overlap with the trehalase-encoding gene on the second chromosome (Fig 3D). The proportion of the variance explained by each QTL peak, conditioned on the background markers, ranged from 10 to 16% (Table 1). We did not detect significant or suggestive QTL for any of the other metabolic enzymes measured (data not shown).
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Mapping variation in metabolic performance:
Genetic variation for glycogen content was associated with two X-linked QTL with opposite effects on glycogen content (Fig 2, Table 1). Glycogen content was positively correlated with both glycogen synthase and trehalase activity (r = 0.321 and 0.743, respectively). This may result from the dynamic equilibrium maintained between trehalase and glycogen in the insect fat body (![]()
Line means for metabolic rates ranged from 3.538 x 10-5 to 9.790 x 10-5 ml CO2/min/mg with an overall mean of 5.441 x 10-5 ± 0.137 x 10-5 ml CO2/min/mg (±1 SE). This is a range of 4.9 phenotypic standard deviations, with genetic line accounting for 40% of the total phenotypic variance observed in metabolic rate. This phenotypic variation was associated with two regions of the genome (Fig 4). CIM identified a single suggestive QTL explaining 9% of the variance in metabolic rate on the second chromosome at cytological positions 21E22F and a significant QTL on the third chromosome between positions 69D and 76B (Table 1). Metabolic rate was negatively correlated with PGI activity and a regression model including PGI activity explained 8.6% of the variance in metabolic rate (model F = 8.02, P = 0.006).
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The genetic basis of flight performance:
1697 individual flights were analyzed across 71 of the RILs, with an average of 24 flies measured per line. Mean path velocities for the lines ranged across 4.25 phenotypic standard deviations from 250 to 491 mm/sec, with an overall mean velocity of 350 ± 6.7 mm/sec (±1 SE). An upper bound of 850 mm/sec was observed for maximal flight velocities attained by individual flies (Fig 5A), a value identical to that observed in large outbred populations of D. melanogaster selected for increased upwind flight ability (![]()
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Line means for mean angle of trajectory also varied dramatically across 4.8 phenotypic standard deviations, with an overall mean angle of 39 ± 0.55° (±1 SE) from the horizontal axis (Fig 6). Despite differences among genetic lines in mean angle of trajectory, we were unable to detect significant QTL for mean angle of trajectory (data not shown). The genetic bases for variation in flight velocity and angle of trajectory are likely distinct, as mean path velocity and mean angle of trajectory were not correlated across genetic lines (r = 0.118, P = 0.326).
Modeling epistasis in physiological performance:
Given the quantitative nature of metabolic enzyme activity variation and the nesting of metabolic enzymes within pathways, it is likely that genetic interactions between regions of the genome influence variation in enzyme activity. Using SEN and CHURCHILL's (2001) pseudomarker statistical framework we tested all possible two-locus models, including interactions, for genetic positions at 1-cM intervals across the genome. For each model a LOD score is calculated for the full model vs. the null model of no effects, and an interaction LOD score is calculated for the full model vs. the additive model. We used a permutation analysis to scan for significant two-locus models and/or significant interactions. To test for significant interaction effects, we constructed nested genetic models and tested the interaction effect by comparing LOD scores for the full and additive models (Table 2). The identification of significant epistatic interactions between loci is difficult for several reasons (![]()
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Despite these difficulties we identified a strong epistatic interaction underlying trehalase activity between genetic regions on the X (7E9A) and third (72A73D) chromosomes (Table 2). The Oregon-R parental allele at the third chromosome locus conferred higher trehalase activity than did the 2b allele when the X chromosome locus carried the 2b allele, but lower activity than did the 2b allele when the X chromosome locus carried the Oregon-R allele (Fig 7A). However, neither of these regions had significant main effects on trehalase activity, and the interacting X locus was distinct from the X-linked QTL at 15A17C, identified by CIM. This stresses the importance of scanning the whole genome for epistatic effects, rather than simply testing for interactions between QTL with main effects.
There was evidence for an interaction effect on phosphoglucomutase activity between the second chromosome QTL, identified by CIM, and a region of the third chromosome at cytological position 99A that had no main effect (Table 2). Glycogen synthase and hexokinase activity were associated with the QTL identified by CIM, but no interaction effects were detected for either trait (LODInt = 0.62, P = 0.09 and LODInt = 0.2, P = 0.34, respectively; Fig 7B). Nor was there any evidence for epistatic effects on triglyceride levels. In addition to detecting the main effects of the X-linked glycogen QTL, the Bayesian analysis detected another suggestive two-locus model explaining variation in glycogen content. The two QTL had no main effect, yet the interaction between the two loci was significant (Table 2). These results indicate that epistatic interactions between regions of the genome are an important source of genetic variation in key components of carbohydrate metabolism and storage across these genetic lines.
Variance in flight velocity was attributed to a significant epistatic interaction between the third chromosome QTL, identified by CIM, and cytological position 9A on the X chromosome (Fig 7C). We also detected a possible interaction underlying metabolic rate between the second and third chromosome metabolic rate QTL identified by CIM (Table 2). It is only when the second chromosome QTL was homozygous for the Oregon-R allele that we observed a difference in metabolic rate between genotypes at the third chromosome QTL (Fig 7D). Thus, epistatic effects contribute to genetic variance in whole-organism physiological performance, as well as to the components of the energetic network underlying performance.
Genomic regions underlying correlations among traits:
G6PD, PGI, and PGM form a branchpoint at glucose-6-phosphate in the glycolytic pathway (Fig 1). Maximal activities for these enzymes covary positively across the RILs (PGI-PGM, r = 0.673; PGI-G6PD, r = 0.384; PGM-G6PD, r = 0.233) and it is possible that the genes encoding these enzymes may be coordinately regulated. We used principal components analysis to calculate the coefficients of the three principal components for these branchpoint enzymes. We then calculated the principal component weights for each line. These are linear combinations of the data calculated using the principal component coefficients. Principal components capture and summarize the covariation between traits as a "phenotype" that can then be mapped to genomic regions.
The three principal components explain 63, 26.8, and 10.2% of the covariance among these three branchpoint enzymes. The first two principal components were not significantly associated with any genomic regions (data not shown); however there was a strong association between the third principal component and the third chromosome at cytological position 69D76A (Fig 2). The absence of QTL for the first two principal components suggests that the primary factors dominating the determination of covariation of these metabolic enzyme activities were microenvironmental or that their genetic basis involved a myriad of genes of small effect that were not detected by this study. The principal component QTL was not significantly associated with variability in any of the three enzymes, although the locus encoding PGM activity is located at cytological position 72D34. This genomic region was also associated with the first principal component, explaining the correlation between PGI and metabolic rate (Table 1) and with mean path velocity. This is an important observation, as it indicates that regions of the genome influencing glycolytic enzyme activities also influence whole organism performance.
| DISCUSSION |
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Pleiotropy, linkage, and QTL mapping:
A means of identifying loci with pleiotropic effects may be to identify overlapping QTL peaks for related traits. A novel feature of our results is that they identify a genomic region on the third chromosome that affects the correlation among the three enzymes flanking the glucose-6-phosphate branchpoint in the glycolytic pathway. This region of the genome overlaps the QTL for both metabolic rate and mean path velocity. Thus, we detected what appears to be a genomic region important for coordinated regulation of glycolytic enzymes with potential effects on physiological performance. However, we cannot yet resolve whether these effects result from a single locus with pleiotropic effects or from closely linked loci, each acting on a single trait.
Gene density is high in Drosophila, and it increases dramatically in regions of low recombination near the centromere. As a consequence there is the potential for multiple linked loci of small effect to be detected as a single QTL of larger effect in these gene-dense regions (![]()
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The overall high gene density in Drosophila also poses problems for gene discovery. Both metabolic rate and flight performance map to a region on the third chromosome containing
850 genes, many of which are uncharacterized (![]()
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Relationships within the phenotypic hierarchy:
Relationships between single metabolic enzyme activities and whole-organism phenotypes tend to be weak in Drosophila (![]()
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However, there are examples in natural D. melanogaster populations of detectable effects of enzyme activity variation on whole-organism phenotypes. In eastern North American D. melanogaster populations from a latitudinal cline, Pgm haplotypes differ in PGM activity, with significant consequences on glycogen storage (![]()
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If trans-acting regulators of metabolic enzyme activity modulate flux and impact whole-organism performance, then the evolution of complex physiological performance may occur by selection for certain genetic variants at regulatory loci. We detected a significant relationship between PGI activity and metabolic rate across D. melanogaster RILs. PGI allozyme activity differences affect flight and fitness components in Colias butterflies (![]()
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Despite the fact that flight places an extreme demand on the glycolytic pathways in insects, we observed no significant relationships between flight velocity and any single metabolic enzyme activity. This could be because we did not measure the enzymatic steps truly underlying flight velocity. However, it may also be the case that linear models do not accurately describe the relationship between glycolytic enzyme activity and flight performance. Flux through a linear pathway under steady-state, nonsaturating conditions is defined by a nonlinear relationship between flux and each of the enzymes in a pathway (![]()
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The evolution of physiological performance:
Our findings add to a growing body of evidence that complex genetic effects, such as trans-regulation and epistasis, underlie complex phenotypes. Proteome and transcriptome variation in maize and Arabidopsis is influenced by both types of effects, as well as potentially pleiotropic effects (![]()
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Epistatic and pleiotropic effects of genetic loci on performance and fitness phenotypes, such as flight performance, are expected if complex biochemical networks underlie these traits. The inherent structure of the enzymatic pathways comprising these networks enables both types of effects. Several properties of metabolic networks may also impact how evolutionary forces shape variation within the network, and this makes the evolution of physiological performance particularly interesting. Regulatory elements that coordinately regulate enzymes within a metabolic pathway, such as those that regulate CO2 assimilation pathways in chemoautotrophic bacteria, can up- and downregulate entire pathways in response to environmental resources (![]()
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It is also clear that certain nodes within biochemical networks may not be buffered, as they have either greater control of flux (see discussion of glucose-6-phosphate branchpoint above) or pleiotropic effects on many downstream pathways. ![]()
Our findings demonstrate that the biochemical pathways underlying energy metabolism and physiological performance are the result of a complex network of interacting and trans-regulatory genetic loci with potentially pleiotropic effects. Biochemical and genetic networks underlying physiological processes potentially impact organismal fitness. If this is the case, these networks will come under selection. The challenge now becomes to integrate what we are learning about the organization of metabolic networks [i.e., a scale-free topology with an embedded modularity leading to a hierarchy of functioning modules (![]()
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| ACKNOWLEDGMENTS |
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We thank Dr. Sergey Nuzhdin and colleagues for providing the RILs and marker genotype data and Jennifer Hoffman, Deborah Sharpe, and Heidi Waldrip-Dail for help with data collection. K.L.M. acknowledges constructive discussion with participants of the 2001 Jackson Lab Short Course on Mathematical Approaches to the Analysis of Complex Phenotypes. This manuscript was greatly enhanced by comments from Patricia Wittkopp. This work was supported by National Science Foundation grants DEB-9806655 to A.G.C., IBN-9722196 and IBN-0091040 to J.H.M., and a Howard Hughes Medical Institute predoctoral fellowship to K.L.M.
Manuscript received December 20, 2002; Accepted for publication May 17, 2003.
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and vertical velocity is the velocity in the third dimension. Curves are isovelocity curves along which all velocities are the same. The composite interval QTL map is as described in 








