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The Molecular Basis of Quantitative Genetic Variation in Central and Secondary Metabolism in Arabidopsis
Thomas Mitchell-Oldsa,b and Deana Pedersenba Max-Planck-Institut für Chemishe Ökologie, 07745 Jena, Germany
b Division of Biological Sciences, University of Montana, Missoula, Montana 59812
Corresponding author: Thomas Mitchell-Olds, Max-Planck-Institut für Chemishe Ökologie, Tatzendpromenade 1a, 07745 Jena, Germany, tmo{at}ice.mpg.de (E-mail).
Communicating editor: V. SUNDARESAN
| ABSTRACT |
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To find the genes controlling quantitative variation, we need model systems where functional information on physiology, development, and gene regulation can guide evolutionary inferences. We mapped quantitative trait loci (QTLs) influencing quantitative levels of enzyme activity in primary and secondary metabolism in Arabidopsis. All 10 enzymes showed highly significant quantitative genetic variation. Strong positive genetic correlations were found among activity levels of 5 glycolytic enzymes, PGI, PGM, GPD, FBP, and G6P, suggesting that enzymes with closely related metabolic functions are coregulated. Significant QTLs were found influencing activity of most enzymes. Some enzyme activity QTLs mapped very close to known enzyme-encoding loci (e.g., hexokinase, PGI, and PGM). A hexokinase QTL is attributable to cis-acting regulatory variation at the AtHXK1 locus or a closely linked regulatory locus, rather than polypeptide sequence differences. We also found a QTL on chromosome IV that may be a joint regulator of GPD, PGI, and G6P activity. In addition, a QTL affecting PGM activity maps within 700 kb of the PGM-encoding locus. This QTL is predicted to alter starch biosynthesis by 3.4%, corresponding with theoretical models, suggesting that QTLs reflect pleiotropic effects of mutant alleles.
ONE of the long-standing controversies in population genetics is the nature of the evolutionary forces influencing genetic variation for quantitative traits and enzyme polymorphisms. Such variation could be neutral (![]()
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To find the genes controlling quantitative variation, we need model systems where functional information on physiology, development, and gene regulation can guide evolutionary inferences (![]()
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Several methods can provide information on the genes that influence quantitative trait variation. First, quantitative genetics can estimate patterns of genetic variation and covariation among traits. Second, lines carrying single transposon or T-DNA inserts permit quantification of pleiotropic effects of mutations influencing several traits (![]()
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QTL mapping can characterize effects of completely unknown loci and may identify candidate genes that are worthy of further study (e.g., ![]()
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In addition, QTL mapping provides an incomplete and possibly biased view of the genes that are responsible for quantitative variation. Most QTL mapping experiments have little power to detect factors with small phenotypic effects (![]()
In this article, we use QTL mapping of physiological variation in Arabidopsis to study the molecular basis of quantitative trait variation. Arabidopsis thaliana provides a genetically tractable experimental system for studying physiology as a model quantitative trait. Quantitative levels of enzyme activity are genetically variable among ecotypes, and this genetic segregation can be studied in recombinant inbred (RI) lines. Many enzyme-encoding loci are cloned, and their chromosomal locations are identified on linkage and physical maps. We ask (1) Is there genetic variation and covariation for enzyme activity levels in several pathways? (2) Can we identify QTLs that influence enzyme activity levels? (3) Do enzyme activity QTLs correspond to enzyme-encoding or regulatory genes? (4) Are activity differences at enzyme-encoding loci caused by changes in polypeptide sequence?
| MATERIALS AND METHODS |
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We used 94 RI lines from the Columbia x Landsberg erecta (Col x Ler) cross (![]()
Enzyme activity assays:
We measured quantitative levels of enzyme activity for six glycolytic enzymes: glucose-6-phosphate dehydrogenase (GPD), fructose bisphosphatase (FBP), phosphoglucose isomerase (PGI), phosphoglucomutase (PGM), glucose-6-phosphatase (G6P), and hexokinase (HXK). In addition, we assayed activity levels of four enzymes that may be involved in plant defense against insects or pathogens: peroxidase (PER), shikimic dehydrogenase (SDH), myrosinase (MYR), and chitinase (CHI; ![]()
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Enzymes were assayed using previously published methods modified for use with 96-well microplates and a UV micro plate reader (model 3550-UV; Bio-Rad, Richmond, CA). Leaves were removed and placed in 1.2-ml strip tubes containing cold extraction buffer (50 mM Tris-HCl, pH 7.5) and four steel ball bearings. The tubes were placed in an 8 x 12 microtiter format rack and kept on ice until all tubes were filled. The tubes were securely capped, and the rack of tubes was secured into a paint shaker and shaken for 45 sec. The tubes in racks were centrifuged 10 min at 3300 rpm. Using an octapipet, the supernant was removed to a fresh tube on ice.
All enzymes were assayed using modifications of previously published methods (![]()
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The change in absorption caused by the reduction of NADP or the oxidation of NADH was measured spectrophotometrically at 340 nm and 25° unless otherwise noted. After centrifugation, plant extract (200 µl for CHI; 100 µl for GPD, FBP, HXK, SDH, and MYR; 50 µl for G6P, PGI, and PGM; 20 µl for PER; and 10 µl for quantification of total protein) and freshly prepared reaction mix were pipetted into the individual wells of microtiter plates, followed by the addition of substrate in a total volume of 250 µl. The reaction mixtures for the individual assay methods were as follows:
GPD: 50 mM Tris-HCl, pH 7.7, 5 mM MgCl2, and 1 mM NADP. The reaction was started with the addition of 3 mM G6P.
Fructose 1,6-biphosphatase (FBP): The reaction mixture was as for GPD, except that 3 U/ml GPD and 4 U/ml PGI were also included and the reaction was started with the addition of 1 mM FBP.
PGM: 50 mM Tris-HCl, pH 8.0, 5 mM MgCl2, 1 mM NADP, 3 U/ml GPD, and 0.1 mM glucose 1,6-bisphosphate. The reaction was started with the addition of 1 mM glucose 1-phosphate.
PGI: 100 mM Tris-HCl, pH 8.0, 2 mM MgCl2, 1 mM NADP, 1 U/ml GPD, and 5 mM fructose 6-phosphate was the substrate.
HXK: 100 mM Tris-HCl, pH 8.0, 2 mM MgCl2, 1 mM NADP, 15 U/ml GPD, 20 mM KCl, and 0.5 mM ATP. The reaction was started with the addition of 0.5 mM glucose.
G6P: 12.5 mM sodium cacodylate, 8 U/ml peroxidase, 15 U/ml glucose oxidase, 10 mM phenol, and 0.4 mM 4-aminoantipyrine. The change in absorption was measured at 490 nm after the addition of 5 mM G6P.
Peroxidase activity was measured using a modification of the standard procedure using guaiacol as substrate (![]()
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Myrosinase activity (SIEMENS and MITCHELL-OLDS 1997) was determined using crude plant extracts that were first desalted on Sephadex G50. A Sephadex G50 slurry (300 µl) was placed in the wells of 96-well micro plates with membrane bottoms (Loprodyne 3.0 mm Silent Monitor plate; Pall Corp., East Hills, NY) and centrifuged to almost dryness. A total of 100 ml of crude extract was added, eluted by centrifugation (![]()
CHI activity was measured using a modification of ![]()
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Protein concentration was determined using the method of ![]()
All reagents and enzymes were obtained from Sigma Chemical Co. (St. Louis, MO), except for the protein assay reagent, which was from Bio-Rad.
Statistical methods:
When quantitative traits are measured on RI lines, analysis of variance (ANOVA) can quantify the proportion of total variation that is attributable to genetic differences. This proportion is the broad-sense heritability, which ranges from 0 to 1. In addition, allelic differences might have simultaneous effects on several traits because of pleiotropy. For example, some families might have high genetic values for two traits because they carry an allele that upregulates both traits, while other genotypes might have low values of both traits because of pleiotropic effects of this locus. Such genetic effects are quantified by the genetic correlation, which ranges from -1 to +1. In RI lines, nonzero genetic correlations may reflect pleiotropy, but they could also be caused by linkage disequilibrium (statistical nonindependence) of tightly linked QTLs. Thus, standard quantitative genetics provides information on the amount of genetic variation (heritability) and on shared gene action affecting several traits (genetic correlations).
We tested for genetic differences among RI lines by randomized complete blocks ANOVA using FLAT and LINE as random effects. Because lines were not replicated within flats, it was necessary to assume that the LINE x FLAT interaction was absent. This assumption is reasonable because flats were grown in a small area within a controlled environment growth chamber and rotated during the experiment. Genetic correlations were estimated from the correlation of family means after eliminating a few families that had low sample sizes because of poor germination. For ANOVA and genetic correlations, we used Bonferroni significance thresholds to provide a conservative correction for multiple statistical tests (![]()
= 0.05 / 45 = 0.0011.
QTL effects were estimated and tested by least squares interval mapping (![]()
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When information was available on map location of enzyme-encoding loci, we first tested for QTLs at the coding loci using a priori planned tests, with a sequential Bonferroni correction for N, the number of known loci encoding a particular enzyme. Otherwise, we considered two approaches for determining a genomewide 5% significance threshold. We report QTLs exceeding ![]()
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DNA sequence comparisons:
AtHXK1 cDNAs have been sequenced in both the Landsberg erecta and the Columbia ecotypes that gave rise to this RI mapping population. Landsberg DNA sequence was obtained from GenBank (accession number ATU28214). Columbia cDNA sequence was obtained from a contig of ESTs assembled by The Institute of Genomic Research (web address http://www.tigr.org/tdb/at/atest.html). These two sequences were identical.
| RESULTS |
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Several enzyme-encoding loci were mapped by BLAST homology searches (![]()
Because of incomplete germination, we obtained enzyme activity data from 1097 plants, totaling 13,127 assays for enzyme activity or protein concentration. All enzymes studied showed highly significant quantitative genetic variation in this segregating population (Table 1). Next, we examined patterns of genetic correlations among activity levels of pairs of enzymes (Table 2). Even after a conservative Bonferroni correction for multiple statistical tests, 40% (18 out of 45) of pairwise genetic correlations were significantly different from zero. All significant genetic correlations were positive. This positive genetic correlation cannot result from variation in sample preparation because it reflects characteristics of particular RI genotypes, and because we analyzed specific activity of each enzyme, normalized with respect to the quantity of total protein in each sample. Positive genetic correlations were especially noticeable among activity levels of five glycolytic enzymes, PGI, PGM, GPD, FBP, and G6P. This suggests that enzymes that have closely related metabolic functions are influenced by genetic segregation of loci that jointly regulate this area of metabolism. On the other hand, genetic correlations among defensive enzymes or between glycolytic and defensive enzymes showed fewer significant correlations. This may indicate greater genetic independence among branches of metabolism that have less functional similarity.
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Of 10 enzymes studied, we mapped significant QTLs affecting the activity of 7 enzymes (Table 3). Most of the QTLs had significant effects on only a single enzyme. There was no hint of epistasis among these QTLs. Individual QTLs explained up to 26% of the genetic variation. Taken together, QTLs explain up to 48% of the genetic variation for activity of a given enzyme. In some cases, enzyme activity QTLs mapped very close to known enzyme-encoding loci (e.g., AtHXK1, PGI-b, and PGM). Alternatively, some known enzyme-encoding loci did not have significant effects on enzyme activity (e.g., G6P, PGI-c, and CHI). This is not surprising, given the low rate of nucleotide polymorphism in Arabidopsis. In some instances, information on map location of coding loci was insufficient to determine whether some QTLs correspond to enzyme-encoding or regulatory loci. Fortunately, this is changing rapidly. Finally, there was no hint of statistically significant epistasis among QTLs (not shown).
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We also asked whether the magnitude of estimated QTL effects differed between enzymes of primary and secondary metabolism. Seven glycolytic QTL had an average activity difference of 9.3%, while four QTLs influencing enzymes of secondary metabolism caused average effects of 25.5% (standard errors 2.6 and 3.5%, respectively; Table 3). The magnitude of QTLs affecting secondary metabolism is significantly larger (F = 13.70; d.f. = 1, 9; P = 0.005 by ANOVA). The generality of this result should be interpreted with caution, however, because we found only significant QTL for two enzymes of secondary metabolism, MYR and SDH.
| DISCUSSION |
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Despite the importance of quantitative genetic variation in many areas of biology (![]()
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Some QTLs provide suggestive evidence regarding the causes of quantitative genetic variation. For example, HXK is encoded by two loci in Arabidopsis (![]()
Functional studies of HXK-encoding loci provide an additional perspective on the molecular basis of quantitative trait variation. JANG et al. studied transgenic plants over- and underexpressing AtHXK and found alterations in flowering time, an important life history trait in Arabidopsis (![]()
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We also found one QTL at 56 cM on chromosome IV that may be a joint regulator of GPD, PGI, and G6P activity (Figure 1). This chromosome region has positively correlated effects on activity of each of these enzymes. In QTL mapping, it is extremely difficult to exclude the possibility that a chromosome region with effects on multiple traits might be caused by several tightly linked loci (MACKAY and FRY 1994; ![]()
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G6P activity may be influenced by two QTLs on chromosome IV, separated by ~35 cM (Figure 2). This possibility was analyzed by least squares interval mapping, controlling for additional QTLs on chromosome V. Even controlling for a possible factor near 19 cM, there is strong evidence for a QTL influencing G6P near 56 cM on chromosome IV. Alternatively, controlling for a factor near 56 cM, there is suggestive evidence for a second factor near 19 cM. (However, this possible QTL does not exceed the significance thresholds used in Table 3). Further experimental work would be necessary to validate that QTL. Fortunately, the current experimental results provide an a priori prediction that could be tested on new segregating lines scored for only a few markers.
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We identified a QTL affecting PGM activity near marker m435 on chromosome V, which is ~700 kb from the PGM-encoding locus (GenBank accession number AB010074). Previous work by ![]()
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On average, QTLs influencing enzymes of secondary metabolism had effects more than twice as large as QTLs affecting primary metabolism. Only a small number of enzymes and QTLs were available for this comparison, so the generality of this result should be interpreted with caution. Nevertheless, this trend conforms with physiological and evolutionary intuition. In many cases, enzymes of secondary metabolism may be under weaker selection or experience geographically heterogeneous selection pressures (![]()
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Interpretation of in vitro assays of enzyme activity requires several caveats (![]()
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Despite these caveats, physiological population genetics can make important contributions to understanding the molecular basis of quantitative variation (![]()
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How well have we succeeded in understanding the molecular basis of quantitative variation in a model system with known physiological pathways in a genetically tractable organism? We found extensive genetic variation for each physiological trait, as well as positive genetic correlations, suggesting that enzymes with closely related metabolic functions are influenced by loci that jointly regulate a pathway (questions 1 and 2 posed in the Introduction). We mapped one QTL with positively correlated effects on activity of GPD, PGI, and G6P, which may represent a joint regulator of these enzymes. Another QTL influencing HXK enzyme activity mapped near the AtHXK1 enzyme-encoding locus. Because AtHXK1 cDNA sequences are identical in Ler and Col, this HXK activity QTL is attributable to linked regulatory variants rather than to coding changes (partial information regarding questions 3 and 4 posed in the Introduction).
However, even in this experimentally tractable model system, these conclusions are limited by our ignorance regarding the actual genes that reside on chromosome intervals and by our incomplete understanding of gene regulation. ![]()
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| ACKNOWLEDGMENTS |
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We thank J. BISHOP, M. GURGANUS, J.-Z. LIN, H. STOTZ, B. STRANGER, and two anonymous reviewers for comments on the manuscript. This work was supported by grant DEB-9527725 from the U.S. National Science Foundation and by the Max-Planck Gesellschaft.
Manuscript received January 24, 1998; Accepted for publication March 13, 1998.
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