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Published online before print November 8, 2007
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From the Institute of Medical Science,* the McLaughlin-Rotman Centre for Molecular Medicine,
the Centre for Research in Neurodegenerative Diseases,
the Division of Infectious Diseases, Department of Medicine,¶ and the Toronto General Research Institute, University Health Network,|| University of Toronto, Toronto, Ontario, Canada; and the Department of Medicine,
University of Washington, Seattle, Washington
| Abstract |
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Because of the difficulties in predicting the development of CM in malaria patients and in sampling brain tissue, most studies investigating CM pathophysiology have used either autopsy specimens or animal models. Although autopsy studies have examined brain pathology during terminal stages of CM, the use of clinically relevant murine models provides an opportunity to examine CM progression within different and controllable genetic backgrounds. Experimental infection of mice with Plasmodium berghei ANKA (PbA) is a well-established and -characterized model system that replicates several key features of human CM.8,9
The identification of transcriptional responses associated with susceptibility or resistance to CM in the PbA model may provide insight into disease pathogenesis10-13 and suggest novel intervention strategies to improve outcome. The aim of this study was to use expression profiling to define transcriptional patterns and regulatory pathways that distinguish the host brain response to experimental cerebral malaria in genetically susceptible (C57BL/6) and resistant (BALB/c) mice over acute infection. The results demonstrate that resistant mice have a dampened global transcriptional response compared with susceptible animals. Functional and network analyses revealed interrelated biological network hubs that implicated prominent mechanistic roles for apoptosis and interferon-regulated gene expression in the pathogenesis of CM. Furthermore, this investigative approach, using computational biology methodology, identified potential targets for innovative therapeutic strategies to modulate host response and improve clinical outcome in cerebral malaria.
| Materials and Methods |
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Animal use protocols were reviewed and approved by the Faculty of Medicine Advisory Committee on Animal Services at the University of Toronto, and all experiments were conducted according to the animal ethics guidelines of the University of Toronto. Male C57BL/6 and BALB/c mice, 8–12 weeks of age, were obtained from Charles River Laboratories (Senneville, QC, Canada). Cryopreserved P. berghei ANKA (MR4, Manassas, VA) was thawed and passaged through naïve C57BL/6 donor mice until parasitemia in the passage animals reached approximately 10%. On day 0, mice were infected by intraperitoneal injection with 5 x 105 freshly isolated PbA parasitized erythrocytes. Parasitemia was monitored daily after day 3 using thin blood smears. Brains were removed for microarray analysis from four mice per strain at day 0 (before infection), and at 1, 3, and 6 days after infection with PbA (n = 8 animals per time point), for a total of 32 mice. Freshly isolated tissue was immediately stored in RNAlater (Ambion/Applied Biosciences, Streetsville, ON, Canada) at –80°C until use.
RNA Isolation
Brains were homogenized in TRIzol Reagent (Invitrogen, Burlington, ON, Canada), and total RNA was isolated according to the manufacturers instructions. RNA was further purified to remove genomic DNA contamination and concentrated using an RNeasyPlus Mini kit (Qiagen, Mississauga, ON, Canada). RNA quality was assessed by determining the 26S/18S ratio using a Bioanalyzer 2100 (Agilent, Santa Clara, CA).
Microarray Data Analysis
Details of the experimental design, hybridization protocols, and raw data sets have been deposited in the Gene Expression Omnibus database (www.ncbi.nlm.nih.gov/projects/geo/; GSE7814) in accordance with Minimum Information About a Microarray Experiment guidelines. Briefly, biotin-labeled cRNA was prepared from total RNA and hybridized to a Mouse Genome 430A 2.0 oligonucleotide microarray (Affymetrix, Santa Clara, CA) according to Affymetrix-recommended protocols at the University Health Network microarray center. The MOE430A 2.0 GeneChip is a mouse whole-genome expression array consisting of more than 22,600 probe sets and including more than 14,000 well-characterized genes. Each of the 32 samples was hybridized on two microarrays, resulting in a total of 64 microarray experiments. Therefore, both biological (n = 4) and technical (n = 2) replicates were performed for CM-susceptible (C57BL/6) and -resistant (BALB/c) mice at each time point. Microarrays were scanned using Affymetrix GeneChip Scanner, and GeneChip Operating Software was used for image analysis. Background adjustment and quantile normalization across all microarrays was performed using the robust multichip average algorithm (RMAExpress).14 After normalization, intensity values for the technical replicates were averaged for each animal, and all subsequent analyses were limited to the resultant 32 composite microarray experiments.
Statistically significant differential gene expression was determined using a recently developed algorithm for time course microarray studies, extraction and analysis of differential gene expression.15,16
The multiple comparisons problem was addressed using the optimal discovery procedure (Q-value), an improvement on false discovery rate analysis.15,16
A given Q-value provides the maximum allowable false discovery rate, and a cut-off value of
1% was selected to designate changes in gene expression as significant. Differentially expressed genes during the course of PbA infection were identified between CM-susceptible and -resistant mice. Additionally, significant gene expression between CM-susceptible and -resistant mice at each time point was determined for subsequent gene ontology analysis.
Principal Components Analysis
Multidimensional scaling using principal components was performed based on the covariance matrix of normalized gene expression values, using the TM4 software of The Institute for Genomic Research (Rockville, MD).17 Principal components analysis reduces the complexity of high-dimensional data structures by projecting them into a low-dimensional subspace that accounts for the majority of data variance.
Gene Ontology Analysis
Functional annotation of the differentially expressed genes was obtained from the Gene Ontology Consortium database, based on their respective molecular function, biological process, or cellular component.18 Functional categories enriched within genes that were differentially expressed between CM-susceptible and -resistant mice at each time point and throughout PbA infection were determined using the expression analysis systematic explorer algorithm.19 A variant of the one-tailed Fisher exact probability test based on the hypergeometric distribution was used to calculate P values.
Gene Network Interactome
A gene-gene interaction network was created using the software and database of Ingenuity Systems (Redwood City, CA).20 This knowledge base has been manually compiled from >200,000 full-text, peer-reviewed scientific articles encompassing approximately 10,000 human, 8000 mouse, and 5000 rat genes. A molecular network of direct physical, transcriptional, and enzymatic interactions among these mammalian orthologs has been developed and served as the basis for creating smaller networks from the gene expression data. These networks were constructed around genes with the highest connectivity using an iterative algorithm and then merged together to create the final interactome. The interactome was drawn based on the connectivity matrix of its members using Pajeks visualization software.21
Transcription Factor Analysis
A computationally based transcription factor analysis on differentially expressed genes during PbA infection was performed. Putative, enriched transcription factors (TFs) that regulate the differentially expressed genes were identified using the promoter integration in microarray analysis algorithm as implemented in the Expander software.22,23 Initially, a systematic search for putative TF-binding sites 1000 bp upstream and 200 bp downstream of the transcription start sites of all genes present on the Affymetrix GeneChip was undertaken based on the position weight matrices of approximately 300 known mammalian TFs (TRANSFAC database).24 Next, over-represented TFs among differentially expressed genes relative to the "background" set of all of the genes present on the Affymetrix GeneChip were statistically determined. The problem of multiple comparisons was addressed by selecting only enriched TFs with Bonferroni-corrected P values <0.01.
Quantitative Real-Time RT-PCR
cDNA was synthesized from 2 µg of total RNA using Superscript II reverse transcriptase with oligo(dT)12–18 primers (Invitrogen). Serial dilutions of mouse genomic DNA were used as standards.25 gDNA standards or cDNA were added to the quantitative PCR containing 1x Power Sybr Green Master Mix (Applied Biosystems, Foster City, CA) and 0.5 µmol/L primers in a final volume of 10 µl. Quantitative PCR was performed using the ABI Prism 7900HT Sequence Detection System (Applied Biosystems). Copy numbers were normalized to four mouse housekeeping genes: Gapdh, Hprt, Sdha, and Ywhaz.26 Forward (fwd) and reverse (rvs) primer sequences are as follows: C4b-fwd, 5'-TCCATAGGTCAGACCCGCAACTT-3'; C4b-rvs, 5'-TCTCCCTTGTTGTCACTGGTTTCC-3'; Ccl12-fwd, 5'-CCCAGTCACGTGCTGTTATAATGT-3'; Ccl12-rvs, 5'-TCAGCTTCCGGACGTGAATCTTCT-3'; Cxcl10-fwd, 5'-ATGAGGGCCATAGGGAAGCTTGAA-3'; Cxcl10-rvs, 5'-TGATCTCAACACGTGGGCAGGATA-3'; GzmA-fwd, 5'-AAACCAGGAACCAGATGCCGAGTA-3'; GzmA-rvs, 5'-CAGAGTTTCAGAGGGAGCTGACTT-3'; Icam1-fwd, 5'-TGGCTGAAAGATGAGCTCGAGAGT-3'; Icam1-rvs, 5'-GCTCAGCTCAAACAGCTTCCAGTT-3'; Stat1-fwd, 5'-GAAGAAAACAACCGTGCTCCTT-3'; Stat1-rvs, 5'-TCCCTGAGGAGAGCAACCAT-3'; Irf1-fwd, 5'-CACACATCGATGGCAAGGGATACT-3'; Irf1-rvs, 5'-TGGTTCCTCTTTGCAGCTGAAGTC-3'; Irf7-fwd, 5'-TCAGAAGCAGCTGCACTACACAGA-3'; Irf7-rvs, 5'-TACCTCCCAGTACACCTTGCACTT-3'; Gapdh-fwd, 5'-TCAACAGCAACTCCCACTCTTCCA-3'; Gapdh-rvs, 5'-TTGTCATTGAGAGCAATGCCAGCC-3'; Hprt-fwd, 5'-GGAGTCCTGTTGATGTTGCCAGTA-3'; Hprt-rvs, 5'-GGGACGCAGCAACTGACATTTCTA-3'; Sdha-fwd, 5'-TCACGTCTACCTGCAGTTGCATCA-3'; Sdha-rvs, 5'-TGACATCCACACCAGCGAAGATCA-3'; Ywhaz-fwd, 5'-AGCAGGCAGAGCGATATGATGACA-3'; and Ywhaz-rvs, 5'-TCCCTGCTCAGTGACAGACTTCAT-3'.
Histology and in Situ End Labeling of Fragmented DNA (TUNEL Immunohistochemistry)
Brains were removed for histopathology from four mice per strain at day 0 (before infection) and day 6. Brains were preserved in 4% paraformaldehyde/PBS. All embedding, sectioning, and histochemistry was performed by the Pathology Research Program at the University Health Network (Toronto, ON, Canada). Terminal deoxynucleotidyl transferase-mediated UTP nick-end labeling (TUNEL) was performed as previously described.27 Briefly, 0.5-cm-thick slices of brain were embedded in paraffin and cut into 4-µm sections. Sections were de-waxed, dehydrated, and then permeabilized with 1% pepsin (Sigma, Oakville, ON, Canada) in 0.01 N HCl at pH 2.0. Endogenous peroxides and biotin activity was blocked using 3% hydrogen peroxide and the avidin/biotin blocking kit (Vector Labs, Burlington, ON, Canada). Biotinylated nucleotides were incorporated into any DNA fragments using DNA Polymerase 1 Large (Klenow) Fragment (Promega/Fisher, Nepean, ON, Canada) and then detected using streptavidin-horseradish peroxidase (ID Labs, London, ON, Canada) and Nova Red substrate (Vector Labs). Slides were counterstained using Mayers hematoxylin. To quantify apoptosis, TUNEL-positive cells were counted in a blinded fashion from the entire sections of five slides of brain sections isolated from four PbA-infected C57BL/6 and BALB/c mice at day 6 after infection.
| Results |
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More than 1100 differentially expressed genes were identified in CM-susceptible (C57BL/6) versus -resistant (BALB/c) mice over the course of acute infection at a false discovery rate of
1%. A notable feature of the global expression profile was that the majority of these genes underwent intense transcriptional activity late (day 6) during PbA infection in CM-susceptible animals, whereas very few genes changed over time in the CM-resistant mice (Figure 1A)
. Principal components analysis confirmed these findings by grouping the animals into three clusters based on their gene expression variability (Figure 1B)
. CM-susceptible mice at day 6 composed the most distinct group followed by CM-susceptible mice (days 0 to 3) and CM-resistant animals (all days). The first principal component, which primarily distinguished CM-susceptible mice on day 6 from the other animals, encompassed more than 50% of the total gene expression variability, implying that the majority of the overall transcriptional variance occurred in this group. No temporal distinction was seen in the expression profiles of CM-resistant mice.
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Functional categorization of genes that were differentially expressed between CM-susceptible and -resistant mice at each time point (days 0, 1, 3, and 6) and during the complete time course of infection was performed using expression analysis systematic explorer software. Enrichment of several functional categories became progressively more significant during the course of infection, especially by day 6 (Figure 2)
. Gene ontology (GO) analysis of differentially expressed genes during the entire course of PbA infection identified various immunological, inflammatory, and pro-apoptotic programs as being highly over-represented (Figure 2
, "All" column). These biological modules included innate immune response, antigen processing via major histocompatibility complex classes I and II, chemokine activity, programmed cell death, and caspase activity. Additionally, a limited set of antigen presentation-related GO categories, including antigen presentation, antigen processing, antigen processing via major histocompatibility complex class I, and major histocompatibility complex class I receptor activity, were enriched across the course of infection. Further GO analysis specifically examining gene ex-pression at day 6, when most of the differential transcriptional activity occurred, showed that genes up-regu-lated in C57BL/6 mice were primarily immune-related, whereas down-regulated genes were associated with developmental processes (Supplemental Table 1, see http://ajp.amjpathol.org).
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Differentially expressed genes during the time course of PbA infection were linked together based on known gene product interactions using Ingenuity Pathways Analysis software. The resultant gene-gene interaction network or interactome, consisting of 269 genes, was depicted using a visualization tool that shows hubs of high interconnectivity (
10) on the exterior of the network diagram (Figure 3
; Supplemental Table 2, see http://ajp.amjpathol.org). The structure of this interactome was built on several hubs of high interconnectivity, including interferon-
(Ifn-
); interferon-responsive factors 1 and 7 (Irf-1 and Ifr-7); signal transducer and activator of transcription 1 and 3 (Stat-1 and Stat-3); caspases 1, 4, 7, and 8; Fas (Cd95); endothelin-1 (Edn-1); and retinoid X receptor-
(Rxra). Recent work suggests that the functional stability of genetic networks is highly dependent on such hubs,28
implying a critical role for these genes in directing the transcriptional response to PbA infection. In fact, 20 of the 38 hubs with connectivity
10 have been previously implicated in the pathogenesis of cerebral malaria (Supplemental Table 3, see http://ajp.amjpathol.org).29-47
The majority of apoptosis-related genes within the interactome were differentially up-regulated in the CM-susceptible (C57BL/6) mice relative to CM-resistant (BALB/c) mice (Figure 3)
, indicating widespread activation of apoptotic pathways in the brains of CM-susceptible mice.
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Transcription factor recognition sequences enriched among differentially expressed genes during PbA infection were computationally identified using the promoter integration in microarray analysis algorithm (Figure 4)
. Four putative promoter sites were highly enriched (Bonferroni corrected P values <0.01), all of which are involved in the regulation of interferon-stimulated gene expression: IRF, IRF-1, IRF-7 and ISRE. These results were consistent with the gene-interaction network analysis that identified Irf-1 and Irf-7 as important hubs for regulating the host response to PbA infection. Another one of the highly enriched promoter sites, interferon-stimulated response element (ISRE), is a key binding site for IRF and STAT families of transcription factors,48,49
including several members of the gene-gene network (Figure 3)
.
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To verify the gene expression data obtained by expression microarray, quantitative real-time RT-PCR was performed on a number of immune-related genes, including complement component 4B (C4b), the chemokines Ccl12 and Cxcl10 (IP10), granzyme A, intercellular adhesion molecule 1 (Icam-1), Irf-1 and Irf-7, and Stat-1 (Figure 5)
. In general, the transcription profiles of these candidate genes correlated well between expression microarray and PCR analysis. Notably, the majority of these genes are either involved in interferon signaling (eg, Irf-1, Irf-7, and Stat-1) or are interferon inducible (eg, Cxcl10, which contains a ISRE-binding site), and all were identified as being highly up-regulated at day 6 in CM-susceptible C57BL/6 mice compared with all other time points in C57BL/6 and CM-resistant BALB/c mice (Figure 5)
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Several caspases and Fas (CD95) were prominent hubs identified in the CM interaction network (Figure 3)
, implicating a mechanistic role for apoptotic pathways in CM susceptibility. To confirm our computational findings, brains of uninfected and PbA-infected CM-susceptible and -resistant mice were examined for evidence of apoptosis by in situ labeling of double-stranded DNA breaks (TUNEL assay). Quantification of TUNEL-labeled cells, comparing infected CM-susceptible C57BL/6 mice to infected CM-resistant BALB/c mice, showed a significantly higher number of TUNEL-positive cells in C57BL/6 mice (Mann-Whitney test, P < 0.001) (Figure 6A)
. Furthermore, three of four C57BL/6 mice showed definitive TUNEL staining compared with one of four BALB/c mice (Figure 6B)
. Based on cellular morphology, apoptosis appeared to occur predominantly in the neurons of the cerebral cortex (Figure 6C)
and in cells of the leptomeninges. One of the four C57BL/6 mice examined displayed limited cell death in the Purkinje cells (cerebellum) and brainstem in addition to the cerebral cortex.
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| Discussion |
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An important mediator of apoptosis, Fas (CD95) was a dense hub within the gene-gene interactome, signifying its potential importance in cerebral malaria. Previous studies have established that Fas- and Fas-ligand (CD178)-deficient mice (lpr/lpr and gld/gld mice, respectively) are protected from CM and that Fas-mediated apoptosis may play a role in astrocyte death during the terminal stages of CM pathogenesis.44,50
The central theme of apoptosis-mediated cell death identified in the computational analysis was examined in whole-brain sections of CM-susceptible (C57BL/6) and -resistant (BALB/c) mice using TUNEL assay, which confirmed differential cerebral apoptotic responses to PbA infection (Figure 6)
. Previous studies examining the PbA-induced CM model suggest that the cerebral endothelium undergoes apoptosis in a perforin-dependent manner.51
Mice with symptoms of CM have also been reported to demonstrate features of neuronal52
and astrocyte53
apoptosis, which presumably occurs after blood-brain barrier disruption.53
Several in vitro studies using P. falciparum have indicated that parasitized erythrocytes induce apoptosis in mononuclear cells54-56
and endothelial cells.43,57
Furthermore, a small autopsy study demonstrated that 40% of CM patients examined had cleaved caspase-3 staining in their brains, indicating apoptosis, compared with 10% of patients without CM.58
Neurological deficits persist in some individuals who survive an episode of CM,59,60
and neuronal apoptosis may, in part, be responsible for these long-term cognitive effects.
Although the role of pro-inflammatory cytokines in the pathogenesis of malaria has received much attention in the literature, the precise roles of type I (eg, IFN-
and -β) and type II (IFN-
) interferons remain unclear. Other investigators have applied transcriptional profiling to highlight the putative importance of type I and II interferon signaling in malaria infection.10,13,61
In our analysis, Ifn-
and the interferon signaling mediators Irf-1, Stat-1, and Stat-3 all formed nodes of high connectivity in the gene-gene interaction network (Figure 3)
, implying that the activation of interferon-dependent transcriptional programs play a critical mechanistic role critical in the pathogenesis of CM in the PbA model. Furthermore, functional analysis indicated that major histocompatibility complex I activity is up-regulated in CM-susceptible mice, consistent with the involvement of CD8+ T-cells62
and IFN-
production in this model. IFN-
is required for the development of severe disease in PbA infection, because both IFN-
-null and IFN-
receptor-null mice do not develop CM.29,62
However, IFN-
also aids in the control of parasitemia,29
and early production of IFN-
, as observed in noncerebral P. berghei murine models, may be protective against progression to CM.39
Additionally, IFN-
and IRF1 could be involved in the increased apoptosis observed in the brains of CM-susceptible (C57BL/6) mice, based on previous reports that IFN-
induces or enhances Fas-mediated cell death in various cell types, including microglia and oligodendrocytes.63,64
A significant number of the differentially expressed transcripts identified in this study contain interferon-regulated transcription factor-binding sites, including IRF1, ISRE, and IRF7. The most significantly enriched promoter site among the differentially expressed genes was interferon-stimulated response element (ISRE), which is recognized by type I interferons via the binding of Stat1, Stat2, and Irf9.65
Genetic association studies have linked IFN-
receptor polymorphisms with protection from CM in an African population.66
In addition, IFN-
levels have been detected in PbA67
and P. falciparum infections,68
with lower levels of IFN-
observed in cases of severe malaria.41
Little is known about the relationship between type I interferon responses and malarial disease, but type I interferon responses may play a beneficial role for the host in malaria. IFN-
treatment of mice in both the P. yoelii and PbA models has been reported to improve outcome.69,70
Conversely, studies of IFN-
treatment in P. berghei infection have yielded inconsistent results.71,72
Overall, type I and II interferon responses appear to be pivotal in the development of severe disease, and interferon therapy may represent an under-explored treatment strategy in malaria.
Host immune and metabolic responses to malaria, specifically overwhelming inflammatory responses, are important determinants of disease severity.2 This study clearly demonstrated that CM-susceptible mice develop a prominent immune-related expression profile late in infection. Presumably, this represents an overcompensated host response that not only functions to kill the parasite but also contributes to immunopathological tissue injury. In contrast, CM-resistant mice display a comparatively flat expression profile over time, with relatively minimal transcriptional response to infection altogether. Additionally, only a modest transcriptional difference was observed in CM-susceptible mice early in infection (day 1 and 3) compared with the uninfected baseline. This observation was somewhat surprising, because a previous study suggested that a surge in cytokine transcript expression occurs by day 3 after infection.39 Although CM-resistant (BALB/c) mice eventually succumb to PbA infection in the chronic stages due to hyperparasitemia and anemia,73 the lack of significant differential gene expression in the brain suggests that a diminished host response to the parasite may protect the infected host from developing CM. This observation may have important clinical implications, because delaying the onset of CM in human P. falciparum infection would allow additional time for parasite clearance with standard chemotherapy and potentially decrease the morbidity and mortality associated with this disease.
Immunomodulatory strategies that reduce overall host inflammation could delay CM onset and prove beneficial in malaria infection. By identifying key sites of transcriptional control in experimental CM, the computational approach used in the current study revealed novel targets for further investigation as possible adjuvant therapeutic strategies for malaria. As a note of caution, although PbA is a well-characterized model of CM, these findings may not all translate directly to human CM, which has pathogenic mechanisms and clinical findings distinct from murine infection. Interestingly, retinoid X receptor-
, which heterodimerizes with peroxisomal proliferator-activated receptor
, was among the network hubs identified in the gene network analysis. The natural ligand for retinoid X receptor, 9-cis-retinoic acid, and peroxisomal proliferator-activated receptor-
agonists, including the thiazolidinedione class of drugs, increase nonopsonic phagocytosis of P. falciparum parasitized erythrocytes and decrease tumor necrosis factor-
secretion by human monocytes.74
A second prominent hub, endothelin-1, is a potent vasoconstrictor of the cerebral microcirculation and has been implicated in the reduction of cerebral blood flow during CM in the PbA model.38
In both instances, FDA-approved drugs exist for other clinical indications that target these pathways. Specifically, a number of thiazoladinediones have been approved for treatment of diabetes mellitus, and Bosentan is an endothelin receptor antagonist approved for management of pulmonary hypertension. Although developed for treatment of clinical conditions other than malaria, these agents warrant further specific investigation as adjunctive immunomodulatory strategies to alter host response and improve clinical outcome in malaria.
Deciphering the intricate host response in cerebral malaria is a daunting task. Global assessment of this response at the genomic, transcriptomic, or proteomic levels can resolve part of its complexity and provides novel insights into its pathogenesis. An unbiased computational approach using relevant animal models of CM offers a promising framework to search for regulatory pathways of this devastating disease and identify putative targets for adjunctive therapies.
| Footnotes |
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See related commentary on page 1729
Supported by the Canadian Institutes of Health Research [Team Grant in Malaria CTP 79842 (K.C.K., principal investigator) and MT-13721 (to K.C.K.)], by the NIH (grant no. HL74223 to S.A.G.), by Genome Canada through the Ontario Genomics Institute, and by a Canadian Institutes of Health Research MD/PhD Studentship (to F.E.L.). K.C.K. is a Canadian Institutes of Health Research Canada Research Chair in Molecular Parasitology, and W.C.L. is a Canadian Institutes of Health Research Canada Research Chair in Infectious Diseases and Inflammation.
F.E.L. and S.A.G.contributed equally to this work. K.C.K. and W.C.L. contributed equally to this work.
Supplemental material for this article can be found on http://ajp.amjpathol.org.
Accepted for publication August 16, 2007.
| References |
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