- Open Access
Effect of sample size and P-value filtering techniques on the detection of transcriptional changes induced in rat neuroblastoma (NG108) cells by mefloquine
© Dow; licensee BioMed Central Ltd. 2003
Received: 20 December 2002
Accepted: 27 February 2003
Published: 27 February 2003
There is no known biochemical basis for the adverse neurological events attributed to mefloquine. Identification of genes modulated by toxic agents using microarrays may provide sufficient information to generate hypotheses regarding their mode of action. However, this utility may be compromised if sample sizes are too low or the filtering methods used to identify differentially expressed genes are inappropriate.
The transcriptional changes induced in rat neuroblastoma cells by a physiological dose of mefloquine (10 micro-molar) were investigated using Affymetrix arrays. A large sample size was used (total of 16 arrays). Genes were ranked by P-value (t-test). RT-PCR was used to confirm (or reject) the expression changes of several of the genes with the lowest P-values. Different P-value filtering methods were compared in terms of their ability to detect these differentially expressed genes. A retrospective power analysis was then performed to determine whether the use of lower sample sizes might also have detected those genes with altered transcription.
Based on RT-PCR, mefloquine upregulated cJun, IkappaB and GADD153. Reverse Holm-Bonferroni P-value filtering was superior to other methods in terms of maximizing detection of differentially expressed genes but not those with unaltered expression. Reduction of total microarray sample size (< 10) impaired the capacity to detect differentially expressed genes.
Adequate sample sizes and appropriate selection of P-value filtering methods are essential for the reliable detection of differentially expressed genes. The changes in gene expression induced by mefloquine suggest that the ER might be a neuronal target of the drug.
Mefloquine (Lariam) is a prophylactic antimalarial that is also used for malaria chemotherapy. Adverse central nervous system (CNS) events have been associated with its use. Severe CNS events requiring hospitalization occur in 1:10,000 and 1:200–1200 patients taking mefloquine for chemoprophylaxis and treatment, respectively . Milder CNS events (e.g. dizziness, headache and insomnia) are a more frequent occurrence, occurring in up to 25% of those receiving chemoprophylactic doses and 90% of patients receiving therapeutic doses . Higher blood levels of mefloquine are reached under prophylactic as compared to therapeutic regimens [1, 2]. The relative incidence of adverse effects is, therefore, probably dose-related, although the concomitant effect of malaria during treatment cannot be dismissed. It is likely, then, that the neurological events associated with mefloquine have a biochemical basis. In this study, an attempt was made to deduce a possible mechanism of action for mefloquine in rat neuronal cells using Affymetrix rat toxicology arrays.
Microarray analysis offers the unique potential to identify unknown targets of toxic agents, as transcriptional responses of the entire genome can be measured in parallel . Ideally, one should be able to identify new targets quickly, confidently, and without recourse to alternative methods. Appropriate selection of a method for filtering gene expression data is therefore critical to this process. One of the first definitions to emerge was the arbitrary designation of a particular level of – usually two-fold up or down regulation – gene expression as representing 'significance' [4, 5]. Such arbitrary definitions emerged from the observation that fold-regulation of genes between control cultures with identical cell populations seldom varies by more than this level (discussed by Ideker et al. ).
However, arbitrary designations cannot be considered 'significant' in the traditional, statistical sense unless experimental variance is taken into consideration. An evolving method of analysis is to define significant changes in gene expression in terms of a particular P-value after performing appropriate statistical tests that take into account the variability of gene expression data and sample size [6–10]. However, care must be taken to use appropriate statistical tests, P-value thresholds for significance, and sufficient n, otherwise, variance-based methods, as with less rigorous fold-change approaches, will generate high error rates. Recent studies have discussed the utility of the 'Z score', the parametric t-test, and the nonparametric Wilcoxon rank sum test for expression profiling [9, 10]. However, the effects of inadequate sample size and P-value correction methods are only beginning to be addressed .
Due to restrictions on the type and availability of biological samples and the prohibitive cost of arrays, many array studies have resorted to the use of extremely low sample sizes (for a recent example see Lang et al. ). This is potentially problematic because the power of statistical tests decreases with sample size. There is also the multiplicity problem . As the number of hypotheses being tested increases so does the number of type I errors (false conclusions of significance). This is of great concern in microarray studies given the number of statistical comparisons being made (i.e. one test per gene on an array). Therefore, P-value correction is essential in expression profiling to control an appropriate type 1 error rate, although undue conservatism may result in the failure to detect transcriptional changes for some genes that might indeed be verifiable by other means. As shown in this study, adoption of an experimental design that incorporates an adequate sample size and appropriate selection of a P-value filtering method is critical if genes with altered transcription are to be efficiently and effectively identified.
Materials and Methods
Reagents and media
Mefloquine was obtained from Walter Reed Army Institute of Research chemical repository. Dulbecco's Modified Eagle Medium (DMEM), hypoxanthine-aminopterin-thymidine (HAT) medium supplement, foetal calf serum (FCS) and gentamycin were purchased from Gibco BRL (Rockville, Maryland). RNA-STAT was obtained from Tel-Test (Friendswood, Texas).
NG108-15 (mouse neuroblastoma-rat glioma hybrid) cells were maintained in 75-cm2 tissue culture flasks in DMEM supplemented with HAT, 10% FCS and gentamycin (50 μg/ml), in a humidified 6.0% CO2 incubator at 37°C. For the microarray studies, 175 cm2 tissue culture flasks were seeded with 4.6 million NG108 cells in 49.6 ml culture medium 24 h prior to the experiments. For cytotoxicity studies, 25 cm2 tissue culture flasks were seeded with 0.66 million NG108 cells in 10 ml culture medium 24 h prior to the experiment.
Cytotoxicity of mefloquine in NG108 and primary rat neuronal cell cultures
The cytotoxicity of mefloquine was assessed using 25 cm2 tissue culture flasks. After overnight incubation of NG108 cells, culture media were replaced with fresh DMEM containing mefloquine (2.5–40 μM) or 1% DMSO (control). After incubation of the flasks for 2 h, the cells were washed twice, and then resuspended, in 5 ml phosphate buffered saline. Total numbers of viable cells at each mefloquine concentration were determined using trypan blue exclusion as previously described . Viability (%) was calculated using the following formula: Viability (%) = # viable cells in treated culture/# viable cells in control culture * 100. Data shown represent the mean (%) viability (± SEM) for three experiments. The cytotoxicity of mefloquine to primary embryonic rat neurons was assessed in 24 well tissue culture plates using the MTT assay as previously described . Data represent mean (%) viability (± SEM) for eight replicate experiments. Fifty percent inhibitory concentrations (IC50s) were calculated using Prism software.
Design of microarray experiments, cell harvesting and total RNA extraction
CDNA synthesis, in vitro transcription and fluorescent labeling, hybridization, staining and scanning of gene chips, and assay monitoring
Detailed procedures for preparation of cDNA and fluorescently labeled cRNA, hybridization, staining, and scanning of gene chips and assay monitoring are outlined by Vahey et al. . The platform chosen for global expression profile was the Rat Tox U34 Array (Affymetrix, Santa Clara, California), which contains probes for EST clusters and genes linked to a variety of toxic endpoints (total of 1031 probe sets including controls). RNA (10 μg) extracted from each individual flask was hybridized to a single gene chip (i.e. a total of 16 chips were used).
Gene expression data analysis
Affymetrix analysis software (version 4) was used to generate average difference (AD) values for each gene for each treatment (Affymetrix, Santa Clara, California). AD values represent the difference in mean fluorescence between positive and mismatch probe cells for each gene. All genes with mean AD levels < 100 in either mefloquine or DMSO-treated cultures were excluded. This procedure eliminated most of the genes called absent by the Affymetrix software. For simplicity, an AD value is hereafter referred to as the expression value of a gene. The expression values for each gene chip were imported directly into Parteck Pro 2000. No additional data normalization or scaling methods were employed (as these procedures were performed previously by the Affymetrix software). No additional filtering of data was conducted on the basis of either number of reporting probe cells or the present/absent calls generated by the Affymetrix analysis software. Paired t-tests (two-sided, df = 7) were performed to compare the expression levels of each of the remaining genes (695 of 1031) in DMSO and mefloquine-treated cultures. The genes were then rank ordered in terms of their unadjusted P-values. This general approach to the analysis of Affymetrix expression data is outlined in Partek technical literature. Fold-changes (FC) in expression were = mean mefloquine expression level/mean DMSO expression level.
Expression data generated for this study is available from GEO (Accession #GSE39 for a summary of the experiment and GSM1654-1669 for individual treatments)
Gene specific primers, cycles, product sizes and annealing temperatures.
Product Size (bp)
Annealing Temperature °C
Forward Primer (5'– 3')
Reverse Primer (5'-3')
Designation of a list of genes with altered expression
The mefloquine data set was used to compare several P-value correction and gene expression filtering methods. The methods were compared in terms of their ability (or failure) to detect genes defined as having (truly) altered expression. Genes with altered changes in expression were those with an array P < 0.003. This threshold was selected because of the good correlation of microarray and RT-PCR P-values and because it represents the highest unadjusted P-Value for which an associated mefloquine-induced expression change was confirmed by RT-PCR.
Descriptions of different gene expression filtering methods
Genes were filtered on the basis of their unadjusted P-values according to several different methods: (i) The normal P < 0.05 threshold (i.e. P < 0.05 for significance), (ii) the modified Bonferroni's step-down procedure of Holm or (iii) the Holm-Bonferroni procedure applied in reverse with initial P-values of 0.05 or 0.01. Applying the Holm step-down procedure , the P-value threshold for significance for each genes is determined on the basis of its rank according to the following formula: P = 0.05/(total number of t-tests or genes in array + 1 – gene rank). Therefore, the gene ranked 1 (i.e. having the lowest P-value) in an expression set for which 695 statistical tests are to be conducted, the threshold P-value is 0.05/695. For the lowest ranked gene (i.e. with the highest P-value) the threshold is 0.05/1. This method was also applied in reverse, utilizing starting P-values of 0.05 and 0.01, according to the following formula: P = (0.05 or 0.01)/gene rank. This approach is hereafter referred to as the reverse Holm procedure. For comparison, the expression data were also filtered using an ad hoc fold-change method. For the fold-change method, the expression ratios were calculated for each gene and a two-fold change was used as the criterion for significance.
Power analysis using mefloquine data set
In general, when using statistical tests (in this case a paired t-test), the required sample size to detect a particular change (e.g. treatment versus control) depends on the magnitude of the difference, variability of the data, the required statistical power and the acceptable type 1 error. The mefloquine data set was used to assess the power and implications of sample size in terms of the minimum detectable average fold-change in expression of the six genes defined as being truly upregulated by the drug. First, a publicly available power/sample size calculator (, available at http://www.mc.vanderbilt.edu/prevmed/ps) was used to determine the power of the paired test (two-sided, df = 7). Then, based on this level of power and the same critical values, absolute change in expression was calculated at different sample sizes. The critical values for the calculations were as follows. The detectable difference (δ) was the absolute, average changes in the expression values of the control group. The standard deviation (σ) was the square root of the average variance of differences in expression of the six genes in individual pairs of DMSO and mefloquine-treated cultures. The type 1 error (two-sided) was set at α = 0.003, which corresponded to the maximum P-value for which expression changes were confirmed by RT-PCR. Absolute changes in expression at different sample sizes are presented as minimum detectable fold-changes in expression using the following formula: Minimum detectable fold-change = (average expression value of the six upregulated genes in control cultures + size of the detectable difference)/average expression value of the six upregulated genes in control cultures.
NG108 and primary embryonic rat neuronal cells were similarly susceptible to mefloquine. The IC50s of the drug against NG108 cells and primary neurons were 12 and 6.6 μM respectively and the overall shapes of the dose response curves were similar (Figure 1).
Transcriptional changes induced in rat neuroblastoma (NG108) cells by a two-hour treatment with 10 μM mefloquine.
Result of RT-PCR
Not tested (altered)
Not tested (altered)
Dual specificity phosphatase
Not tested (altered)
Not tested (altered)
DNA Polymerase α
Not confirmed (unaltered)
Not confirmed (unaltered)
Acyl CoA hydrolase
Not tested (unaltered)
Not confirmed (unaltered)
Detection (or rejection) of differentially expressed genes using various P-value correction methods.
Fold-change > 2
P < 0.05
Reverse Holm Procedure
No of ...
P < 0.05
P < 0.01
Differentially expressed genes detected1
Differentially expressed genes rejected1
This, of course, begs the question as to whether it is appropriate to now conclude that the reverse Holm procedure is the most appropriate P-value filtering method. The answer, of course, depends on the goal of the proposed study. If, for example, one wished to be certain that a gene is differentially expressed, or does not wish to resort to laborious conventional techniques to confirm expression changes, the only appropriate filtering method is the Bonferroni (or other related) procedure, as the chance of generating false positive results using such methods is negligible. However, if one wishes to identify all differentially expressed genes, and possesses the resources necessary to confirm all expression changes using traditional approaches, the P < 0.05 threshold (or a fold-change method) might be the most appropriate. However for many studies that do not fall at either of these extremes, application of a reverse Holm procedure might be the most appropriate choice.
The choice of an appropriate sample size is also critical if (true) differentially expressed genes are to have a high probability of being detected. A power analysis was conducted to determine whether the transcriptional changes induced by mefloquine might have been detectable using lower sample sizes. There was a modest increase in the minimum detectable fold-change of an average gene when the sample size was reduced to twelve from sixteen. In theory, then, a modest reduction in sample size may still have allowed many significant genes to be detected. However at sample sizes below ten, the minimum detectable fold-change exceeded the maximum transcriptional modulation of any gene by mefloquine, implying that such changes would be extremely difficult if not impossible to detect. These observations may be directly relevant for planning future studies in which transcriptional changes of similar magnitude, and data-sets with similar variance characteristics, are expected. However, such a power analysis might be considered conservative for studies in which larger magnitude fold-changes are expected.
Appropriate experimental design is also necessary to ensure that any changes in gene expression observed are relevant to the problem being investigated. The choice of cell system, toxicant concentration and exposure time must all be carefully considered. In the present study, an immortal (NG108) cell line was selected as these cells are easier to maintain in vitro and large amounts of RNA can be routinely isolated. Cell lines do not always respond in the same manner that untransformed cells would in an in vivo context; therefore their use in experimental model systems may not always be appropriate. However, this does not appear to be the case for mefloquine, since NG108 cells and primary embryonic rat neurons appear similarly susceptible to the drug (Figure 1). The mefloquine concentration (10 μM) was selected on the basis of its physiological relevance [18–20] and ability to elicit a measurable physiological response without inducing maximum cell death (Figure 1). A short exposure time (2 h) was selected for two reasons. Firstly, shorter toxicant exposure time ensured that any changes observed in specific mRNA transcript levels were due to the direct cellular effects of mefloquine, rather than secondary effects caused by changing culture conditions (since drug-treated NG108 cells divide less rapidly than DMSO-treated cells). Secondly, a short in vitro exposure time is appropriate since the adverse neurological effects of mefloquine in vivo occur within 24–48 hours of the first 1–2 doses administered [21, 22].
Mefloquine induced changes in the expression of three genes, GADD153, IkB and cJun. CJun is a transcription factor upregulated in response to many forms of neurological injury , thus its modulation by mefloquine under conditions of cellular stress is unsurprising and does not imply a specific mechanism of action. However, this is not the case for GADD153 and IkB. Two highly conserved responses are observed under conditions of endoplasmic reticulum (ER) stress; the ER overload and unfolded protein responses [24, 25]. The unfolded protein response is characterized by generalized suppression of protein synthesis and the specific induction of ER-resident proteins and GADD153 . The transcription factor nuclear factor kB is activated during the ER overload response, leading to the downstream induction of pro-inflammatory proteins . Therefore, the transcriptional modulation of GADD153 and IkB by mefloquine suggests that the ER might be a target of the drug.
In neurons, GADD153 is selectively upregulated under conditions of endoplasmic reticulum (ER) stress arising from depletion of calcium stores . Here, the upregulation of GADD153 was observed after mefloquine treatment in NG108 cells (10 μM for 2 h). In preliminary experiments utilizing primary rat neurons, we have also observed an upregulation of GADD153 after mefloquine treatment (unpublished data). Mefloquine has been found to alter calcium flux, into and out of, isolated skeletal muscle and brain microsomes, via an inhibitory effect of the compound on the ER calcium pump and calcium release channels (IC50 of 42–43 uM, [27, 28]). Plasma mefloquine concentrations (therapeutic dosing) may reach 21 μM  and the drug crosses the blood-brain barrier, accumulating to concentrations in excess of 50 and 90 μM in the brains of humans and rats respectively [19, 20]. Therefore, these biochemical effects occur at concentrations within a relevant physiological range. Collectively, these observations suggest that mefloquine disrupts neuronal function through a combination of disrupted calcium homeostasis and ER stress. This hypothesis is currently under investigation in this laboratory.
Adequate sample sizes and appropriate selection of P-value filtering methods are essential for the efficient and effective detection of differentially expressed genes. Mefloquine induced changes in the expression of genes encoding cJun, IkB and the ER stress response protein GADD153. The upregulation of GADD153 by mefloquine suggests that the drug might affect the function of the ER in neurons, perhaps by disruption of calcium homeostasis.
The author thanks Dr Douglas Tang, Dr. Maryanne Vahey, MAJ Karen Kopydlowski, Dr Thomas Hudson and CPT Jeannie Geyer for helpful discussion of data and review of the manuscript, Ms. Shruti Goel for assistance with RNA isolation and Dr Michael Koenig for assistance with dose response assays. Affymetrix gene chips were analyzed in the laboratory of Dr. Maryanne Vahey, with the expert technical assistance of her staff, Ms. Stacey Reynolds and Mr. Martin Nau.
The opinions or assertions contained herein are the private views of the author and are not to be construed as official or reflecting the views of the Department of the Army or the Department of Defense.
- Phillips-Howard PA, ter Kuile FO: CNS adverse events associated with antimalarial agents: Fact or fiction?. Drug Saf. 1995, 12: 370-383.View ArticlePubMedGoogle Scholar
- Schlagenhauf P: Mefloquine for malaria chemoprophylaxis 1992–1998. J Travel Med. 1999, 6: 122-123.View ArticlePubMedGoogle Scholar
- Eisen MB, Brown P: DNA arrays for analysis of gene expression. Methods Enzymol. 1999, 303: 179-205.View ArticlePubMedGoogle Scholar
- Iyer VR, Eisen MB, Ross DT, Schuler G, Morre T, Lee JC, Trent JM, Staunt LM, Hudson JJr, Bogaski MS, Lashkari D, Shalon D, Botstein D, Brown PO: The transcriptional program in the response of human fibroblasts to serum. Science. 1999, 283: 83-87. 10.1126/science.283.5398.83.View ArticlePubMedGoogle Scholar
- DeRisi J, van den Hazel B, Marc P, Balzi E, Brown P, Jacq C, Goffeau A: Genome microarray analysis of transcriptional activation in multidrug resistance yeast mutants. FEBS Lett. 2000, 470: 156-169. 10.1016/S0014-5793(00)01294-1.View ArticlePubMedGoogle Scholar
- Ideker T, Thorsson V, Seigel AF, Hood LE: Testing for differentially expressed genes using maximum likelihood analysis. J Comput Biol. 2001, 7: 805-817. 10.1089/10665270050514945.View ArticleGoogle Scholar
- Kerr MK, Martin M, Churchill GA: Analysis of variance for gene expression microarray data. J Comput Biol. 2000, 7: 819-837. 10.1089/10665270050514954.View ArticlePubMedGoogle Scholar
- Newton MA, Kendziorski CM, Richmond CS, Blattner FR, Tsui KW: On differential variability of expression ratios: Improving statistical inference about gene expression changes from microarray data. J Comput Biol. 2001, 8: 37-52. 10.1089/106652701300099074.View ArticlePubMedGoogle Scholar
- Thomas JG, Olson JM, Tapscott J, Zhao LP: An efficient and robust statistical modeling approach to discover differentially expressed genes using genomic expression profiles. Genome Res. 2001, 11: 1227-1236. 10.1101/gr.165101.PubMed CentralView ArticlePubMedGoogle Scholar
- Callow MJ, Dudoit S, Gong EL, Speed TP, Rubin EM: Microarray expression profiling identifies genes with altered expression in HDL-deficient mice. Genome Res. 2000, 10: 2022-2029. 10.1101/gr.10.12.2022.PubMed CentralView ArticlePubMedGoogle Scholar
- Pan W, Lin J, Le CT: How many replicates of arrays are required to detect gene expression changes in microarray experiments? A mixture model approach. Genome Biol. 2002, 3: research0022-PubMed CentralPubMedGoogle Scholar
- Lang R, Patel L, Morris JJ, Rutschman RL, Murray PJ: Shaping gene expression in activated and resting primary macrophages by IL 10. J Immunol. 2002, 169: 2253-2263.View ArticlePubMedGoogle Scholar
- Dudoit S, Shaffer JP, Boldrick JC: Multiple hypothesis testing in microarray experiments. U.C. Berkely Division of Biostatistics Working Paper Series Paper 110. 2002, [http://www.bepress.com/ucbiostat/paper110/]Google Scholar
- Freshney R: Culture of animal cells: A manual of basic techniques. New York, Alan R. Liss. 1986Google Scholar
- Koenig ML, Sgarlat CM, Yourick DL, Long JB, Meyerhoff JL: In vitro neuroprotection against glutamate-induced toxicity by pGlu-Glu-Pro-NH(2) (EEP). Peptides. 2001, 22: 2091-2097. 10.1016/S0196-9781(01)00544-7.View ArticlePubMedGoogle Scholar
- Vahey M, Nau M, Jogodzinski J, Yalley-Ogunro M, Taubman N, Micjeal N, Lewis M: Impact of viral infection on the gene expression profiles of proliferating normal human peripheral blood mononuclear cells infected with HIV-RF. AIDS Res Hum Retroviruses. 2002, 18: 179-192. 10.1089/08892220252781239.View ArticlePubMedGoogle Scholar
- Dupont WP, Plummer WD: Power and sample size calculations: A review and computer program. Control Clin Trials. 1990, 11: 116-128. 10.1016/0197-2456(90)90005-M.View ArticlePubMedGoogle Scholar
- Simpson JA, Price R, ter Kuile F, Teja-Isvatharm P, Nosten F, Chongsuphajaisiddhi T, Looareesuwan S, Aarons L, NWhite NJ: Population pharmacokinetics of mefloquine in patients with acute falciparum malaria. Clin Pharmacol Ther. 1999, 66: 472-84.View ArticlePubMedGoogle Scholar
- Baudry S, Pham YT, Baune B, Vidrequin S, Crvosier C, Gimenez F, Farinotti R: Stereoselective passage of mefloquine through the blood-brain barrier in the rat. J Pharm Pharmacol. 1997, 49: 1086-90.View ArticlePubMedGoogle Scholar
- Pham YT, Nosten F, Farinotti R, White NJ, Gimenez F: Cerebral uptake of mefloquine enantiomers in fatal cerebral malaria. Int J Clin Pharmacol Ther. 1999, 37: 58-61.PubMedGoogle Scholar
- Shepherd JM: Use of (+) mefloquine for the treatment of malaria. International patent # 98/39003. 1986Google Scholar
- Schlagenhauf P, Steffen R, Lobel H, Johnson R, Letz R, Tschopp A, Vranjes N, Bergvist Y, Ericsson O, Hellgren U, Rombo L, Mannino S, Handschin J, Sturchler D: Mefloquine tolerability during chemoprophylaxis: focus on adverse event assessments, stereochemistry and compliance. Trop Med Int Health. 1996, 1: 485-494. 10.1046/j.1365-3156.1996.d01-85.x.View ArticlePubMedGoogle Scholar
- Herdegen T, Waetzig V: AP-1 proteins in the adult brain: facts and fiction. Oncogene. 2001, 20: 2424-2437. 10.1038/sj.onc.1204387.View ArticlePubMedGoogle Scholar
- Kaufman RJ: Stress signaling from the lumen of the endoplasmic reticulum: a key mechanism underlying neuronal cell injury?. Genes Dev. 1999, 13: 1211-1233.View ArticlePubMedGoogle Scholar
- Pahl HL, Baeuerle PA: The ER-overload response: activation of NF-kB. Trends Biochem Sci. 1997, 22: 63-67. 10.1016/S0968-0004(96)10073-6.View ArticlePubMedGoogle Scholar
- Mengesdorf T, Althausen S, Oberndorfer I, Paschen W: Response of neurons to an irreversible inhibition of endoplasmic reticulum CA2+-ATPase: relationship between global protein synthesis and expression and translation of individual genes. Biochem J. 2001, 356: 805-812. 10.1042/0264-6021:3560805.PubMed CentralView ArticlePubMedGoogle Scholar
- Go ML, Lee HS, Palade P: Effects of mefloquine on Ca2+ Uptake by crude microsomes of rabbit skeletal muscle. Arch Int Pharmacodyn Ther. 1995, 329: 255-271.PubMedGoogle Scholar
- Lee HS, Go ML: Effects of mefloquine on Ca2+ uptake and release by dog brain microsomes. Arch Int Pharmacodyn Ther. 1995, 331: 221-231.Google Scholar
- Whitehead Institute, Center for Genome Research Home page. [http://www-genome.wi.mit.edu/cgi-bin/cancer/datasets.cgi]
- Vanderbilt University Medical School Homepage. [http://www.mc.vanderbilt.edu/prevmed/ps/]
This article is published under license to BioMed Central Ltd. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose, provided this notice is preserved along with the article's original URL.