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Clinical Investigations |
Division of Thoracic Surgery [G. J. G., W. G. R., D. J. S., R. B.], and Renal Division, Department of Medicine, [L-L. H.], Brigham and Womens Hospital, Harvard Medical School, Boston, Massachusetts 02115; Department of Physics, Wesleyan University, Middletown, Connecticut 06457 [R. V. J., J. E. B.]; Department of Neurology, Brigham and Womens Hospital, Harvard Medical School, Cambridge, Massachusetts 02139 [S. R. G.]; Department of Adult Oncology, Dana-Farber Cancer Institute [S. R.], Harvard Medical School, Boston, Massachusetts 02115; and Whitehead Institute/Massachusetts Institute of Technology Center for Genome Research, Cambridge, Massachusetts 02139 [S. R.]
| ABSTRACT |
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| INTRODUCTION |
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Current bioinformatics tools recently applied to microarray data have shown utility in predicting both cancer diagnosis (5) and outcome (6) . Although highly accurate, their widespread clinical relevance and applicability are unresolved. The minimum number of predictor genes is not known, and the discrimination function can vary (for the same genes) based on the location and protocol used for sample preparation (5) . Profiling with microarray requires relatively large quantities of RNA making the process inappropriate for certain applications. Also, it has yet to be determined whether these approaches can use relatively low-cost and widely available data acquisition platforms such as RT-PCR and still retain significant predictive capabilities. Finally, the major limitation in translating microarray profiling to patient care is that this approach cannot currently be used to diagnose individual samples independently and without comparison with a predictor model generated from samples the data of which were acquired on the same platform.
In this study, we have explored an alternative approach using gene expression measurements to predict clinical parameters in cancer. Specifically, we have explored the feasibility of a simple, inexpensive test with widespread applicability that uses ratios of gene expression levels and rationally chosen thresholds to accurately distinguish between genetically disparate tissues. This approach circumvents many of the problems that prevent the penetration of expression profiling research into the clinical setting. We found that expression ratio-based diagnosis of MPM and lung cancer was similarly accurate compared with standard statistical methods of class discrimination such as linear discrimination analysis (7) and similar models (5) while addressing many of their deficiencies.
| MATERIALS AND METHODS |
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Microarray Experiments.
Total RNA (7 µg) was prepared from whole tumor blocks using Trizol Reagent (Invitrogen Life Technologies, Inc. Carlsbad, CA) and processed as described previously (8, 9, 10)
. cRNA was hybridized to human U95A oligonucleotide probe arrays (Affymetrix, Santa Clara, CA) using a protocol described previously (10)
. Data from 64 of 245 samples were discarded after visual inspection of hybridization data revealed obvious scanning artifacts, leaving a total of 31 MPM samples and 150 ADCA samples (139 patient tumors and 11 duplicates). Microarrays for all of the ADCA samples and 12 MPM samples were processed at the Dana-Farber Cancer Institute and the Whitehead Institute. The remaining 19 MPM samples were processed separately at BWH. Microarray data for the ADCA samples have been previously published (11)
. Bhattacharjee et al. (11)
used microarray data from ADCAs used in this study in combination with additional samples, but not samples of MPM, to identify distinct subclasses within ADCA of the lung and to search for prognostic markers. However, their study did not provide any comparison of gene expression between ADCA and MPM.
Real-Time Quantitative RT-PCR.
Total RNA (2 µg) was reverse-transcribed into cDNA using Taq-Man Reverse Transcription reagents (Applied Biosystems, Foster City, CA) and quantified using all recommended controls for SYBR Green-based detection. Primers amplifying portions of claudin-7, VAC-ß, TACSTD1, and calretinin cDNA (synthesized by Invitrogen Life Technologies, Inc.) had the following sequences (forward and reverse, respectively): claudin-7, 5'-GTTCCTGTCCTGGGAATGAG-3' and 5'-AAGGAGATCCCAGGTCACAC-3'; VAC-ß, 5'-CCAGCCTTTCGGTCTTCTAT-3' and 5'-CTGGAGGAAGTTGGGAAGAG-3'; TACSTD1 (5'-AGCAGCTTGAAACTGGCTTT-3' and 5'-AACGATGGAGTCCAAGTTCTG-3'; calretinin 5'-AGGACCTGGAGATTGTGCTC-3', 5-GAGTCTGGGTAGACGCATCA-3'.
Data Analysis.
Gene expression levels were appropriately scaled to facilitate comparison of data from arrays hybridized at different times and/or using multiple scanners.4
When the "average difference" was negative (i.e., negligible expression level), the absolute value was used. A two-tailed Students t test was used to compare the log(gene expression levels) for all of the 12,600 genes on the microarray between samples from a training set consisting of 16 MPM and 16 ADCA samples. All of the differences in the mean log(expression levels) between the samples in the two groups in the training set were determined to be statistically significant if P < 2 x 10-6. Kaplan-Meier survival analysis was performed and the difference between multiple survival curves was assessed using the log-rank test. All of the statistical comparisons (including linear discrimination analysis) were performed using S-PLUS (12)
. To generate the graphical representations of relative gene expression levels, all of the expression levels were first normalized within samples by setting the average (mean) to zero and the SD to 1. Scaled levels were assigned RGB values (representing 20 shades) for colorimetric display as a spectrum representing relative gene expression levels.
| RESULTS |
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8-fold) in average expression levels between both tumor types in the training set of 16 ADCA and 16 MPM samples. For further analysis, we chose the eight genes with the most statistically significant differences and a mean expression level >600 in at least one of the two training sample sets (gene name, GenBank accession no.): calretinin, X56667 (P = 8 x 10-12); VAC-ß, X16662, (P = 8 x 10-13); TACSTD1, M93036 (P = 6 x 10-12); claudin-7, AJ011497 (P = 2 x 10-9); TITF-1, U43203 (P = 10-9); MRC OX-2 antigen, X05323 (P = 5 x 10-13); PTGIS, D83402 (P = 10-10); and hypothetical protein KIAA0977, AB023194 (P = 9 x 10-11). Five of these genes were expressed at relatively higher levels in MPM tumors (calretinin, VAC-ß, MRC OX-2, PTGIS, and KIAA0977) and three were expressed at relatively higher levels in ADCA tumors (TACSTD1, claudin-7, and TITF-1). We then investigated whether expression patterns of these genes extended to all of the samples (Fig. 1A)
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Comparison with Linear Discrimination Analysis.
Standard statistical methods of class discrimination (7)
, such as linear discrimination analysis, can also be used to achieve similar results for these three pairs of genes. We first determined a linear combination of measured expression levels for each pair of genes that provided maximal discrimination between the two sets of tumor samples in the training set. When applied to the test set samples, the linear discrimination functions for the (calretinin, claudin-7), (VAC-ß, TACSTD1), and (MRC OX-2, TITF-1) pairs each gave six, five, and four misclassifications, respectively. However, only one sample was incorrectly diagnosed in all three tests combined. In fact, the same errant sample was identified in the application of both the three ratio tests and the three linear discriminant tests. This sample was originally obtained from a patient with the clinical and pathological diagnosis of ADCA. This specimen was annotated by a pathologist reviewing frozen sections of all specimens before RNA preparation as having unusual histological features raising suspicion of a "germ cell tumor or sarcoma."
Verification of Microarray Data and Validation of Ratio-based Diagnosis.
We used real-time quantitative RT-PCR (a) to confirm gene expression levels of diagnostic molecular markers identified in microarray-based analysis; and (b) to demonstrate that ratio-based diagnosis of MPM and lung cancer is equally accurate using data obtained from another platform. We randomly chose 12 tumor samples each of MPM and ADCA from those used in microarray analysis and then calculated expression ratios for calretinin:claudin-7 and VAC-ß:TACSTD1. Expression ratios correctly diagnosed 96% (23 of 24) of samples, with zero errors and one no-call (Fig. 2)
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| DISCUSSION |
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The small Ps and large fold-differences in average expression levels between genes used in expression ratio-based diagnosis of MPM and lung cancer are not surprising given that both tumor types have different cell types of origin. It is important to note that we have not determined in the present study the exact magnitude and consistency by which gene expression needs to differ between any two groups to allow the usage of a simple ratio test. In other clinical scenarios, the differences in gene expression patterns between groups to be distinguished may be more subtle, thus necessitating a relaxed filtering criteria in choosing potential predictor genes. Even in these cases, simple ratios can still be a highly accurate means of predicting clinical parameters. We have also found that expression ratios are useful in predicting the outcome after therapy in MPM, using genes with considerably higher Ps and lower fold-differences in average expression levels than those used in the present study.5 In the present study, we have used previously published microarray data (6) to identify a small number of predictor genes that were able to significantly predict outcome after therapy in medulloblastoma in a true test set of samples using simple expression ratios. Nevertheless, in some cases, larger numbers of genes (and perhaps sophisticated software) and/or initial expression profiling of a larger number of specimens for the training set may be required to achieve acceptable predictive power.
The selection of diagnostic genes for MPM and lung cancer was based solely on our stated criteria. Nevertheless, many of the molecular markers with the lowest Ps and greatest difference in average expression levels have notable cancer relevance and/or are known to have tissue-specific expression patterns. Calretinin (13 , 14) and TITF-1 (15 , 16) are part of several immunohistochemical panels currently used in the diagnosis of MPM and lung cancer. Claudin family members are expressed in various cancers (17 , 18) , and TACSDT1 (also known as TROP1) is a recently described marker for carcinoma cells and, as a cell surface receptor protein, has been postulated to play a role in the growth regulation of tumor cells (19 , 20) . The discovery of diagnostic gene ratios is likely to make possible future clinical tests to definitively diagnose MPM and ADCA using smaller tissue specimens and perhaps pleural effusions. In this way, the need for diagnostic surgery in many of these patients may be eliminated.
The expression ratio technique represents a substantial improvement over past efforts to translate the strengths of expression profiling into simple tests with clinical relevancy. Many bioinformatics tools under development and testing are quite complex and/or rely upon data from large numbers of "training samples" to establish a diagnosis for unknown samples. The end result is that the practical use of microarray data remains beyond the scope of many scientists and clinicians. Similarly, no comprehensive method has been proposed to translate the results of tumor profiling to the analysis of individual tissues. As a consequence, no simple yet effective clinical applications have resulted from microarray research. The expression ratio technique represents a powerful use of microarray data that can be easily adapted and extended to routine clinical application without the need for additional sophisticated analysis.
| ACKNOWLEDGMENTS |
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| FOOTNOTES |
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1 Supported in part by grants from the Brigham Surgical Group Foundation and The Milton Fund of Harvard Medical School (to R. B.), and by an NIH Grant DK58849 (to S. G.). R. B. is a recipient of the Mesothelioma Applied Research Foundation (MARF) 2001 grant. ![]()
2 To whom requests for reprints should be addressed, at Brigham and Womens Hospital, Division of Thoracic Surgery, 75 Francis Street, Boston, MA 02115. Phone: (617) 732-8148; Fax: (617) 582-6171; E-mail: rbueno{at}partners.org ![]()
3 The abbreviations used are: MPM, malignant pleural mesothelioma; ADCA, adenocarcinoma; RT-PCR, reverse transcription-PCR; BWH, Brigham and Womens Hospital; TITF-1, thyroid transcription factor-1; PTGIS, prostacyclin synthase. ![]()
4 Raw microarray data for all tumor samples are available from the authors website: http://www.chestsurg.org. ![]()
5 G. J. Gordon R. V. Jensen, L-L. Hsiao, S. R. Gullans, J. E. Blumenstock, W. G. Richards, M. T. Jaklitsch, D. J. Sugarbacker, R. Bueno, Prediction of outcome in mesothelioma using gene expression ratios, submitted for publication. ![]()
Received 2/ 5/02. Accepted 7/17/02.
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