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Looking outside the Brain for Early Signs of AD
3 October 2005. The use of gene expression profiling to characterize Alzheimer disease pathology has, unsurprisingly, focused on changes in brain tissue (see ARF related news story), but the search for biomarkers that might allow early diagnosis is moving outside of that anatomical box. Reaching for a more easily attainable tissue, researchers from Sumitomo Pharmaceuticals in Osaka, Japan, and the Karolinska Institute in Sweden chose fibroblasts as the starting point for comparing global gene expression patterns between people with FAD mutations and their wild-type siblings. Their results show a clear gene expression signature that can distinguish FAD gene carriers from non-carriers long before signs of dementia appear. Interestingly, the changes in gene expression caused by three different FAD genes (the Swedish and Arctic APP mutations and PSEN1 H163Y) were all similar, suggesting that mutations in either APP or PS1 can cause common changes in the physiology of cells outside the brain long before clinical disease sets in. The research appears online in the September 29 PNAS Early Edition.

For the study, first author Yosuke Nagasaka and colleagues probed the genomewide expression of cultured fibroblasts from skin biopsies. The investigators found 56 genes that were most highly differentially expressed and 200 that showed smaller but significant differences. The gene expression profile using 200 genes predicted FAD status with 97 percent accuracy, regardless of whether the subjects displayed signs of dementia or not. Other factors, such as age, ApoE status, or gender did not seem to contribute to the difference in gene expression observed.

The authors did not list the identities of the differentially expressed genes in the paper but note they will make them available on request. The Alzheimer Research Forum has made such a request. The authors characterize the significance of their finding as “a unique gene expression signature for FAD caused by three different mutations in two different genes…that…can be detected in fibroblasts, which may seem to be an organ completely unrelated to the tissue affected by the disease.” Within the 56 or 200 genes may lay smaller sets or even individual genes that represent potential biomarkers for early AD.

The elephant on the chip is the open question of whether the gene signature exposed in FAD fibroblasts will translate in any way to sporadic AD. The similarities of the profiles with three mutations suggest that underlying changes in gene expression might be central to all types of AD. But fibroblasts express APP and PS1 proteins, putting them directly in line for FAD-related effects. The question of whether similar alterations, or any at all, occur in fibroblasts in sporadic AD will be of considerable interest for the development of surrogate markers for brain pathology.—Pat McCaffrey.

Reference:
Nagasaka Y, Dillner K, Ebise H, Teramoto R, Nakagawa H, Lilius L, Axelman K, Forsell C, Ito A, Winblad B, Kimura T, Graff C. A unique gene expression signature discriminates familial Alzheimer's disease mutation carriers from their wild-type siblings. Proc Natl Acad Sci U S A. 2005 Oct 11;102(41):14854-9. Epub 2005 Sep 30. Abstract

Updated 5 October 2005:

See Supplemental Article with gene list (.pdf)

Q&A with Toru Kimura and Caroline Graff. Questions by Pat McCaffrey.

Q: Of possible tissues, why did you choose fibroblasts for your analysis?
A: We agree that the much more common and easy procedure of sampling peripheral blood would make lymphocyte or lymphoblast studies preferable. Actually, in parallel with the fibroblast biopsies, peripheral lymphocytes (blood) were sampled from the same family members, followed by microarray hybridizations. Unfortunately, the inter-individual variation was very high and in some cases (more often than in the fibroblasts), the RNA quality was too poor and we were thus unable to interpret the hybridization signals. Actually, we experience from this study that skin biopsies appear to be less sensitive to differences in external conditions directly after sampling as compared to lymphocytes, which require direct handling after sampling.

Besides the bad RNA quality of our lymphocyte samples, there are several other reasons why fibroblasts are more attractive than lymphoblasts. First, we would like to challenge the appropriateness of using lymphoblasts since these cell lines are established after immortalization, typically with Epstein-Barr virus transformation. This in itself changes the genetic make-up of the cells, leading to uncontrolled changes in the genome which theoretically may lead to spurious changes in gene expression. Second, the use of RNA from peripheral blood lymphocytes may be an attractive alternative, but these cells are very reactive to acute stimuli such as nutritional status, fever, infections, and drug treatment; this makes them less attractive. Moreover, if it were possible to make a presymptomatic diagnosis using fibroblasts and there were drugs which could delay the onset of symptoms, we believe that a skin biopsy would be tolerated and requested by most patients. For example, many muscle dystrophies and myopathies can only be diagnosed based on results from muscle biopsies which are routinely sampled on patients for this purpose.

Q: Your gene expression profiles clearly distinguish FAD mutation carriers from wild-type siblings, but what about sporadic AD? Do you expect to see the same differences in the absence of a causative mutation?
A: Naturally we are interested in investigating the gene expression profile in patients with the common, sporadic forms of AD. It can be anticipated that there will be shared changes on the gene expression level between sporadic and familial AD since the diseases are clinically indistinguishable except for the age at onset and the family history. However, it is also plausible that the gene signature we have identified is related to the biochemical pathways perturbed by the specific FAD mutations included in this study. If this is true, we may find a similar profile in other AD-causing APP, PSEN1, and PSEN2 mutations. Therefore our next step will be to characterize family members with other FAD-causing mutations. If we can validate the gene signature in additional FAD mutation carriers, it may be possible to use the signature in order to identify sporadic AD patients who share the same gene expression profile. That is, the heterogeneous nature of sporadic AD suggests that the etiology is also heterogeneous. This makes it unlikely that all sporadic AD patients will share the same gene expression profile. However, such gene expression classification may serve as a tool to subcategorize the disease etiologies in the common forms of the disease.

Q: Your paper doesn't talk about which genes were affected by the mutations. Did these fall into any interesting classes, for example, cell cycle genes, or other groups?
A: Actually, the 200 differentially expressed genes were subjected to functional classification based on their known functions using the FatiGO program. FatiGO is a Web interface which carries out simple data mining using Gene Ontology for DNA microarray data. The FatiGO results showed that effects were seen in virtually all biological processes. The three largest functionally categorized groups are those of metabolism, cellular growth, and/or maintenance, as well as cell communication.

Q: Do your results suggest any good candidate genes for stand-alone analysis as biomarkers?
A: We intend to follow up the study in order to validate our findings and, if possible, reduce the number of informative genes. At this point it is unlikely to expect a single gene or a handful of genes to be sufficient. However, it may be true that some of the gene products could be used as biomarkers to categorize the heterogeneous sporadic AD patients into more homogeneous subgroups.

Q: What happens next to validate or further develop the gene expression profiles as diagnostic tool? Will you be pursuing that, and if so, how?
A: Yes, we are willing to and going to pursue this approach of gene expression analysis of RNA from fibroblasts. First, we are planning to analyze more FAD samples, which are independent from the 30 samples we analyzed in this study, in order to see if the same expression differences can be observed. Then we will assess if the expression differences can be observed in sporadic AD. We consider this study as exploratory, and our ambition is to make a large and carefully performed validation study with additional samples. We are continuously collecting samples from these rare FAD mutation families; however, it is a very slow and time-consuming process, and we hope that the data from this paper will encourage further collaboration and perhaps thereby also speed up the follow-up validation. Beside the collection of FAD mutation families, we are planning to validate the gene signature in sporadic AD patients, as well as validation with respect to other neuropathological conditions.

 
Comments on News and Primary Papers
  Comment by:  Eric Blalock, Philip Landfield
Submitted 4 October 2005  |  Permalink Posted 4 October 2005

This paper describes an innovative and interesting use of gene microarrays for Alzheimer disease (AD) research. Prior microarray studies of AD have focused on identifying genes that are expressed differentially in the postmortem brains of idiopathic AD and control subjects, in attempts to elucidate the pathobiology of the disease. In contrast, the authors here use fibroblasts from living familial AD mutation bearers (most of whom are presymptomatic) to identify differentially expressed genes. In addition, they turn the identification process around and show that these genes also can discriminate subjects bearing three known familial AD (FAD) mutations from their wild-type siblings. To do this, the authors first employ Allen’s cross-validation test (CV) to identify 200 genes expressed differentially in fibroblasts from FAD and wild-type subjects. They then apply two discriminant methods, hierarchical clustering and principal components analysis, using these 200 genes, to accurately classify all of the same subjects.

The novel features of this work include the use of peripheral...  Read more


  Comment by:  Elliott Mufson, ARF Advisor (Disclosure)
Submitted 4 October 2005  |  Permalink Posted 4 October 2005

The search for a biomarker that distinguishes AD from other neurological dementias is a fertile research area for both clinical, basic, and biotech investigators. In this article, findings are presented demonstrating the ability of gene array technology to identify differences in the genetic signature between those carrying one of three FAD gene mutations (Swedish and Arctic APP mutations and PSEN1 H163Y) from wild-type siblings lacking these mutations. Unlike many other studies, which have used brain tissue, these experiments were performed on cultured skin fibroblasts. The choice of fibroblasts is interesting, as they are an easily accessible source of cells to investigate gene differences in familial AD. These investigators demonstrated that fibroblast genetic signatures could distinguish FAD gene carriers from non-carriers prior to the onset of dementia. The observation that alterations in gene expression induced by the three different FAD genes overlapped suggests that mutations in either APP or PS1 cause a common physiologic cellular response, which can be detected in...  Read more

  Comment by:  Martin Ingelsson, Lars Lannfelt, ARF Advisor
Submitted 6 October 2005  |  Permalink Posted 6 October 2005

Expression arrays in Alzheimer disease mutation-carriers: a common biochemical pathway?

This paper paper ”A unique gene expression signature discriminates familial Alzheimer’s disease carriers from their wild-type siblings”, published in the October issue of Proc Natl Acad Sci USA by Nagasaka et al, is an interesting example of how gene expression array techniques can be applied in Alzheimer research. The use of this technology has been hampered by some fundamental problems. Most importantly, array experiments have mainly been performed on brain autopsy tissue, comparing samples from cases affected by dementia with those from individuals without any brain disorder. This design is problematic, as the results necessarily reflect the end stage of a disease process that typically has been ongoing for several decades.

The present study represents an attempt to circumvent this problem. By analyzing lymphocytes and fibroblasts from a few rare families with dominant mutations in the APP and presenilin genes, the investigators asked whether there are characteristic...  Read more


  Primary Papers: A unique gene expression signature discriminates familial Alzheimer's disease mutation carriers from their wild-type siblings.

Comment by:  Tommaso Russo, ARF Advisor
Submitted 7 October 2005  |  Permalink Posted 7 October 2005
  I recommend this paper

  Comment by:  Paul Coleman, ARF Advisor
Submitted 10 October 2005  |  Permalink Posted 10 October 2005

In this paper, Nagasaka et al. extracted total RNA from cultured, frozen, thawed, and recultured fibroblasts from 33 individuals from two families with mutations in APP (Swe or Arc) and one family with PSEN1H163Y. Wild-type siblings (N = 11) formed a comparison group to the 19 mutation carriers. (Samples from three individuals were discarded due to data criterion issues.) Affymetrix U133A chips were used to obtain array data. Allen’s cross validation (CV) criterion identified 200 individual genes [sic] whose intensities were different between mutation carriers and wild-type siblings. Further data analysis was by clustering and by multivariate Principal Components Analysis. These 200 transcripts were also used as input to a “powerful supervised machine learning method” which was able to “perfectly separate the samples into two classes: one with 19 mutation carriers and the other with the remaining 11 wild-type controls.” With the same probe sets they were unable to distinguish the carriers of the three different mutations from each other; neither were they able to distinguish...  Read more

  Comment by:  Andrei Yakovlev
Submitted 10 October 2005  |  Permalink Posted 10 October 2005

1. In this study, it is unclear how the results of clustering were used to attain the ends of this study, namely, the construction of a diagnostic signature.

2. One can only guess what kind of likelihood was used in the authors' procedure. It is highly plausible that the authors assumed a univariate normal distribution for the independent model and a bivariate normal for the dependent model.

3. The non-parametric likelihood is clearly infeasible with such small samples.

4. No rationale for parametric assumptions has been given. Furthermore, it is a well-known fact that normality of gene expression cannot be adopted as a general assumption for all genes. This is even more so in the bivariate case.

5. The multiple testing aspect of the preliminary selection of feature variables is completely ignored.

View all comments by Andrei Yakovlev


  Comment by:  Caroline Graff, Toru Kimura
Submitted 26 October 2005  |  Permalink Posted 26 October 2005

Reply to comment by Eric Blalock and Philip Landfield
Regarding our choice of statistics to select differentially expressed genes, we have shown the formula used to calculate the CV values, and explained the way of thinking for the CV criterion, in the supplemental data posted on the ARF website, linked below the news summary. A more qualitative explanation for our method is as follows. Each statistic has its own feature. Some kind of distribution can be distinguished more easily with one statistic. In our study, 200 genes were chosen based on their CV value; i.e., the 200 genes are the ones with the largest CV values. When we compared our 200 genes with the 200 genes selected by Welch’s t-test (commonly used parametric statistics) or by Mann and Whitney’s U test (widely used non-parametric statistics), about half of ours are included in the 200 genes selected with either one of these commonly used methods. However, we chose to continue our calculations based on the CV values, and as shown in the paper, this generated a robust predictive tool to distinguish the...  Read more

  Comment by:  Caroline Graff, Toru Kimura
Submitted 26 October 2005  |  Permalink Posted 26 October 2005

Reply to comment by Paul Coleman
We expect that most of the comments would be solved by reading our paper and supplemental data posted in the ARF website carefully. The supplemental data were submitted to PNAS together with our paper manuscript, but unfortunately, the PNAS editor decided not to post it on the PNAS website but asked us to provide it on request. The criticism is based on Coleman’s opinion that the method we used is an obscure, unreferenced method. However, we have already provided the reference and formula.

We understand that the number of samples we analyzed in this study is not large, but we believe it is enough to show the potential of the approach. We are currently planning to perform a validation study with a larger number of additional samples.

Dr. Coleman suggests that the findings are merely the result of chance. As we described in the paper, we performed bootstrap analysis to assess the random chances of observing this kind of difference in expression. Only 1 percent of the 10,000 replicates generated a greater expression difference...  Read more


  Comment by:  Caroline Graff, Toru Kimura
Submitted 26 October 2005  |  Permalink Posted 26 October 2005

Reply to comment by Martin Ingelsson and Lars Lannfelt
The first comment suggests that we have misunderstood the investigations made by Dr. Lannfelt on Aβ metabolism of the APParc mutation. “In the original publication (1) we describe low Aβ levels in media and transfected cells as measured by ELISA,” Ingelsson and Lannfelt write. In a recent paper (2) Stenh et al. find that “ELISA is not well suited for the measurement of Aβ, especially for aggregated peptides.” Still, paper (2) describes a reduction of Aβ by 30-70 percent in cells transfected with APPswearc compared with cells transfected with APPswe alone as measured by ELISA, and a 40 percent increase of Aβ levels in APPswearc compared with APPswe when measured by Western blot. We interpret this as an overall relative increased Aβ level in APPswearc by the method recommended by the authors, i.e., the denaturing Western blotting. Furthermore, Stenh et al. did the same measurements on in-vivo tissue, i.e., brain homogenates from 2-3-month-old transgenic (Tg) mice, and reported that the ELISA detects a 50 percent...  Read more

  Comment by:  Caroline Graff, Toru Kimura
Submitted 26 October 2005  |  Permalink Posted 26 October 2005

Reply to comment by Andrei Yakovlev
Though most of the comments will be answered by reading our supplemental data, we are going to provide brief answers to each comment as follows. “In this study, it is unclear how the results of clustering were used to attain the ends of this study, namely, the construction of a diagnostic signature.” As Dr. Yakovlev guesses, we did not intend to use the results of clustering for construction of a diagnostic signature, but we used the data just to demonstrate an overall expression difference of the selected 200 or 56 genes between FAD carriers and wild-type siblings.

2. “One can only guess what kind of likelihood was used in the authors' procedure. It is highly plausible that the authors assumed a univariate normal distribution for the independent model and a bivariate normal for the dependent model.” The commentator’s guess is partly correct: We assumed univariate and bivariate distributions, but we did not assume normality for either of them.

3. “The non-parametric likelihood is clearly infeasible with such small...  Read more


  Comment by:  Paul Coleman, ARF Advisor
Submitted 1 November 2005  |  Permalink Posted 1 November 2005

Rather than focus on details, I would like to emphasize the main point that the authors have analyzed the relative expression levels of a large number of genes using a (necessarily) small number of cases. The authors correctly saw the need for validation, but the method they used was based on the same data from the same subjects. There was no independent or external validation.

There may be several ways in which it would be possible to engender confidence in array data, especially data in which there is a large disparity between number of genes and number of cases.

1. One could use alternate methods applied to the same samples to validate results. Quantitative RT-PCR has been a method of choice, but other methods such as some quantification of in situ hybridization or immunohistochemistry may be informative. Since the correspondence between message expression and levels of corresponding protein is not always linear, protein-based methods may not validate transcript-based methods. On the other hand, it is generally the protein that does the work of the...  Read more

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