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Home › Dataset Library › Prediction of acute multiple sclerosis relapses by transcription levels of peripheral blood cells

Dataset: Prediction of acute multiple sclerosis relapses by transcription levels of peripheral blood cells

Background: The ability to predict the spatial frequency of relapses in multiple sclerosis (MS) would enable treating physicians to...

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Background: The ability to predict the spatial frequency of relapses in multiple sclerosis (MS) would enable treating physicians to decide when to intervene more aggressively and to plan clinical trials more accurately. Methods: In the current study our objective was to determine if subsets of genes can predict the time to the next acute relapse in patients with MS. Data-mining and predictive modeling tools were utilized to analyze a gene-expression dataset of 94 non-treated patients; 62 patients with definite MS and 32 patients with clinically isolated syndrome (CIS). The dataset included the expression levels of 10,594 genes and annotated sequences corresponding to 22,215 gene-transcripts that appear in the microarray. Results: We designed a two stage predictor. The first stage predictor was based on the expression level of 10 genes, and predicted the time to next relapse with a resolution of 500 days (error rate 0.079, p< 0.001). If the predicted relapse was to occur in less than 500 days, a second stage predictor based on an additional different set of 9 genes was used, resulting in a prediction with a resolution of 50 days as to the timing of the next relapse. The error rate of this predictor was 2.3 fold lower than the error rate of random predictions (error rate = 0.35, p<0.001). The predictors were further evaluated and found effective not only in untreated patients but were also valid for MS patients which subsequently received immunomodulatory treatments after the initial testing (the error rate of the first level predictor was < 0.18 with p<0.001 for all the patient groups). Conclusions: We conclude that gene expression analysis is a valuable tool that can be used in clinical practice to predict future MS disease activity. Similar approach can be also useful for dealing with other autoimmune diseases that characterized by relapsing-remitting nature Keywords: Disease prediction Data-mining and predictive modeling tools were utilized to analyze a gene-expression dataset of 94 non-treated patients; 62 patients with definite MS and 32 patients with clinically isolated syndrome (CIS). The dataset included the expression levels of 10,594 genes and annotated sequences corresponding to 22,215 gene-transcripts that appear in the microarray. We designed a two stage predictor. The first stage predictor was based on the expression level of 10 genes, and predicted the time to next relapse with a resolution of 500 days. If the predicted relapse was to occur in less than 500 days, a second stage predictor based on an additional different set of 9 genes was used, resulting in a prediction with a resolution of 50 days as to the timing of the next relapse. The predictors were further evaluated and found effective not only in untreated patients but were also valid for MS patients which subsequently received immunomodulatory treatments after the initial testing.

Species:
human

Samples:
29

Source:
E-GEOD-15245

PubMed:
19624813

Updated:
Jan.17, 2015

Registered:
Jan.17, 2015


Factors: (via ArrayExpress)
Sample DISEASE STATE AGE TIME TO NEXT RELAPSEDAYS SEX
GSM380719 1 Definite MS 43 NoRelapse female
GSM380722 1 CIS 50 NoRelapse female
GSM380723 1 CIS 26 NoRelapse female
GSM380726 1 CIS 29 NoRelapse female
GSM380727 1 Definite MS 32 NoRelapse female
GSM380728 1 CIS 26 NoRelapse male
GSM380729 1 CIS 36 NoRelapse female
GSM380730 1 CIS 39 NoRelapse male
GSM380731 1 CIS 24 NoRelapse male
GSM380735 1 CIS 27 NoRelapse female
GSM380736 1 CIS 35 NoRelapse male
GSM380737 1 CIS 41 NoRelapse female
GSM380742 1 CIS 54 NoRelapse female
GSM380744 1 CIS 25 NoRelapse male
GSM380758 1 CIS 52 141 female
GSM380761 1 Definite MS 41 179 female
GSM380763 1 Definite MS 39 183 male
GSM380764 1 CIS 24 214 male
GSM380768 1 Definite MS 46 236 female
GSM380770 1 Definite MS 29 268 male
GSM380772 1 CIS 42 314 female
GSM380775 1 Definite MS 31 356 male
GSM380777 1 Definite MS 26 360 female
GSM380780 1 Definite MS 19 426 male
GSM380784 1 Definite MS 41 470 female
GSM380786 1 CIS 22 545 male
GSM380790 1 CIS 41 656 male
GSM380794 1 Definite MS 37 721 male
GSM380807 1 CIS 33 1258 male

Tags

  • disease
  • multiple sclerosis
  • syndrome

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