r37980778c78--416a8dd0ffc96808fa7f75795832f486

The biological pathways involved in amyotrophic lateral sclerosis (ALS) remain elusive and diagnostic decision-making can be challenging. Gene expression studies are valuable in overcoming such challenges since they can shed light on differentially regulated pathways and may ultimately identify valuable biomarkers. This two-stage transcriptome-wide study, including 397 ALS patients and 645 control subjects, identified 2,943 differentially expressed transcripts predominantly involved in RNA binding and intracellular transport. When batch effects between the two stages were overcome, three different models (support vector machines, nearest shrunken centroids, and LASSO) discriminated ALS patients from control subjects in the validation stage with high accuracy. The models’ accuracy reduced considerably when discriminating ALS from diseases that mimic ALS clinically (N = 75), nor could it predict survival. We here show that whole blood transcriptome profiles are able to reveal biological processes involved in ALS. Also, this study shows that using these profiles to differentiate between ALS and mimic syndromes will be challenging, even when taking batch effects in transcriptome data into account.

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PID https://www.doi.org/10.1371/journal.pone.0198874
URL http://dx.doi.org/10.1371/journal.pone.0198874
URL https://figshare.com/articles/Whole_blood_transcriptome_analysis_in_amyotrophic_lateral_sclerosis_A_biomarker_study/6669647
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Collected From figshare
Hosted By figshare
Publication Date 2018-06-25
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Language UNKNOWN
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Source https://science-innovation-policy.openaire.eu/search/dataset?datasetId=r37980778c78::416a8dd0ffc96808fa7f75795832f486
Author jsonws_user
Last Updated 4 January 2021, 14:28 (CET)
Created 4 January 2021, 14:28 (CET)