Author
Listed:
- Leila Pirhaji
(Massachusetts Institute of Technology)
- Pamela Milani
(Massachusetts Institute of Technology)
- Simona Dalin
(Massachusetts Institute of Technology)
- Brook T. Wassie
(Massachusetts Institute of Technology)
- Denise E. Dunn
(Duke University Medical Center)
- Robert J. Fenster
(Picower Institute for Learning and Memory
The Rockefeller University
McLean Hospital)
- Julian Avila-Pacheco
(Broad Institute)
- Paul Greengard
(The Rockefeller University)
- Clary B. Clish
(Broad Institute)
- Myriam Heiman
(Picower Institute for Learning and Memory
The Rockefeller University
MIT Department of Brain and Cognitive Sciences)
- Donald C. Lo
(Duke University Medical Center)
- Ernest Fraenkel
(Massachusetts Institute of Technology
Broad Institute)
Abstract
The immense and growing repositories of transcriptional data may contain critical insights for developing new therapies. Current approaches to mining these data largely rely on binary classifications of disease vs. control, and are not able to incorporate measures of disease severity. We report an analytical approach to integrate ordinal clinical information with transcriptomics. We apply this method to public data for a large cohort of Huntington’s disease patients and controls, identifying and prioritizing phenotype-associated genes. We verify the role of a high-ranked gene in dysregulation of sphingolipid metabolism in the disease and demonstrate that inhibiting the enzyme, sphingosine-1-phosphate lyase 1 (SPL), has neuroprotective effects in Huntington’s disease models. Finally, we show that one consequence of inhibiting SPL is intracellular inhibition of histone deacetylases, thus linking our observations in sphingolipid metabolism to a well-characterized Huntington’s disease pathway. Our approach is easily applied to any data with ordinal clinical measurements, and may deepen our understanding of disease processes.
Suggested Citation
Leila Pirhaji & Pamela Milani & Simona Dalin & Brook T. Wassie & Denise E. Dunn & Robert J. Fenster & Julian Avila-Pacheco & Paul Greengard & Clary B. Clish & Myriam Heiman & Donald C. Lo & Ernest Fra, 2017.
"Identifying therapeutic targets by combining transcriptional data with ordinal clinical measurements,"
Nature Communications, Nature, vol. 8(1), pages 1-13, December.
Handle:
RePEc:nat:natcom:v:8:y:2017:i:1:d:10.1038_s41467-017-00353-6
DOI: 10.1038/s41467-017-00353-6
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