Lana Mucalo Katunaric, Shuang Jia, Ashima Singh, Mark F Roethle, Julie A Panepinto, David Brousseau, Martin Hessner, Amanda M Brandow
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引用次数: 0
Abstract
Pain is the most common complication of sickle cell disease (SCD). The underlying biology of SCD pain is not well understood, which is a barrier to novel, effective analgesic and preventative therapies. A wide variability in the phenotypic expression of pain exists among individuals with SCD, despite the inheritance of a similar defective hemoglobin gene. This interindividual pain variability further complicates the ability to understand the biology and effectively treat pain. We sought to discover a biological signature comprised of differentially expressed genes unique to SCD that could differentiate between individuals with varied pain frequency. We conducted plasma-induced transcription analysis from 149 individuals with SCD and 60 Black individuals without SCD from multiple sites. We discovered 3028 differentially expressed genes that underwent Weighted Gene Co-Expression Network Analysis (WGCNA) to distinguish gene modules significantly associated with pain frequency. We identified 524 genes, significantly associated with pain frequency (≥|0.3| and p<0.05), that were further analyzed using The Database for Annotation, Visualization and Integrated Discovery (DAVID) tool to delineate the biological pathways associated with these genes. The highest ranked gene ontology process from DAVID was inflammatory response (p=1.67E-12) and many related pathways were enriched (e.g., response to lipopolysaccharide, chemokine and cytokine signaling). The top 10 hub genes identified within our biologic signature were TNF, CCL2, ITGAM, ITGAX, ICAM1, CCR5, CXCL2, IFNG, CCR1, CXCL3. Future work should focus on further validating this signature and investigating the potential targets uncovered for their mechanistic and potentially therapeutic role in SCD pain.
期刊介绍:
Blood Advances, a semimonthly medical journal published by the American Society of Hematology, marks the first addition to the Blood family in 70 years. This peer-reviewed, online-only, open-access journal was launched under the leadership of founding editor-in-chief Robert Negrin, MD, from Stanford University Medical Center in Stanford, CA, with its inaugural issue released on November 29, 2016.
Blood Advances serves as an international platform for original articles detailing basic laboratory, translational, and clinical investigations in hematology. The journal comprehensively covers all aspects of hematology, including disorders of leukocytes (both benign and malignant), erythrocytes, platelets, hemostatic mechanisms, vascular biology, immunology, and hematologic oncology. Each article undergoes a rigorous peer-review process, with selection based on the originality of the findings, the high quality of the work presented, and the clarity of the presentation.