Diagnosis of relapsing remitting multiple sclerosis (MS) rests on clinical symptoms and examinations as outlined in the revised McDonald?s criteria supported by appropriate magnetic resonance imaging findings and other laboratory tests. The need for early diagnosis is clearly emphasized in a position paper produced in 2015 by MS Brain Health organization called ?Brain health, Time matters in multiple sclerosis? which is endorsed by the major organizations and foundations that advocate for MS research, providers and patients including Accelerated Cure Project (ACP), Americans Committed for Treatment and Research in Multiple Sclerosis (ACTRIMS), The Consortium of Multiple Sclerosis Centers (CMSC), European Brain Council (EBC), European Committee for Treatment and Research in Multiple Sclerosis (ECTRIMS), European Multiple Sclerosis Platform (EMSP), International Society of Neuroimmunology (ISNI), International Organization of Multiple Sclerosis Nurses (IOMSN), National Multiple Sclerosis Society (NMSS), and Multiple Sclerosis Trust (MS). To cite from their executive summary page: (1) ?A therapeutic strategy that offers the best chance of preserving brain and spinal cord tissue early in the disease course needs to be widely accepted ? and urgently adopted.? (2) ?Significant delays often occur before a person with symptoms suggestive of MS sees a neurologist for diagnosis and treatment.? (3) ?Early intervention is vital.? (bold type face is theirs, not ours). The question of whether or not disease classifiers capable of providing clinically useful information could be built based upon disease-specific expression levels of mRNAs in whole blood has been a subject of research for several years. Long non-coding RNAs (lncRNA) are recently discovered regulatory RNA molecules that do not code for proteins but influence a vast array of biological processes. It is also thought that lncRNAs drive biologic complexity observed in vertebrates that may also be reflected by the greater array of complex idiopathic diseases that humans develop. As such, our data obtained in the phase 1 portion of this work, support the notion that disease-associated lncRNAs exhibit far greater differences in expression than disease-associated mRNAs. In this application, we propose to explore the hypothesis that lncRNAs are better biomarkers of human disease than mRNAs. Here, we will focus on MS as a disease category and have identified and validated MS associated differentially expressed lncRNAs. Study of lncRNAs in human autoimmune disease is in its infancy and exploration of lncRNAs as biomarkers of autoimmune disease has not been previously addressed. We propose to determine expression levels of target lncRNAs in blood obtained from larger cohorts of subjects that include 1) subjects with RRMS, 2) healthy controls, 3) neurologic disease controls including both inflammatory and non- inflammatory disorders, and 4) peripheral autoimmune disease controls obtained from various sites in the U.S. and Europe to establish a wide geographic distribution and to identify optimum machine learning classifiers to distinguish the MS cohorts from healthy and disease control cohorts with greatest overall accuracy.

Public Health Relevance

Diagnosis of relapsing remitting multiple sclerosis (MS) is a subjective diagnosis based largely on clinical symptoms and MRI findings disseminated in time and space. Biomarkers to aid and accelerate this diagnosis is an area of active investigation. Long non-coding RNAs (lncRNAs) are newly discovered classes of RNAs with an array of regulatory functions. Our hypothesis to test, and supported by our phase 1 studies, is that classifiers can be built based upon differential expression of lncRNAs in blood. These classifiers will possess greater accuracy to identify presence of MS in a subject earlier than is currently available leading to preservation of ?brain health?.

Agency
National Institute of Health (NIH)
Institute
National Institute of Allergy and Infectious Diseases (NIAID)
Type
Small Business Innovation Research Grants (SBIR) - Phase II (R44)
Project #
2R44AI124766-02A1
Application #
9405679
Study Section
Special Emphasis Panel (ZRG1-IMM-R (10)B)
Program Officer
Minnicozzi, Michael
Project Start
2016-03-01
Project End
2019-05-31
Budget Start
2017-06-06
Budget End
2018-05-31
Support Year
2
Fiscal Year
2017
Total Cost
$504,933
Indirect Cost
Name
Iquity Labs, Inc
Department
Type
Domestic for-Profits
DUNS #
079745788
City
Nashville
State
TN
Country
United States
Zip Code
37203