ME en de Gezondheidsraad Jan van Roijen - 15.03.2005 03:09
Zeer Geachte Volksvertegenwoordiger, Binnenkort staat U voor de keus Uw goedkeuring te verlenen aan een misleidende advies van de Commissie Chronische Vermoeidheids-syndroom van de Gezondheidsraad. De commissie wil U doen geloven, dat er geen lichamelijke afwijkingen zijn te vinden, en dat de ziekte in stand wordt gehouden door verkeerde gedachten en verkeerd gedrag: *predisponerende-, uitlokkende- en instandhoudende factoren*. ~~~~~~~~~~~~~~~~~~~~~~~~~~~~ Send an Email for free membership ~:~:~:~:~:~:~:~:~:~:~:~:~:~:~:~:~:~:~:~ >>>> Help ME Circle Public Health Genomics at CDC ~~~~~~~~~~~~~~~~~~~~~~~~ Accomplishments & Priorities 2004 (CDC/Coordinating Center for Infectious Diseases) (includes a lot of references to CFS) http://www.cdc.gov/genomics/activities/ogdp/2004/cocid.htm or http://www.cdc.gov/genomics/activities/ogdp/2004/print/CoCID_2004.pdf CoCID Genomics Working Group: In 1996, CDC's National Center for Infectious Disease (NCID) established the Genetic Working Group (GWG) with the purpose of addressing issues concerning the role of genetics in infectious diseases and promoting collaboration between investigators . This working group was further expanded in 2003 to coordinate the genomic research interests of NCID, National Immunization Program (NIP), and National Center for HIV, STD, TB Prevention (NCHSTP) and the Office of Genomics and Disease Prevention (OGDP). The Coordinating Center for Infectious Diseases (CoCID, created May 2004) includes NCID, NIP and NCHSTP. The overall mission of this working group includes: Identifying and conducting investigations of host genes associated with infectious diseases and vaccine safety that have public health relevance and to which interventions and preventions can be targeted; Building laboratory and epidemiological capacity for genomics; Training public health professionals in laboratory and epidemiological aspects of host genomics and infectious diseases; Communicating information about genomics and infectious diseases to the public through meetings, seminars, web sites, and publications. Seven high priority research areas have been identified for host genetics in CoCID. These reflect areas where CoCID and its partners are making or can make a significant impact in research that leads to new control and prevention methods or development of control and prevention strategies. *) Infectious Diseases: resistance and susceptibility to and severity of infectious diseases. *) Chronic disease etiology: clarifying host-pathogen interactions in the causation and pathophysiology of chronic diseases such as **chronic fatigue syndrome (CFS)**, arthritis, cancer, and cardiovascular diseases. *) Vaccines: response, failure, adverse events; using host genetic information for vaccine design. *) Antimicrobial and adjunctive therapy response: failure, adverse events and development of new therapies. *) Prevention: identification of genetically at-risk populations for infectious diseases; targeting of prevention strategies to these populations. *) Development of rapid molecular tools based on DNA, mRNA and protein expression patterns that can be used in surveillance, studies monitoring response to therapy, and basic-research. *) Drug metabolism: defining pharmacogenetic factors associated with response to drug therapy, drug interactions, and disease outcome in tuberculosis and other infectious diseases. ```````````````````` Selected extracts: Infectious Diseases: Resistance and Susceptibility to Infection and Disease, and Severity of Infectious Diseases A better understanding of the role of various genetic factors in the outcome of infectious diseases will lead to development of novel therapies and better prevention efforts. Recent progress in high throughput genotyping and decoding of the human genome has led to new optimism in identifying such genetic risk factors. The availability of well-characterized large cohorts from different populations will be critical in identifying such risk factors. CDC has access to epidemiologically well-characterized different infectious disease cohorts. These cohorts are unique resources in identifying such genetic risk factors. Several investigations at CDC that have integrated genomics research are highlighted below. .. The chronic fatigue syndrome (CFS) program to integrate genomics into chronic infectious diseases and illness (CDC/NCID/DVRD/Viral Exanthems and Herpes Virus Branch (VEHB)): The CFS Molecular Epidemiology Program was established in 1997. The CFS Program was designed to apply rapidly evolving cutting-edge genomics, proteomics, and bioinformatics technology to epidemiologic studies whose objective is CFS prevention and control. Its aim is to characterize CFS at a systems biology level by integrating surveillance, case definition, and clinical studies with genomics, proteomics and bioinformatics. The effort includes data from populationbased and clinical studies. Examples of each of these are described below. ***) Integration of gene expression, clinical, and epidemiological data to characterize CFS *) Integrated the peripheral blood gene expression results with epidemiological and clinical data to determine whether CFS is a single or heterogeneous illness *) Using statistical tests and cluster analysis to distinguish CFS subjects and identify differentially expressed genes *) The latest results suggest that CFS is a heterogeneous illness. The differentially expressed genes imply fundamental metabolic perturbations that will be further investigated and illustrates the power of microarray technology for furthering our understanding CFS37 ***) Host gene expression profiles that precipitate post-infective and chronic fatigue syndromes in response to common viral and rickettsial infections *) An example of a CFS gene expression study that is based on model systems *) Studying host gene expression profiles following acute infection with Epstein Barr Virus (EBV), Coxiella burnetti (the causative agent of Q fever) and Ross River Virus (RRV) in collaboration with the University of New South Wales in Sydney, Australia. Some observations from this longitudinal study include: a) severity of the acute illness is a powerful predictor of the likelihood of development of post-infective fatigue syndrome (PIFS) at three and six months, b) although the pattern and severity of symptoms in the acute illness were correlated with production of pro-inflammatory cytokines, these relationships did not persist through to the PIFS phase of the illness, c) identified several novel gene expression correlates of individual symptoms using microarray gene expression profiling ***) Exercise responsive genes measured in peripheral blood of women with chronic fatigue syndrome and matched control subjects *) Measuring peripheral blood gene expression profiles of women with CFS and matched controls before and after exercise challenge to search for markers of CFS-associated post-exertional fatigue, differential expression of exercise-responsive genes classified in chromatin and nucleosome assembly, cytoplasmic vesicles, membrane transport, and G protein-coupled receptor ontologies between CFS patients and controls ***) Integration of gene expression and clinical data from CFS and nonfatigued subjects enrolled in a two day clinical evaluation in Wichita, Kansas *) Following a well-characterized cohort of people with CFS over a fouryear period to determine if unique gene expression profiles are associated with symptom occurrence or persistence of illness. Evaluated each subject and the corresponding multiple samples using a 40,000-gene microarray. Data analysis is in progress. This will also serve as the dataset for C3, the CFS Computational Challenge, (described in section F 'Major Conferences') ***) Development of a text mining tool that provides gene information in specific disease and biological context *) Pioneered a number of genomic and bioinformatics technologies at CDC's VEHB (see CDC MAdB in Infrastructure section below) *) Simultaneous assessment of tens of thousands of genes using highthroughput technology, such as gene expression profiling using microarrays *) Key to getting specific digital information associated with genes is mining text in the appropriate biological, clinical and epidemiological context. Development of a text-mining tool that will provide biologic and disease relevant information for genes identified as important by microarray gene expression profiling `````````````` Major conferences *) Integrating Disparate Data to Simulate Lymphocyte Function (CDC/NCID/DVRD): The CDC CFS Research Program sponsored a workshop, Integrating Disparate Data to Simulate Lymphocyte Function, at the Banbury Center, Cold Spring Harbor Laboratory, on September 19-22, 2004. The objective was to discuss current knowledge concerning lymphocyte function and to identify means by which computational modeling could be used to understand how this complex biologic system functions in persons with CFS. The workshop brought together experts in immunology, molecular biology, computer sciences, and molecular modeling. Specific aims were to 1) define the types of laboratory and clinical data involved in the current concept of lymphocyte function in normal and abnormal states; 2) present approaches for integrating genomic, proteomic, clinical, and epidemiologic data in such models; and 3) define the level of abstraction and types of assumptions necessary to create the next generation of molecular models. *) C3: The CFS Computational Challenge: The CFS Research Program is hosting a CFS Computational Challenge (C3). The results of this challenge will help elucidate the pathophysiology of CFS, identify markers of CFS (or subsets of CFS) that may be useful for effective diagnosis and treatment of CFS, and formulate hypotheses to test in future studies. The CFS Research Program has conducted a 2-day in-patient clinical study of 227 persons identified with CFS, other unexplained chronically fatiguing illnesses, and randomly selected non-fatigued controls from the general population of Wichita, Kansas. Subjects were carefully evaluated medically and psychiatrically. Investigators obtained measurements of their neuroendocrine status, cytokine profiles, sleep, cognitive function, and evaluated their lifetime stress history and coping mechanisms. To classify parameters of CFS, they evaluated disability, fatigue characteristics, and the impact of cumulative symptoms. Finally they measured expression levels of 40,000 genes in peripheral blood cells. The challenge will engage computer scientists, bioinformaticians, statisticians, biologists and clinicians to mine biologically and clinically meaningful information relevant to diagnosis and therapeutic intervention of CFS from the Wichita Clinical Study data set. Participants will be organized into teams. The challenge will begin with a 1-day workshop where an introduction to CFS will be given along with a description of the dataset for C3. Each teams results will be presented as a paper and judged for biological and mathematical soundness by an expert panel. All participants will present their results at the Banbury Center, Cold Spring Harbor Laboratory, September 18-21, 2005. ~~~~~~~~~~~~~~~~ E-Mail: j,van,roijen@chello.nl |