Seeking Genomic Answers to Autism and Rare, Idiopathic Diseases

rare-diseases-hannes-smarasonAs more is learned about autism spectrum disorders, more questions seem to arise. Yet with DNA sequencing, researchers are able to investigate the genetic roots of this and other diseases that are not yet well understood. It’s another instance in which genomics can shed light upon the workings of that most important organ system—the brain—which is so difficult to analyze.

Institutions around the world have sought to fill in pieces of the autism puzzle with links to other disorders and diagnostic insights, and these efforts have in recent years uncovered a number of possible genetic triggers and pathways. Yet the causes and manifestation of these diseases remain largely elusive.

University College Dublin’s Academic Centre on Rare Diseases (ACoRD) in Ireland, which is world renowned for its discoveries in rare genetics, is using NextCODE’s genome analysis technology to power large-scale, sequencing-based diagnostics programs and genome discovery efforts to study autism and rare pediatric disorders.

Recognizing the enormous potential of large-scale sequencing to mine whole genomes and accelerate discoveries in rare genetic diseases, ACoRD will focus on some of the most challenging areas to inform and provide new directions for research that may help lead to diagnosis, treatment, and even prevention for these disorders. In using NextCODE technology both for analyzing as well as storing large-scale genomic data, ACoRD is well positioned to become a focal point for multinational research and clinical diagnosis in conditions that require the gathering and collective analysis of genomes from many participants in many countries.

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Rare Disease Research Focuses Charcot-Marie-Tooth Syndrome, Guided by DNA Sequencing

rare diseases nextCODE hannes smarasonGenome sequencing is a relatively young technology and has been in active use in the research space for just over a decade. Yet already it has found very meaningful applications in clinical care, supporting the world’s leading researchers in discovering answers to some of the most rare and confounding diseases. The interface between the research and clinical realms is seeing some of the most exciting and fruitful applications of the power of sequencing. The ANZAC Research Institute in Sydney, Australia sits right at this nexus and is using the latest DNA sequencing and interpretation technology from NextCODE to mine genomes in search of genetic mutations that are associated with X-linked Charcot-Marie-Tooth syndrome (CMTX). CMTX is a rare, progressively debilitating neurodegenerative disorder that can be caused by mutations in many different places in the genome, including the X chromosome. At present there is no cure or drug treatment available. The team at the ANZAC Research Institute, recognized for their expertise in familial genetics, sought out the unique capabilities of the NextCODE analysis platform to investigate spaces outside the normal coding areas of genes. The aim is as pioneering as the technology: to identify not just just single SNPs but also structural variants that conventional approaches have not been able to search for systematically and link to CMTX. With dedicated research minds and the latest technology, the program aims to better understand this disease and potentially find novel targets for the development of therapies. This is one great example of the many opportunities to improve lives that are being generated by insights gained through the rapidly evolving field of genome sequencing.

Four Factors for Improving Genomic Data for Personalized Medicine

advancing the use of genomic data for personalized medicine

The pace of progress has been astounding with advances in the use of genomic information to provide faster, more accurate, and more in-depth information to enable personalized patient care.

We’ve come a long way in improving the way that a patient’s genome sequence data is analyzed and interpreted to realize the full potential of personalized medicine. Here are four factors helping to overcome barriers and achieve new milestones for using genomic data to provide faster, more accurate, and more in-depth information to guide clinicians in delivering personalized care for patients.

Factor #1: Fast database query of the genome

Problem: Relational database architectures make it possible to store large quantities of sequencing data, but querying whole genome data can be time-consuming and take days to weeks.

Solution: The GOR (Genomic Ordered Relations) database is able to query whole-genome sequences in real time. The reason is that GOR understands the genome in terms of chromosomes, its natural structure, rather than as a continuous string of sequence. That’s both intuitive and innovative. When searching for a variant, tools in the GOR architecture don’t have to scan each individual’s entire sequence; they retrieve the variant straight from its location. Annotation data – information on what diseases or conditions variants have been linked to – are also stored in the same way. The GOR database was pioneered a decade ago by deCODE genetics, one of the first organizations to manage truly large genetic datasets, and is now being used by NextCODE for clinical applications of genomic data.

Factor #2: Fast, reliable identification of disease-causing variants

Problem: Many sequencing analysis pipelines are only powered to process data in a compressed format called Variant Call Format (VCF) files. These comprise only a tiny fraction of the genome, and being working only with VCF files makes it difficult to correct common alignment and allele-calling errors. That can result in both false positive and negative results, or to missing the key causative variants altogether.

Solution: The foundation for improved sensitivity and specificity is the ability to use VCF data on top of the raw sequence data from which it was derived. NextCODE’s pipeline and clinical interfaces, powered by GOR, give users the ability to go back to and visualize raw sequence data at a click. This approach enables genomic analysis and interpretation by seeking out disease-causing genetic variants, either in specific patients, or for research studies in a clinical setting.

Factor #3: Patient genomic information at the fingertips of the clinician

Problem: Many of today’s genomic interpretation tools are too complex and difficult to use by clinicians who may have minimal experience with genetic informatics tools.

Solution: All of the complex informatics required by a clinical analysis tool should disappear at the fingertips of a clinician. It starts by having a robust foundation to the informatics platform, and using the GOR database architecture enables rapid cycling between personal sequence data and broad clinical knowledge. The result is the Clinical Sequence Analyzer (CSA) in which clinicians can simply type in a patient’s symptoms, and CSA will search the patient’s whole genome for variants that may be relevant.

Factor #4: Applying the full power of whole-genome sequencing to cancer tumor analysis

Problem: Many of today’s approaches to the analysis of cancer genomes only look at the immediate next step for a course of treatment, an important capability but only part of a holistic view of a the genetic profile of a patient’s cancer and what can be done to fight it.

Solution: The Tumor Mutation Analyzer makes a more holistic approach possible, analyzing a whole exome or whole genome sequence from a patient’s own genome and from tumor cells. Comparing the two it is possible to isolate the variants likely to be cancer drivers. The distinguishing feature of TMA is the depth of the data it stores and the unprecedented level of detail it provides to more accurately identify variations. This level of detail is especially important in cancer genetics, where the chances of finding previously unknown variants are very high, and even if a mutation is successfully targeted with a course of treatment, another potential driver is often waiting in the wings.

The pace of progress has been astounding with advances in the use of genomic information for patient care. How will the path continue in the future? Stay tuned.