MutationForecaster® (mutationforecaster.com) is Cytognomix’s patented web-portal for analysis of all types of mutations – coding and non-coding- including interpretation, comparison and management of genetic variant data. It’s a fully automated genome interpretation solution for research, translational and clinical labs.
Run our world-leading genome interpretation software on your exome, gene panel, or complete genome (Shannon transcription factor and splicing pipelines, ASSEDA, Veridical) with the Cytognomix User Variation Database and Variant Effect Predictor. With our integrated suite of software products, analyze coding, non-coding, and copy number variants, and compare new results with existing or your own database. Select predicted mutations by phenotype using articles with CytoVisualization Analytics. With Workflows, automatically perform end-to-end analysis with all of our software products. Download an 1 page overview of MutationForecaster® (link)
Subscribe and analyze your own data via the cloud or… Don’t want to run your own analyses on MutationForecaster®? Let us do it for you with our Bespoke Analysis Service.
Experience our suite of genome interpretation products through a free trial of MutationForecaster®. Once you register, we provide datasets from our peer-reviewed publications to evaluate these software tools.
Automated radiation biodosimetry
Ionizing radiation produces characteristic chromosome changes. The altered chromosomes are known as dicentric chromosomes [DCs]). DC biodosimetry is approved by the IAEA for occupational radiation exposure, radiation emergencies, or monitoring long term exposures. The DC assay can also monitor effects of interventional radiation therapies.
Cytognomix has developed a novel approach to find DCs (TBME). The Automated Dicentric Chromosome Identifier and Dose Estimator (ADCI) software works on multiple platforms and uses images produced by any of the existing automated metaphase capture systems found in most cytogenetic laboratories. ADCI is now available for for trial or purchase (link). Or contact us for details (pricing).
ADCI* uses machine learning to distinguish monocentric and dicentric chromosomes (Try the Dicentric Chromosome Identifier web app). With novel image segmentation, ADCI has become a fully functional cytogenetic biodosimetry system. ADCI takes images from metaphase scanning systems, selects high quality cells, identifies dicentric chromosomes, builds biodosimetry calibration curves, and estimates exposures. ADCI fulfills the criteria established by the IAEA for accurate triage biodosimetry of a sample in less than an hour. The accuracy is comparable to an experienced cytogeneticist. Check out our online user manual: wiki.
We find and validate mutations and gene signatures that others cannot with advanced, patented genomic bioinformatic technologies. Cytognomix continues our long track record of creating technologies for genomic medicine. We anticipate and implement the needs of the molecular medicine and genomics communities.
Predict chemotherapy outcomes
Pharmacogenomic responses to chemotherapy drugs can be predicted by supervised machine learning of expression and copy number of relevant gene combinations. Since 2015, CytoGnomix has used biochemical evidence to derive gene signatures from changes in gene expression in cell lines, which can subsequently be examined in patients that have been treated with the same drugs. We have derived signatures for 30 different commonly used drugs. Try out out our online predictor: https://chemotherapy.cytognomix.com.
Quantifying responses to ionizing radiation with gene expression signatures.
Gene signatures derived by machine learning have low error rates in externally validated, independent radiation exposed data. They exhibit high specificity and granularity for dose estimation in humans and mice. These signatures can be designed to avoid the effects of confounding, comorbidities which can reduce specificity for detecting radiation exposures. See: https://f1000research.com/articles/7-233/v2
Single copy genomic technologies
- Customized genomic microarrays
- Ultrahigh resolution FISH probes (article):
- Microarray-based comparative genomic hybridization (aCGH) can use SC technology to increase reproducibility and reduce cost per sample.
February 6, 2016. Article accepted for publication on cytogenetic image analysis using machine learning
Yanxin Li1, Joan H. Knoll2,3, Ruth Wilkins4, Farrah N. Flegal5, and Peter K. Rogan1,3* Automated Discrimination of Dicentric and Monocentric Chromosomes by Machine Learning-based Image Processing. Departments of 1Biochemistry, and 2Pathology and Laboratory Medicine, Schulich School of Medicine and Dentistry, University of Western Ontario, 3Cytognomix Inc., 4Health Canada, and 5Canadian Nuclear Laboratories. in the journal Microscopy Research […]
Jan. 29, 2016. Updates to Cytognomix User Variation Database
We have made some major improvements to the Cytognomix User Variation Database recently. These are described in this recent video by Shannon Brown, a software developer at our company: CUVD Video
January 17, 2016. MutationForecaster Workflow Updates.
New in MutationForecaster®: Improved, more comprehensive Workflows! MutationForecaster now generates comprehensive genome interpretation on-the-fly. The results from all of our gene variant interpretation modules (Shannon Splicing Mutation Pipeline, ASSEDA, VEP, and Veridical) can now be automatically processed by CytoVA to find mutated genes in the genome related to a particular phenotypes based on published literature. […]
January 16, 2016. Presentation at University of Western Ontario
December 23, 2015. “Filtering-in” gene variants for peer-reviewed evidence
Does your genome interpretation software do this? The CytoVA module of MutationForecaster® can!
December 21, 2015. New capability in Cytognomix User Variation Database (CUVD)
Every gene variant imported into CUVD from our other genome interpretation modules can be searched in several external databases seamlessly. Currently, all LOVD locus specific databases, dbSNP, ClinVar, and the Exome Variant Server are searched together and variants found in any of these resources are added to CUVD and hyperlinked when the search is completed. Until […]
December 17, 2015. Final version of machine learning-based chemotherapy response article is online
The final version of our paper: Dorman S, Baranova K, Knoll J, Urquhart, B, Marciani G, Carcangiu M-L, and Rogan PK. Genomic signatures for Paclitaxel and Gemcitabine resistance in breast cancer derived by machine learning. Mol. Oncology 10: 85-100, 2015. doi: 10.1016/j.molonc.2015.07.006 is available in print and here: Dorman etal Mol. Onc.10:85-100, 2016
December 14, 2015. Try MutationForecaster® for two weeks: Free of Charge!
We are excited to be able to offer our customers and registrants this opportunity to experience our integrated suite of genome interpretation products. For the first time, Cytognomix is offering a free trial of our MutationForecaster® genome interpretation suite to all registrants of the product. No subscription is required to analyze data with any of our software tools. […]