Existing technology, known as
«NGS technologies have vastly improved our understanding of the human genome and its variation in diseases such as cancer," said Ken Chen, Ph. D., assistant professor of Bioinformatics and Computational Biology and
This led to development of newer technology, called single cell sequencing (SCS), that has had a major impact in many areas of biology, including cancer research, neurobiology, microbiology, and immunology, and has greatly improved understanding of certain tumor characteristics in cancer. Monovar improves further on the new SCS’s computational tools which scientists found «lacking» by more accurately detecting slight alterations in DNA makeup known as single nucleotide variants (SNVs).
«To improve the SNVs in SCS datasets, we developed Monovar," said Nicholas Navin, Ph. D., assistant professor of Genetics and
Chen and Navin state that Monovar will have significant translational applications in cancer diagnosis and treatment, personalized medicine and
This refinement of an existing technology could very well boost studies in many biomedical fields other than just cancer. The researchers believe it is a major advance for assessing SNVs in SCS datasets — crucial information for a variety of diseases.
«With the recent innovations in SCS methods to analyze thousands of single cells in parallel with RNA analysis which will soon be extended to DNA analysis, the need for accurate DNA variant detection will continue to grow," said Chen. «Monovar is capable of analyzing
Other research team members included Yong Wang, Ph. D., Genetics, and Hamim Zafar, Ph. D. and Luay Nakhleh, Ph. D., Rice University, Houston.
The study was funded by an MD Anderson Moon Shot Knowledge Gap Award, the National Institutes of Health (CA016672 and R21CA174397), the National Cancer Institute (RO1 CA172652 and