| Literature DB >> 35156021 |
Tamir Biezuner1, Yardena Brilon1, Asaf Ben Arye2, Barak Oron1, Aditee Kadam1, Adi Danin1, Nili Furer1, Mark D Minden3, Dennis Dong Hwan Kim3, Shiran Shapira4, Nadir Arber4, John Dick5, Paaladinesh Thavendiranathan6, Yoni Moskovitz1, Nathali Kaushansky1, Noa Chapal-Ilani1, Liran I Shlush1.
Abstract
Deep targeted sequencing technologies are still not widely used in clinical practice due to the complexity of the methods and their cost. The Molecular Inversion Probes (MIP) technology is cost effective and scalable in the number of targets, however, suffers from low overall performance especially in GC rich regions. In order to improve the MIP performance, we sequenced a large cohort of healthy individuals (n = 4417), with a panel of 616 MIPs, at high depth in duplicates. To improve the previous state-of-the-art statistical model for low variant allele frequency, we selected 4635 potentially positive variants and validated them using amplicon sequencing. Using machine learning prediction tools, we significantly improved precision of 10-56.25% (P < 0.0004) to detect variants with VAF > 0.005. We further developed biochemically modified MIP protocol and improved its turn-around-time to ∼4 h. Our new biochemistry significantly improved uniformity, GC-Rich regions coverage, and enabled 95% on target reads in a large MIP panel of 8349 genomic targets. Overall, we demonstrate an enhancement of the MIP targeted sequencing approach in both detection of low frequency variants and in other key parameters, paving its way to become an ultrafast cost-effective research and clinical diagnostic tool.Entities:
Year: 2022 PMID: 35156021 PMCID: PMC8826764 DOI: 10.1093/nargab/lqab125
Source DB: PubMed Journal: NAR Genom Bioinform ISSN: 2631-9268