Therapeutic strategies designed for brain disorder diagnosis
from lncRNAs
It is thought that lncRNAs are involved in modulation of gene
expression, and their canonical functions start at a genetic locus.
Considering that cells are constantly subject to transcriptional
regulation that is affected by various lncRNAs studies of lncRNA
pathways in mammals have been hampered by a lack of informative
genetic systems.
In a significant advancement using a genome-wide association study (GWAS), a lncRNA-associated transcriptional regulation system has provided molecular insights into the biochemical steps involved in promotion of mRNA synthesis. As many lncRNAs have other functions in addition to transcriptional regulation, lncRNAs are tightly linked to many other biological processes. In addition to uncovering the molecular mechanisms that affect neural activity, advancements in genomic sequencing analysis have led to the discovery of various new biomarkers of brain disorders (BDs).
Finding novel therapeutic target, and cryptic variation for
human diseases through ultra-long read sequencing
In the past decade, it has become apparent that high-throughput
analysis has seen considerable progress in human genomics. In
addition, deep-learning based computational technologies with
genetic information have applicated to the comparison and prediction
of alternative splicing variants between health and disease. GWAS
have been revealed diversity of genomic events, there is an
increasing number of cryptic splice variants. With the advent of
genome sequencing technology, large-scale genomic data-based machine
learning tools have been used to predict and identify somatic
inactivation or negative dominant expression of target genes in
diseases. Therefore, deep-learning methods have helped to reveal
distinct roles that link somatic variations to the function of
proteins, especially those affected by sex, aging, and environmental
factors.
Disease-associated clinical approach through the prediction of
alternative splicing variants from human genomic sequence with
the deep learning-based SpliceAI