Genetic mutations leading to the development of various diseases, such as cancer, diabetes, and neurodegenerative disorders, can be attributed to multiple mechanisms and exposure to diverse environments. These disorders further increase gene mutation rates and affect the activity of translated proteins, both phenomena associated with cellular responses. Therefore, maintaining the integrity of genetic and epigenetic information is critical for disease suppression and prevention. With the advent of genome sequencing technologies, large-scale genomic data-based machine learning tools, including deep learning, have been used to predict and identify somatic inactivation or negative dominant expression of target genes in various diseases. Although deep learning studies have recently been highlighted for their ability to distinguish between the genetic information of diseases, conventional wisdom is also necessary to explain the correlation between genotype and phenotype. Herein, we summarize the current understanding of phosphoinositide-specific phospholipase C isozymes (PLCs) and an overview of their associations with genetic variation, as well as their emerging roles in several diseases. We also predicted and discussed new findings of cryptic PLC splice variants by deep learning and the clinical implications of the PLC genetic variations predicted using these tools.

Prediction of genetic alteration of phospholipase C isozymes in brain disorders: Studies with deep learning / Joo J.-Y.; Lim K.-H.; Yang S.; Kim S.-H.; Cocco L.; Suh P.-G.. - In: ADVANCES IN BIOLOGICAL REGULATION. - ISSN 2212-4926. - STAMPA. - 82:(2021), pp. 100833.1-100833.15. [10.1016/j.jbior.2021.100833]

Prediction of genetic alteration of phospholipase C isozymes in brain disorders: Studies with deep learning

Cocco L.;
2021

Abstract

Genetic mutations leading to the development of various diseases, such as cancer, diabetes, and neurodegenerative disorders, can be attributed to multiple mechanisms and exposure to diverse environments. These disorders further increase gene mutation rates and affect the activity of translated proteins, both phenomena associated with cellular responses. Therefore, maintaining the integrity of genetic and epigenetic information is critical for disease suppression and prevention. With the advent of genome sequencing technologies, large-scale genomic data-based machine learning tools, including deep learning, have been used to predict and identify somatic inactivation or negative dominant expression of target genes in various diseases. Although deep learning studies have recently been highlighted for their ability to distinguish between the genetic information of diseases, conventional wisdom is also necessary to explain the correlation between genotype and phenotype. Herein, we summarize the current understanding of phosphoinositide-specific phospholipase C isozymes (PLCs) and an overview of their associations with genetic variation, as well as their emerging roles in several diseases. We also predicted and discussed new findings of cryptic PLC splice variants by deep learning and the clinical implications of the PLC genetic variations predicted using these tools.
2021
Prediction of genetic alteration of phospholipase C isozymes in brain disorders: Studies with deep learning / Joo J.-Y.; Lim K.-H.; Yang S.; Kim S.-H.; Cocco L.; Suh P.-G.. - In: ADVANCES IN BIOLOGICAL REGULATION. - ISSN 2212-4926. - STAMPA. - 82:(2021), pp. 100833.1-100833.15. [10.1016/j.jbior.2021.100833]
Joo J.-Y.; Lim K.-H.; Yang S.; Kim S.-H.; Cocco L.; Suh P.-G.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/869449
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