Abstract Background With the explosion of data comes a proportional opportunity to identify novel knowledge with the potential for application in targeted therapies. In spite of this huge amounts of data, the solutions to treating complex disease is elusive. One reason being that these diseases are driven by a network of genes that need to be targeted in order to understand and treat them effectively. Part of the solution lies in mining and integrating information from various disciplines. Here we propose a machine learning method to mining through publicly available literature on RNA interference with the goal of identifying genes essential for cell survival. Results A total of 32,164 RNA interference abstracts were identified from 10.5 mi...
[[abstract]]Clinically, cancer is a complex family of diseases. From the view of molecular biology, ...
We developed a machine learning analysis pipeline to discover functional gene variants by examining ...
Exponentially growing scientific knowledge in scientific publications has resulted in the emergence ...
Background With the explosion of data comes a proportional opportunity to identify novel knowledge ...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Abstract: Gene prioritization based on background knowledge mined from litera-ture has become an imp...
The distinctive nature of cancer as a disease prompts an exploration of the special characteristics ...
In this thesis, we focused on developing new bioinformatics algorithms with the ultimate aim of crea...
Machine learning approaches are powerful techniques commonly employed for developing cancer predicti...
In the last few years, the interactions among competing endogenous RNAs (ceRNAs) have been recognize...
After numerous breakthroughs in medicine, microbiology, and pathology in the past century, lung canc...
Competing endogenous RNAs have become an emerging topic in cancer research due to their role in gene...
MicroRNAs are small non-coding RNAs that influence gene expression by binding to the 3' UTR of targe...
Cancer is a term that denotes a group of diseases caused by the abnormal growth of cells that can sp...
Developing a biomedical-explainable and validatable text mining pipeline can help in cancer gene pan...
[[abstract]]Clinically, cancer is a complex family of diseases. From the view of molecular biology, ...
We developed a machine learning analysis pipeline to discover functional gene variants by examining ...
Exponentially growing scientific knowledge in scientific publications has resulted in the emergence ...
Background With the explosion of data comes a proportional opportunity to identify novel knowledge ...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Abstract: Gene prioritization based on background knowledge mined from litera-ture has become an imp...
The distinctive nature of cancer as a disease prompts an exploration of the special characteristics ...
In this thesis, we focused on developing new bioinformatics algorithms with the ultimate aim of crea...
Machine learning approaches are powerful techniques commonly employed for developing cancer predicti...
In the last few years, the interactions among competing endogenous RNAs (ceRNAs) have been recognize...
After numerous breakthroughs in medicine, microbiology, and pathology in the past century, lung canc...
Competing endogenous RNAs have become an emerging topic in cancer research due to their role in gene...
MicroRNAs are small non-coding RNAs that influence gene expression by binding to the 3' UTR of targe...
Cancer is a term that denotes a group of diseases caused by the abnormal growth of cells that can sp...
Developing a biomedical-explainable and validatable text mining pipeline can help in cancer gene pan...
[[abstract]]Clinically, cancer is a complex family of diseases. From the view of molecular biology, ...
We developed a machine learning analysis pipeline to discover functional gene variants by examining ...
Exponentially growing scientific knowledge in scientific publications has resulted in the emergence ...