Author: Hassaniâ€Pak, Keywan; Singh, Ajit; Brandizi, Marco; Hearnshaw, Joseph; Parsons, Jeremy D.; Amberkar, Sandeep; Phillips, Andrew L.; Doonan, John H.; Rawlings, Chris
Title: KnetMiner: a comprehensive approach for supporting evidenceâ€based gene discovery and complex trait analysis across species Cord-id: 63nlm6nr Document date: 2021_4_5
ID: 63nlm6nr
Snippet: The generation of new ideas and scientific hypotheses is often the result of extensive literature and database searches, but, with the growing wealth of public and private knowledge, the process of searching diverse and interconnected data to generate new insights into genes, gene networks, traits and diseases is becoming both more complex and more timeâ€consuming. To guide this technically challenging data integration task and to make gene discovery and hypotheses generation easier for researc
Document: The generation of new ideas and scientific hypotheses is often the result of extensive literature and database searches, but, with the growing wealth of public and private knowledge, the process of searching diverse and interconnected data to generate new insights into genes, gene networks, traits and diseases is becoming both more complex and more timeâ€consuming. To guide this technically challenging data integration task and to make gene discovery and hypotheses generation easier for researchers, we have developed a comprehensive software package called KnetMiner which is openâ€source and containerized for easy use. KnetMiner is an integrated, intelligent, interactive gene and gene network discovery platform that supports scientists explore and understand the biological stories of complex traits and diseases across species. It features fast algorithms for generating rich interactive gene networks and prioritizing candidate genes based on knowledge mining approaches. KnetMiner is used in many plant science institutions and has been adopted by several plant breeding organizations to accelerate gene discovery. The software is generic and customizable and can therefore be readily applied to new species and data types; for example, it has been applied to pest insects and fungal pathogens; and most recently repurposed to support COVIDâ€19 research. Here, we give an overview of the main approaches behind KnetMiner and we report plantâ€centric case studies for identifying genes, gene networks and trait relationships in Triticum aestivum (bread wheat), as well as, an evidenceâ€based approach to rank candidate genes under a large Arabidopsis thaliana QTL. KnetMiner is available at: https://knetminer.org.
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