Tapping the genome's social network to find cancer drivers
Broad Institute News Dec 08, 2017
A new computational tool merges cancer genome and protein interaction data to find cancer-fueling mutations more effectively.
Any one tumor might harbor mutations in thousands of different genes. The challenge is to find the driver mutations—which fuel cancerous activity, and might be promising treatment targets—within the haystack of passengers (mutations that, while present in the tumor, do not help it grow or spread).
In a paper in the journal Nature Methods, a team led by Heiko Horn and Kasper Lage of the Broad Institute’s Stanley Center for Psychiatric Research and Massachusetts General Hospital MGH; Michael Lawrence and Jesse Boehm of the Broad Cancer Program; and Gad Getz of the Cancer Program and MGH describe NetSig, an open-source computational tool that looks for cancer-driving mutations by joining cancer genome data with protein interaction data. NetSig is designed to complement existing tools and expand discovery from cancer genomes in any existing analysis pipeline.
Proteins interactions reveal a sort of genomic Facebook, a social network through which genes share information and carry out a cell’s functions. The added functional perspective can help researchers identify drivers with greater confidence, especially in genes that mutate only rarely.
To that end, NetSig taps InWeb_InBioMap (InWeb_IM), a protein interaction map with data on more than half a million protein-protein interactions. Lage’s lab developed InWeb_IM in 2016 for functionally interpreting large genomic data sets.
To develop NetSig, the team merged InWeb_IM with The Cancer Genome Atlas (TCGA)-derived exome data from 4,742 tumors spanning 21 cancer types. The team then tested the tool's capabilities in a series of in silico and in vivo experiments, finding that NetSig could:
Go to Original
Any one tumor might harbor mutations in thousands of different genes. The challenge is to find the driver mutations—which fuel cancerous activity, and might be promising treatment targets—within the haystack of passengers (mutations that, while present in the tumor, do not help it grow or spread).
In a paper in the journal Nature Methods, a team led by Heiko Horn and Kasper Lage of the Broad Institute’s Stanley Center for Psychiatric Research and Massachusetts General Hospital MGH; Michael Lawrence and Jesse Boehm of the Broad Cancer Program; and Gad Getz of the Cancer Program and MGH describe NetSig, an open-source computational tool that looks for cancer-driving mutations by joining cancer genome data with protein interaction data. NetSig is designed to complement existing tools and expand discovery from cancer genomes in any existing analysis pipeline.
Proteins interactions reveal a sort of genomic Facebook, a social network through which genes share information and carry out a cell’s functions. The added functional perspective can help researchers identify drivers with greater confidence, especially in genes that mutate only rarely.
To that end, NetSig taps InWeb_InBioMap (InWeb_IM), a protein interaction map with data on more than half a million protein-protein interactions. Lage’s lab developed InWeb_IM in 2016 for functionally interpreting large genomic data sets.
To develop NetSig, the team merged InWeb_IM with The Cancer Genome Atlas (TCGA)-derived exome data from 4,742 tumors spanning 21 cancer types. The team then tested the tool's capabilities in a series of in silico and in vivo experiments, finding that NetSig could:
- Recognize known cancer drivers in 60% of tested tumor types, including those with relatively few samples.
- Predict new driver genes that validation experiments—conducted with the Cancer Program’s Target Accelerator initiative—showed were truly tumor-promoting.
- Identify hitherto-unnoticed drivers lurking in TCGA and other datasets. In particular, NetSig revealed that between 4% and 14% of lung tumor patients previously deemed oncogene-negative (that is, had no detectable oncogenes present) may actually harbor cancer-promoting extra copies of the genes AKT2 or TFDP2.
Only Doctors with an M3 India account can read this article. Sign up for free or login with your existing account.
4 reasons why Doctors love M3 India
-
Exclusive Write-ups & Webinars by KOLs
-
Daily Quiz by specialty
-
Paid Market Research Surveys
-
Case discussions, News & Journals' summaries