Technology Review - Published By MIT
Log in to My.TechnologyReview.com | Register
Advertisement
« Back 1 [2]

Wednesday, October 17, 2007

Using Molecular Pathways to Assess Cancer Patients

Continued from page 1

By Katherine Bourzac

smaller text tool iconmedium text tool iconlarger text tool icon

The protein-interaction map is then overlaid with a gene-expression profile from a breast-cancer patient's biopsy. Instead of looking at whether a patient with metastatic breast cancer is making more or less of one protein than a patient with a less aggressive form of the disease, the San Diego researchers were able to highlight protein pairs whose activity changed. They then looked for clusters in the interaction map where the activity level of a group of connected proteins was different in patients whose cancer eventually metastasized than in patients whose cancer did not. "Once you find the hot spots, you extract them from the hairball, and you have networks that correlate with metastasis," says Ideker.

Ideker's group discovered changes in the average activity of networks associated with the hallmarks of cancer, including metabolism, cell growth and division, and cell mobility. The researchers found that these changes in the activity of networks were better at predicting risk of metastasis than was analysis of gene-expression profiles alone. Looking at networks of proteins, "you see key changes you can't see looking at individual genes," says Collins. "Proteins rarely act individually."

Ideker says that he is currently in discussion with several companies about how to develop the network approach into a commercial test. However, he cautions that because his group tested its approach on preexisting gene-expression databases, it needs further testing in breast-cancer patients.

Ideker says that his group is already applying the protein network to other diseases, with promising early results. Collins agrees that the approach is generalizable, and he says that it may allow for early detection of diseases besides cancer.

« Back 1 [2]

Comments

  • mRNA abundance does not always equal protein abundance!
    dmklass on 10/21/2007 at 3:52 PM
    Posts:
    2
    If the "gene-expression profile" from the cancer patient's biopsy means using a microarray to measure the mRNA transcript abundance, it is important to note that the following sentence is scientifically incorrect:

    "They then looked for clusters in the interaction map where the activity level of a group of connected proteins was different in patients whose cancer eventually metastasized than in patients whose cancer did not."

    **mRNA transcript abundance does not equal protein abundance.  There is a 0.5-0.6 correlation (where 1.0 is a perfect correlation) between mRNA abundance and protein abundance for ~1/3 of the yeast genome.  This comparison has not been done for higher eukaryotes on a genome-wide scale. 

    **Just because a patient has higher levels of a particular mRNA transcript in their tumor biopsy sample does NOT mean that they are making more of that particular protein or that they have higher activity levels of that particular protein.  In fact, if we extrapolate from the yeast data, we would conclude that a patient with higher levels of a particular mRNA transcript would also have higher levels of that protein ONLY 50-60% OF THE TIME. 
    Rate this comment: 12345
Advertisement

Current Issue

Technology Review September/October 2008
How Obama Really Did It
Social technology helped bring him to the brink of the presidency.
•  Subscribe
Save 41%
•  Table of Contents
•  MIT News

Magazine Services

Career Resources

MIT Technology Insider

Stories and breaking news from inside MIT about the latest research, innovations, and startups--in a convenient monthly e-newsletter. Subscribe today

Follow us on Twitter

Twitter

Get Technology Review updates via the web, cellphone, or Instant Messager – Follow techreview on Twitter!

Advertisement
Advertisement
Advertisement
Advertisement
TECHNOLOGY RESOURCES
Advertisement
MIT Massachusetts Institute of Technology