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Gene information predicts survival time, possible new treatment options for lung cancer patients

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Researchers at UT Southwestern Medical Center have discovered sets of genes active in cancer cells and normal tissue that predict survival time and potential new treatments for patients with non-small cell lung cancer.

“Patient responses to cancer treatment vary widely and often depend on subtle biological differences among tumours,” said Dr David Mangelsdorf, chairman of pharmacology at UT Southwestern and co-lead author of the study, published 14 December by PLoS Medicine.

“These findings are important because the ability to determine which genes are being expressed in each person’s tumor, as well as a patient’s likely survival time, can guide physicians to the most effective and appropriate personalised treatments,” he said.

Researchers involved in the study at UT Southwestern and UT M.D. Anderson Cancer Center carefully microdissected lung tumours and adjacent healthy lung tissue from 30 patients. To determine which genes were active, they examined each sample for the presence of messenger ribonucleic acid (mRNA) associated with the 48 known genes for molecules called nuclear hormone receptors.

The research team then compared the set of active genes, also called a gene expression profile or gene signature, with the actual clinical outcome of each study patient. They found that the expression of genes for specific nuclear hormone receptors was an excellent predictor of which patients were likely to survive the longest. They validated their test by screening more than 500 additional lung tumour samples and accurately predicting those patients’ outcomes.

In particular, the presence of two nuclear receptors – the short heterodimer partner (SHP) and the progesterone receptor (PR) – in tumour tissue was predictive of a good prognosis. Patients with those so-called biomarkers in their cancer cells lived the longest.

In normal lung tissue, a good prognosis was associated with the presence of nuclear receptors called nerve growth factor induced gene B3 (NGFIB3) and mineralocorticoid receptor (MR).


Dr Mangelsdorf, a National Academy of Sciences member who is a leading expert on nuclear receptors, said the investigators focused on screening for the activity of these 48 nuclear receptor genes because several of them are known to be involved in promoting or inhibiting cancer. In addition, drugs that target certain nuclear receptors already are being used as front-line therapy in humans against breast cancer, prostate cancer and acute leukemia.

“The goal of identifying these genetic signatures in lung cancer is not just to determine how long a cancer patient will live, but also to home in on the most relevant drug or therapy targets that act specifically on these particular gene products,” said Dr Mangelsdorf, who also is an investigator with the Howard Hughes Medical Institute.

The results are a significant step toward personalised medicine, said Dr John Minna, director of the Nancy B and Jake L Hamon Center for Therapeutic Oncology Research and the W.A. “Tex” and Deborah Moncrief Jr. Center for Cancer Genetics who has been investigating the biology of lung cancer for more than 30 years.

“Our long-term goal is to be able to sample a patient’s lung cancer and perform molecular tests that can predict both how a patient will do and, more importantly, the best treatment for that individual,” said Dr Minna, co-lead author of the study.

“We were amazed to find that the pattern of expression of nuclear receptors in both lung cancers and normal lung tissue were so predictive of a patient’s outcome. Because available drugs already target so many of these receptors, our next step is to find out which drugs will kill lung cancer cells expressing these specific receptors.”

(Source: UT Southwestern Medical CenterPLoS Medicine)


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Dates

Posted On: 21 December, 2010
Modified On: 15 January, 2014

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