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Study Suggests More Accurate Diagnostic for Breast Cancer

Researchers have developed a test that can detect infinitesimally small breast cancer biomarkers in the blood

The Translational Genomics Research Institute

Translational Genomics Research Institute (TGen) is a Phoenix, Arizona-based non-profit organization dedicated to conducting groundbreaking research with life-changing results. TGen is affiliated with City of Hope, a world-renowned independent research...

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Published:Jan 26, 2021
|Updated:Jan 27, 2021
|2 min read

PHOENIX, Ariz.—January 26, 2021—Breast cancer, even at its initial stages, could be detected earlier and more accurately than current techniques using blood samples and a unique proteomics-based technology, according to findings of a study led by the Translational Genomics Research Institute (TGen), an affiliate of City of Hope.

Patrick Pirrotte, PhD, an assistant professor and director of TGen's Collaborative Center for Translational Mass Spectrometry, and an international team of researchers have developed a test that can detect infinitesimally small breast cancer biomarkers that are shed into the bloodstream from cells surrounding cancer known as extracellular matrix (ECM), according to the findings of their study recently published in the scientific journal Breast Cancer Research.

For decades, physicians have relied on mammography breast imaging to look for cancer in a quest to provide prevention, early detection, and reduce deaths. But the unintended consequences of both false positives and false negatives have off-set the hoped-for gains of this inexact type of screening, including complications from surgery and cardiovascular disease, and unnecessary biopsies of what turn out to be benign lesions.

ECM is the network of molecules—including collagen, enzymes, and glycoproteins—that provide structural and biochemical support to surrounding cells, including cancer cells. During the early stages of cancer, these proteins and protein fragments—which form the tumor microenvironment—leak into circulating blood.

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"Our data reinforces the idea that this release of ECM components into circulation, even at the earliest stages of malignancy, can be used to design a specific and sensitive biomarker panel to improve detection of breast cancer," said Pirrotte, the study's senior author. "Using a highly specific and sensitive protein signature, we devised and verified a panel of blood-based biomarkers that could identify the earliest stages of breast cancer, and with no false positives."

To establish this protein signature, researchers employed blood samples from 20 patients with invasive ductal carcinoma breast cancer, and from 20 women without cancer who nonetheless had positive mammograms but benign pathology at biopsy. These results were compared to five groups of individuals diagnosed with other cancers: ovarian, lung, prostate, colon, and melanoma.

Because the number of ECM molecules in blood is relatively low, researchers relied on proteomics and new sample preparation enrichment techniques, including the use of hydrogel nanoparticles, to accurately detect cancer-associated biomarkers. This technique binds proteins from ECM associated with cancer proliferation, migration, adhesion, and metastasis, or the spread of cancer from one part of the body to another. Many of these proteins had never before been observed in blood samples.

"Our study results show a high degree of specificity of those markers as circulating proteins in breast cancer patients," said Khyatiben Pathak, PhD, a staff scientist in TGen's Collaborative Center for Translational Mass Spectrometry and a study author. "Our results justify further studies with larger groups to evaluate whether this biomarker panel improves the positive predictive value of mammography for breast cancer detection."

- This press release was originally published on the Translational Genomics Research Institute news website