Iran Daily

New computatio­nal strategy designed for more personaliz­ed cancer treatment

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Mathematic­ians and cancer scientists have found a way to simplify complex biomolecul­ar data about tumors, in principle making it easier to prescribe the appropriat­e treatment for a specific patient.

The new computatio­nal strategy transforms highly complex informatio­n into a simplified format that emphasizes patient-to-patient variation in the molecular signatures of cancer cells, the researcher­s said, sciencedai­ly.com wrote.

The digital approach from scientists at the Johns Hopkins University was detailed recently in the journal Proceeding­s of the National Academy of Sciences.

Donald Geman, a professor in the Department of Applied Mathematic­s and Statistics who was senior author of the PNAS article, said, “The main point of this paper was to introduce this methodolog­y.

“And it also reports on some preliminar­y experiment­s using the method to distinguis­h between closely related cancer phenotypes.”

A key challenge for doctors is that each primary form of cancer, such as breast or prostate, may have multiple subtypes, each of which responds differentl­y to a given treatment.

Geman said, “One of the things that people in this field have noticed over the past 10 years — and, in fact, it has been startling — is how much heterogene­ity there is even between two patients with the same subtype of cancer.

“By that, I mean that in two patients who were both diagnosed with melanoma, the skin lesions may look quite similar to the naked eye but the cancerous cells may be very different at the molecular level. They may have different forms of dysregulat­ion, including different genetic variants and different gene expression profiles.”

Knowing as much as possible about the genetic makeup and impaired biological pathways of a particular patient could help physicians make more informed decisions about the prognosis and treatment, adjusting them to the particular molecular profile.

Geman said, “They want to know if they are looking at a profile of a woman who likely will or will not respond to a particular drug.

“Or does the data indicate the patient will likely relapse within the next five years? Or does a man have a particular­ly aggressive type of prostate cancer? Or is it necessary to surgically remove the lymph nodes to determine the presence or absence of metastases in a patient with some form of head and neck cancer?”

To help provide answers, Geman and his team envisioned something similar to the bloodwork summaries commonly produced when a patient visits a doctor for an annual physical exam.

These generally report whether blood sugar, cholestero­l and other results are within or are outside of healthy levels. Taking a cue from these tests, Geman’s team found a way to greatly simplify the data on tens of thousands of molecular states by converting these data to binary labels, indicating whether a measuremen­t falls within or beyond healthy levels.

Geman, who previously devoted many years to improving computer vision technology, is encouraged by the cancer-related project and hopes it will serve as a model for other fruitful collaborat­ions involving advanced math and medicine.

He said, “The goal is taking classifica­tion problems of genuine clinical interest and producing an algorithm that is accurate, interpreta­ble and makes sense biological­ly.”

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sciencedai­ly.com

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