Researchers discover new approach for predicting resistance against cancer therapy
The most prevalent form of blood cancer in Singapore and the world, diffuse large B cell lymphoma (DLBCL), has been linked to an unusual combination of oncogenes that may predict treatment resistance and consequently unfavourable outcomes in patients. Read further on Dynamite News:
Washington: The most prevalent form of blood cancer in Singapore and the world, diffuse large B cell lymphoma (DLBCL), has been linked to an unusual combination of oncogenes that may predict treatment resistance and consequently unfavourable outcomes in patients. This research was conducted by a team from the Cancer Science Institute of Singapore (CSI Singapore) at the National University of Singapore (NUS), led by Assistant Professor Anand Jeyasekharan.
The findings of the study were published in Cancer Discovery, the flagship journal of the American Association of Cancer Research (AACR).
With the aid of cutting-edge technologies, this particular oncogenic combination can be identified as a sign of treatment resistance. In order to enable the use of this oncogene indicator in routine clinical practise, the researchers took it a step further and created a straightforward mathematical formula that can forecast the percentage of cells with this particular unfavourable combination from data obtained through established diagnostic methods.
Also Read |
Health: Researchers find immunotherapies for chemotherapy-resistant breast tumour
Oncogenes play a crucial role in cancer development by directing the production of “bad” oncoproteins that promote the growth and survival of cancer, while influencing treatment outcomes. However, cancers frequently express multiple such oncogenes, and not all cancer cells express every oncogene. As oncogenes are typically studied one at a time, very little is known about how the “co-existence” of oncogenes in subsets of cancer cells impacts the survival of cancer patients.
To fill this gap in knowledge, the research team set out to determine whether, and how, oncogenes work together to resist treatment, and they studied the phenomenon in the setting of DLBCL.
Current clinical practice routinely employs immunohistochemistry to measure the three specific oncogenes – MYC, BCL2, and BCL6 – to identify high-risk cases of DLBCL. However, immunohistochemistry cannot detect these three oncogenes simultaneously and, therefore, is unable to identify subgroups of cells with specific oncogenic combinations. To overcome this challenge, the team used a state-of-the-art imaging technology – termed multispectral microscopy with quantitative immunofluorescence – to stain, image, and quantify these oncogenes simultaneously in a large number of samples from DLBCL patients.
Also Read |
Study Reveals Variety Of Healthy Eating Patterns Can Lower Risk Of Premature Death
The researchers discovered that patients with a high percentage of cells that are positive for MYC and BCL2, but negative for BCL6, have low survival rates. The presence of these types of cells results in the lowest survival rates compared to all other cellular combinations of the three oncogenes, including those that are positive for all three. Based on this significant finding, the team concluded that BCL6 plays a “protective” role by “restraining” otherwise aggressive cells that have both MYC and BCL2 oncogenes. They subsequently identified potential mechanisms for why BCL6 is “protective” of cells with high MYC and BCL2.
The team also developed a mathematical formula that uses immunohistochemistry data to “predict” the proportion of cells with this specific harmful oncogenic combination. This is currently being further investigated through international collaborations led by the team at CSI Singapore.
Explaining the significance of the team’s research, Asst Prof Jeyasekharan, corresponding author of the study and Principal Investigator at CSI Singapore, said, “Our findings are highly relevant for the clinical management of DLBCL. Furthermore, they could potentially suggest a paradigm that is applicable to other cancer types as well, in that simultaneous detection of oncogenes is vital to understand their clinical relevance.” (ANI)