New recommendations urge the adoption of advanced technologies and best clinical practices to transform the outdated standard of care for brain cancer patients, offering hope for a brighter future.
New guidelines for good clinical practice aim to harness artificial intelligence for more accurate diagnosis, monitoring, and treatment of brain cancer, ensuring reliable results and patient safety, according to an international, multidisciplinary team of leading neuro-oncology researchers and clinicians. The team recently published two companion policy reviews in The Lancet Oncology, on behalf of the clinically authoritative Response Assessment in Neuro-Oncology cooperative group, which is a collaboration of international experts who develop standardized criteria for evaluating treatment response in clinical trials for brain cancer (1✔ ✔Trusted Source
Artificial Intelligence for Response Assessment in Neuro Oncology (AI-RANO), part 2: recommendations for standardization, validation, and good clinical practice
Go to source).
‘With artificial intelligence (AI), diagnosing diseases, identifying tumor subtypes, and monitoring treatment progress are faster than ever. #artificialintelligence #AI #medindia’
Advertisement
Need for Advancements in Tumor Care
Indiana University School of Medicine’s Spyridon Bakas is the lead author on the second policy review, which establishes guidelines for standardization, validation and good clinical practice of AI for neuro-oncology. He said the new recommendations are a much-needed update to the current standard of care in which individual radiologists measure tumor size, which dictates treatment options. This is not ideal, Bakas said, because the assessment is often subjective. Each radiologist can interpret imaging scans differently, leading to treatment strategies that fluctuate based on who views the scan.Advertisement
Role of Artificial Intelligence in Tackling Brain Cancer
“We can use AI to look at images of the tumors more objectively,” said Bakas, the Joshua Edwards Associate Professor in Pathology and Laboratory Medicine and the director of the Division of Computational Pathology at the IU School of Medicine, as well as a researcher in the IU Melvin and Bren Simon Comprehensive Cancer Center. “AI programs can help determine quickly what type of disease it is, what subtype of tumor and what particular grade it is, in addition to helping track the progress of a lesion during treatment.”According to the team, there are predictive, prognostic and diagnostic AI models and solutions that are becoming available for health care practitioners, but how they are used varies widely at different institutions.
“Thanks to new technology, there are ways to use AI to help assess whether a tumor is progressing or is stable,” said Raymond Y. Huang, associate professor at Harvard Medical School and neuroradiology division chief at Brigham and Women’s Hospital in Boston, Massachusetts. “However, there needs to be a standardized way to use AI to accurately diagnose and treat patients.”
The team reviewed existing research articles and publications related to current advancements of AI in the field to develop the guidelines, which were presented at this year’s American Society of Clinical Oncology meeting in Chicago, Illinois, and the annual meeting of the European Association for Neuro-Oncology in Glasgow, Scotland. The guidelines will also be presented at the Society for Neuro-Oncology meeting in November in Houston, Texas.
Advertisement
How can AI Take Healthcare to the Next Level?
Some of the authors’ guidelines include:- Using software that has been developed using large and importantly diverse cohorts of patient data.
- Ensuring the AI models for defining a tumor follow World Health Organization criteria.
- Considering how the tumor images are obtained, processed and segmented before analyzing them.
Because AI is still new, these recommendations are among the first in the world regarding its proper use in cancer care. However, further study is necessary.
“It is important that we continue our study of these AI models on large, diverse patient populations to continue extending our understanding of disease and improving the way we use them,” Bakas said.
References:
- Artificial Intelligence for Response Assessment in Neuro Oncology (AI-RANO), part 2: recommendations for standardization, validation, and good clinical practice - (https://www.thelancet.com/journals/lanonc/article/PIIS1470-2045(24)00315-2/abstract)
Source-Eurekalert