This AI tool can help doctors treat brain tumours quickly and accurately, study finds
- A new AI tool developed by Harvard Medical School could assist neurosurgeons in treating brain tumors, specifically gliomas, which have been challenging to understand and accurately diagnose.
- The AI tool, called CHARM , uses machine learning to analyze brain tissue samples and quickly identify the genetic profile of the glioma, providing real-time information during surgery.
- By providing more accurate and rapid molecular diagnoses during surgery, the AI tool could potentially improve patient outcomes, guide surgeons in making treatment decisions, and enable the development of real-time precision oncology.
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9 Articles
AI tool can rapidly decode brain tumor DNA during surgery
Scientists have designed an AI tool that can rapidly decode a brain tumor's DNA to determine its molecular identity during surgery -; critical information that under the current approach can take a few days and up to a few weeks.
This AI tool can help doctors treat brain tumours quickly and accurately, study finds
Artificial intelligence has been the buzzword across the globe for the last year and a half. AI technology is breaking new barriers by the minute and a new study released this week by Harvard Medical School, promises another breakthrough, AI-assisted brain surgery.
AI tool shows promise for treating brain cancer, shows study
The tool — called the Cryosection Histopathology Assessment and Review Machine, or CHARM — studies images to quickly pick out the genetic profile of a kind of tumor called glioma, a process that currently takes days or weeks.
AI tool decodes brain cancer's genome during surgery: Study
Los Angeles [US], July 7 (ANI): Scientists have developed an AI tool that can rapidly decode a brain tumour’s DNA to determine its molecular identity during surgery, critical information that can take a few days to a few weeks under the current approach. Knowing the molecular type of a tumour allows neurosurgeons to make decisions […]
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