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New AI Tool is Better at Identifying Cancer Than Before

New AI Tool is Better at Identifying Cancer Than Before

by Dr. Hena Mariam on May 3 2023 12:34 PM
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Highlights:
  • Lung cancer is one of the leading causes of death
  • Early diagnosis is crucial when it comes to the treatment of cancer
  • Scientists have developed an AI tool that can spot growths in CT scans that are cancerous better than current methods
Being scared of artificial intelligence is a thing of the past now. Artificial intelligence is gaining popularity in the health field, and for good reason. From detecting bowel sounds to a night of good sleep, or even breast cancer, AI seems to have an answer to everything.
A team of doctors, scientists, and researchers have built an artificial intelligence model that can precisely identify cancer, a development they say could speed up the diagnosis of the disease and fast-track patients to treatment.

Cancer is a major cause of death worldwide. According to the World Health Organization, cancer results in about 10 million deaths annually, or nearly one in six deaths. In a lot of cases, the disease can be cured if detected early and treated quickly.

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New AI Tool Can Identify Cancer Better than Current Methods

The experts at the Royal Marsden NHS foundation trust, the Institute of Cancer Research, London, and Imperial College London have designed an AI tool that can identify whether abnormal growths found in Computed Tomography (CT) scans are cancerous.

According to the study, the algorithm performs more efficiently and effectively than current methods. The study has been published in the Lancet’s eBioMedicine journal.

Read more “In the future, we hope it will improve early detection and potentially make cancer treatment more successful by highlighting high-risk patients and fast-tracking them to earlier intervention,” said Dr. Benjamin Hunter, a clinical oncology registrar at the Royal Marsden and a clinical research fellow at Imperial.

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AI Can See What Human Can’t Using Radiomics

Researchers used CT scans of about 500 patients with large lung nodules to develop an AI algorithm using radiomics. Radiomics is a technique that can extract vital information from medical images that are not easily spotted by the human eye.

The AI model was then put to the test to see if it could correctly identify cancerous nodules.

The study used a measure called area under the curve (AUC) to see how efficient the model was at predicting cancer. An AUC of 1 indicates a perfect model, while 0.5 would be expected if the model was randomly guessing.

The results showed the AI model could identify each nodule’s risk of cancer with an AUC of 0.87. The performance improved on the Brock score, a test currently used in the clinic, which scored 0.67. The model also performed comparably with the Herder score – another test – which had an AUC of 0.83.

“According to these initial results, our model appears to identify cancerous large lung nodules accurately,” Hunter said. “Next, we plan to test the technology on patients with large lung nodules in the clinic to see if it can accurately predict their risk of lung cancer.”

The AI model could help clinicians make quicker decisions about patients with abnormal growths that are now classified as medium-risk.

The study suggests that when combined with Herder, the AI model was able to identify high-risk patients in this group. It would have suggested early intervention for 18 out of 22 (82%) of the nodules that went on to be confirmed as cancerous.


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AI Model Could be the Future of Cancer Diagnosis

The team stressed that the Libra study – backed by the Royal Marsden Cancer Charity, the National Institute for Health and Care Research, RM Partners, and Cancer Research UK – was still at an early stage. More testing will be required before the model can be introduced into healthcare systems.

But its potential benefits were clear, they said. Researchers hope the AI tool will eventually be able to speed up the detection of cancer by helping to fast-track patients to treatment, and by streamlining the analysis of CT scans.

“Through this work, we hope to push boundaries to speed up the detection of the disease using innovative technologies such as AI,” said the Libra study’s chief investigator, Dr. Richard Lee.

The consultant physician in respiratory medicine at the Royal Marsden and team leader at the Institute of Cancer Research said lung cancer was a good example of why new initiatives to speed up detection were urgently needed.

Lung cancer is the biggest cause of cancer mortality globally and accounts for 21% of cancer deaths in the UK. Those diagnosed early can be treated much more efficiently, but recent data shows more than 60% of lung cancers in England are diagnosed at either stage three or four.

“People diagnosed with lung cancer at the earliest stage are much more likely to survive for five years when compared with those whose cancer is caught late,” said Lee.

“This means it is a priority we find ways to speed up the detection of the disease, and this study – which is the first to develop a radiomics model specifically focused on large lung nodules – could one-day support clinicians in identifying high-risk patients.”

Reference:
  1. A radiomics-based decision support tool improves lung cancer diagnosis in combination with the Herder score in large lung nodules - (https://www.thelancet.com/journals/ebiom/article/PIIS2352-3964(22)00526-6/fulltext)


Source-Medindia


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