AGL 40.00 Decreased By ▼ -0.16 (-0.4%)
AIRLINK 129.53 Decreased By ▼ -2.20 (-1.67%)
BOP 6.68 Decreased By ▼ -0.01 (-0.15%)
CNERGY 4.63 Increased By ▲ 0.16 (3.58%)
DCL 8.94 Increased By ▲ 0.12 (1.36%)
DFML 41.69 Increased By ▲ 1.08 (2.66%)
DGKC 83.77 Decreased By ▼ -0.31 (-0.37%)
FCCL 32.77 Increased By ▲ 0.43 (1.33%)
FFBL 75.47 Increased By ▲ 6.86 (10%)
FFL 11.47 Increased By ▲ 0.12 (1.06%)
HUBC 110.55 Decreased By ▼ -1.21 (-1.08%)
HUMNL 14.56 Increased By ▲ 0.25 (1.75%)
KEL 5.39 Increased By ▲ 0.17 (3.26%)
KOSM 8.40 Decreased By ▼ -0.58 (-6.46%)
MLCF 39.79 Increased By ▲ 0.36 (0.91%)
NBP 60.29 No Change ▼ 0.00 (0%)
OGDC 199.66 Increased By ▲ 4.72 (2.42%)
PAEL 26.65 Decreased By ▼ -0.04 (-0.15%)
PIBTL 7.66 Increased By ▲ 0.18 (2.41%)
PPL 157.92 Increased By ▲ 2.15 (1.38%)
PRL 26.73 Increased By ▲ 0.05 (0.19%)
PTC 18.46 Increased By ▲ 0.16 (0.87%)
SEARL 82.44 Decreased By ▼ -0.58 (-0.7%)
TELE 8.31 Increased By ▲ 0.08 (0.97%)
TOMCL 34.51 Decreased By ▼ -0.04 (-0.12%)
TPLP 9.06 Increased By ▲ 0.25 (2.84%)
TREET 17.47 Increased By ▲ 0.77 (4.61%)
TRG 61.32 Decreased By ▼ -1.13 (-1.81%)
UNITY 27.43 Decreased By ▼ -0.01 (-0.04%)
WTL 1.38 Increased By ▲ 0.10 (7.81%)
BR100 10,407 Increased By 220 (2.16%)
BR30 31,713 Increased By 377.1 (1.2%)
KSE100 97,328 Increased By 1781.9 (1.86%)
KSE30 30,192 Increased By 614.4 (2.08%)

An AI computer model can diagnose and identify 10 of the most common types of brain cancer with the same accuracy as human doctors, researchers said on Monday. More than 15 million people worldwide are diagnosed with cancer every year, and 80 percent of those will undergo surgery. In the United States alone more than one million cancer samples are biopsied annually and each one must be analysed and diagnosed by a pathologist, placing enormous strain on health services.

Writing in the journal Nature Medicine, a team of US-based experts described how they trained an AI algorithm to analyse brain cancers from more than 2.5 million images. They found that the computer was able to diagnose common cancers in under three minutes - more than 10 times faster than a human expert. In a clinical trial of 278 brain tumour patients, the authors found that the model's diagnoses were comparable to those made by pathologists - slightly more accurate, in fact.

In the trial doctors made 17 errors where as the algorithm made only 14.

Lead author Daniel Orringer, associate professor of Neurosurgery at NYU Langone Health, said the findings could help surgeons and patients when it comes to surgical cancer removal.

"Plainly stated, this means as surgeons we can make safer, more accurate decisions while we are operating," he told AFP. "We're better equipped to leave healthy tissue behind and remove only the tissue that is infiltrated by tumour cells. "Ultimately that means fewer complications and better outcomes for cancer patients," he added.

The study also threw up some surprising results. Every single one of the cases misdiagnosed by pathologists, the AI model got right. And all of the cases the algorithm missed were caught by the pathologists.

"We suspect that the performance of even some of the most well trained pathologists... could be improved with AI," Orringer said. Last week scientists showed that an AI model outperformed human professionals when it came to diagnosing breast cancer from mammograms.

Copyright Agence France-Presse, 2020

Comments

Comments are closed.