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A Multi-reader Study Finds Unnecessary CT Exams Can Be Reduced by 30% When Analyzing Chest Radiographs with AI

2021-07-29 21:30 1707
  • A second joint study conducted by Lunit and Massachusetts General Hospital, published in European Radiology
  • When used as a second reader, the AI algorithm can enhance effective diagnosis on chest x-ray
  • With AI, radiology residents were able to recommend 28% more chest CT exams for potential lung cancer patients, and radiologist could reduce 30% of unnecessary CT exams

SEOUL, South Korea, July 29, 2021 /PRNewswire/ -- A recent study published in European Radiology has shown that a deep learning-based AI algorithm can improve the performance of readers in detecting lung cancers on chest radiographs. According to the study, AI had 28% sensitivity benefit for radiology residents, helping them properly recommend CT exams for potential lung cancer patients, and 30% specificity benefit for radiologists in lung cancer detection, reducing unnecessary CT exams.

The study was conducted by Massachusetts General Hospital (MGH) and Lunit, a leading medical AI company. The joint research team has previously focused on validating the accuracy of AI, and proved that Lunit INSIGHT CXR, an AI software for analyzing chest x-rays, can accurately detect malignant pulmonary nodules, which can cause lung cancer. In this consecutive study, the team focused on whether AI can affect the performance of medical professionals in finding lung cancers.

For the study, 519 images of cancer-positive and cancer-negative patients were selected from the National Lung Screening Trial (NLST). Eight readers, including three radiology residents and five board-certified radiologists, participated in the reading.

By comparing the analysis of the readers and Lunit INSIGHT CXR, the result showed that AI could lead to more efficient and precise diagnosis for both doctors and patients. With AI, radiology residents were able to recommend 28% more chest CT examinations (54.7% vs 70.2%, p < 0.001) for patients who may have potential risk of lung cancer. Also, radiologists recommended about 30% lesser proportion of unnecessary chest CT examinations (16.4% vs. 11.7%, p < 0.001) in cancer-negative patients.

"The use of AI could help to detect pulmonary nodules accurately with chest x-rays, as well as reduce the need for unnecessary chest CT exams in some patients," said Mannudeep K. Kalra, MD, a radiologist at the MGH and Co-investigator on the study, 'AI-based improvement in lung cancer detection on chest radiographs: results of a multi-reader study in NLST dataset'. "This finding can benefit patients by enabling them to avoid unneeded radiation exposure, and it can benefit the healthcare system by preventing certain medical costs."

"Chest x-ray is the firsthand diagnostic tool to detect lung cancer, but it has limitations as it is a compressed 2D rendering of 3D human structures," said Brandon Suh, CEO of Lunit. "An accurate analysis through Lunit INSIGHT CXR can help medical professionals provide diagnosis to patients with increased efficiency --preventing potential cancer at an early stage, while saving time and cost for those who do not need a further examination."

Trained with more than 3.5 million medical data, Lunit INSIGHT CXR is used in over 300 hospitals and medical centers in more than 30 countries. It detects 10 major chest diseases including lung nodules, pneumothorax, and tuberculosis with 97-99% accuracy. The software is CE marked and approved for commercial sales in around 35 countries, expecting FDA approval within this year. 

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Source: Lunit
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