Researchers have developed an artificial intelligence (AI) system that rapidly detects COVID-19 from chest X-rays with over 98% accuracy, and the study results have been published in Nature Scientific Reports. Corresponding author Amir H Gandomi, PhD, from the Australia-based University of Technology Sydney (UTS) Data Science Institute, says there was a pressing need for effective automated tools to detect COVID-19, given the significant impact on public health and the global economy.

“The most widely used COVID-19 test, real-time polymerase chain reaction (PCR), can be slow and costly, and produce false-negatives. To confirm a diagnosis, radiologists need to manually examine a CT scans or X-rays, which can be time consuming and prone to error,” says Gandomi. 

“The new AI system could be particularly beneficial in countries experiencing high levels of COVID-19 where there is a shortage of radiologists,” he adds. “Chest X-rays are portable, widely available and provide lower exposure to ionizing radiation than CT scans.”

Common symptoms of COVID-19 include fever, cough, difficulty breathing, and a sore throat, but it can be difficult to distinguish COVID-19 from flu and other types of pneumonia. The new AI system uses a deep learning-based algorithm called a Custom Convolutional Neural Network (Custom-CNN) that can quickly and accurately distinguish between COVID-19 cases, normal cases, and pneumonia in X-ray images.

“Deep learning offers an end-to-end solution, eliminating the need to manually search for biomarkers. The Custom-CNN model streamlines the detection process, providing a faster and more accurate diagnosis of COVID-19,” says Gandomi.

“If a PCR test or rapid antigen test shows a negative or inconclusive result, due to low sensitivity, patients may require further examination via radiological imaging to confirm or rule out the virus’s presence,” he adds. “In this situation the new AI system could prove beneficial. “While radiologists play a crucial role in medical diagnosis, AI technology can assist them in making accurate and efficient diagnoses.”

The performance of the Custom-CNN model was evaluated via a comprehensive comparative analysis, with accuracy as the performance criterion. The results showed that the new model outperforms the other AI diagnostic models.

Fast and accurate diagnosis of COVID-19 can ensure patients get the correct treatment, including COVID-19 antivirals, which work best if taken within five days of the onset of symptoms. It could also help them isolate and protect others from getting infected, reducing pandemic outbreaks.

Gandomi says this breakthrough represents a significant step in combatting the ongoing challenges posed by the pandemic, potentially transforming the landscape of COVID-19 diagnosis and management.