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24 June 2020

Artificial intelligence (AI) improved skin cancer diagnostic accuracy when used in collaboration with human clinical checks, an international study including University of Queensland researchers has found.

The global team tested for the first time whether a ‘real world’, collaborative approach involving clinicians assisted by AI improved the accuracy of skin cancer clinical decision making.

Õ¬Äе¼º½’s   said the highest diagnostic accuracy was achieved when crowd wisdom and AI predictions were combined, suggesting human-AI and crowd-AI collaborations were preferable to individual experts or AI alone

“This is important because AI decision support has slowly started to infiltrate healthcare settings, and yet few studies have tested its performance in real world settings or how clinicians interact with it,” Professor Janda said.

“Inexperienced evaluators gained the highest benefit from AI decision support and expert evaluators confident in skin cancer diagnosis achieved modest or no benefit.

“These findings indicated a combined AI-human approach to skin cancer diagnosis may be the most relevant for clinicians in the future.”

Although AI diagnostic software has demonstrated expert level accuracy in several image-based medical studies, researchers have remained unclear on whether its use improved clinical practice.

“Our study found that good quality AI support was useful to clinicians but needed to be simple, concrete, and in accordance with a given task,” Professor Janda said.

“For clinicians of the future this means that AI-based screening and diagnosis might soon be available to support them on a daily basis.

“Implementation of any AI software needs extensive testing to understand the impact it has on clinical decision making.”

Researchers trained and tested an artificial convolutional neural network to analyse pigmented skin lesions, and compared the findings with human evaluations on three types of AI-based decision support.

Õ¬Äе¼º½’s Professor H. Peter Soyer and Dr Cliff Rosendahl were also part of the study.

The paper is published in . (DOI: )

Media: Professor Monika Janda, m.janda@uq.edu.au; Faculty of Medicine Communications, med.media@uq.edu.au, +61 7 3365 5133, +61 436 368 746.