Current applications and future potential of ChatGPT in radiology: A systematic review

Author:

Temperley Hugo C12ORCID,O'Sullivan Niall J1,Mac Curtain Benjamin M3,Corr Alison1,Meaney James F1,Kelly Michael E2ORCID,Brennan Ian1

Affiliation:

1. Department of Radiology St. James's Hospital Dublin Ireland

2. Department of Surgery St. James's Hospital Dublin Ireland

3. Department of Urology St Vincent's University Hospital Dublin Ireland

Abstract

SummaryThis study aimed to comprehensively evaluate the current utilization and future potential of ChatGPT, an AI‐based chat model, in the field of radiology. The primary focus is on its role in enhancing decision‐making processes, optimizing workflow efficiency, and fostering interdisciplinary collaboration and teaching within healthcare. A systematic search was conducted in PubMed, EMBASE and Web of Science databases. Key aspects, such as its impact on complex decision‐making, workflow enhancement and collaboration, were assessed. Limitations and challenges associated with ChatGPT implementation were also examined. Overall, six studies met the inclusion criteria and were included in our analysis. All studies were prospective in nature. A total of 551 chatGPT (version 3.0 to 4.0) assessment events were included in our analysis. Considering the generation of academic papers, ChatGPT was found to output data inaccuracies 80% of the time. When ChatGPT was asked questions regarding common interventional radiology procedures, it contained entirely incorrect information 45% of the time. ChatGPT was seen to better answer US board‐style questions when lower order thinking was required (P = 0.002). Improvements were seen between chatGPT 3.5 and 4.0 in regard to imaging questions with accuracy rates of 61 versus 85%(P = 0.009). ChatGPT was observed to have an average translational ability score of 4.27/5 on the Likert scale regarding CT and MRI findings. ChatGPT demonstrates substantial potential to augment decision‐making and optimizing workflow. While ChatGPT's promise is evident, thorough evaluation and validation are imperative before widespread adoption in the field of radiology.

Publisher

Wiley

Subject

Radiology, Nuclear Medicine and imaging,Oncology

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