Skip to main page content
U.S. flag

An official website of the United States government

Dot gov

The .gov means it’s official.
Federal government websites often end in .gov or .mil. Before sharing sensitive information, make sure you’re on a federal government site.

Https

The site is secure.
The https:// ensures that you are connecting to the official website and that any information you provide is encrypted and transmitted securely.

Access keys NCBI Homepage MyNCBI Homepage Main Content Main Navigation
. 2023 Sep;93(9):2070-2078.
doi: 10.1111/ans.18610. Epub 2023 Jul 17.

Artificial intelligence for predicting acute appendicitis: a systematic review

Affiliations

Artificial intelligence for predicting acute appendicitis: a systematic review

Antoinette Lam et al. ANZ J Surg. 2023 Sep.

Abstract

Background: Paediatric appendicitis may be challenging to diagnose, and outcomes difficult to predict. While diagnostic and prognostic scores exist, artificial intelligence (AI) may be able to assist with these tasks.

Method: A systematic review was conducted aiming to evaluate the currently available evidence regarding the use of AI in the diagnosis and prognostication of paediatric appendicitis. In accordance with the PRISMA guidelines, the databases PubMed, EMBASE, and Cochrane Library were searched. This review was prospectively registered on PROSPERO.

Results: Ten studies met inclusion criteria. All studies described the derivation and validation of AI models, and none described evaluation of the implementation of these models. Commonly used input parameters included varying combinations of demographic, clinical, laboratory, and imaging characteristics. While multiple studies used histopathological examination as the ground truth for a diagnosis of appendicitis, less robust techniques, such as the use of ICD10 codes, were also employed. Commonly used algorithms have included random forest models and artificial neural networks. High levels of model performance have been described for diagnosis of appendicitis and, to a lesser extent, subtypes of appendicitis (such as complicated versus uncomplicated appendicitis). Most studies did not provide all measures of model performance required to assess clinical usability.

Conclusions: The available evidence suggests the creation of prediction models for diagnosis and classification of appendicitis using AI techniques, is being increasingly explored. However, further implementation studies are required to demonstrate benefit in system or patient-centred outcomes with model deployment and to progress these models to the stage of clinical usability.

Keywords: artificial neural network; machine learning; predictive analytics; surgery.

PubMed Disclaimer

References

    1. Hijaz NM, Friesen CA. Managing acute abdominal pain in pediatric patients: current perspectives. Pediatric Health Med. Ther. 2017; 8: 83-91.
    1. Zani A, Hall NJ, Rahman A et al. European Paediatric Surgeons' Association survey on the management of pediatric appendicitis. Eur. J. Pediatr. Surg. 2019; 29: 53-61.
    1. Samuel M. Pediatric appendicitis score. J. Pediatr. Surg. 2002; 37: 877-881.
    1. Alvarado A. A practical score for the early diagnosis of acute appendicitis. Ann. Emerg. Med. 1986; 15: 557-564.
    1. Andersson M, Andersson RE. The appendicitis inflammatory response score: a tool for the diagnosis of acute appendicitis that outperforms the Alvarado score. World J. Surg. 2008; 32: 1843-1849.

Publication types

LinkOut - more resources