Development and Validation of an Automated Classifier to Diagnose Acute Otitis Media in Children.


Journal

JAMA pediatrics
ISSN: 2168-6211
Titre abrégé: JAMA Pediatr
Pays: United States
ID NLM: 101589544

Informations de publication

Date de publication:
04 Mar 2024
Historique:
medline: 4 3 2024
pubmed: 4 3 2024
entrez: 4 3 2024
Statut: aheadofprint

Résumé

Acute otitis media (AOM) is a frequently diagnosed illness in children, yet the accuracy of diagnosis has been consistently low. Multiple neural networks have been developed to recognize the presence of AOM with limited clinical application. To develop and internally validate an artificial intelligence decision-support tool to interpret videos of the tympanic membrane and enhance accuracy in the diagnosis of AOM. This diagnostic study analyzed otoscopic videos of the tympanic membrane captured using a smartphone during outpatient clinic visits at 2 sites in Pennsylvania between 2018 and 2023. Eligible participants included children who presented for sick visits or wellness visits. Otoscopic examination. Using the otoscopic videos that were annotated by validated otoscopists, a deep residual-recurrent neural network was trained to predict both features of the tympanic membrane and the diagnosis of AOM vs no AOM. The accuracy of this network was compared with a second network trained using a decision tree approach. A noise quality filter was also trained to prompt users that the video segment acquired may not be adequate for diagnostic purposes. Using 1151 videos from 635 children (majority younger than 3 years of age), the deep residual-recurrent neural network had almost identical diagnostic accuracy as the decision tree network. The finalized deep residual-recurrent neural network algorithm classified tympanic membrane videos into AOM vs no AOM categories with a sensitivity of 93.8% (95% CI, 92.6%-95.0%) and specificity of 93.5% (95% CI, 92.8%-94.3%) and the decision tree model had a sensitivity of 93.7% (95% CI, 92.4%-94.9%) and specificity of 93.3% (92.5%-94.1%). Of the tympanic membrane features outputted, bulging of the TM most closely aligned with the predicted diagnosis; bulging was present in 230 of 230 cases (100%) in which the diagnosis was predicted to be AOM in the test set. These findings suggest that given its high accuracy, the algorithm and medical-grade application that facilitates image acquisition and quality filtering could reasonably be used in primary care or acute care settings to aid with automated diagnosis of AOM and decisions regarding treatment.

Identifiants

pubmed: 38436941
pii: 2815513
doi: 10.1001/jamapediatrics.2024.0011
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Auteurs

Nader Shaikh (N)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Shannon J Conway (SJ)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Jelena Kovacevic (J)

Tandon School of Engineering, New York University, New York, New York.

Filipe Condessa (F)

Bosch Center for Artificial Intelligence, Pittsburgh, Pennsylvania.

Timothy R Shope (TR)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Mary Ann Haralam (MA)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Catherine Campese (C)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Matthew C Lee (MC)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Tomas Larsson (T)

Dcipher Analytics, Stockholm, Sweden.

Zafer Cavdar (Z)

Dcipher Analytics, Stockholm, Sweden.

Alejandro Hoberman (A)

Department of Pediatrics, Division of General Academic Pediatrics, University of Pittsburgh School of Medicine, University of Pittsburgh Medical Center Children's Hospital of Pittsburgh, Pennsylvania.

Classifications MeSH