AI-based mobile application to fight antibiotic resistance

被引:0
|
作者
Marco Pascucci
Guilhem Royer
Jakub Adamek
Mai Al Asmar
David Aristizabal
Laetitia Blanche
Amine Bezzarga
Guillaume Boniface-Chang
Alex Brunner
Christian Curel
Gabriel Dulac-Arnold
Rasheed M. Fakhri
Nada Malou
Clara Nordon
Vincent Runge
Franck Samson
Ellen Sebastian
Dena Soukieh
Jean-Philippe Vert
Christophe Ambroise
Mohammed-Amin Madoui
机构
[1] The MSF Foundation,
[2] Université Paris-Saclay,undefined
[3] CNRS,undefined
[4] Univ Evry,undefined
[5] Laboratoire de Mathématiques et Modélisation d’Evry,undefined
[6] Université Paris-Saclay,undefined
[7] CEA,undefined
[8] CNRS,undefined
[9] Neurospin,undefined
[10] Baobab,undefined
[11] Université de Paris,undefined
[12] IAME,undefined
[13] UMR1137,undefined
[14] INSERM,undefined
[15] Université Paris-Saclay,undefined
[16] Univ Evry,undefined
[17] CNRS,undefined
[18] CEA,undefined
[19] Génomique métabolique,undefined
[20] Département de prévention,undefined
[21] diagnostic et traitement des infections,undefined
[22] Hôpital Henri Mondor,undefined
[23] AP-HP,undefined
[24] Google.org,undefined
[25] MSF Amman Hospital,undefined
[26] X-Squad,undefined
[27] i2a,undefined
[28] Google Research,undefined
[29] Brain Team,undefined
来源
Nature Communications | / 12卷
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摘要
Antimicrobial resistance is a major global health threat and its development is promoted by antibiotic misuse. While disk diffusion antibiotic susceptibility testing (AST, also called antibiogram) is broadly used to test for antibiotic resistance in bacterial infections, it faces strong criticism because of inter-operator variability and the complexity of interpretative reading. Automatic reading systems address these issues, but are not always adapted or available to resource-limited settings. We present an artificial intelligence (AI)-based, offline smartphone application for antibiogram analysis. The application captures images with the phone’s camera, and the user is guided throughout the analysis on the same device by a user-friendly graphical interface. An embedded expert system validates the coherence of the antibiogram data and provides interpreted results. The fully automatic measurement procedure of our application’s reading system achieves an overall agreement of 90% on susceptibility categorization against a hospital-standard automatic system and 98% against manual measurement (gold standard), with reduced inter-operator variability. The application’s performance showed that the automatic reading of antibiotic resistance testing is entirely feasible on a smartphone. Moreover our application is suited for resource-limited settings, and therefore has the potential to significantly increase patients’ access to AST worldwide.
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