Aix Marseille University, IRD, APHM, MEPHI, Faculté de Médecine et de Pharmacie, Marseille, France; Enovacom Marseille, Marseille, France.
Aix Marseille University, IRD, APHM, MEPHI, Faculté de Médecine et de Pharmacie, Marseille, France; IHU Méditerranée Infection, Marseille, France.
Clin Microbiol Infect. 2022 Sep;28(9):1286.e1-1286.e8. doi: 10.1016/j.cmi.2022.03.035. Epub 2022 Apr 8.
Antibiotic susceptibility testing (AST) is necessary in order to adjust empirical antibiotic treatment, but the interpretation of results requires experience and knowledge. We have developed a machine learning software that is capable of reading AST images without any human intervention and that automatically interprets the AST, based on a database of antibiograms that have been clinically validated with European Committee on Antimicrobial Susceptibility Testing rules.
We built a database of antibiograms that were labelled by senior microbiologists for three species: Escherichia coli, Klebsiella pneumoniae, and Staphylococcus aureus. We then developed Antilogic, a Python software based on an original image segmentation module and supervised learning models that we trained against the database. Finally, we blind tested Antilogic against a validation set of 5100 photos of antibiograms.
We trained Antilogic against a database of 18072 pictures of antibiograms. Overall agreement against the validation set reached 97% (16 855/17 281) regarding phenotypes. The severity rate of errors was also evaluated: 1.66% (287/17 281) were major errors and 0.80% (136/17 281) were very major errors. After implementation of uncertainty quantifications, the rate of errors decreased to 0.80% (114/13 451) and 0.42% (51/13 451) for major and very major errors respectively.
Antilogic is the first machine learning software that has been developed for AST interpretation. It is based on a novel approach that differs from the typical diameter measurement and expert system approach. Antilogic is a proof of concept that artificial intelligence can contribute to faster and easier diagnostic methods in the field of clinical microbiology.
抗生素药敏试验(AST)对于调整经验性抗生素治疗是必要的,但结果的解释需要经验和知识。我们开发了一种机器学习软件,能够在没有任何人工干预的情况下读取 AST 图像,并根据经过临床验证的欧洲抗菌药物敏感性试验委员会规则的抗生素图数据库自动解释 AST。
我们构建了一个由高级微生物学家对三种细菌(大肠埃希菌、肺炎克雷伯菌和金黄色葡萄球菌)进行标记的抗生素图数据库。然后,我们开发了 Antilogic,这是一个基于原始图像分割模块和监督学习模型的 Python 软件,我们根据该数据库进行了训练。最后,我们用一个包含 5100 张抗生素图的验证集对 Antilogic 进行了盲测。
我们用一个包含 18072 张抗生素图的数据库对 Antilogic 进行了训练。针对验证集的表型,整体一致性达到 97%(16855/17281)。我们还评估了错误的严重程度:1.66%(287/17281)为重大错误,0.80%(136/17281)为非常重大错误。在实施不确定性量化后,错误率分别降至 0.80%(114/13451)和 0.42%(51/13451),对于重大和非常重大错误。
Antilogic 是第一个为 AST 解释而开发的机器学习软件。它基于一种与典型的直径测量和专家系统方法不同的新方法。Antilogic 是一个概念验证,证明人工智能可以为临床微生物学领域更快、更简单的诊断方法做出贡献。