与微生物学专家相比,计算机辅助诊断应用程序对尿革兰氏染色结果分类的准确性。

Kei Yamamoto, Goh Ohji, Isao Miyatsuka, Kei Furui-Ebisawa, Ataru Moriya, Shogo Maeta, Hidetoshi Nomoto, Masami Kurokawa, Kenichiro Ohnuma, Mari Kusuki, Yukari Uemura, Norio Ohmagari
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引用次数: 0

摘要

介绍。及时和准确地诊断细菌感染可以使早期给予适当的抗微生物治疗并改善结果。假设/差距语句。计算机辅助诊断(CAD)识别尿革兰氏染色微生物的准确性尚未与微生物专家(MS)的准确性进行比较。比较用质谱法和用人工智能设计的CAD软件对尿液革兰氏染色结果的解释。在2022年4月1日至12月31日期间,在两家三级医院使用和收集了尿路感染患者的尿液标本。使用非劣效性分析来评估CAD是否不劣于专家解释,将来自两家医院的iPhone相机图像生成的革兰氏染色玻片的CAD预测显微镜结果与来自10个MS的结果进行比较。每家医院共采集了153张图像,CAD共解释了306张。主要终点是基于革兰氏染色细菌形态学的预测准确性。MS和CAD预测的准确率(95%置信区间)分别为83.0%(81.6% ~ 84.3%)和87.9%(83.7% ~ 91.3%),差异为-4.93%(-8.43% ~ -0.62%),表明CAD无劣效性。在鉴定革兰氏染色病原体方面,CAD的预测结果不逊于MS;因此,提示CAD具有指导尿路感染患者经验性抗生素选择的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accuracy of classification of urinary Gram-stain findings by a computer-aided diagnosis app compared with microbiology specialists.

Introduction. Timely and accurate diagnosis of bacterial infections enables early administration of appropriate antimicrobial treatment and improved outcomes.Hypothesis/Gap Statement. The accuracy of computer-aided diagnosis (CAD) for identifying organisms on urine Gram stains has not been compared with that of microbiology specialists (MS).Aim. To compare the interpretation of urine Gram-stain results by MS and a CAD app designed using artificial intelligence.Methodology. Urine specimens from patients with urinary tract infections were used and collected at two tertiary hospitals between 1 April and 31 December 2022. Using non-inferiority analysis to assess whether CAD was non-inferior to expert interpretation, CAD-predicted microscopic findings of the Gram-stained slide generated from iPhone camera images from two hospitals were compared with those from ten MS. A total of 153 images were taken from each hospital, and CAD interpreted a total of 306. The primary endpoint was the prediction accuracy based on the morphology of the Gram-stained bacteria.Results. The accuracy (95% confidence interval) of MS and CAD predictions was 83.0% (81.6%-84.3%) and 87.9% (83.7%-91.3%), respectively, with a difference of -4.93% (-8.43% to -0.62%) indicating non-inferiority of CAD.Conclusion. CAD was non-inferior to MS predictions for identifying Gram-stained pathogens; therefore, CAD was suggested to have the potential for guiding empirical antibiotic selection in patients with urinary tract infections.

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