利用级联神经网络对外阴阴道念珠菌病进行人工智能辅助诊断。

IF 3.7 2区 生物学 Q2 MICROBIOLOGY
Zhongxiao Wang, Ruliang Wang, Haichun Guo, Qiannan Zhao, Huijun Ren, Jumin Niu, Ying Wang, Wei Wu, Bingbing Liang, Xin Yi, Xiaolei Zhang, Shiqi Xu, Xianling Dong, Liqun Wang, Qinping Liao
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引用次数: 0

摘要

外阴阴道念珠菌病(VVC)是影响全球妇女的一种常见真菌性疾病。及时准确的诊断至关重要。传统方法依赖于临床评估和人工显微镜检查,存在局限性。人工智能(AI)通过客观分析女性下生殖道感染的显微图像,有望提高诊断的准确性和效率。我们使用 100,387 张显微镜图像和 1,761 张切片开发了一个级联模型,用于在切片水平上诊断 VVC。该模型的诊断准确率与专家的诊断准确率进行了比较。该模型作为一种人工智能辅助工具,可用于评估专家的诊断技能能否得到提高。评估了专家对显微数字图像的解释与目镜下显微镜检查之间的一致性,以确定所收集的图像是否充分代表了玻片。该模型在玻片级诊断酵母菌菌丝、芽生酵母和酵母时的AUC分别为0.9447、0.9711和0.9793。与专家的平均表现相比,模型最佳点的尤登指数在酵母菌菌丝、芽生酵母、酵母和 VVC 方面分别提高了 0.0069、0.0772、0.0579 和 0.0907。使用我们的模型作为人工智能辅助工具,专家的平均准确率分别提高了 5.98%、5.20%、4.82% 和 8.19%。对于酵母的三种不同形态状态,专家对显微数字图像和目镜下显微镜检查的解释之间的一致率和科恩卡帕系数分别超过了 93% 和 0.83。与专家相比,我们的模型对 VVC 的诊断准确率更高。通过使用我们的模型作为人工智能辅助工具,专家们可以大大提高自己的诊断准确率。从每张载玻片上收集的显微镜图像有效地代表了载玻片:为外阴阴道念珠菌病(VVC)的玻片级诊断开发了一个级联深度神经网络模型,与专家相比,该模型显示出更高的诊断准确性。专家利用我们的模型作为人工智能辅助工具,大大提高了诊断准确率。因此,该模型有望应用于临床,帮助诊断外阴阴道念珠菌病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-assisted diagnosis of vulvovaginal candidiasis using cascaded neural networks.

Vulvovaginal candidiasis (VVC) is a prevalent fungal ailment affecting women globally. Timely and accurate diagnosis is crucial. Traditional methods, relying on clinical evaluation and manual microscopic examination, have limitations. Artificial intelligence (AI) offers potential improvements in diagnostic accuracy and efficiency by objectively analyzing microscopic images of lower genital tract infections in women. A cascaded model was developed using 100,387 microscope images and 1,761 slides to diagnose VVC at slide level. The model's diagnostic accuracy was compared with experts'. Five hundred thirteen slides were used to evaluate whether the experts' diagnostic skills could be improved using the model as an AI-assisted tool. The consistency between experts' interpretations of microscopic digital images and microscopic examination under eyepiece was assessed to determine whether the collected images adequately represented the slides. The model obtained AUC = 0.9447, 0.9711, and 0.9793 for slide-level diagnosing yeast hyphae, budding yeast, and yeast. Compared with the average performance of experts, the Youden indexes of our model's best points were improved by 0.0069, 0.0772, 0.0579, and 0.0907 for yeast hyphae, budding yeast, yeast, and VVC. The average accuracy of the experts was improved by 5.98%, 5.20%, 4.82%, and 8.19% using our model as an AI-assisted tool. The consistency rates and Cohen's kappa coefficients between experts' interpretations of microscopic digital images and microscopic examination under eyepiece exceeded 93% and 0.83 for the three different morphologic states of yeast. Our model exhibits superior diagnostic accuracy for VVC compared to experts. Experts can significantly improve their own diagnostic accuracies by using our model as an AI-assisted tool. The microscope images collected from each slide effectively represent the slide.

Importance: A cascaded deep neural network model was developed for slide-level diagnosis of vulvovaginal candidiasis (VVC), demonstrating superior diagnostic accuracy compared to experts. Experts significantly enhanced their diagnostic accuracies by utilizing our model as an AI-assisted tool. Therefore, this model holds potential for clinical application to aid in the diagnosis of VVC.

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来源期刊
Microbiology spectrum
Microbiology spectrum Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
3.20
自引率
5.40%
发文量
1800
期刊介绍: Microbiology Spectrum publishes commissioned review articles on topics in microbiology representing ten content areas: Archaea; Food Microbiology; Bacterial Genetics, Cell Biology, and Physiology; Clinical Microbiology; Environmental Microbiology and Ecology; Eukaryotic Microbes; Genomics, Computational, and Synthetic Microbiology; Immunology; Pathogenesis; and Virology. Reviews are interrelated, with each review linking to other related content. A large board of Microbiology Spectrum editors aids in the development of topics for potential reviews and in the identification of an editor, or editors, who shepherd each collection.
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