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机器辅助解读金胺染色可显著提高显微镜结核病诊断的通量和灵敏度。

Machine-assisted interpretation of auramine stains substantially increases through-put and sensitivity of microscopic tuberculosis diagnosis.

机构信息

Department for Infectious Diseases, Microbiology and Hygiene, University Hospital of Heidelberg, Im Neuenheimer Feld 324, 69120, Heidelberg, Germany.

MetaSystems Hard & Software GmbH, Robert-Bosch-Str. 6, 68804, Altlussheim, Germany.

出版信息

Tuberculosis (Edinb). 2020 Dec;125:101993. doi: 10.1016/j.tube.2020.101993. Epub 2020 Sep 19.

DOI:10.1016/j.tube.2020.101993
PMID:33010589
Abstract

Of all bacterial infectious diseases, infection by Mycobacterium tuberculosis poses one of the highest morbidity and mortality burdens on humans throughout the world. Due to its speed and cost-efficiency, manual microscopy of auramine-stained sputum smears remains a crucial first-line detection method. However, it puts considerable workload on laboratory staff and suffers from a limited sensitivity. Here we validate a scanning and analysis system that combines fully-automated microscopy with deep-learning based image analysis. After automated scanning, the system summarizes diagnosis-relevant image information and presents it to the microbiologist in order to assist diagnosis. We tested the benefit of the automated scanning and analysis system using 531 slides from routine workflow, of which 56 were from culture positive specimen. Assistance by the scanning and analysis system allowed for a higher sensitivity (40/56 positive slides detected) than manual microscopy (34/56 positive slides detected), while greatly reducing manual slide-analysis time from a recommended 5-15 min to around 10 s per slide on average.

摘要

在所有细菌性传染病中,结核分枝杆菌感染对全球人类造成的发病率和死亡率负担最高。由于其速度和成本效益,痰涂片吖啶橙染色的人工显微镜检查仍然是至关重要的一线检测方法。然而,它给实验室工作人员带来了相当大的工作量,并存在灵敏度有限的问题。在这里,我们验证了一种扫描和分析系统,该系统将全自动显微镜检查与基于深度学习的图像分析相结合。在自动扫描后,该系统总结了与诊断相关的图像信息,并将其呈现给微生物学家,以协助诊断。我们使用常规工作流程中的 531 张载玻片(其中 56 张来自培养阳性标本)来测试自动扫描和分析系统的益处。与手动显微镜检查(检测到 34/56 张阳性载玻片)相比,扫描和分析系统的辅助检测能够提高灵敏度(检测到 40/56 张阳性载玻片),同时大大减少了手动载玻片分析时间,从建议的 5-15 分钟减少到每张载玻片约 10 秒。

相似文献

1
Machine-assisted interpretation of auramine stains substantially increases through-put and sensitivity of microscopic tuberculosis diagnosis.机器辅助解读金胺染色可显著提高显微镜结核病诊断的通量和灵敏度。
Tuberculosis (Edinb). 2020 Dec;125:101993. doi: 10.1016/j.tube.2020.101993. Epub 2020 Sep 19.
2
Retrospective validation of MetaSystems' deep-learning-based digital microscopy platform with assistance compared to manual fluorescence microscopy for detection of mycobacteria.与手动荧光显微镜相比,对MetaSystems基于深度学习的带辅助功能数字显微镜平台进行回顾性验证,以检测分枝杆菌。
J Clin Microbiol. 2024 Mar 13;62(3):e0106923. doi: 10.1128/jcm.01069-23. Epub 2024 Feb 1.
3
No added value of performing Ziehl-Neelsen on auramine-positive samples for tuberculosis diagnostics.对吖啶橙阳性样本进行抗酸染色对结核病诊断没有增值作用。
Int J Tuberc Lung Dis. 2013 Aug;17(8):1094-9. doi: 10.5588/ijtld.12.0773.
4
Light-emitting diode with various sputum smear preparation techniques to diagnose tuberculosis.发光二极管与各种痰涂片制备技术诊断结核病。
Int J Tuberc Lung Dis. 2012;16(3):402-7. doi: 10.5588/ijtld.10.0762.
5
The value of fluorescence microscopy of auramine stained sputum smears for the diagnosis of pulmonary tuberculosis.金胺染色痰涂片荧光显微镜检查对肺结核诊断的价值。
Southeast Asian J Trop Med Public Health. 1998 Dec;29(4):860-3.
6
[Comparison of auramine-rhodamine and Erlich-Ziehl-Neelsen staining methods for the diagnosis of tuberculosis].[用于结核病诊断的金胺-罗丹明染色法与厄利希-齐尔-尼尔森染色法的比较]
Mikrobiyol Bul. 2003 Apr-Jun;37(2-3):131-6.
7
Comparison of machine and manual staining of direct smears for acid-fast bacilli by fluorescence microscopy.荧光显微镜下直接涂片抗酸杆菌机器染色与手工染色的比较。
J Clin Pathol. 1976 Oct;29(10):931-3. doi: 10.1136/jcp.29.10.931.
8
Use of light-emitting diode fluorescence microscopy to detect acid-fast bacilli in sputum.使用发光二极管荧光显微镜检测痰中的抗酸杆菌。
Clin Infect Dis. 2008 Jul 15;47(2):203-7. doi: 10.1086/589248.
9
Blinded rechecking of acid-fast bacilli smears by light-emitting diode microscopy.发光二极管显微镜盲法复查抗酸杆菌涂片。
Int J Tuberc Lung Dis. 2013 Sep;17(9):1220-3. doi: 10.5588/ijtld.12.0881.
10
Enhanced detection of Mycobacteria stained with rhodamine auramine at 37 degrees C.在37摄氏度下增强对用罗丹明金胺染色的分枝杆菌的检测。
Indian J Pathol Microbiol. 2003 Jul;46(3):521-3.

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