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利用深度卷积神经网络自动解读血培养革兰氏染色

Automated Interpretation of Blood Culture Gram Stains by Use of a Deep Convolutional Neural Network.

机构信息

Department of Pathology, Beth Israel Deaconess Medical Center, Boston, Massachusetts, USA.

Harvard Medical School, Boston, Massachusetts, USA.

出版信息

J Clin Microbiol. 2018 Feb 22;56(3). doi: 10.1128/JCM.01521-17. Print 2018 Mar.

DOI:10.1128/JCM.01521-17
PMID:29187563
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5824030/
Abstract

Microscopic interpretation of stained smears is one of the most operator-dependent and time-intensive activities in the clinical microbiology laboratory. Here, we investigated application of an automated image acquisition and convolutional neural network (CNN)-based approach for automated Gram stain classification. Using an automated microscopy platform, uncoverslipped slides were scanned with a 40× dry objective, generating images of sufficient resolution for interpretation. We collected 25,488 images from positive blood culture Gram stains prepared during routine clinical workup. These images were used to generate 100,213 crops containing Gram-positive cocci in clusters, Gram-positive cocci in chains/pairs, Gram-negative rods, or background (no cells). These categories were targeted for proof-of-concept development as they are associated with the majority of bloodstream infections. Our CNN model achieved a classification accuracy of 94.9% on a test set of image crops. Receiver operating characteristic (ROC) curve analysis indicated a robust ability to differentiate between categories with an area under the curve of >0.98 for each. After training and validation, we applied the classification algorithm to new images collected from 189 whole slides without human intervention. Sensitivity and specificity were 98.4% and 75.0% for Gram-positive cocci in chains and pairs, 93.2% and 97.2% for Gram-positive cocci in clusters, and 96.3% and 98.1% for Gram-negative rods. Taken together, our data support a proof of concept for a fully automated classification methodology for blood-culture Gram stains. Importantly, the algorithm was highly adept at identifying image crops with organisms and could be used to present prescreened, classified crops to technologists to accelerate smear review. This concept could potentially be extended to all Gram stain interpretive activities in the clinical laboratory.

摘要

染色涂片的显微镜解释是临床微生物实验室中最依赖操作人员且耗时最长的活动之一。在这里,我们研究了应用自动化图像采集和基于卷积神经网络(CNN)的方法进行自动化革兰氏染色分类。使用自动化显微镜平台,未开盖的载玻片用 40×干物镜扫描,生成足以进行解释的高分辨率图像。我们从常规临床检查中准备的阳性血培养革兰氏染色中收集了 25488 张图像。这些图像用于生成包含革兰氏阳性球菌成簇、革兰氏阳性球菌成链/对、革兰氏阴性杆菌或背景(无细胞)的 100213 个作物。这些类别被选为概念验证开发的目标,因为它们与大多数血流感染有关。我们的 CNN 模型在图像作物的测试集中达到了 94.9%的分类准确性。接收者操作特征(ROC)曲线分析表明,该模型具有强大的区分能力,每个类别曲线下的面积均大于 0.98。在训练和验证后,我们在没有人工干预的情况下将分类算法应用于从 189 张全载玻片上收集的新图像。对于革兰氏阳性球菌成链和对,灵敏度和特异性分别为 98.4%和 75.0%;对于革兰氏阳性球菌成簇,灵敏度和特异性分别为 93.2%和 97.2%;对于革兰氏阴性杆菌,灵敏度和特异性分别为 96.3%和 98.1%。总的来说,我们的数据支持一种用于血培养革兰氏染色的全自动分类方法的概念验证。重要的是,该算法非常擅长识别带有生物体的图像作物,并且可以用于向技术人员呈现预筛选、分类的作物,以加速涂片审查。这个概念有可能扩展到临床实验室中的所有革兰氏染色解释活动。