Oiticica Pedro R A, Angelim Monara K S C, Soares Juliana C, Soares Andrey C, Proença-Módena José L, Bruno Odemir M, Oliveira Osvaldo N
São Carlos Institute of Physics (IFSC), University of São Paulo (USP), São Carlos, SP 13566-590, Brazil.
Nanotechnology National Laboratory for Agriculture (LNNA), Embrapa Instrumentação, São Carlos, SP 13560-970, Brazil.
ACS Sens. 2025 Feb 28;10(2):1407-1418. doi: 10.1021/acssensors.4c03451. Epub 2025 Feb 17.
In this article, we introduce a diagnostic platform comprising an optical microscopy image analysis system coupled with machine learning. Its efficacy is demonstrated in detecting SARS-CoV-2 virus particles at concentrations as low as 1 PFU (plaque-forming unit) per milliliter by processing images from an immunosensor on a plasmonic substrate. This high performance was achieved by classifying images with the support vector machine (SVM) algorithm and the MobileNetV3_small convolutional neural network (CNN) model, which attained an accuracy of 91.6% and a specificity denoted by an F1 score of 96.9% for the negative class. Notably, this approach enabled the detection of SARS-CoV-2 concentrations 1000 times lower than the limit of detection achieved with localized surface plasmon resonance (LSPR) sensing using the same immunosensors. It is also significant that a binary classification between control and positive classes using the MobileNetV3_small model and the random forest algorithm achieved an accuracy of 96.5% for SARS-CoV-2 concentrations down to 1 PFU/mL. At such low concentrations, straightforward screening of newly infected patients may be feasible. In supporting experiments, we verified that texture was the main contributor to the distinguishability of images taken at different SARS-CoV-2 concentrations, indicating that the combination of ML and image analysis may be applied to any biosensor whose detection mechanism is based on adsorption.
在本文中,我们介绍了一个由光学显微镜图像分析系统与机器学习相结合的诊断平台。通过处理来自等离子体基底上免疫传感器的图像,该平台在检测浓度低至每毫升1个空斑形成单位(PFU)的严重急性呼吸综合征冠状病毒2(SARS-CoV-2)病毒颗粒方面的功效得到了证明。这种高性能是通过使用支持向量机(SVM)算法和MobileNetV3_small卷积神经网络(CNN)模型对图像进行分类实现的,对于阴性类别,其准确率达到了91.6%,F1分数表示的特异性为96.9%。值得注意的是,这种方法能够检测到的SARS-CoV-2浓度比使用相同免疫传感器的局部表面等离子体共振(LSPR)传感所达到的检测限低1000倍。同样重要的是,使用MobileNetV3_small模型和随机森林算法对对照和阳性类别进行二元分类,对于低至1 PFU/mL的SARS-CoV-2浓度,准确率达到了96.5%。在如此低的浓度下,对新感染患者进行直接筛查可能是可行的。在支持性实验中,我们验证了纹理是不同SARS-CoV-2浓度下所拍摄图像可区分性的主要因素,这表明机器学习和图像分析的结合可应用于任何检测机制基于吸附的生物传感器。