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基于像素的机器学习与图像重建用于生物样本中斑点酶联免疫吸附测定病原体诊断

Pixel-Based Machine Learning and Image Reconstitution for Dot-ELISA Pathogen Diagnosis in Biological Samples.

作者信息

Anastassopoulou Cleo, Tsakris Athanasios, Patrinos George P, Manoussopoulos Yiannis

机构信息

Department of Microbiology, Medical School, University of Athens, Athens, Greece.

Laboratory of Pharmacogenomics and Individualized Therapy, Department of Pharmacy, School of Health Sciences, University of Patras, Patras, Greece.

出版信息

Front Microbiol. 2021 Mar 3;12:562199. doi: 10.3389/fmicb.2021.562199. eCollection 2021.

Abstract

Serological methods serve as a direct or indirect means of pathogen infection diagnosis in plant and animal species, including humans. Dot-ELISA (DE) is an inexpensive and sensitive, solid-state version of the microplate enzyme-linked immunosorbent assay, with a broad range of applications in epidemiology. Yet, its applicability is limited by uncertainties in the qualitative output of the assay due to overlapping dot colorations of positive and negative samples, stemming mainly from the inherent color discrimination thresholds of the human eye. Here, we report a novel approach for unambiguous DE output evaluation by applying machine learning-based pattern recognition of image pixels of the blot using an impartial predictive model rather than human judgment. Supervised machine learning was used to train a classifier algorithm through a built multivariate logistic regression model based on the RGB ("Red," "Green," "Blue") pixel attributes of a scanned DE output of samples of known infection status to a model pathogen (). Based on the trained and cross-validated algorithm, pixel probabilities of unknown samples could be predicted in scanned DE output images, which would then be reconstituted by pixels having probabilities above a cutoff. The cutoff may be selected at will to yield desirable false positive and false negative rates depending on the question at hand, thus allowing for proper dot classification of positive and negative samples and, hence, accurate diagnosis. Potential improvements and diagnostic applications of the proposed versatile method that translates unique pathogen antigens to the universal basic color language are discussed.

摘要

血清学方法是诊断动植物(包括人类)病原体感染的直接或间接手段。斑点酶联免疫吸附测定法(Dot-ELISA,DE)是微孔板酶联免疫吸附测定法的一种廉价且灵敏的固态形式,在流行病学中有广泛应用。然而,由于阳性和阴性样本的斑点颜色重叠,该检测方法定性结果存在不确定性,主要源于人眼固有的颜色辨别阈值,这限制了其适用性。在此,我们报告一种新方法,通过使用基于机器学习的模式识别技术,对印迹的图像像素进行分析,采用公正的预测模型而非人工判断,以明确评估DE结果。利用监督式机器学习,通过基于已知感染状态的样本扫描DE输出的RGB(“红色”“绿色”“蓝色”)像素属性构建的多元逻辑回归模型,训练分类算法。基于训练和交叉验证的算法,可以预测未知样本在扫描DE输出图像中的像素概率,然后由概率高于临界值的像素重构图像。根据手头的问题,可以随意选择临界值以产生理想的假阳性和假阴性率,从而实现对阳性和阴性样本的正确斑点分类,进而进行准确诊断。本文还讨论了这种将独特病原体抗原转化为通用基本颜色语言的通用方法的潜在改进和诊断应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1290/7986560/121bc9f9ad5b/fmicb-12-562199-g001.jpg

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