Detection and Categorisation of Multilevel High-sensitivity Cardiovascular Biomarkers from Lateral Flow Immunoassay Images via Recurrent Neural Networks

Min Jing, Donal Mc Laughlin, David Steele, Sara Mc Namee, Brian Mac Namee, P. Cullen, D. Finlay, J. Mclaughlin
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引用次数: 3

Abstract

: Lateral Flow Immunoassays (LFA) have the potential to provide low cost, rapid and highly efficacious Point-of-Care (PoC) diagnostic testing in resource limited settings. Traditional LFA testing is semi-quantitative based on the calibration curve, which faces challenges in the detection of multilevel high-sensitivity biomarkers due its low sensitivity. This paper proposes a novel framework in which the LFA images are acquired from a designed CMOS reader system under controlled lighting. Unlike most existing approaches based on image intensity, the proposed system does not require detection of region of interest (ROI), instead each row of the LFA image was considered as time series signals. The Long Short-Term Memory (LSTM) network was deployed to classify the LFA data obtained from cardiovascular biomarker, C-Reactive Protein (CRP), at eight concentration levels (within the range 0-5mg/L) that are aligned with clinically actionable categories. The performance under different arrangements for input dimension and parameters were evaluated. The preliminary results show that the proposed LSTM outperforms other popular classification methods, which demonstrate the capability of the proposed system to detect high-sensitivity CRP and suggests the potential of applications for early risk assessment of cardiovascular diseases (CVD).
利用递归神经网络从侧流免疫分析图像中检测和分类多级高灵敏度心血管生物标志物
侧流免疫测定法(LFA)有潜力在资源有限的环境中提供低成本、快速和高效的即时诊断检测。传统的LFA检测是基于校准曲线的半定量检测,由于灵敏度低,在多水平高灵敏度生物标志物的检测中面临挑战。本文提出了一种新的框架,在该框架中,LFA图像从设计的CMOS读取系统中获取,并在受控照明下进行采集。与大多数现有的基于图像强度的方法不同,该系统不需要检测感兴趣区域(ROI),而是将LFA图像的每一行视为时间序列信号。利用长短期记忆(LSTM)网络对心血管生物标志物c -反应蛋白(CRP)获得的LFA数据进行分类,将其分为8个浓度水平(0-5mg/L范围内),这些浓度水平与临床可操作类别相一致。对不同输入尺寸和参数布置下的性能进行了评价。初步结果表明,所提出的LSTM优于其他流行的分类方法,这表明所提出的系统具有检测高灵敏度CRP的能力,并表明该系统在心血管疾病(CVD)早期风险评估中的应用潜力。
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