Pathological test type and chemical detection using deep neural networks: a case study using ELISA and LFA assays

Marzia Hoque Tania, M. Kaiser, Kamal Abuhassan, M. A. Hossain
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引用次数: 4

Abstract

Purpose The gradual increase in geriatric issues and global imbalance of the ratio between patients and healthcare professionals has created a demand for intelligent systems with the least error-prone diagnosis results to be used by less medically trained persons and save clinical time. This paper aims at investigating the development of an image-based colourimetric analysis. The purpose of recognising such tests is to support wider users to begin a colourimetric test to be used at homecare settings, telepathology, etc. Design/methodology/approach The concept of an automatic colourimetric assay detection is delivered by utilising two cases. Training Deep Learning (DL) models on thousands of images of these tests using transfer learning, this paper i) classifies the type of the assay, and ii) classifies the colourimetric results. Findings This paper demonstrated that the assay type can be recognised using DL techniques with 100% accuracy within a fraction of a second. Some of the advantages of the pre-trained model over the calibration-based approach are robustness, readiness and suitability to deploy for similar applications within a shorter period of time. Originality/value To the best of our knowledge, this is the first attempt to provide Colourimetric Assay Type Classification (CATC) using DL. Humans are capable to learn thousands of visual classifications in their life. Object recognition may be a trivial task for humans, due to photometric and geometric variabilities along with the high degree of intra-class variabilities it can be a challenging task for machines. However, transforming visual knowledge into machines, as proposed, can support non-experts to better manage their health and reduce some of the burdens on experts.
病理测试类型和化学检测使用深度神经网络:使用ELISA和LFA分析的案例研究
老年问题的逐渐增加和患者与医疗保健专业人员之间比例的全球失衡,创造了对智能系统的需求,该系统的诊断结果具有最少的错误率,可供较少医学培训的人员使用,并节省临床时间。本文旨在研究基于图像的比色分析的发展。承认这种测试的目的是支持更广泛的用户开始在家庭护理环境、精神病理学等方面使用比色测试。设计/方法/方法自动比色分析检测的概念是通过使用两个案例来实现的。使用迁移学习在数千张这些测试的图像上训练深度学习(DL)模型,本文i)对分析的类型进行分类,ii)对比色结果进行分类。研究结果表明,使用DL技术可以在几分之一秒内以100%的准确率识别检测类型。与基于校准的方法相比,预训练模型的一些优点是鲁棒性、就绪性和适用性,可以在较短的时间内部署到类似的应用程序中。据我们所知,这是第一次尝试使用DL提供比色分析类型分类(CATC)。人类一生中能够学习数千种视觉分类。物体识别对人类来说可能是一项微不足道的任务,由于光度和几何的可变性以及高度的类内可变性,这对机器来说可能是一项具有挑战性的任务。然而,将视觉知识转化为机器,可以支持非专家更好地管理他们的健康,并减轻专家的一些负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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