Schary Weronika, Paskali Filip, Rentschler Simone, Ruppert Christoph, Wagner Gabriel E, Steinmetz Ivo, Deigner Hans-Peter, Kohl Matthias
Medical and Life Sciences Faculty, Furtwangen University, 78054 Villingen-Schwenningen, Germany.
Institute of Precision Medicine, Furtwangen University, 78054 Villingen-Schwenningen, Germany.
Diagnostics (Basel). 2022 Feb 25;12(3):589. doi: 10.3390/diagnostics12030589.
Point-of-care (POC) diagnostics, in particular lateral flow assays (LFA), represent a great opportunity for rapid, precise, low-cost and accessible diagnosis of disease. Especially with the ongoing coronavirus disease 2019 (COVID-19) pandemic, rapid point-of-care tests are becoming everyday tools for identification and prevention. Using smartphones as biosensors can enhance POC devices as portable, low-cost platforms for healthcare and medicine, food and environmental monitoring, improving diagnosis and documentation in remote, low-resource locations. We present an open-source, all-in-one smartphone-based system for quantitative analysis of LFAs. It consists of a 3D-printed photo box, a smartphone for image acquisition, and an R Shiny software package with modular, customizable analysis workflow for image editing, analysis, data extraction, calibration and quantification of the assays. This system is less expensive than commonly used hardware and software, so it could prove very beneficial for diagnostic testing in the context of pandemics, as well as in low-resource countries.
即时检测(POC)诊断,特别是侧向流动分析(LFA),为疾病的快速、精确、低成本和可及性诊断提供了巨大机遇。尤其是在当前2019冠状病毒病(COVID-19)大流行的情况下,快速即时检测正成为识别和预防的日常工具。将智能手机用作生物传感器可以增强即时检测设备,使其成为用于医疗保健、医学、食品和环境监测的便携式、低成本平台,改善偏远、资源匮乏地区的诊断和记录。我们展示了一种基于智能手机的开源一体化系统,用于对侧向流动分析进行定量分析。它由一个3D打印的光盒、一个用于图像采集的智能手机以及一个R Shiny软件包组成,该软件包具有用于图像编辑、分析、数据提取、校准和分析定量的模块化、可定制分析工作流程。该系统比常用的硬件和软件成本更低,因此在大流行背景下以及资源匮乏国家的诊断测试中可能会被证明非常有益。