Transforming Rapid Diagnostic Tests into Trusted Diagnostic Tools in LMIC using AI

Krishnam Gupta, Yongshao Ruan, Ahmed Ibrahim, Rouella Mendonca, Shawna Cooper, Sarah Morris, David Hattery
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Abstract

In low and middle-income countries (LMICs), Rapid Diagnostic Tests (RDTs) are often the only way to diagnose diseases such as malaria, HIV, and COVID efficiently and cost effectively, especially in rural settings. However, basic RDTs are often misinterpreted, reducing their reliability for medical treatment or official case counts. AI-based mobile solutions are difficult to implement in LMICs due to limited resources available on commonly used phones and unstable Internet connectivity. HealthPulse AI algorithms aim to address these issues by providing a lightweight, yet highly accurate library of Computer Vision (CV) models for the detection and interpretation of common RDTs for conditions such as malaria, HIV, and COVID. The complete system can function end-to-end offline on phones with as little as 1 GB of total device memory. In addition to detecting the RDT type and interpreting the results, the system can flag image quality issues such as bad lighting or blurriness. If required, it can ask the user for a photo retake in real-time, reducing the need for re-testing. The system provides accurate and consistent result interpretation for surveillance or decision support use cases, helping health systems better understand current disease prevalence which may help mitigate the next pandemic. The AI algorithm pipeline uses deep learning to analyze RDT images, with multiple computer vision models working together to confirm the presence of the expected RDT, flag adverse image conditions, and provide accurate and consistent results. HealthPulse AI prioritizes privacy, accountability, and accessibility while aiming to revolutionize care delivery in LMICs by transforming low-cost RDTs into trusted diagnostic tools using computer vision and AI.
使用人工智能将快速诊断测试转换为LMIC中可信的诊断工具
在低收入和中等收入国家(LMICs),快速诊断检测(RDTs)往往是高效且具有成本效益地诊断疟疾、艾滋病毒和COVID等疾病的唯一方法,特别是在农村地区。然而,基本的rdt经常被误解,降低了它们在医疗或官方病例计数方面的可靠性。基于人工智能的移动解决方案很难在中低收入国家实施,因为常用手机上的可用资源有限,而且互联网连接不稳定。HealthPulse人工智能算法旨在通过提供一个轻量级但高度精确的计算机视觉(CV)模型库来解决这些问题,用于检测和解释疟疾、艾滋病毒和COVID等疾病的常见rdt。完整的系统可以在手机上端到端离线运行,设备总内存只有1gb。除了检测RDT类型并解释结果外,该系统还可以标记图像质量问题,例如光线不好或模糊。如果需要,它可以要求用户实时重拍照片,减少重新测试的需要。该系统为监测或决策支持用例提供准确和一致的结果解释,帮助卫生系统更好地了解当前的疾病流行情况,从而有助于减轻下一次大流行。人工智能算法流水线使用深度学习来分析RDT图像,多个计算机视觉模型协同工作以确认预期RDT的存在,标记不利的图像条件,并提供准确和一致的结果。HealthPulse AI优先考虑隐私、问责制和可访问性,同时旨在通过使用计算机视觉和人工智能将低成本rdt转变为可信赖的诊断工具,从而彻底改变低收入国家的医疗服务。
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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