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Mobile Health (mHealth) Viral Diagnostics Enabled with Adaptive Adversarial Learning

机译:移动健康(MHECHEATH)病毒诊断使得适应性对抗性学习

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Deep-learning (DL)-based image processing has potential to revolutionize the use of smartphones in mobile health (mHealth) diagnostics of infectious diseases. However, the high variability in cellphone image data acquisition and the common need for large amounts of specialist-annotated images for traditional DL model training may preclude generalizability of smartphone-based diagnostics. Here, we employed adversarial neural networks with conditioning to develop an easily reconfigurable virus diagnostic platform that leverages a dataset of smartphone-taken microfluidic chip photos to rapidly generate image classifiers for different target pathogens on-demand. Adversarial learning was also used to augment this real image dataset by generating 16,000 realistic synthetic microchip images, through style generative adversarial networks (StyIeGAN). We used this platform, termed smartphone-based pathogen detection resource multiplier using adversarial networks (SPyDERMAN), to accurately detect different intact viruses in clinical samples and to detect viral nucleic acids through integration with CRISPR diagnostics. We evaluated the performance of the system in detecting five different virus targets using 179 patient samples. The generalizability of the system was confirmed by rapid reconfiguration to detect SARS-CoV-2 antigens in nasal swab samples (n = 62) with 100% accuracy. Overall, the SPyDERMAN system may contribute to epidemic preparedness strategies by providing a platform for smartphone-based diagnostics that can be adapted to a given emerging viral agent within days of work.
机译:基于深度学习(DL)的图像处理有可能彻底改变智能手机在传染病移动健康(mHealth)诊断中的应用。然而,手机图像数据采集的高度可变性,以及传统DL模型训练对大量专家注释图像的普遍需求,可能会妨碍基于智能手机的诊断的推广。在这里,我们利用对抗性神经网络和条件反射技术开发了一个易于重新配置的病毒诊断平台,该平台利用智能手机拍摄的微流控芯片照片数据集,根据需要快速生成不同目标病原体的图像分类器。对抗性学习也被用于通过样式生成对抗性网络(StyIeGAN)生成16000幅逼真的合成芯片图像,从而增强这一真实图像数据集。我们使用这个名为基于智能手机的病原体检测资源倍增器(SPyDERMAN)的平台,使用对抗性网络准确检测临床样本中的不同完整病毒,并通过与CRISPR诊断集成来检测病毒核酸。我们使用179例患者样本评估了该系统检测五种不同病毒目标的性能。通过快速重组,以100%的准确率检测鼻拭子样本(n=62)中的SARS-CoV-2抗原,证实了该系统的通用性。总的来说,SPyDERMAN系统为基于智能手机的诊断提供了一个平台,可以在工作几天内适应给定的新出现的病毒剂,从而有助于制定防疫战略。

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