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

Authors :
Deeksha Kartik
Jahnavi Gandhi
Shenglin Luo
Hemanth Kandula
Eda Erdogmus
Luis G.C. Pacheco
Jonathan Z. Li
Filipe S R Silva
Daniel R. Kuritzkes
Hadi Shafiee
Prudhvi Thirumalaraju
Ahmed Shokr
Raymond T. Chung
Manoj Kumar Kanakasabapathy
Xu G. Yu
Source :
ACS Nano
Publication Year :
2020
Publisher :
American Chemical Society (ACS), 2020.

Abstract

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 (StyleGAN). 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.

Details

Language :
English
ISSN :
1936086X and 19360851
Database :
OpenAIRE
Journal :
ACS Nano
Accession number :
edsair.doi.dedup.....722b1c7449b26fe2e3a734c4905d3252
Full Text :
https://doi.org/10.1021/acsnano.0c06807