An automated DNA computing platform for rapid etiological diagnostics.
Qian MaMingzhi ZhangChao ZhangXiaoyan TengLinlin YangYuan TianJunyan WangDa HanWeihong TanPublished in: Science advances (2022)
Rapid and accurate classification of the etiology for acute respiratory illness not only helps establish timely therapeutic plans but also prevents inappropriate use of antibiotics. Host gene expression patterns in peripheral blood can discriminate bacterial from viral causes of acute respiratory infection (ARI) but suffer from long turnaround time, as well as high cost resulting from the measurement methods of microarrays and next-generation sequencing. Here, we developed an automated DNA computing-based platform that can implement an in silico trained classification model at the molecular level with seven different mRNA expression patterns for accurate diagnosis of ARI etiology in 4 hours. By integrating sample loading, marker amplification, classifier implementation, and results reporting into one platform, we obtained a diagnostic accuracy of 87% in 80 clinical samples without the aid of computer and laboratory technicians. This platform creates opportunities toward an accurate, rapid, low-cost, and automated diagnosis of disease etiology in emergency departments or point-of-care clinics.
Keyphrases
- high throughput
- deep learning
- circulating tumor
- gene expression
- low cost
- machine learning
- liver failure
- peripheral blood
- primary care
- high resolution
- single molecule
- respiratory failure
- loop mediated isothermal amplification
- cell free
- nucleic acid
- dna methylation
- healthcare
- drug induced
- aortic dissection
- sars cov
- mouse model
- health insurance
- emergency department
- hepatitis b virus
- single cell
- circulating tumor cells
- copy number
- resistance training
- adverse drug
- mass spectrometry
- electronic health record
- genome wide
- acute respiratory distress syndrome