Login / Signup

Where Nanosensors Meet Machine Learning: Prospects and Challenges in Detecting Disease X.

Yong Xiang LeongEmily Xi TanShi Xuan LeongCharlynn Sher Lin KohLam Bang Thanh NguyenJaslyn Ru Ting ChenKelin XiaXing Yi Ling
Published in: ACS nano (2022)
Disease X is a hypothetical unknown disease that has the potential to cause an epidemic or pandemic outbreak in the future. Nanosensors are attractive portable devices that can swiftly screen disease biomarkers on site, reducing the reliance on laboratory-based analyses. However, conventional data analytics limit the progress of nanosensor research. In this Perspective, we highlight the integral role of machine learning (ML) algorithms in advancing nanosensing strategies toward Disease X detection. We first summarize recent progress in utilizing ML algorithms for the smart design and fabrication of custom nanosensor platforms as well as realizing rapid on-site prediction of infection statuses. Subsequently, we discuss promising prospects in further harnessing the potential of ML algorithms in other aspects of nanosensor development and biomarker detection.
Keyphrases
  • machine learning
  • big data
  • deep learning
  • artificial intelligence
  • sars cov
  • loop mediated isothermal amplification
  • current status
  • risk assessment
  • single cell
  • real time pcr
  • sensitive detection