Reduction of Biosensor False Responses and Time Delay Using Dynamic Response and Theory-Guided Machine Learning.

Journal: ACS sensors
Published Date:

Abstract

Here, we provide a new methodology for reducing false results and time delay of biosensors, which are barriers to industrial, healthcare, military, and consumer applications. We show that integrating machine learning with domain knowledge in biosensing can complement and improve the biosensor accuracy and speed relative to the performance achieved by traditional regression analysis of a standard curve based on the biosensor steady-state response. The methodology was validated by rapid and accurate quantification of microRNA across the nanomolar to femtomolar range using the dynamic response of cantilever biosensors. Theory-guided feature engineering improved the performance and efficiency of several classification models relative to the performance achieved using traditional feature engineering methods (TSFRESH). In addition to the entire dynamic response, the technique enabled rapid and accurate quantification of the target analyte concentration and false-positive and false-negative results using the initial transient response, thereby reducing the required data acquisition time (i.e., time delay). We show that model explainability can be achieved by combining theory-guided feature engineering and feature importance analysis. The performance of multiple classifiers using both TSFRESH- and theory-based features from the biosensor's initial transient response was similar to that achieved using the entire dynamic response with data augmentation. We also show that the methodology can guide design of experiments for high-performance biosensing applications, specifically, the selection of data acquisition parameters (e.g., time) based on potential application-dependent performance thresholds. This work provides an example of the opportunities for improving biosensor performance, such as reducing biosensor false results and time delay, using explainable machine learning models supervised by domain knowledge in biosensing.

Authors

  • Junru Zhang
    Grado Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA, 24061, USA.
  • Purna Srivatsa
    Department of Computer Science, Virginia Tech, Blacksburg, VA, 24061, USA.
  • Fazel Haq Ahmadzai
    Grado Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA, 24061, USA.
  • Yang Liu
    Department of Computer Science, Hong Kong Baptist University, Hong Kong, China.
  • Xuerui Song
    children's health prevention department of Xi'an Children's Hospital.
  • Anuj Karpatne
    Department of Computer Science, Virginia Tech, Arlington, Virginia, USA.
  • Zhenyu Kong
    Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA, 24060, USA.
  • Blake N Johnson
    Grado Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA, 24061, USA; School of Neuroscience, Virginia Tech, Blacksburg, VA, 24061, USA; Department of Materials Science and Engineering, Virginia Tech, Blacksburg, VA, 24061, USA; Department of Chemical Engineering, Virginia Tech, Blacksburg, VA, 24061, USA. Electronic address: bnj@vt.edu.