Automatic offline-capable smartphone paper-based microfluidic device for efficient biomarker detection of Alzheimer's disease

Anal Chim Acta. 2024 Jun 15:1308:342575. doi: 10.1016/j.aca.2024.342575. Epub 2024 Apr 6.

Abstract

Background: Alzheimer's disease (AD) is a prevalent neurodegenerative disease with no effective treatment. Efficient and rapid detection plays a crucial role in mitigating and managing AD progression. Deep learning-assisted smartphone-based microfluidic paper analysis devices (μPADs) offer the advantages of low cost, good sensitivity, and rapid detection, providing a strategic pathway to address large-scale disease screening in resource-limited areas. However, existing smartphone-based detection platforms usually rely on large devices or cloud servers for data transfer and processing. Additionally, the implementation of automated colorimetric enzyme-linked immunoassay (c-ELISA) on μPADs can further facilitate the realization of smartphone μPADs platforms for efficient disease detection.

Results: This paper introduces a new deep learning-assisted offline smartphone platform for early AD screening, offering rapid disease detection in low-resource areas. The proposed platform features a simple mechanical rotating structure controlled by a smartphone, enabling fully automated c-ELISA on μPADs. Our platform successfully applied sandwich c-ELISA for detecting the β-amyloid peptide 1-42 (Aβ 1-42, a crucial AD biomarker) and demonstrated its efficacy in 38 artificial plasma samples (healthy: 19, unhealthy: 19, N = 6). Moreover, we employed the YOLOv5 deep learning model and achieved an impressive 97 % accuracy on a dataset of 1824 images, which is 10.16 % higher than the traditional method of curve-fitting results. The trained YOLOv5 model was seamlessly integrated into the smartphone using the NCNN (Tencent's Neural Network Inference Framework), enabling deep learning-assisted offline detection. A user-friendly smartphone application was developed to control the entire process, realizing a streamlined "samples in, answers out" approach.

Significance: This deep learning-assisted, low-cost, user-friendly, highly stable, and rapid-response automated offline smartphone-based detection platform represents a good advancement in point-of-care testing (POCT). Moreover, our platform provides a feasible approach for efficient AD detection by examining the level of Aβ 1-42, particularly in areas with low resources and limited communication infrastructure.

Keywords: Alzheimer's disease; Colorimetric enzyme-linked immunoassay (c-ELISA); Deep learning; Microfluidic paper analysis devices (μPADs); Offline; Smartphone.

MeSH terms

  • Alzheimer Disease* / blood
  • Alzheimer Disease* / diagnosis
  • Amyloid beta-Peptides* / analysis
  • Amyloid beta-Peptides* / blood
  • Automation
  • Biomarkers* / analysis
  • Biomarkers* / blood
  • Deep Learning
  • Enzyme-Linked Immunosorbent Assay*
  • Humans
  • Lab-On-A-Chip Devices
  • Microfluidic Analytical Techniques / instrumentation
  • Paper*
  • Peptide Fragments / analysis
  • Peptide Fragments / blood
  • Smartphone*

Substances

  • Biomarkers
  • Amyloid beta-Peptides
  • Peptide Fragments
  • amyloid beta-protein (1-42)