Issue 21, 2024

Artificial intelligence performance in testing microfluidics for point-of-care

Abstract

Artificial intelligence (AI) is revolutionizing medicine by automating tasks like image segmentation and pattern recognition. These AI approaches support seamless integration with existing platforms, enhancing diagnostics, treatment, and patient care. While recent advancements have demonstrated AI superiority in advancing microfluidics for point of care (POC) diagnostics, a gap remains in comparative evaluations of AI algorithms in testing microfluidics. We conducted a comparative evaluation of AI models specifically for the two-class classification problem of identifying the presence or absence of bubbles in microfluidic channels under various imaging conditions. Using a model microfluidic system with a single channel loaded with 3D transparent objects (bubbles), we challenged each of the tested machine learning (ML) (n = 6) and deep learning (DL) (n = 9) models across different background settings. Evaluation revealed that the random forest ML model achieved 95.52% sensitivity, 82.57% specificity, and 97% AUC, outperforming other ML algorithms. Among DL models suitable for mobile integration, DenseNet169 demonstrated superior performance, achieving 92.63% sensitivity, 92.22% specificity, and 92% AUC. Remarkably, DenseNet169 integration into a mobile POC system demonstrated exceptional accuracy (>0.84) in testing microfluidics at under challenging imaging settings. Our study confirms the transformative potential of AI in healthcare, emphasizing its capacity to revolutionize precision medicine through accurate and accessible diagnostics. The integration of AI into healthcare systems holds promise for enhancing patient outcomes and streamlining healthcare delivery.

Graphical abstract: Artificial intelligence performance in testing microfluidics for point-of-care

Supplementary files

Article information

Article type
Paper
Submitted
13 Aug. 2024
Accepted
16 Sept. 2024
First published
20 Sept. 2024
This article is Open Access
Creative Commons BY-NC license

Lab Chip, 2024,24, 4998-5008

Artificial intelligence performance in testing microfluidics for point-of-care

M. T. Doganay, P. Chakraborty, S. M. Bommakanti, S. Jammalamadaka, D. Battalapalli, A. Madabhushi and M. S. Draz, Lab Chip, 2024, 24, 4998 DOI: 10.1039/D4LC00671B

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