Machine learning-enabled multiplexed microfluidic sensors.
Sajjad Rahmani DabbaghFazle RabbiZafer DoğanAli Kemal YetisenSavas TasogluPublished in: Biomicrofluidics (2020)
High-throughput, cost-effective, and portable devices can enhance the performance of point-of-care tests. Such devices are able to acquire images from samples at a high rate in combination with microfluidic chips in point-of-care applications. However, interpreting and analyzing the large amount of acquired data is not only a labor-intensive and time-consuming process, but also prone to the bias of the user and low accuracy. Integrating machine learning (ML) with the image acquisition capability of smartphones as well as increasing computing power could address the need for high-throughput, accurate, and automatized detection, data processing, and quantification of results. Here, ML-supported diagnostic technologies are presented. These technologies include quantification of colorimetric tests, classification of biological samples (cells and sperms), soft sensors, assay type detection, and recognition of the fluid properties. Challenges regarding the implementation of ML methods, including the required number of data points, image acquisition prerequisites, and execution of data-limited experiments are also discussed.
Keyphrases
- high throughput
- machine learning
- deep learning
- big data
- single cell
- electronic health record
- artificial intelligence
- label free
- primary care
- gold nanoparticles
- induced apoptosis
- convolutional neural network
- circulating tumor cells
- nitric oxide
- hydrogen peroxide
- oxidative stress
- mass spectrometry
- endoplasmic reticulum stress
- aqueous solution