Microfluidic Devices Controlled by Machine Learning with Failure Experiments.
Kenta FukadaMichiko SeyamaPublished in: Analytical chemistry (2022)
A critical microchannel technique is to isolate specific objects, such as cells, in a biological solution. Generally, this particle sorting is achieved by designing a microfluidic device and tuning its control values; however, unpredictable motions of the particle mixture make this approach time-consuming and labor intensive. Here, we show that microfluidic control with reinforced learning characterized by utilizing failure results can maximize the training effect with limited data. This method uses microscopic images of the separation process, including failed conditions (inappropriate flow speeds or dilution rates of biological samples), and insights for efficient learning are provided by setting gradient rewards according to the degree of failure. Once learning is performed in this manner, the optimal separating condition for other related samples can be automatically found. Failed experiments are not wasteful; they increase training data and make it easier to reach correct answers. This device control could be useful in automatic synthetic chemistry, biomedical analysis, and microfabrication robotics.
Keyphrases
- machine learning
- high throughput
- single cell
- circulating tumor cells
- deep learning
- big data
- electronic health record
- induced apoptosis
- cell cycle arrest
- oxidative stress
- optical coherence tomography
- convolutional neural network
- cell death
- endoplasmic reticulum stress
- cell proliferation
- signaling pathway
- drug discovery
- high resolution