Leukocyte differential based on an imaging and impedance flow cytometry of microfluidics coupled with deep neural networks.
Xiao ChenXukun HuangJie ZhangMinruihong WangDeyong ChenYueying LiXuzhen QinJunbo WangJian ChenPublished in: Cytometry. Part A : the journal of the International Society for Analytical Cytology (2024)
The differential of leukocytes functions as the first indicator in clinical examinations. However, microscopic examinations suffered from key limitations of low throughputs in classifying leukocytes while commercially available hematology analyzers failed to provide quantitative accuracies in leukocyte differentials. A home-developed imaging and impedance flow cytometry of microfluidics was used to capture fluorescent images and impedance variations of single cells traveling through constrictional microchannels. Convolutional and recurrent neural networks were adopted for data processing and feature extractions, which were then fused by a support vector machine to realize the four-part differential of leukocytes. The classification accuracies of the four-part leukocyte differential were quantified as 95.4% based on fluorescent images plus the convolutional neural network, 90.3% based on impedance variations plus the recurrent neural network, and 99.3% on the basis of fluorescent images, impedance variations, and deep neural networks. Based on single-cell fluorescent imaging and impedance variations coupled with deep neural networks, the four-part leukocyte differential can be realized with almost 100% accuracy.
Keyphrases
- neural network
- deep learning
- convolutional neural network
- flow cytometry
- peripheral blood
- high resolution
- quantum dots
- living cells
- dual energy
- single cell
- machine learning
- artificial intelligence
- induced apoptosis
- label free
- magnetic resonance imaging
- cell death
- mass spectrometry
- fluorescence imaging
- cell proliferation
- endoplasmic reticulum stress
- single molecule
- photodynamic therapy
- magnetic resonance