血细胞
人工智能
全血
显微镜
生物医学工程
血涂片
模式识别(心理学)
计算机科学
计算机视觉
病理
免疫学
医学
疟疾
作者
Chao Chen,Yuanjie Gu,Zhibo Xiao,Hailun Wang,Xiaoliang He,Zhilong Jiang,Yan Kong,Cheng Liu,Liang Xue,Javier Vargas,Shouyu Wang
标识
DOI:10.1016/j.aca.2022.340401
摘要
Whole blood cell analysis is widely used in medical applications since its results are indicators for diagnosing a series of diseases. In this work, we report automatic whole blood cell analysis from blood smear using label-free multi-modal imaging with deep neural networks. First, a commercial microscope equipped with our developed Phase Real-time Microscope Camera (PhaseRMiC) obtains both bright-field and quantitative phase images. Then, these images are automatically processed by our designed blood smear recognition networks (BSRNet) that recognize erythrocytes, leukocytes and platelets. Finally, blood cell parameters such as counts, shapes and volumes can be extracted according to both quantitative phase images and automatic recognition results. The proposed whole blood cell analysis technique provides high-quality blood cell images and supports accurate blood cell recognition and analysis. Moreover, this approach requires rather simple and cost-effective setups as well as easy and rapid sample preparations. Therefore, this proposed method has great potential application in blood testing aiming at disease diagnostics.
科研通智能强力驱动
Strongly Powered by AbleSci AI