Label-free cell analysis is essential to personalized genomics, cancer diagnostics, and drug development as it avoids adverse effects of staining reagents on cellular viability and cell signaling. However, currently available label-free cell assays mostly rely only on a single feature and lack sufficient differentiation. Also, the sample size analyzed by these assays is limited due to their low throughput. Here, we integrate feature extraction and deep learning with high-throughput quantitative imaging enabled by photonic time stretch, achieving record high accuracy in label-free cell classification. Our system captures quantitative optical phase and intensity images and extracts multiple biophysical features of individual cells. These biop...
Live-cell imaging has opened an exciting window into the role cellular heterogeneity plays in dynami...
Cytopathologic testing is one of the most critical steps in the diagnosis of diseases, including can...
Recent advances in computer vision and machine learning underpin a collection of algorithms with an ...
Label-free cell analysis is essential to personalized genomics, cancer diagnostics, and drug develop...
Deep learning has achieved spectacular performance in image and speech recognition and synthesis. It...
High-throughput multivariate sensing is essential for high-content cellular phenotypic screening, wh...
This book introduces time-stretch quantitative phase imaging (TS-QPI), a high-throughput label-free ...
International audienceThe detection of cancer stem-like cells (CSCs) is mainly based on molecular ma...
Monitoring of adherent cells in culture is routinely performed in biological and clinical laboratori...
It is demonstrated that cells can be classified by pattern recognition of the subcellular structure ...
Objective and Impact Statement. We propose a rapid and accurate blood cell identification method exp...
We report the application of supervised machine learning to the automated classification of lipid dr...
Image cytometry is the analysis of cell properties from microscopy image data and is used ubiquitous...
We show that deep convolutional neural networks combined with nonlinear dimension reduction enable r...
We show that deep convolutional neural networks combined with nonlinear dimension reduction enable r...
Live-cell imaging has opened an exciting window into the role cellular heterogeneity plays in dynami...
Cytopathologic testing is one of the most critical steps in the diagnosis of diseases, including can...
Recent advances in computer vision and machine learning underpin a collection of algorithms with an ...
Label-free cell analysis is essential to personalized genomics, cancer diagnostics, and drug develop...
Deep learning has achieved spectacular performance in image and speech recognition and synthesis. It...
High-throughput multivariate sensing is essential for high-content cellular phenotypic screening, wh...
This book introduces time-stretch quantitative phase imaging (TS-QPI), a high-throughput label-free ...
International audienceThe detection of cancer stem-like cells (CSCs) is mainly based on molecular ma...
Monitoring of adherent cells in culture is routinely performed in biological and clinical laboratori...
It is demonstrated that cells can be classified by pattern recognition of the subcellular structure ...
Objective and Impact Statement. We propose a rapid and accurate blood cell identification method exp...
We report the application of supervised machine learning to the automated classification of lipid dr...
Image cytometry is the analysis of cell properties from microscopy image data and is used ubiquitous...
We show that deep convolutional neural networks combined with nonlinear dimension reduction enable r...
We show that deep convolutional neural networks combined with nonlinear dimension reduction enable r...
Live-cell imaging has opened an exciting window into the role cellular heterogeneity plays in dynami...
Cytopathologic testing is one of the most critical steps in the diagnosis of diseases, including can...
Recent advances in computer vision and machine learning underpin a collection of algorithms with an ...