International audienceImaging flow cytometry has become a popular technology for bioparticle image analysis because of its capability of capturing thousands of images per second. Nevertheless, the vast number of images generated by imaging flow cytometry imposes great challenges for data analysis especially when the species have similar morphologies. In this work, we report a deep learning-enabled high-throughput system for predicting Cryptosporidium and Giardia in drinking water. This system combines imaging flo
Imaging flow cytometry has been widely adopted in numerous applications such as optical sensing, env...
Data mining is a set of computer-assisted techniques designed to automatically mine large volumes of...
Imaging flow cytometry combines the high event rate nature of flow cytometry with the advantages of ...
International audienceImaging flow cytometry has become a popular technology for bioparticle image a...
Imaging flow cytometry has become a popular technology for bioparticle image analysis because of its...
The consumption of microbial-contaminated food and water is responsible for the deaths of millions o...
International audienceRecent deep neural networks have shown superb performance in analyzing bioimag...
Abstract Background Phytoplankton species identification and counting is a crucial step of water qua...
Protecting drinking water supplies from pathogens such as Cryptosporidium parvum is a major concern ...
posterInternational audienceIn this paper, we present a deep learning-based framework for automated ...
Cytopathologic testing is one of the most critical steps in the diagnosis of diseases, including can...
Imaging flow cytometry (IFC) captures multichannel images of hundreds of thousands of single cells w...
Current detection techniques for Cryptosporidium oocysts and Giardia cysts in water samples combine ...
The parasite Cryptosporidium and along with it the disease Cryptosporidiosis can cause major problem...
Version 1 of the Cryptosporidium dataset, to be used in deep learning models such as YOLO, for which...
Imaging flow cytometry has been widely adopted in numerous applications such as optical sensing, env...
Data mining is a set of computer-assisted techniques designed to automatically mine large volumes of...
Imaging flow cytometry combines the high event rate nature of flow cytometry with the advantages of ...
International audienceImaging flow cytometry has become a popular technology for bioparticle image a...
Imaging flow cytometry has become a popular technology for bioparticle image analysis because of its...
The consumption of microbial-contaminated food and water is responsible for the deaths of millions o...
International audienceRecent deep neural networks have shown superb performance in analyzing bioimag...
Abstract Background Phytoplankton species identification and counting is a crucial step of water qua...
Protecting drinking water supplies from pathogens such as Cryptosporidium parvum is a major concern ...
posterInternational audienceIn this paper, we present a deep learning-based framework for automated ...
Cytopathologic testing is one of the most critical steps in the diagnosis of diseases, including can...
Imaging flow cytometry (IFC) captures multichannel images of hundreds of thousands of single cells w...
Current detection techniques for Cryptosporidium oocysts and Giardia cysts in water samples combine ...
The parasite Cryptosporidium and along with it the disease Cryptosporidiosis can cause major problem...
Version 1 of the Cryptosporidium dataset, to be used in deep learning models such as YOLO, for which...
Imaging flow cytometry has been widely adopted in numerous applications such as optical sensing, env...
Data mining is a set of computer-assisted techniques designed to automatically mine large volumes of...
Imaging flow cytometry combines the high event rate nature of flow cytometry with the advantages of ...