Abstract Differential cell counts is a challenging task when applying computer vision algorithms to pathology. Existing approaches to train cell recognition require high availability of multi-class segmentation and/or bounding box annotations and suffer in performance when objects are tightly clustered. We present differential count network (“DCNet”), an annotation efficient modality that utilises keypoint detection to locate in brightfield images the centre points of cells (not nuclei) and their cell class. The single centre point annotation for DCNet lowered burden for experts to generate ground truth data by 77.1% compared to bounding box labeling. Yet centre point annotation still enabled high accuracy when training DCNet on a multi-cla...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
Cell counting from 2D images and 3D volumes is critical to a wide range of research in biology, medi...
The diagnosis of plasma cell neoplasms requires accurate, and ideally precise, percentages. This pla...
Problem: Recently, deep convolutional neural networks have greatly improved our ability to develop r...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
In biology and medicine, cell counting is one of the most important elements of cytometry, with appl...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...
Cell quantification in histopathology images plays a significant role in understanding and diagnosin...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
As the basic units of the human body structure and function, cells have a considerable influence on ...
This paper concerns automated cell counting in microscopy images. The approach we take is to adapt C...
Single-cell mass cytometry, also known as cytometry by time of flight (CyTOF) is a powerful high-thr...
With the rapid increases in hardware capability in recent years, machine learning is becoming more p...
Classification of cell images is conventionally done manually in hematology laboratories by medical ...
A major challenge in cell and developmental biology is the automated identification and quantitation...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
Cell counting from 2D images and 3D volumes is critical to a wide range of research in biology, medi...
The diagnosis of plasma cell neoplasms requires accurate, and ideally precise, percentages. This pla...
Problem: Recently, deep convolutional neural networks have greatly improved our ability to develop r...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
In biology and medicine, cell counting is one of the most important elements of cytometry, with appl...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...
Cell quantification in histopathology images plays a significant role in understanding and diagnosin...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
As the basic units of the human body structure and function, cells have a considerable influence on ...
This paper concerns automated cell counting in microscopy images. The approach we take is to adapt C...
Single-cell mass cytometry, also known as cytometry by time of flight (CyTOF) is a powerful high-thr...
With the rapid increases in hardware capability in recent years, machine learning is becoming more p...
Classification of cell images is conventionally done manually in hematology laboratories by medical ...
A major challenge in cell and developmental biology is the automated identification and quantitation...
Precise and quick monitoring of key cytometric features such as cell count, cell size, cell morpholo...
Cell counting from 2D images and 3D volumes is critical to a wide range of research in biology, medi...
The diagnosis of plasma cell neoplasms requires accurate, and ideally precise, percentages. This pla...