Counting cells is a cornerstone of tracking disease progression in neuroscience. A common approach for this process is having trained researchers individually select and count cells within an image, which is not only difficult to standardize but also very time-consuming. While tools exist to automatically count cells in images, the accuracy and accessibility of such tools can be improved. Thus, we introduce a novel tool ACCT: Automatic Cell Counting with Trainable Weka Segmentation which allows for flexible automatic cell counting via object segmentation after user-driven training. ACCT is demonstrated with a comparative analysis of publicly available images of neurons and an in-house dataset of immunofluorescence-stained microglia cells. For comparison, both datasets were manually counted to demonstrate the applicability of ACCT as an accessible means to automatically quantify cells in a precise manner without the need for computing clusters or advanced data preparation.
CITATION STYLE
Kataras, T. J., Jang, T. J., Koury, J., Singh, H., Fok, D., & Kaul, M. (2023). ACCT is a fast and accessible automatic cell counting tool using machine learning for 2D image segmentation. Scientific Reports, 13(1). https://doi.org/10.1038/s41598-023-34943-w
Mendeley helps you to discover research relevant for your work.