注释
分割
计算机科学
人工智能
可扩展性
深度学习
机器学习
训练集
路径(计算)
模式识别(心理学)
比例(比率)
可视化
感知
培训(气象学)
生物
频道(广播)
边距(机器学习)
标记数据
卷积神经网络
监督学习
特征(语言学)
图像分割
自动化
作者
Anish J. Virdi,Ajit P. Joglekar
标识
DOI:10.1091/mbc.e25-02-0076
摘要
Deep learning-based segmentation models can accelerate the analysis of high-throughput microscopy data by automatically identifying and classifying cells in images. However, the datasets needed to train these models are typically assembled via laborious hand-annotation. This limits their scale and diversity, which in turn limits model performance. We present Cell-APP (Cellular Annotation and Perception Pipeline), a tool that automates the annotation of high-quality training data for transmitted-light (TL) cell segmentation. Cell-APP uses two inputs-paired TL and nuclear fluorescence images-and operates in two main steps. First, it extracts each cell's location from the nuclear fluorescence channel and provides these locations to promptable deep learning models to generate cell masks. Then, it classifies each cell as mitotic or nonmitotic based on nuclear features. Together, these masks and classifications form the basis for cell segmentation training data. By training vision-transformer-based models on Cell-APP-generated datasets, we demonstrate how Cell-APP enables the creation of both cell line-specific and multi-cell line segmentation models. Cell-APP thus empowers laboratories to tailor cell segmentation models to their needs and outlines a scalable path to creating general models for the research community.
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