Department of Business and Economics, University of Würzburg, Würzburg, Germany.
Institute of Clinical Neurobiology, University Hospital Würzburg, Würzburg, Germany.
Nat Commun. 2023 Mar 27;14(1):1679. doi: 10.1038/s41467-023-36960-9.
Bioimages frequently exhibit low signal-to-noise ratios due to experimental conditions, specimen characteristics, and imaging trade-offs. Reliable segmentation of such ambiguous images is difficult and laborious. Here we introduce deepflash2, a deep learning-enabled segmentation tool for bioimage analysis. The tool addresses typical challenges that may arise during the training, evaluation, and application of deep learning models on ambiguous data. The tool's training and evaluation pipeline uses multiple expert annotations and deep model ensembles to achieve accurate results. The application pipeline supports various use-cases for expert annotations and includes a quality assurance mechanism in the form of uncertainty measures. Benchmarked against other tools, deepflash2 offers both high predictive accuracy and efficient computational resource usage. The tool is built upon established deep learning libraries and enables sharing of trained model ensembles with the research community. deepflash2 aims to simplify the integration of deep learning into bioimage analysis projects while improving accuracy and reliability.
生物图像由于实验条件、样本特征和成像权衡等原因,经常呈现出低信噪比。可靠地分割这种模糊的图像是困难和繁琐的。在这里,我们介绍 deepflash2,这是一个用于生物图像分析的深度学习支持的分割工具。该工具解决了在对模糊数据应用深度学习模型时可能出现的典型挑战。该工具的训练和评估管道使用多个专家注释和深度模型集合来实现准确的结果。应用程序管道支持各种专家注释用例,并包含不确定性度量形式的质量保证机制。与其他工具相比,deepflash2 既提供了高预测准确性,又有效地利用了计算资源。该工具建立在成熟的深度学习库之上,并支持与研究社区共享训练好的模型集合。deepflash2 的目标是在提高准确性和可靠性的同时,简化深度学习在生物图像分析项目中的集成。