Rio-Alvarez Angel, Marcos Pablo García, González Paula Puerta, Serrano-Pertierra Esther, Novelli Antonello, Fernández-Sánchez M Teresa, González Víctor M
Computer Science Department, University of Oviedo, Oviedo, Spain.
Biomedical Engineering Center (BME), University of Oviedo, Oviedo, Spain.
Med Biol Eng Comput. 2025 Feb;63(2):545-560. doi: 10.1007/s11517-024-03202-z. Epub 2024 Oct 17.
The counting and characterization of neurons in primary cultures have long been areas of significant scientific interest due to their multifaceted applications, ranging from neuronal viability assessment to the study of neuronal development. Traditional methods, often relying on fluorescence or colorimetric staining and manual segmentation, are time consuming, labor intensive, and prone to error, raising the need for the development of automated and reliable methods. This paper delves into the evaluation of three pivotal deep learning techniques: semantic segmentation, which allows for pixel-level classification and is solely suited for characterization; object detection, which focuses on counting and locating neurons; and instance segmentation, which amalgamates the features of the other two but employing more intricate structures. The goal of this research is to discern what technique or combination of those techniques yields the optimal results for automatic counting and characterization of neurons in images of neuronal cultures. Following rigorous experimentation, we conclude that instance segmentation stands out, providing superior outcomes for both challenges.
由于原代培养神经元的多方面应用,从神经元活力评估到神经元发育研究,对其进行计数和表征一直是具有重大科学意义的领域。传统方法通常依赖荧光或比色染色以及手动分割,既耗时又费力,而且容易出错,因此需要开发自动化且可靠的方法。本文深入评估了三种关键的深度学习技术:语义分割,它允许进行像素级分类,仅适用于表征;目标检测,专注于神经元的计数和定位;实例分割,它融合了其他两种技术的特点,但采用了更复杂的结构。本研究的目的是确定哪种技术或这些技术的组合能在神经元培养图像中对神经元进行自动计数和表征时产生最佳结果。经过严格实验,我们得出结论,实例分割表现突出,在这两项任务中都提供了更优的结果。