Hill Hunter J, Sullivan William, Cooper Brandon S
Division of Biological Sciences, University of Montana, Missoula, MT 59812, United States.
Department of Molecular, Cell, and Developmental Biology, University of California Santa Cruz, Santa Cruz, CA 95064, United States.
Biol Methods Protoc. 2025 Jan 8;10(1):bpaf002. doi: 10.1093/biomethods/bpaf002. eCollection 2025.
A longstanding challenge in biology is accurately analyzing images acquired using microscopy. Recently, machine learning (ML) approaches have facilitated detailed quantification of images that were refractile to traditional computation methods. Here, we detail a method for measuring pigments in the complex-mosaic adult eye using high-resolution photographs and the pixel classifier [1]. We compare our results to analyses focused on pigment biochemistry and subjective interpretation, demonstrating general overlap, while highlighting the inverse relationship between accuracy and high-throughput capability of each approach. Notably, no coding experience is necessary for image analysis and pigment quantification. When considering time, resolution, and accuracy, our view is that ML-based image analysis is the preferred method.
生物学中一个长期存在的挑战是准确分析通过显微镜获得的图像。最近,机器学习(ML)方法促进了对传统计算方法难以处理的图像进行详细量化。在这里,我们详细介绍一种使用高分辨率照片和像素分类器测量复杂镶嵌成年眼睛中色素的方法[1]。我们将我们的结果与专注于色素生物化学和主观解释的分析进行比较,展示了总体上的重叠,同时突出了每种方法的准确性和高通量能力之间的反比关系。值得注意的是,图像分析和色素定量不需要编码经验。在考虑时间、分辨率和准确性时,我们认为基于ML的图像分析是首选方法。