Park Hyeon Woo, Mason Earles J, Nitin Nitin
Department of Food Science & Technology, University of California-Davis, Davis, CA 95616, USA.
Department of Biological & Agricultural Engineering, University of California-Davis, Davis, CA 95616, USA; Department of Viticulture & Enology, University of California-Davis, Davis, CA 95616, USA.
Food Res Int. 2025 Feb;201:115604. doi: 10.1016/j.foodres.2024.115604. Epub 2024 Dec 30.
Diverse species of yeasts are commonly associated with food and food production environments. The contamination of food products by spoilage yeasts poses significant challenges, leading to quality degradation and food loss. Similarly, the introduction of undesirable strains during fermentation can cause considerable challenges with the quality and progress of the fermentation process. Conventional detection methods require the isolation of visible yeast colonies for genetic or biochemical characterization, which takes 5-7 days and demands significant labor. This study presents a deep learning-based yeast classification approach that combines conventional cultivation methods, white light optical microscopy of microcolony, and deep learning techniques for rapidly detecting and classifying yeasts. Utilizing deep convolutional neural networks, the model accurately discriminates 7 different yeasts within 6 h, achieving a mPrecision of 96.0 % and a mRecall of 96.3 %. Synthetic image dataset generated by generative adversarial networks (GAN) model further improved the model performance for Debaryomyces hansenii and Wickerhamomyces anomalus, yeast species with lower initial classification performance. With the addition of synthetic images in the training process, Precision for W. anomalus and Recall for D. hansenii increased by 7.7 % and 5.6 %, respectively. The yeast classification model was validated in the presence of microscopic food debris using tomato and tomato juice as representative examples of fresh produce and processed juice. The model maintained high classification accuracy in the presence of food debris (mPrecision and mRecall >93.9 %). Overall, this methodology significantly accelerates the detection and classification of yeast species using conventional cultivation and simple white light microscopy in combination with deep learning. The simplicity, including low cost of the experimental approaches and the robustness of the deep learning model make it a highly applicable approach for routine yeast monitoring and yeast spoilage control in the food industry.
多种酵母物种通常与食品及食品生产环境相关联。腐败酵母对食品的污染带来了重大挑战,导致食品质量下降和损失。同样,在发酵过程中引入不良菌株会给发酵过程的质量和进展造成相当大的问题。传统检测方法需要分离可见的酵母菌落进行基因或生化特征分析,这需要5至7天时间,且耗费大量人力。本研究提出了一种基于深度学习的酵母分类方法,该方法结合了传统培养方法、微菌落的白光光学显微镜观察以及深度学习技术,用于快速检测和分类酵母。利用深度卷积神经网络,该模型在6小时内准确区分了7种不同的酵母,精确率达到96.0%,召回率达到96.3%。由生成对抗网络(GAN)模型生成的合成图像数据集进一步提高了对初始分类性能较低的汉逊德巴利酵母和异常威克汉姆酵母的模型性能。在训练过程中添加合成图像后,异常威克汉姆酵母的精确率和汉逊德巴利酵母的召回率分别提高了7.7%和5.6%。以番茄和番茄汁作为新鲜农产品和加工果汁的代表实例,在存在微观食物残渣的情况下对酵母分类模型进行了验证。该模型在存在食物残渣的情况下保持了较高的分类准确率(精确率和召回率>93.9%)。总体而言,该方法显著加速了利用传统培养和简单白光显微镜结合深度学习对酵母物种的检测和分类。这种方法的简便性,包括实验方法的低成本和深度学习模型的稳健性,使其成为食品工业中常规酵母监测和酵母腐败控制的高度适用方法。