多种真菌显微图像菌丝的自动检测与裁剪

Luis Gabriel A. Cajucom, Erinn Giannice T. Abigan, Josh Daniel L. Ong, P. Abu, M. R. Estuar
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摘要

古巴尖孢镰刀菌是一种土壤传播的真菌,已成为当前香蕉产业的主要威胁。如果不及早发现和制止,这种真菌的存在可以摧毁整个种植园。本研究的目的是创建一个卷积神经网络(CNN),可以在显微镜图像中检测菌丝。通过检测菌丝,可以确认土壤中真菌的存在。为了创建一个可以检测菌丝的模型,将真菌的各种显微图像数据集分为菌丝图像和非菌丝图像(标记为其他图像)。由此创建了四个后续数据集,即:(1)亮场,(2)暗场,(3)荧光,(4)所有显微镜技术。对每个数据集使用预训练的ResNet34和ResNet152模型,并在这些模型上使用热图来分析模型如何寻找菌丝。ResNet34模型在明场、暗场、荧光和所有显微镜技术下的准确率分别为86.38%、87.31%、88.37%和87.60%。ResNet152模型在明场、暗场、荧光和所有显微镜技术下的准确率分别为87.97%、86.79%、89.37%和87.69%。此外,为了进一步提高准确性,使用边缘检测和轮廓检测对数据集进行自动裁剪,以创建裁剪后的菌丝照片。结果显示,明场平均检测准确率为87.17%,暗场为86.90%,荧光为91.22%,所有显微镜技术的平均检测准确率为89.99%。一般来说,荧光显微镜的效果最好,但从每个模型生成的热图显示,使用其他显微镜技术也可以检测到菌丝。这项研究可以作为未来研究的垫脚石,包括通过菌丝和其他特征对真菌进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Detection and Cropping of Hyphae in Microscopic Images of Various Fungi
Fusarium oxysporum f. sp. cubense is a soil-borne fungi that has become a major threat to the current banana industry. The presence of this fungi can destroy entire plantations if not detected and stopped early enough. The purpose of this study is to create a Convolutional Neural Network (CNN) that can detect hyphae in microscopic images. By detecting hyphae, the presence of fungi in the soil can be confirmed. To create a model that can detect hyphae, a dataset of various microscopic images of fungi was sorted into hyphae images and non-hyphae images (labeled as others). Four subsequent datasets were created from this, namely: (1) bright field, (2) dark field, (3) fluorescent, and (4) all microscopy techniques. Pretrained ResNet34 and ResNet152 models were used for each of the datasets and the use of heatmaps on these models was done to analyze how the models looked for hyphae. The ResNet34 model achieved accuracies of 86.38% for bright field, 87.31% for dark field, 88.37% for fluorescent, and 87.60% for all microscopy techniques. The ResNet152 model achieved accuracies of 87.97% for bright field, 86.79% for dark field, 89.37% for fluorescent, and 87.69% for all microscopy techniques. Additionally, to improve the accuracy even further, automated cropping using edge detection and contour detection was done on the datasets to create cropped photos of hyphae. This resulted in average test accuracies of 87.17% for bright field, 86.90% for dark field, 91.22% for fluorescent, and 89.99% for all microscopy techniques. Generally, fluorescent consistently performed the best, but the heatmaps generated from each model show that hyphae can also be detected using the other microscopy techniques. This study can act as a steppingstone for future studies involving the classification of fungi through hyphae and other features.
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