Rehn Fabian, Pils Marlene, Bujnicki Tuyen, Bannach Oliver, Willbold Dieter
Institut für Physikalische Biologie, Heinrich-Heine-Universität Düsseldorf, Universitätsstr. 1, 40225, Düsseldorf, Germany.
Institute of Biological Information Processing (Structural Biochemistry: IBI-7), Forschungszentrum Jülich GmbH, Wilhelm-Johnen-Straße, 52428, Jülich, Germany.
Sci Rep. 2025 Sep 12;15(1):32482. doi: 10.1038/s41598-025-18943-6.
To ensure analytical accuracy in fluorescence microscopy image analysis, robust artifact detection is essential. For large datasets or time-sensitive analyses, automation is advisable, as it not only reduces time and costs but also eliminates human bias and enhances reproducibility. Although artificial intelligence is commonly employed for artifact detection, it is typically limited to recognizing artifact types that have been previously learned, often necessitating large training datasets. This study proposes an approach for an automated detection of previously unseen artifacts without the need for a training set of artifact-laden images. Multiple datasets were assembled using images generated by our surface-based intensity distribution analysis (sFIDA) technology during different experiments. A convolutional autoencoder was trained on a dataset of artifact-free images to reproduce preprocessed images accurately. Artifact-laden images are subsequently detected by computing the difference between the input and output of the model, with increased discrepancies indicating the presence of artifacts. The proposed model is capable of classifying artifacts across different datasets with an average accuracy of 95.5%. Additionally, the model was able to detect unseen artifacts of various types, including differences in cause, structure, size and intensity. The findings demonstrate that convolutional autoencoders provide a lightweight, but effective method for detecting artifact-laden images. While the method was tested only on sFIDA images, its design, which does not rely on an artifact specific training set, suggests potential for use across various microscopy techniques.
为确保荧光显微镜图像分析的准确性,强大的伪像检测至关重要。对于大型数据集或对时间敏感的分析,自动化是可取的,因为它不仅能减少时间和成本,还能消除人为偏差并提高可重复性。虽然人工智能通常用于伪像检测,但它通常仅限于识别先前学习过的伪像类型,这往往需要大量的训练数据集。本研究提出了一种无需伪像图像训练集即可自动检测未见伪像的方法。我们使用基于表面的强度分布分析(sFIDA)技术在不同实验中生成的图像组装了多个数据集。在无伪像图像数据集上训练卷积自动编码器,以准确再现预处理图像。随后,通过计算模型输入和输出之间的差异来检测带有伪像的图像,差异越大表明存在伪像。所提出的模型能够对不同数据集的伪像进行分类,平均准确率为95.5%。此外,该模型能够检测各种类型的未见伪像,包括成因、结构、大小和强度方面的差异。研究结果表明,卷积自动编码器为检测带有伪像的图像提供了一种轻量级但有效的方法。虽然该方法仅在sFIDA图像上进行了测试,但其设计不依赖于特定伪像训练集,表明其在各种显微镜技术中具有应用潜力。