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U-Net with optimal thresholding for small blob detection in medical images

机译:U-Net,具有用于医学图像中的小BLOB检测的最佳阈值

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Biomarkers identified from medical images are valuable for disease diagnosis and staging. Object detection and segmentation are important for improving the accuracy of biomarker identification. It can be challenging to detect objects, especially small objects or “blobs,” from 3D images secondary to low image resolution, noise, and overlap. Traditional small blob filters generate significant false positives as noise components can be misidentified as regions of interest. Recent advancements in U-Net-a deep learning model-have yielded more effective denoising capabilities that make it more suitable for small blob detection. However, unless the intensity threshold is appropriately established, U-Net tends to “under-segment To address under-segmentation, we propose a combination of U-Net paired with optimal threshold detection via Otsu's thresholding. Two sets of experiments have been performed to compare this approach with both Hessian-based blob detection and U-Net with standard thresholding. The first experiment evaluated 20 simulated 3D images-comprising gloms with a varied size distribution, and noise. The second experiment examined MR images from 11 mouse kidneys with the objective of detecting all glomeruli. Our results support the conclusion that the proposed U-Net with optimal thresholding outperforms the Hessian-based detection and U-Net with standard thresholding approaches.
机译:从医学图像识别的生物标志物用于疾病的诊断和分期价值。物体检测和分割是用于改善的生物标记鉴定的准确性很重要的。它可以是具有挑战性的,以检测物体,尤其是小的物体或“斑点”,从三维图像中继发于低的图像分辨率,噪声,和重叠。传统的小斑点滤镜产生显著误报噪声成分可以被误认为是感兴趣的区域。最新进展在掌中,深刻学习模式,取得了更有效的降噪功能,使之更适合于小斑点检测。然而,除非强度阈值被适当地建立,U-Net的趋向于“下段下分段地址,我们提出了通过大津的阈值的最佳阈值探测成对U形网的组合。已经进行了两组实验来比较两者基于黑森州,斑点检测和U-Net的标准阈值这种方法。第一个实验中评估20幅模拟3D图像,包括gloms具有不同大小分布,和噪声。第二个实验中从11个与物镜的检测所有肾小球小鼠肾脏检查MR图像。我们的研究结果支持这一建议的掌中与最佳阈值优于基于黑森州检测和U-Net的标准阈值接近的结论。

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