Karabağ Cefa, Ortega-Ruíz Mauricio Alberto, Reyes-Aldasoro Constantino Carlos
giCentre, Department of Computer Science, School of Science and Technology, City, University of London, London EC1V 0HB, UK.
Departamento de Ingeniería, Campus Coyoacán, Universidad del Valle de México, Ciudad de México C.P. 04910, Mexico.
J Imaging. 2023 Mar 1;9(3):59. doi: 10.3390/jimaging9030059.
This paper investigates the impact of the amount of training data and the shape variability on the segmentation provided by the deep learning architecture U-Net. Further, the correctness of ground truth (GT) was also evaluated. The input data consisted of a three-dimensional set of images of HeLa cells observed with an electron microscope with dimensions 8192×8192×517. From there, a smaller region of interest (ROI) of 2000×2000×300 was cropped and manually delineated to obtain the ground truth necessary for a quantitative evaluation. A qualitative evaluation was performed on the 8192×8192 slices due to the lack of ground truth. Pairs of patches of data and labels for the classes nucleus, nuclear envelope, cell and background were generated to train U-Net architectures from scratch. Several training strategies were followed, and the results were compared against a traditional image processing algorithm. The correctness of GT, that is, the inclusion of one or more nuclei within the region of interest was also evaluated. The impact of the extent of training data was evaluated by comparing results from 36,000 pairs of data and label patches extracted from the odd slices in the central region, to 135,000 patches obtained from every other slice in the set. Then, 135,000 patches from several cells from the 8192×8192 slices were generated automatically using the image processing algorithm. Finally, the two sets of 135,000 pairs were combined to train once more with 270,000 pairs. As would be expected, the accuracy and Jaccard similarity index improved as the number of pairs increased for the ROI. This was also observed qualitatively for the 8192×8192 slices. When the 8192×8192 slices were segmented with U-Nets trained with 135,000 pairs, the architecture trained with automatically generated pairs provided better results than the architecture trained with the pairs from the manually segmented ground truths. This suggests that the pairs that were extracted automatically from many cells provided a better representation of the four classes of the various cells in the 8192×8192 slice than those pairs that were manually segmented from a single cell. Finally, the two sets of 135,000 pairs were combined, and the U-Net trained with these provided the best results.
本文研究了训练数据量和形状变异性对深度学习架构U-Net提供的分割结果的影响。此外,还评估了地面真值(GT)的正确性。输入数据由一组三维的HeLa细胞图像组成,这些图像是通过电子显微镜观察得到的,尺寸为8192×8192×517。从这些数据中,裁剪出一个2000×2000×300的较小感兴趣区域(ROI),并进行手动勾勒,以获得定量评估所需的地面真值。由于缺乏地面真值,对8192×8192的切片进行了定性评估。生成了细胞核、核膜、细胞和背景类别的数据块和标签对,用于从头训练U-Net架构。采用了几种训练策略,并将结果与传统图像处理算法进行了比较。还评估了GT的正确性,即感兴趣区域内是否包含一个或多个细胞核。通过比较从中心区域奇数切片中提取的36,000对数据和标签块与从数据集中每隔一个切片获得的135,000个块的结果,评估了训练数据范围的影响。然后,使用图像处理算法自动从8192×8192切片中的几个细胞生成135,000个块。最后,将两组135,000对数据合并,再次使用270,000对数据进行训练。正如预期的那样,对于ROI,随着数据对数量的增加,准确率和杰卡德相似性指数有所提高。对于8192×8192的切片,也从定性上观察到了这一点。当用135,000对数据训练的U-Net对8192×8192切片进行分割时,用自动生成的数据对训练的架构比用手动分割的地面真值数据对训练的架构提供了更好的结果。这表明,从多个细胞中自动提取的数据对比从单个细胞中手动分割的数据对能更好地表示8192×8192切片中各种细胞的四类情况。最后,将两组135,000对数据合并,用这些数据训练的U-Net提供了最佳结果。