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基于深度卷积神经网络的精子活动力评估与世界卫生组织分类。

Sperm motility assessed by deep convolutional neural networks into WHO categories.

机构信息

Department of Life Sciences and Health, OsloMet - Oslo Metropolitan University, Oslo, Norway.

Simula Metropolitan Center for Digital Engineering, Oslo, Norway.

出版信息

Sci Rep. 2023 Sep 7;13(1):14777. doi: 10.1038/s41598-023-41871-2.

Abstract

Semen analysis is central in infertility investigation. Manual assessment of sperm motility according to the WHO recommendations is the golden standard, and extensive training is a requirement for accurate and reproducible results. Deep convolutional neural networks (DCNN) are especially suitable for image classification. In this study, we evaluated the performance of the DCNN ResNet-50 in predicting the proportion of sperm in the WHO motility categories. Two models were evaluated using tenfold cross-validation with 65 video recordings of wet semen preparations from an external quality assessment programme for semen analysis. The corresponding manually assessed data was obtained from several of the reference laboratories, and the mean values were used for training of the DCNN models. One model was trained to predict the three categories progressive motility, non-progressive motility, and immotile spermatozoa. Another model was used in predicting four categories, where progressive motility was differentiated into rapid and slow. The resulting average mean absolute error (MAE) was 0.05 and 0.07, and the average ZeroR baseline was 0.09 and 0.10 for the three-category and the four-category model, respectively. Manual and DCNN-predicted motility was compared by Pearson's correlation coefficient and by difference plots. The strongest correlation between the mean manually assessed values and DCNN-predicted motility was observed for % progressively motile spermatozoa (Pearson's r = 0.88, p < 0.001) and % immotile spermatozoa (r = 0.89, p < 0.001). For rapid progressive motility, the correlation was moderate (Pearson's r = 0.673, p < 0.001). The median difference between manual and predicted progressive motility was 0 and 2 for immotile spermatozoa. The largest bias was observed at high and low percentages of progressive and immotile spermatozoa. The DCNN-predicted value was within the range of the interlaboratory variation of the results for most of the samples. In conclusion, DCNN models were able to predict the proportion of spermatozoa into the WHO motility categories with significantly lower error than the baseline. The best correlation between the manual and the DCNN-predicted motility values was found for the categories progressive and immotile. Of note, there was considerable variation between the mean motility values obtained for each category by the reference laboratories, especially for rapid progressive motility, which impacts the training of the DCNN models.

摘要

精液分析是不孕症调查的核心。根据世卫组织建议,手动评估精子活力是金标准,而广泛的培训是获得准确和可重复结果的要求。深度卷积神经网络(DCNN)特别适用于图像分类。在这项研究中,我们评估了 DCNN ResNet-50 在预测世卫组织运动类别中精子比例方面的性能。使用来自精液分析外部质量评估计划的 65 个湿精液制备视频记录,通过十折交叉验证评估了两个模型。相应的手动评估数据来自几个参考实验室,平均值用于训练 DCNN 模型。一个模型用于预测三个类别:前向运动、非前向运动和不动精子。另一个模型用于预测四个类别,其中前向运动分为快速和慢速。由此产生的平均平均绝对误差(MAE)分别为 0.05 和 0.07,而三个类别模型和四个类别模型的平均零基数分别为 0.09 和 0.10。通过 Pearson 相关系数和差异图比较手动和 DCNN 预测的活力。观察到手动评估值和 DCNN 预测活力之间最强的相关性是在 %前向运动精子(Pearson's r=0.88,p<0.001)和%不动精子(r=0.89,p<0.001)上。对于快速前向运动,相关性适中(Pearson's r=0.673,p<0.001)。手动和预测的前向运动之间的中位数差异为不动精子为 0,为 2。在高百分比和低百分比的前向和不动精子时,观察到最大的偏差。对于大多数样本,DCNN 预测值在实验室间结果变异范围内。总之,DCNN 模型能够以显著低于基线的误差预测精子比例进入世卫组织运动类别。在手动和 DCNN 预测的活力值之间发现了最好的相关性,用于前进和不动的类别。值得注意的是,参考实验室为每个类别获得的平均活力值之间存在相当大的差异,特别是对于快速前向运动,这会影响 DCNN 模型的训练。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fc80/10484948/2f37896c19a0/41598_2023_41871_Fig1_HTML.jpg

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