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A preliminary study of sperm identification in microdissection testicular sperm extraction samples with deep convolutional neural networks

机译:深度卷积神经网络微粉睾丸精子提取样品中精子鉴定的初步研究

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摘要

Sperm identification and selection is an essential task when processing human testicular samples for in vitro fertilization. Locating and identifying sperm cell(s) in human testicular biopsy samples is labor intensive and time consuming. We developed a new computer-aided sperm analysis (CASA) system, which utilizes deep learning for near human-level performance on testicular sperm extraction (TESE), trained on a custom dataset. The system automates the identification of sperm in testicular biopsy samples. A dataset of 702 de-identified images from testicular biopsy samples of 30 patients was collected. Each image was normalized and passed through glare filters and diffraction correction. The data were split 80%, 10%, and 10% into training, validation, and test sets, respectively. Then, a deep object detection network, composed of a feature extraction network and object detection network, was trained on this dataset. The model was benchmarked against embryologists' performance on the detection task. Our deep learning CASA system achieved a mean average precision (mAP) of 0.741, with an average recall (AR) of 0.376 on our dataset. Our proposed method can work in real time; its speed is effectively limited only by the imaging speed of the microscope. Our results indicate that deep learning-based technologies can improve the efficiency of finding sperm in testicular biopsy samples.
机译:精子识别和选择是加工人睾丸样品以体外施肥时的基本任务。在人睾丸活检样品中定位和识别精子细胞是劳动密集和耗时的。我们开发了一种新的计算机辅助精子分析(CASA)系统,利用深度学习在睾丸精子提取(TESE)上的近近人级性能,在定制数据集上培训。该系统可使睾丸活检样品中的精子识别。收集来自30名患者的睾丸活检样品的702个去鉴定图像的数据集。每个图像被归一化并通过眩光过滤器和衍射校正。数据分别将80%,10%和10%分为培训,验证和测试集。然后,在该数据集上培训由特征提取网络和对象检测网络组成的深对象检测网络。该模型在检测任务上反对胚胎素的性能。我们的深度学习CASA系统实现了0.741的平均平均精度(MAP),平均召回(AR)在我们的数据集上的0.376。我们所提出的方法可以实时工作;其速度仅通过显微镜的成像速度有效地限制。我们的结果表明,基于深度的学习技术可以提高睾丸活检样品中的发现精子的效率。

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