Prediction of testicular histology in azoospermia patients through deep learning-enabled two-dimensional grayscale ultrasound.

Jia-Ying Hu, Zhen-Zhe Lin, Li Ding, Zhi-Xing Zhang, Wan-Ling Huang, Sha-Sha Huang, Bin Li, Xiao-Yan Xie, Ming-De Lu, Chun-Hua Deng, Hao-Tian Lin, Yong Gao, Zhu Wang
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Abstract

Testicular histology based on testicular biopsy is an important factor for determining appropriate testicular sperm extraction surgery and predicting sperm retrieval outcomes in patients with azoospermia. Therefore, we developed a deep learning (DL) model to establish the associations between testicular grayscale ultrasound images and testicular histology. We retrospectively included two-dimensional testicular grayscale ultrasound from patients with azoospermia (353 men with 4357 images between July 2017 and December 2021 in The First Affiliated Hospital of Sun Yat-sen University, Guangzhou, China) to develop a DL model. We obtained testicular histology during conventional testicular sperm extraction. Our DL model was trained based on ultrasound images or fusion data (ultrasound images fused with the corresponding testicular volume) to distinguish spermatozoa presence in pathology (SPP) and spermatozoa absence in pathology (SAP) and to classify maturation arrest (MA) and Sertoli cell-only syndrome (SCOS) in patients with SAP. Areas under the receiver operating characteristic curve (AUCs), accuracy, sensitivity, and specificity were used to analyze model performance. DL based on images achieved an AUC of 0.922 (95% confidence interval [CI]: 0.908-0.935), a sensitivity of 80.9%, a specificity of 84.6%, and an accuracy of 83.5% in predicting SPP (including normal spermatogenesis and hypospermatogenesis) and SAP (including MA and SCOS). In the identification of SCOS and MA, DL on fusion data yielded better diagnostic performance with an AUC of 0.979 (95% CI: 0.969-0.989), a sensitivity of 89.7%, a specificity of 97.1%, and an accuracy of 92.1%. Our study provides a noninvasive method to predict testicular histology for patients with azoospermia, which would avoid unnecessary testicular biopsy.

通过支持深度学习的二维灰度超声波预测无精子症患者的睾丸组织学。
基于睾丸活检的睾丸组织学是确定合适的睾丸取精手术和预测无精子症患者取精结果的重要因素。因此,我们开发了一种深度学习(DL)模型来建立睾丸灰度超声图像与睾丸组织学之间的关联。我们回顾性地纳入了无精子症患者的二维睾丸灰度超声图像(中国广州中山大学附属第一医院在2017年7月至2021年12月期间共采集了353名男性患者的4357张图像)来开发DL模型。我们在常规睾丸取精过程中获得了睾丸组织学。我们根据超声图像或融合数据(超声图像与相应的睾丸体积融合)训练了DL模型,以区分病理精子存在(SPP)和病理精子缺失(SAP),并对SAP患者的成熟停滞(MA)和仅性腺细胞综合征(SCOS)进行分类。接受者操作特征曲线下面积(AUC)、准确性、灵敏度和特异性用于分析模型的性能。在预测 SPP(包括正常精子发生和精子发生不足)和 SAP(包括 MA 和 SCOS)方面,基于图像的 DL 的 AUC 为 0.922(95% 置信区间 [CI]:0.908-0.935),灵敏度为 80.9%,特异性为 84.6%,准确率为 83.5%。在 SCOS 和 MA 的鉴定中,融合数据的 DL 具有更好的诊断性能,其 AUC 为 0.979(95% CI:0.969-0.989),灵敏度为 89.7%,特异性为 97.1%,准确性为 92.1%。我们的研究为无精症患者提供了一种预测睾丸组织学的无创方法,可避免不必要的睾丸活检。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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