DNA断裂
一致性
不育
精液
精子
人工智能
男性不育
男科
生物
精液分析
卷积神经网络
一致性(知识库)
碎片(计算)
计算机科学
深度学习
计算生物学
模式识别(心理学)
列线图
人工授精
一致性指数
统计
一致相关系数
精子活力
公制(单位)
相关性
生物信息学
生物医学工程
辅助生殖技术
机器学习
定量评估
作者
Yan Jin,Yujie Zou,Yueyun Weng,Zhaoyi Ye,Xiaoyang Chen,Zhengwu Liu,Tailang Yin,Sheng Liu,Yan Zhang,Cheng Lei
出处
期刊:Lab on a Chip
[Royal Society of Chemistry]
日期:2026-01-01
卷期号:26 (6): 2012-2022
摘要
correlation analysis. Convolutional neural networks are then employed to extract deep learning features for enhanced classification. Following measurements of 31 clinical semen samples and analysis of the resulting 136 070 images, the classification accuracy for individual sperm with low, medium, and high DFI is 82.61%, 80.39%, and 82.06% respectively, while sample-level classification achieves complete agreement with clinical tests through group-based majority voting mechanisms. Furthermore, we establish a quantitative comprehensive score metric integrating classification proportions across DFI groups, enabling continuous numerical assessment. This score shows strong concordance with clinical DFI values and closer consistency with conventional semen parameters. We believe that this work provides an intelligent, high-throughput, label-free sperm DFI assessment method, demonstrating potential as a solution for clinical diagnosis of male infertility.
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