Tsai Vincent Fs, Zhuang Bin, Pong Yuan-Hung, Hsieh Ju-Ton, Chang Hong-Chiang
Department of Urology, Ten-Chan General Hospital, Taoyuan, Taiwan.
Department of Urology, National Taiwan University Hospital, Taipei, Taiwan.
JMIR Med Inform. 2020 Nov 19;8(11):e20031. doi: 10.2196/20031.
Human sperm quality fluctuates over time. Therefore, it is crucial for couples preparing for natural pregnancy to monitor sperm motility.
This study verified the performance of an artificial intelligence-based image recognition and cloud computing sperm motility testing system (Bemaner, Createcare) composed of microscope and microfluidic modules and designed to adapt to different types of smartphones.
Sperm videos were captured and uploaded to the cloud with an app. Analysis of sperm motility was performed by an artificial intelligence-based image recognition algorithm then results were displayed. According to the number of motile sperm in the vision field, 47 (deidentified) videos of sperm were scored using 6 grades (0-5) by a male-fertility expert with 10 years of experience. Pearson product-moment correlation was calculated between the grades and the results (concentration of total sperm, concentration of motile sperm, and motility percentage) computed by the system.
Good correlation was demonstrated between the grades and results computed by the system for concentration of total sperm (r=0.65, P<.001), concentration of motile sperm (r=0.84, P<.001), and motility percentage (r=0.90, P<.001).
This smartphone-based sperm motility test (Bemaner) accurately measures motility-related parameters and could potentially be applied toward the following fields: male infertility detection, sperm quality test during preparation for pregnancy, and infertility treatment monitoring. With frequent at-home testing, more data can be collected to help make clinical decisions and to conduct epidemiological research.
人类精子质量随时间波动。因此,对于准备自然受孕的夫妇来说,监测精子活力至关重要。
本研究验证了一种基于人工智能的图像识别和云计算精子活力检测系统(Bemaner,Createcare)的性能,该系统由显微镜和微流控模块组成,旨在适应不同类型的智能手机。
通过应用程序捕获精子视频并上传到云端。采用基于人工智能的图像识别算法对精子活力进行分析,然后显示结果。根据视野中活动精子的数量,由一位有10年经验的男性生育专家对47段(匿名)精子视频使用6个等级(0 - 5)进行评分。计算等级与系统计算结果(总精子浓度、活动精子浓度和活力百分比)之间的Pearson积矩相关性。
系统计算的总精子浓度(r = 0.65,P <.001)、活动精子浓度(r = 0.84,P <.001)和活力百分比(r = 0.90,P <.001)与等级之间显示出良好的相关性。
这种基于智能手机的精子活力检测(Bemaner)能够准确测量与活力相关的参数,并有可能应用于以下领域:男性不育检测、备孕期间的精子质量检测以及不育治疗监测。通过频繁的居家检测,可以收集更多数据以帮助做出临床决策和进行流行病学研究。