An Artificial Intelligence-Based Computer Vision Model for Human Sperm Concentration, Motility, and Kinematics Analysis

Sahar Shahali , David Mortimer , Moira K. O'Bryan , Robert McLachlan , Deirdre Zander-Fox , Klaus Ackermann , Gulfam Ahmad , Adrian Neild , Reza Nosrati

Smart Medicine ›› 2026, Vol. 5 ›› Issue (1) : e70026

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Smart Medicine ›› 2026, Vol. 5 ›› Issue (1) :e70026 DOI: 10.1002/smmd.70026
RESEARCH ARTICLE
An Artificial Intelligence-Based Computer Vision Model for Human Sperm Concentration, Motility, and Kinematics Analysis
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Abstract

Accurate assessment of sperm concentration and motility is critical for the diagnosis and management of male infertility. However, current methods, manual hemocytometer counting and commercial computer-aided sperm analysis (CASA) systems, are limited by labor intensity, human error, and variable performance under diverse sample conditions. Here, we present an artificial intelligence (AI)-driven computer vision tool for high-resolution, quantitative analysis of sperm motility and concentration. In a prospective study of 26 semen samples (22 patients, 4 donors), we benchmarked the AI model against manual tracking (using Fiji software) and a commercial CASA system (Hamilton Thorne IVOS II). Our method computed concentration and motility parameters, including straight-line velocity (VSL), curvilinear velocity (VCL), average path velocity (VAP), linearity (LIN), amplitude of lateral head displacement (ALHmax), and beat cross frequency (BCF). Calibration using donor samples enabled accurate mapping of tracked sperm counts to concentrations. The AI tool presented a strong linear correlation with manual tracking (R2 = 0.93-0.98; Root Mean Square Error (RMSE) = 3.3-7.3 μm/s for VSL, VCL, VAP), and outperformed CASA in both accuracy and consistency across all motility parameters. Post-calibration, ALHmax and BCF estimates improved substantially, with a 30%-50% reduction in RMSE. Grading of sperm motility by the AI model aligned closely with manual classification, avoiding the systematic misclassification typically observed with CASA. Furthermore, the AI system exhibited higher repeatability and robustness across duplicate samples and variable imaging conditions, with deviations below ± 2%. These findings demonstrate that our AI-based tool offers a quantitative and reliable alternative to current semen analysis platforms, supporting improved fertility diagnostics and potentially a more informative treatment process.

Keywords

andrology / artificial intelligence / computer vision / semen analysis / sperm motility

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Sahar Shahali, David Mortimer, Moira K. O'Bryan, Robert McLachlan, Deirdre Zander-Fox, Klaus Ackermann, Gulfam Ahmad, Adrian Neild, Reza Nosrati. An Artificial Intelligence-Based Computer Vision Model for Human Sperm Concentration, Motility, and Kinematics Analysis. Smart Medicine, 2026, 5(1): e70026 DOI:10.1002/smmd.70026

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2026 The Author(s). Smart Medicine published by Wiley-VCH GmbH on behalf of Wenzhou Institute, University of Chinese Academy of Sciences.

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