"Smart Vision for Reproduction: Detecting Gamete DNA Quality with YOLO"

Authors

  • Javed Jainul Mulani, S. A. Patil, Shagupta. M. Mulla

Keywords:

YOLO algorithm, DNA integrity, reproductive health, artificial intelligence, diagnostic accuracy

Abstract

This research focuses on proposing the use of YOLO (You Only Look Once) algorithm for detecting and categorizing DNA health condition of sperms and eggs, which is very significant in reproductive health. The data set consisted of 10 000 images of sperms and eggs that have been labeled, and were split into training, validation, and test datasets. The YOLO algorithm showed very high accuracy of 97%. 5% better than previous techniques in identification of DNA irregularities while at the same time being 3% faster. Comparing YOLO with such algorithms as Faster R-CNN and SSD, we can see that the precision rate of this algorithm grows into the mark of 96. Recall rate recorded was 95.3% while on yield rate only 3% responded to the study. 8 %, which is better for real time applications. The findings of the study conveys the benefits of the application of AI and deep learning in improving diagnostic precision and speed in Reproductive medicine. Based on the results, people get new opportunities of studying AI applications in healthcare diagnosis that aim at developing more profound approaches to the issue.

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Published

30.10.2024

How to Cite

Javed Jainul Mulani. (2024). "Smart Vision for Reproduction: Detecting Gamete DNA Quality with YOLO". International Journal of Intelligent Systems and Applications in Engineering, 12(23s), 2829 –. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/7500

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Section

Research Article