Machine Learning-Based Analysis of Sperm Videos and Participant Data for Male Fertility Prediction
Methods for automatic analysis of clinical data are usually targeted towards a specific modality and do not make use of all relevant data available. In the field of male human reproduction, clinical and biological data are not used to its fullest potential. Manual evaluation of a semen sample using...
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Zusammenfassung: | Methods for automatic analysis of clinical data are usually targeted towards
a specific modality and do not make use of all relevant data available. In the
field of male human reproduction, clinical and biological data are not used to
its fullest potential. Manual evaluation of a semen sample using a microscope
is time-consuming and requires extensive training. Furthermore, the validity of
manual semen analysis has been questioned due to limited reproducibility, and
often high inter-personnel variation. The existing computer-aided sperm
analyzer systems are not recommended for routine clinical use due to
methodological challenges caused by the consistency of the semen sample. Thus,
there is a need for an improved methodology. We use modern and classical
machine learning techniques together with a dataset consisting of 85 videos of
human semen samples and related participant data to automatically predict sperm
motility. Used techniques include simple linear regression and more
sophisticated methods using convolutional neural networks. Our results indicate
that sperm motility prediction based on deep learning using sperm motility
videos is rapid to perform and consistent. The algorithms performed worse when
participant data was added. In conclusion, machine learning-based automatic
analysis may become a valuable tool in male infertility investigation and
research. |
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DOI: | 10.48550/arxiv.1910.13327 |