| Literature DB >> 32658734 |
Hamza Osman Ilhan1, Gorkem Serbes2, Nizamettin Aydin3.
Abstract
Sperm Morphology is the key step in the assessment of sperm quality. Due to the effect of misleading human factors in manual assessments, computer-based techniques should be employed in the analysis. In this study, a computation framework including multi-stage cascade connected preprocessing techniques, region based descriptor features, and non-linear kernel SVM based learning is proposed for the classification of any stained sperm images for the assessment of the morphology. The proposed framework was evaluated on two sperm morphology datasets: the Human Sperm Head Morphology dataset (HuSHeM) and Sperm Morphology Image Data Set (SMIDS). The results indicate that cascading the preprocessing techniques used in the proposed framework, such as wavelet based local adaptive de-noising, modified overlapping group shrinkage, image gradient, and automatic directional masking, increased the classification accuracy by 10% and 5% for the HuSHeM and SMIDS, respectively. The proposed framework results in better overall accuracy than most state-of-the-art methods, while having significant advantages, such as eliminating the exhaustive manual orientation and cropping operations of the competitors with reasonable rates of consumption of time and source.Entities:
Keywords: Descriptor based feature extraction; Directional masking technique; Maximally stable extremal regions; Sperm morphology classification; Support vector machines; Wavelet based local adaptive de-noising
Mesh:
Year: 2020 PMID: 32658734 DOI: 10.1016/j.compbiomed.2020.103845
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589