2,302 research outputs found

    Sperm cell segmentation in digital micrographs based on convolutional neural networks using u-net architecture

    Get PDF
    Human infertility is considered a serious disease of the the reproductive system that affects more than 10% of couples worldwide,and more than 30% of reported cases are related to men. The crucial step in evaluating male in fertility is a semen analysis, highly dependent on sperm morphology. However,this analysis is done at the laboratory manually and depends mainly on the doctor’s experience. Besides,it is laborious, and there is also a high degree of interlaboratory variability in the results. This article proposes applying a specialized convolutional neural network architecture (U-Net),which focuses on the segmentation of sperm cells in micrographs to overcome these problems.The results showed high scores for the model segmentation metrics such as precisión (93%), IoU score (86%),and DICE score of 93%. Moreover,we can conclude that U-net architecture turned out to be a good option to carry out the segmentation of sperm cells

    VISEM-Tracking, a human spermatozoa tracking dataset

    Full text link
    A manual assessment of sperm motility requires microscopy observation, which is challenging due to the fast-moving spermatozoa in the field of view. To obtain correct results, manual evaluation requires extensive training. Therefore, computer-assisted sperm analysis (CASA) has become increasingly used in clinics. Despite this, more data is needed to train supervised machine learning approaches in order to improve accuracy and reliability in the assessment of sperm motility and kinematics. In this regard, we provide a dataset called VISEM-Tracking with 20 video recordings of 30 seconds (comprising 29,196 frames) of wet sperm preparations with manually annotated bounding-box coordinates and a set of sperm characteristics analyzed by experts in the domain. In addition to the annotated data, we provide unlabeled video clips for easy-to-use access and analysis of the data via methods such as self- or unsupervised learning. As part of this paper, we present baseline sperm detection performances using the YOLOv5 deep learning (DL) model trained on the VISEM-Tracking dataset. As a result, we show that the dataset can be used to train complex DL models to analyze spermatozoa

    Automated Sperm Assessment Framework and Neural Network Specialized for Sperm Video Recognition

    Full text link
    Infertility is a global health problem, and an increasing number of couples are seeking medical assistance to achieve reproduction, at least half of which are caused by men. The success rate of assisted reproductive technologies depends on sperm assessment, in which experts determine whether sperm can be used for reproduction based on morphology and motility of sperm. Previous sperm assessment studies with deep learning have used datasets comprising images that include only sperm heads, which cannot consider motility and other morphologies of sperm. Furthermore, the labels of the dataset are one-hot, which provides insufficient support for experts, because assessment results are inconsistent between experts, and they have no absolute answer. Therefore, we constructed the video dataset for sperm assessment whose videos include sperm head as well as neck and tail, and its labels were annotated with soft-label. Furthermore, we proposed the sperm assessment framework and the neural network, RoSTFine, for sperm video recognition. Experimental results showed that RoSTFine could improve the sperm assessment performances compared to existing video recognition models and focus strongly on important sperm parts (i.e., head and neck).Comment: Accepted at Winter Conference on Applications of Computer Vision (WACV) 202

    Image Processing Methods for Automatic in-vitro Morphology Analysis

    Get PDF
    The study of male infertility has become a priority for biologists and researchers in the last decades as a consequence of the declining birth rates. This problem has also become a major public health with economic and psychosocial consequences. Analysis of human sperm cells, for instance, is widely used in investigations related to male infertility and assisted conception. Sperm samples are usually analysed by health professionals using microscope devices following a manual process to count and describe their morphology. Nevertheless, this practice is prone to errors and time consuming. This thesis proposes a novel framework based on image processing and machine learning methods to automate the analysis of sperm cells. The proposed method presented an average accuracy performance of 96.4% classify automatically sperm cells in three classes: normal, abnormal and non sperm cell. Performance results have been obtained in challenging conditions: presence of uneven illumination, unwanted noise and blurring caused by the focus drift and occlusion of objects as a result of the overlapping of sperm cells, among others. The object of interest, sperm cells, captured in the images used in this research did not receive any staining or fixation treatment prior to their capture. A novel and robust methodology based on deep neural learning is developed as part of the automatic feature selection prior to the classification. Also, video and image database of sperm samples was produced at the Andrology laboratory of the University of Sheffield as part of this work. The database was used to validate the proposed framework for the segmentation and classification of in-vitro cells

    The prospect of artificial intelligence to personalize assisted reproductive technology

    Get PDF
    The Department of Metabolism, Digestion, and Reproduction is funded by grants from the MRC and NIHR. S.H. is supported by the UKRI CDT in AI for Healthcare http://ai4health.io (EP/S023283/1). A.A. is supported by an NIHR Clinician Scientist Award (CS-2018-18-ST2-002). M.V. and K.T.A. are supported by the EPSRC (EP/T017856/1). W.S.D. is supported by an NIHR Senior Investigator Award (NIHR202371).Infertility affects 1-in-6 couples, with repeated intensive cycles of assisted reproductive technology (ART) required by many to achieve a desired live birth. In ART, typically, clinicians and laboratory staff consider patient characteristics, previous treatment responses, and ongoing monitoring to determine treatment decisions. However, the reproducibility, weighting, and interpretation of these characteristics are contentious, and highly operator-dependent, resulting in considerable reliance on clinical experience. Artificial intelligence (AI) is ideally suited to handle, process, and analyze large, dynamic, temporal datasets with multiple intermediary outcomes that are generated during an ART cycle. Here, we review how AI has demonstrated potential for optimization and personalization of key steps in a reproducible manner, including: drug selection and dosing, cycle monitoring, induction of oocyte maturation, and selection of the most competent gametes and embryos, to improve the overall efficacy and safety of ART.Peer reviewe

    A COMPARATIVE ANALYSIS ON VOCABULARY MASTERY BETWEEN FEMALE AND MALE STUDENTS OF JUNIOR HIGH SCHOOL

    Get PDF
    This study was conducted to examine the comparative achievement on English vocabulary mastery between female and male students.The population of this research was all of the second year students of Junior High School which consisted of 300 students and the total sample was 30 students which consisted of 15 female students and 15 male students. The data were collected by using multiple choice tests through analysis descriptive method. The result of the analysis showed that female students and male students have the same vocabulary achievement on vocabulary mastery

    A review of different deep learning techniques for sperm fertility prediction

    Get PDF
    Sperm morphology analysis (SMA) is a significant factor in diagnosing male infertility. Therefore, healthy sperm detection is of great significance in this process. However, the traditional manual microscopic sperm detection methods have the disadvantages of a long detection cycle, low detection accuracy in large orders, and very complex fertility prediction. Therefore, it is meaningful to apply computer image analysis technology to the field of fertility prediction. Computer image analysis can give high precision and high efficiency in detecting sperm cells. In this article, first, we analyze the existing sperm detection techniques in chronological order, from traditional image processing and machine learning to deep learning methods in segmentation and classification. Then, we analyze and summarize these existing methods and introduce some potential methods, including visual transformers. Finally, the future development direction and challenges of sperm cell detection are discussed. We have summarized 44 related technical papers from 2012 to the present. This review will help researchers have a more comprehensive understanding of the development process, research status, and future trends in the field of fertility prediction and provide a reference for researchers in other fields

    The Ecological and Civil Mainsprings of Property: An Experimental Economic History of Whalers’ Rules of Capture

    Get PDF
    This paper uses a laboratory experiment to probe the proposition that property emerges anarchically out of social custom. We test the hypothesis that whalers in the 18th and 19th century developed rules of conduct that minimized the sum of the transaction and production costs of capturing their prey, the primary implication being that different ecological conditions lead to different rules of capture. Holding everything else constant, we find that simply imposing two different types of prey is insufficient to observe two different rules of capture. Another factor is essential, namely that the members of the community are civil-minded.property rights, endogenous rules, whaling, experimental economics

    All Hail the Whale: Cetaceous Metaphor, Monarchy, and Monstrosity in Shakespeare and Melville

    Get PDF
    In my thesis, I have explored the role of whales in literature from Greco-Roman mythology to early English and American literature, including Shakespeare’s Pericles, Lyly’s Gallathea, and Melville’s Moby-Dick, as well as touched on some fiction of today. I pay particular attention to queer readings of these texts as well as to the role that gender plays in them. I argue that at this time in history, literature is the most definitive authority on the multifarious nature of whales. Whales are a powerful metaphor for politics on land, sexual predation, tyranny, and godliness. Because of their both terrifying and awe-inducing nature, whales are sublime
    • 

    corecore