International Journal For Multidisciplinary Research

E-ISSN: 2582-2160     Impact Factor: 9.24

A Widely Indexed Open Access Peer Reviewed Multidisciplinary Bi-monthly Scholarly International Journal

Call for Paper Volume 7, Issue 3 (May-June 2025) Submit your research before last 3 days of June to publish your research paper in the issue of May-June.

An Empirical Review to Analyse In-Vitro Stratification based on Machine and Deep Learning Models.

Author(s) Ms. AlishMonica S, Prof. Dr. Dr. Siva Kumar R
Country India
Abstract In-Vitro fertilization (IVF) is pivotal biomedical research that aids in enhancing the chances of parenthood through their concept of assisted reproductive technology (ART). While the conventional procedures of this method largely rely on adept-driven solutions from skilled experts, the limitation interms of bias and subjectivity can be experienced frequently. While IVF treatments are popularly adopted, the decision-making in various phases of this process mandates a comprehensive cognizance of clinical procedures involved. Nevertheless, the integration of technologies has greatly enhanced the adoption of a comprehensive scaffold that involves regimented and meticulous deterrence of bottlenecks involved in this process. The progressive technologies have indubitably paved a way for informed decisions. Domains such artificial intelligence, machine learning and deep learning models have greatly augmented the precision of decisions, and mitigated bias along with enhancing accuracy of stratification. This paper elaborates on the empirical review of neoteric progressions with IVF with various used tools and methodologies. In scrutinization with the diverse algorithmic progressions, the most commonly adopted methods are the Support Vector Machines (SVM), Random Forests, and Convolutional Neural Networks (CNNs). However, their frequent utilization is justified due to their capability to explicitly classify embryos and precisely forecast clinical outcomes. In deep- learning, the pre-trained architectures like ResNet, Densenet, and VGG-16 are used to vindicate their surpassed expertise in classification accuracy and computational efficiency. An extensive review of the pertinent studies relevant to IVF is explored in this paper. This literature review also unambiguously draws notice to the constraints and challenges interms of disproportional data, model interpretability, and the integration of multimodal data, thereby rendering suggestions for future research. Through this analysis, the paper aims to guide the development of more robust and accurate in-vitro stratification systems, contributing to convalesced outcomes in clinical and research settings.
Keywords In-Vitro Fertilization, Empirical review, Classification, Machine Learning, Deep Learning.
Field Computer Applications
Published In Volume 7, Issue 3, May-June 2025
Published On 2025-06-19
DOI https://doi.org/10.36948/ijfmr.2025.v07i03.48401
Short DOI https://doi.org/g9qxbr

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