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Application of artificial intelligence, deep learning and MLP techniques, to predict live birth in assisted reproduction patients using blastocyst morphology and patient physiological data

Grant number: 19/26749-4
Support Opportunities:Scholarships in Brazil - Scientific Initiation
Start date: July 01, 2020
End date: June 30, 2021
Field of knowledge:Health Sciences - Medicine
Principal Investigator:José Celso Rocha
Grantee:André Satoshi Ferreira
Host Institution: Faculdade de Ciências e Letras (FCL-ASSIS). Universidade Estadual Paulista (UNESP). Campus de Assis. Assis , SP, Brazil

Abstract

The assisted reproduction technique - ART is on the rise and is accompanied by constant innovation and modernization. Techniques such as intracytoplasmic sperm injection - ICSI, use of equipment such as time-lapse, preimplantation genetic diagnosis, and screening are currently methods to increase the quality and success of ART. Accompanying this trend, the use of artificial intelligence - AI, in this area, is also being intensively researched either in the determination of gamete quality or selection and in embryo classification. Despite an exponential number of studies, the use of AI within assisted reproduction clinics is not yet a reality, and embryo classification and selection are performed by embryologists who end up incurring intra and inter embryologist errors. In addition, couples who come to clinics have a keen interest in knowing the likelihood of success of ART, but it is very abstract for a human to measure that probably because of the complexity of this process. There are already studies of the use of AI in the prediction of live birth, but these only use the image of the transferred blastocyst, discarding valuable information as physiological aspects of the patient, such as age, BMI, number of oocytes and antral follicles. Thus, the present project aims to implement software using digital processing, artificial neural networks, and genetic algorithms that can predict the probability of pregnancy success based on the morphological data of the blastocyst together with the patient's physiological data. In addition, it is intended a comparative analysis of the use of deep learning and multilayer perceptron - MLP techniques in embryo classification.

News published in Agência FAPESP Newsletter about the scholarship:
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Scientific publications
(References retrieved automatically from Web of Science and SciELO through information on FAPESP grants and their corresponding numbers as mentioned in the publications by the authors)
CHELES, DORIS SPINOSA; FERREIRA, ANDRE SATOSHI; DE JESUS, ISABELA SUEITT; FERNANDEZ, ELEONORA INACIO; PINHEIRO, GABRIEL MARTINS; DAL MOLIN, ELOIZA ADRIANE; ALVES, WALLACE; MILANEZI DE SOUZA, REBECA COLAUTO; BORI, LORENA; MESEGUER, MARCOS; et al. An Image Processing Protocol to Extract Variables Predictive of Human Embryo Fitness for Assisted Reproduction. APPLIED SCIENCES-BASEL, v. 12, n. 7, p. 20-pg., . (20/07634-9, 18/24252-2, 19/26749-4, 17/19323-5, 19/26684-0)