scholarly journals IN-DEPTH INSIGHT INTO THE PERFORMANCE OF PREDICTIVE MODELS BASED ON ARTIFICIAL NEURAL NETWORKS: DEMONSTRATION OF THE CLINICAL UTILITY OF ARTIFICIAL INTELLIGENCE IN THE IVF LABORATORY

2021 ◽  
Vol 116 (3) ◽  
pp. e468
Author(s):  
Lorena Bori ◽  
Elena Paya ◽  
María de los Ángeles Valera ◽  
Jose Maria De los Santos ◽  
Jose Remohi ◽  
...  
2021 ◽  
Vol 60 (38) ◽  
pp. 13950-13966
Author(s):  
Hossein Mashhadimoslem ◽  
Milad Vafaeinia ◽  
Mobin Safarzadeh ◽  
Ahad Ghaemi ◽  
Farnoush Fathalian ◽  
...  

Author(s):  
Martín Montes Rivera ◽  
Alejandro Padilla ◽  
Juana Canul-Reich ◽  
Julio Ponce

Vision sense is achieved using cells called rods (luminosity) and cones (color). Color perception is required when interacting with educational materials, industrial environments, traffic signals, among others, but colorblind people have difficulties perceiving colors. There are different tests for colorblindness like Ishihara plates test, which have numbers with colors that are confused with colorblindness. Advances in computer sciences produced digital assistants for colorblindness, but there are possibilities to improve them using artificial intelligence because its techniques have exhibited great results when classifying parameters. This chapter proposes the use of artificial neural networks, an artificial intelligence technique, for learning the colors that colorblind people cannot distinguish well by using as input data the Ishihara plates and recoloring the image by increasing its brightness. Results are tested with a real colorblind people who successfully pass the Ishihara test.


Author(s):  
Wolfgang I. Schollhorn ◽  
Jörg M. Jager

This chapter gives an overview of artificial neural networks as instruments for processing miscellaneous biomedical signals. A variety of applications are illustrated in several areas of healthcare. The structure of this chapter is rather oriented on medical fields like cardiology, gynecology, or neuromuscular control than on types of neural nets. Many examples demonstrate how neural nets can support the diagnosis and prediction of diseases. However, their content does not claim completeness due to the enormous amount and exponentially increasing number of publications in this field. Besides the potential benefits for healthcare, some remarks on underlying assumptions are also included as well as problems which may occur while applying artificial neural nets. It is hoped that this review gives profound insight into strengths as well as weaknesses of artificial neural networks as tools for processing biomedical signals.


1989 ◽  
Vol 1 (4) ◽  
pp. 425-464 ◽  
Author(s):  
Halbert White

The premise of this article is that learning procedures used to train artificial neural networks are inherently statistical techniques. It follows that statistical theory can provide considerable insight into the properties, advantages, and disadvantages of different network learning methods. We review concepts and analytical results from the literatures of mathematical statistics, econometrics, systems identification, and optimization theory relevant to the analysis of learning in artificial neural networks. Because of the considerable variety of available learning procedures and necessary limitations of space, we cannot provide a comprehensive treatment. Our focus is primarily on learning procedures for feedforward networks. However, many of the concepts and issues arising in this framework are also quite broadly relevant to other network learning paradigms. In addition to providing useful insights, the material reviewed here suggests some potentially useful new training methods for artificial neural networks.


Sign in / Sign up

Export Citation Format

Share Document