Detection of thyroid nodules through neural networks and processing of echographic images.

 

Authors
Haro Fierro, Alex Rubén; Toalombo Toapaxi, Julio César
Format
Article
Status
publishedVersion
Description

The abnormal functioning of hormones produces the appearance of malformations in human bodies that must be detected early. In this manuscript, two proposals are presented for the identification of thyroid nodules in ultrasound images, using convolutional neural networks. For the network training, 400 images obtained from a medical center and stored in a database have been used. Free access software (Python and TensorFlow) has been used as part of the algorithm development, following the stages of image preprocessing, network training, filtering and layer construction. Results graphically present the incidence of people suffering from this health problem. In addition, based on the respective tests, it is identified that the system developed in Python has greater precision and accuracy, 90% and 81% respectively, than TensorFlow design. Through neural networks, the recognition up to 4mm thyroid nodules is evidenced.
ESPE-L

Publication Year
2020
Language
eng
Topic
ULTRASONIDO
REDES NEURONALES
NÓDULO TIROIDEO
Repository
Repositorio Universidad de las Fuerzas Armadas
Get full text
http://repositorio.espe.edu.ec/handle/21000/23323
Rights
openAccess
License