IVApr 2, 2021
Prediction of Tuberculosis using U-Net and segmentation techniquesDennis Núñez-Fernández, Lamberto Ballan, Gabriel Jiménez-Avalos et al.
One of the most serious public health problems in Peru and worldwide is Tuberculosis (TB), which is produced by a bacterium known as Mycobacterium tuberculosis. The purpose of this work is to facilitate and automate the diagnosis of tuberculosis using the MODS method and using lens-free microscopy, as it is easier to calibrate and easier to use by untrained personnel compared to lens microscopy. Therefore, we employed a U-Net network on our collected data set to perform automatic segmentation of cord shape bacterial accumulation and then predict tuberculosis. Our results show promising evidence for automatic segmentation of TB cords, and thus good accuracy for TB prediction.
IVJul 6, 2020
Automatic semantic segmentation for prediction of tuberculosis using lens-free microscopy imagesDennis Núñez-Fernández, Lamberto Ballan, Gabriel Jiménez-Avalos et al.
Tuberculosis (TB), caused by a germ called Mycobacterium tuberculosis, is one of the most serious public health problems in Peru and the world. The development of this project seeks to facilitate and automate the diagnosis of tuberculosis by the MODS method and using lens-free microscopy, due they are easier to calibrate and easier to use (by untrained personnel) in comparison with lens microscopy. Thus, we employ a U-Net network in our collected dataset to perform the automatic segmentation of the TB cords in order to predict tuberculosis. Our initial results show promising evidence for automatic segmentation of TB cords.
IVJul 5, 2020
Using Capsule Neural Network to predict Tuberculosis in lens-free microscopic imagesDennis Núñez-Fernández, Lamberto Ballan, Gabriel Jiménez-Avalos et al.
Tuberculosis, caused by a bacteria called Mycobacterium tuberculosis, is one of the most serious public health problems worldwide. This work seeks to facilitate and automate the prediction of tuberculosis by the MODS method and using lens-free microscopy, which is easy to use by untrained personnel. We employ the CapsNet architecture in our collected dataset and show that it has a better accuracy than traditional CNN architectures.