Uncertainty-driven ensembles of multi-scale deep architectures for image classification
Metadatos
Afficher la notice complèteAuteur
Arco Martín, Juan Eloy; Ramírez Pérez De Inestrosa, Javier; Martínez Murcia, Francisco Jesús; Gorriz Sáez, Juan ManuelEditorial
Elsevier
Materia
Bayesian Deep Learning Uncertainty Ensemble classification Pneumonia Parkinson’s
Date
2022-08-13Referencia bibliográfica
Juan E. Arco... [et al.]. Uncertainty-driven ensembles of multi-scale deep architectures for image classification, Information Fusion, Volume 89, 2023, Pages 53-65, ISSN 1566-2535, [https://doi.org/10.1016/j.inffus.2022.08.010]
Patrocinador
MCIN; FEDER "Una manera de hacer Europa" PGC2018-098813-B-C32 A-TIC-080-UGR18; Junta de Andalucia; European Commission B-TIC-586-UGR20 P20-00525; Ministerio de Universidades; Universidad de Granada/CBUA RTI2018-098913-B100 CV20-45250Résumé
The use of automatic systems for medical image classification has revolutionized the diagnosis of a high
number of diseases. These alternatives, which are usually based on artificial intelligence (AI), provide a helpful
tool for clinicians, eliminating the inter and intra-observer variability that the diagnostic process entails.
Convolutional Neural Network (CNNs) have proved to be an excellent option for this purpose, demonstrating
a large performance in a wide range of contexts. However, it is also extremely important to quantify the
reliability of the model’s predictions in order to guarantee the confidence in the classification. In this work,
we propose a multi-level ensemble classification system based on a Bayesian Deep Learning approach in order
to maximize performance while providing the uncertainty of each classification decision. This tool combines
the information extracted from different architectures by weighting their results according to the uncertainty
of their predictions. Performance is evaluated in a wide range of real scenarios: in the first one, the aim is to
differentiate between different pulmonary pathologies: controls vs bacterial pneumonia vs viral pneumonia. A
two-level decision tree is employed to divide the 3-class classification into two binary classifications, yielding
an accuracy of 98.19%. In the second context, performance is assessed for the diagnosis of Parkinson’s disease,
leading to an accuracy of 95.31%. The reduced preprocessing needed for obtaining this high performance, in
addition to the information provided about the reliability of the predictions evidence the applicability of the
system to be used as an aid for clinicians.