A survey on adversarial deep learning robustness in medical image analysis

KD Apostolidis, GA Papakostas - Electronics, 2021 - mdpi.com
In the past years, deep neural networks (DNN) have become popular in many disciplines
such as computer vision (CV), natural language processing (NLP), etc. The evolution of …

Medical image analysis using deep learning algorithms

M Li, Y Jiang, Y Zhang, H Zhu - Frontiers in Public Health, 2023 - frontiersin.org
In the field of medical image analysis within deep learning (DL), the importance of
employing advanced DL techniques cannot be overstated. DL has achieved impressive …

[HTML][HTML] A novel out-of-distribution detection approach for spiking neural networks: design, fusion, performance evaluation and explainability

A Martinez-Seras, J Del Ser, JL Lobo… - Information …, 2023 - Elsevier
Abstract Research around Spiking Neural Networks has ignited during the last years due to
their advantages when compared to traditional neural networks, including their efficient …

A comprehensive review and analysis of deep learning-based medical image adversarial attack and defense

GW Muoka, D Yi, CC Ukwuoma, A Mutale, CJ Ejiyi… - Mathematics, 2023 - mdpi.com
Deep learning approaches have demonstrated great achievements in the field of computer-
aided medical image analysis, improving the precision of diagnosis across a range of …

Adversarial attack and defense for medical image analysis: Methods and applications

J Dong, J Chen, X **e, J Lai, H Chen - arxiv e-prints, 2023 - ui.adsabs.harvard.edu
Deep learning techniques have achieved superior performance in computer-aided medical
image analysis, yet they are still vulnerable to imperceptible adversarial attacks, resulting in …

FRODO: An in-depth analysis of a system to reject outlier samples from a trained neural network

E Calli, B Van Ginneken… - IEEE Transactions on …, 2022 - ieeexplore.ieee.org
An important limitation of state-of-the-art deep learning networks is that they do not
recognize when their input is dissimilar to the data on which they were trained and proceed …

On the use of Mahalanobis distance for out-of-distribution detection with neural networks for medical imaging

H Anthony, K Kamnitsas - International Workshop on Uncertainty for Safe …, 2023 - Springer
Implementing neural networks for clinical use in medical applications necessitates the ability
for the network to detect when input data differs significantly from the training data, with the …

Security and Privacy in Machine Learning for Health Systems: Strategies and Challenges

EJ de Aguiar, C Traina Jr… - Yearbook of Medical …, 2023 - thieme-connect.com
Objectives: Machine learning (ML) is a powerful asset to support physicians in decision-
making procedures, providing timely answers. However, ML for health systems can suffer …

Topological structure learning for weakly-supervised out-of-distribution detection

R He, R Li, Z Han, X Yang, Y Yin - Proceedings of the 31st ACM …, 2023 - dl.acm.org
Out-of-distribution~(OOD) detection is the key to deploying models safely in the open world.
For OOD detection, collecting sufficient in-distribution~(ID) labeled data is usually more time …

Survey on Adversarial Attack and Defense for Medical Image Analysis: Methods and Challenges

J Dong, J Chen, X **e, J Lai, H Chen - ACM Computing Surveys, 2024 - dl.acm.org
Deep learning techniques have achieved superior performance in computer-aided medical
image analysis, yet they are still vulnerable to imperceptible adversarial attacks, resulting in …