Search Results for author: Andre Dekker

Found 10 papers, 3 papers with code

Federated Bayesian Network Ensembles

no code implementations19 Feb 2024 Florian van Daalen, Lianne Ippel, Andre Dekker, Inigo Bermejo

In this article, we explore the use of federated ensembles of Bayesian networks (FBNE) in a range of experiments and compare their performance with locally trained models and models trained with VertiBayes, a federated learning algorithm to train Bayesian networks from decentralized data.

Federated Learning

AI Technical Considerations: Data Storage, Cloud usage and AI Pipeline

no code implementations20 Jan 2022 P. M. A van Ooijen, Erfan Darzidehkalani, Andre Dekker

Artificial intelligence (AI), especially deep learning, requires vast amounts of data for training, testing, and validation.

Privacy preserving n-party scalar product protocol

no code implementations17 Dec 2021 Florian van Daalen, Inigo Bermejo, Lianne Ippel, Andre Dekker

Privacy-preserving machine learning enables the training of models on decentralized datasets without the need to reveal the data, both on horizontal and vertically partitioned data.

Privacy Preserving

Improving Reproducibility and Performance of Radiomics in Low Dose CT using Cycle GANs

no code implementations16 Sep 2021 Junhua Chen, Leonard Wee, Andre Dekker, Inigo Bermejo

The trained GANs were applied to three scenarios: 1) improving radiomics reproducibility in simulated low dose CT images and 2) same-day repeat low dose CTs (RIDER dataset) and 3) improving radiomics performance in survival prediction.

Denoising Survival Prediction

Generative Models Improve Radiomics Reproducibility in Low Dose CTs: A Simulation Study

1 code implementation30 Apr 2021 Junhua Chen, Chong Zhang, Alberto Traverso, Ivan Zhovannik, Andre Dekker, Leonard Wee, Inigo Bermejo

Moreover, images with different noise levels can be denoised to improve the reproducibility using these models without re-training, as long as the noise intensity is equal or lower than that in high-noise CTs.

Computed Tomography (CT) Denoising

Lung Cancer Diagnosis Using Deep Attention Based on Multiple Instance Learning and Radiomics

no code implementations29 Apr 2021 Junhua Chen, Haiyan Zeng, Chong Zhang, Zhenwei Shi, Andre Dekker, Leonard Wee, Inigo Bermejo

In this article, we treat lung cancer diagnosis as a multiple instance learning (MIL) problem in order to better reflect the diagnosis process in the clinical setting and for the higher interpretability of the output.

Deep Attention Lung Cancer Diagnosis +2

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