Benchmarking 3D generative autoencoders for pseudo-healthy reconstruction of brain (18)F-fluorodeoxyglucose positron emission tomography

对用于脑部伪健康重建的 3D 生成式自编码器进行基准测试 (18)F-氟代脱氧葡萄糖正电子发射断层扫描

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Abstract

PURPOSE: Many deep generative models have been proposed to reconstruct pseudo-healthy images for anomaly detection. Among these models, the variational autoencoder (VAE) has emerged as both simple and efficient. Although significant progress has been made in refining the VAE within the field of computer vision, these advancements have not been extensively applied to medical imaging applications. APPROACH: We present a benchmark that assesses the ability of multiple VAEs to reconstruct pseudo-healthy neuroimages for anomaly detection in the context of dementia. We first propose a rigorous methodology to define the optimal architecture of the vanilla VAE and select through random searches the best hyperparameters of the VAE variants. Relying on a simulation-based evaluation framework, we thoroughly assess the ability of 20 VAE models to reconstruct pseudo-healthy images for the detection of dementia-related anomalies in 3D brain F18 -fluorodeoxyglucose (FDG) positron emission tomography (PET) and compare their performance. RESULTS: This benchmark demonstrated that the majority of the VAE models tested were able to reconstruct images of good quality and generate healthy-looking images from simulated images presenting anomalies. CONCLUSIONS: Even if no model clearly outperformed all the others, the benchmark allowed identifying a few models that perform slightly better than the vanilla VAE. It further showed that many VAE-based models can generalize to the detection of anomalies of various intensities, shapes, and locations in 3D brain FDG PET.

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