Center of Modeling, Simulation and Interactions, Université Côte d'Azur, 06200 Nice, France.
Centre Hospitalier Universitaire (CHU) de Nice, Institute for Research on Cancer and Aging, Nice (IRCAN), Université Côte d'Azur, Inserm U1081, CNRS UMR 7284, 06200 Nice, France.
Int J Mol Sci. 2021 Oct 8;22(19):10891. doi: 10.3390/ijms221910891.
Rare diseases (RDs) concern a broad range of disorders and can result from various origins. For a long time, the scientific community was unaware of RDs. Impressive progress has already been made for certain RDs; however, due to the lack of sufficient knowledge, many patients are not diagnosed. Nowadays, the advances in high-throughput sequencing technologies such as whole genome sequencing, single-cell and others, have boosted the understanding of RDs. To extract biological meaning using the data generated by these methods, different analysis techniques have been proposed, including machine learning algorithms. These methods have recently proven to be valuable in the medical field. Among such approaches, unsupervised learning methods via neural networks including autoencoders (AEs) or variational autoencoders (VAEs) have shown promising performances with applications on various type of data and in different contexts, from cancer to healthy patient tissues. In this review, we discuss how AEs and VAEs have been used in biomedical settings. Specifically, we discuss their current applications and the improvements achieved in diagnostic and survival of patients. We focus on the applications in the field of RDs, and we discuss how the employment of AEs and VAEs would enhance RD understanding and diagnosis.
罕见病(RDs)涉及广泛的疾病,可能有多种起源。长期以来,科学界对 RDs 知之甚少。对于某些 RDs,已经取得了令人瞩目的进展;然而,由于知识不足,许多患者无法得到诊断。如今,高通量测序技术(如全基因组测序、单细胞测序等)的进步,促进了对 RDs 的理解。为了从这些方法生成的数据中提取生物学意义,已经提出了不同的分析技术,包括机器学习算法。这些方法最近在医学领域被证明具有价值。在这些方法中,通过神经网络(包括自动编码器(AE)或变分自动编码器(VAE))的无监督学习方法在不同的背景下,从癌症到健康患者组织的各种类型的数据上,已经显示出了有前景的性能。在这篇综述中,我们讨论了 AEs 和 VAEs 在生物医学环境中的应用。具体来说,我们讨论了它们在诊断和患者生存方面的当前应用和所取得的改进。我们重点介绍了在 RDs 领域的应用,并讨论了 AEs 和 VAEs 的应用如何增强对 RDs 的理解和诊断。