Suppr超能文献

神经退行性疾病中的数据科学:其能力、局限性和展望。

Data science in neurodegenerative disease: its capabilities, limitations, and perspectives.

机构信息

Department of Bioinformatics, Fraunhofer Institute for Algorithms and Scientific Computing, Sankt Augustin.

Bonn-Aachen International Center for IT, Rheinische Friedrich-Wilhelms-Universität Bonn, Bonn, Germany.

出版信息

Curr Opin Neurol. 2020 Apr;33(2):249-254. doi: 10.1097/WCO.0000000000000795.

Abstract

PURPOSE OF REVIEW

With the advancement of computational approaches and abundance of biomedical data, a broad range of neurodegenerative disease models have been developed. In this review, we argue that computational models can be both relevant and useful in neurodegenerative disease research and although the current established models have limitations in clinical practice, artificial intelligence has the potential to overcome deficiencies encountered by these models, which in turn can improve our understanding of disease.

RECENT FINDINGS

In recent years, diverse computational approaches have been used to shed light on different aspects of neurodegenerative disease models. For example, linear and nonlinear mixed models, self-modeling regression, differential equation models, and event-based models have been applied to provide a better understanding of disease progression patterns and biomarker trajectories. Additionally, the Cox-regression technique, Bayesian network models, and deep-learning-based approaches have been used to predict the probability of future incidence of disease, whereas nonnegative matrix factorization, nonhierarchical cluster analysis, hierarchical agglomerative clustering, and deep-learning-based approaches have been employed to stratify patients based on their disease subtypes. Furthermore, the interpretation of neurodegenerative disease data is possible through knowledge-based models which use prior knowledge to complement data-driven analyses. These knowledge-based models can include pathway-centric approaches to establish pathways perturbed in a given condition, as well as disease-specific knowledge maps, which elucidate the mechanisms involved in a given disease. Collectively, these established models have revealed high granular details and insights into neurodegenerative disease models.

SUMMARY

In conjunction with increasingly advanced computational approaches, a wide spectrum of neurodegenerative disease models, which can be broadly categorized into data-driven and knowledge-driven, have been developed. We review the state of the art data and knowledge-driven models and discuss the necessary steps which are vital to bring them into clinical application.

摘要

目的综述:随着计算方法的进步和生物医学数据的丰富,已经开发出了广泛的神经退行性疾病模型。在这篇综述中,我们认为计算模型在神经退行性疾病研究中既相关又有用,尽管当前已建立的模型在临床实践中有局限性,但人工智能有可能克服这些模型所遇到的缺陷,从而提高我们对疾病的认识。

最新发现:近年来,多种计算方法被用于阐明神经退行性疾病模型的不同方面。例如,线性和非线性混合模型、自建模回归、微分方程模型和基于事件的模型已被应用于更好地理解疾病进展模式和生物标志物轨迹。此外,Cox 回归技术、贝叶斯网络模型和基于深度学习的方法已被用于预测疾病未来发病的概率,而非负矩阵分解、非层次聚类分析、层次聚类和基于深度学习的方法已被用于根据疾病亚型对患者进行分层。此外,通过使用先验知识补充数据驱动分析的基于知识的模型,可以对神经退行性疾病数据进行解释。这些基于知识的模型可以包括以特定条件下受到干扰的途径为中心的方法,以及特定于疾病的知识图谱,阐明特定疾病中涉及的机制。总之,这些已建立的模型揭示了神经退行性疾病模型的高粒度细节和见解。

总结:随着计算方法的不断进步,已经开发出了广泛的神经退行性疾病模型,可以大致分为数据驱动和知识驱动。我们综述了最新的数据和知识驱动模型,并讨论了将它们应用于临床实践所必需的步骤。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/da94/7077964/1f9bfdf639ff/coneu-33-249-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验