生物学和医学中的时间网络:关于模型、算法和工具的调查。

IF 2 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Network Modeling and Analysis in Health Informatics and Bioinformatics Pub Date : 2023-01-01 DOI:10.1007/s13721-022-00406-x
Mohammad Mehdi Hosseinzadeh, Mario Cannataro, Pietro Hiram Guzzi, Riccardo Dondi
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引用次数: 5

摘要

使用静态图形对生物和生物医学数据进行建模和分析在生物医学研究中起着关键作用。然而,许多现实场景呈现动态行为,导致节点和边缘修改以及特征进化。因此,引入了用于捕获这些随时间变化的特定模型,也称为动态的、时间的、时变的图。在这里,我们关注的是时间图,即其演变由一系列时间顺序快照表示的图。每个快照表示在特定时间戳中活动的图形。我们概述了时间图模型和相关算法,介绍了基本方面和最新进展。我们正式定义了时间图,着重于问题设置,并介绍了它们在生物学和医学中的主要应用。我们还介绍了时间图嵌入及其在流行病建模等最新问题中的应用。最后,对该领域的研究方向进行了展望。本研究的主要结果包括对文献中考虑的基本时间网络问题及其算法解决方案的系统回顾,特别是那些在计算生物学和医学中的应用。我们还包括在此背景下开发的主要软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Temporal networks in biology and medicine: a survey on models, algorithms, and tools.

The use of static graphs for modelling and analysis of biological and biomedical data plays a key role in biomedical research. However, many real-world scenarios present dynamic behaviours resulting in both node and edges modification as well as feature evolution. Consequently, ad-hoc models for capturing these evolutions along the time have been introduced, also referred to as dynamic, temporal, time-varying graphs. Here, we focus on temporal graphs, i.e., graphs whose evolution is represented by a sequence of time-ordered snapshots. Each snapshot represents a graph active in a particular timestamp. We survey temporal graph models and related algorithms, presenting fundamentals aspects and the recent advances. We formally define temporal graphs, focusing on the problem setting and we present their main applications in biology and medicine. We also present temporal graph embedding and the application to recent problems such as epidemic modelling. Finally, we further state some promising research directions in the area. Main results of this study include a systematic review of fundamental temporal network problems and their algorithmic solutions considered in the literature, in particular those having application in computational biology and medicine. We also include the main software developed in this context.

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来源期刊
CiteScore
5.40
自引率
4.30%
发文量
43
期刊介绍: NetMAHIB publishes original research articles and reviews reporting how graph theory, statistics, linear algebra and machine learning techniques can be effectively used for modelling and analysis in health informatics and bioinformatics. It aims at creating a synergy between these disciplines by providing a forum for disseminating the latest developments and research findings; hence, results can be shared with readers across institutions, governments, researchers, students, and the industry. The journal emphasizes fundamental contributions on new methodologies, discoveries and techniques that have general applicability and which form the basis for network based modelling, knowledge discovery, knowledge sharing and decision support to the benefit of patients, healthcare professionals and society in traditional and advanced emerging settings, including eHealth and mHealth .
期刊最新文献
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