For decades, molecular biologists have been uncovering the mechanics of biological systems. Efforts to bring their findings together have led to the development of multiple databases and information systems that capture and present pathway information in a computable network format. Concurrently, the advent of modern omics technologies has empowered researchers to systematically profile cellular processes across different modalities. Numerous algorithms, methodologies, and tools have been developed to use prior knowledge networks (PKNs) in the analysis of omics datasets. Interestingly, it has been repeatedly demonstrated that the source of prior knowledge can greatly impact the results of a given analysis. For these methods to be successful it is paramount that their selection of PKNs is amenable to the data type and the computational task they aim to accomplish. Here we present a five-level framework that broadly describes network models in terms of their scope, level of detail, and ability to inform causal predictions. To contextualize this framework, we review a handful of network-based omics analysis methods at each level, while also describing the computational tasks they aim to accomplish.

Download full-text PDF

Source
http://dx.doi.org/10.1002/pmic.202200402DOI Listing

Publication Analysis

Top Keywords

prior knowledge
8
analysis methods
8
aim accomplish
8
framework considering
4
considering prior
4
prior network-based
4
network-based approaches
4
omics
4
approaches omics
4
omics data
4

Similar Publications

Introduction: Although there are acceptable medical reasons for the use of food supplements, most prescriptions for newborns do not comply with current recommendations, putting continued breastfeeding at risk. This study aimed to create and validate a flowchart for newborn supplement prescription.

Methods: The flowchart was created and submitted to two rounds of assessments by a panel of judges, who calculated the content validity index (CVI) (acceptable > 0.

View Article and Find Full Text PDF

BaNDyT: Bayesian Network Modeling of Molecular Dynamics Trajectories.

J Chem Inf Model

January 2025

Department of Computational and Quantitative Medicine, Beckman Research Institute of the City of Hope, 1218 S 5th Ave, Monrovia, California 91016, United States.

Bayesian network modeling (BN modeling, or BNM) is an interpretable machine learning method for constructing probabilistic graphical models from the data. In recent years, it has been extensively applied to diverse types of biomedical data sets. Concurrently, our ability to perform long-time scale molecular dynamics (MD) simulations on proteins and other materials has increased exponentially.

View Article and Find Full Text PDF

Background: Mpox is a zoonotic disease that has become a significant public health concern, especially in regions beyond its usual endemic areas in Africa. The rising global incidence and its classification as a Public Health Emergency of International Concern by the World Health Organization highlight the importance of healthcare professionals (HCPs) being knowledgeable and well-prepared to effectively manage the virus. This study aims to assess the knowledge, attitudes, and factors associated with HCPs regarding Mpox infections at Debre Tabor Comprehensive Specialized Hospital in Northwest Ethiopia.

View Article and Find Full Text PDF

Introduction: According to the National Institute for Occupational Safety and Health, ensuring influenza vaccination for public transportation drivers is considered a public health objective, given that these drivers are at high risk of contracting influenza. The main purpose of this cross-sectional study is, thus, to evaluate influenza vaccine hesitancy (VH) and its determinants among a representative sample of Lebanese public transportation drivers.

Methods: A survey questionnaire is conducted between January and March 2023, with the participation of a proportionate purposeful sample of 509 drivers from various regions in Lebanon.

View Article and Find Full Text PDF

Microsurgical reconstruction constitutes a fundamental part of plastic and reconstructive surgery. It demands high dexterity and intricate technical skills. Its steep learning curve benefits from thorough training throughout residency, where using realistic simulation models in the appropriate sequence of complexity progression is essential in ensuring patient safety prior to progressing to a clinical setting.

View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!