Inicio  /  Computers  /  Vol: 10 Par: 2 (2021)  /  Artículo
ARTÍCULO
TITULO

Network Analysis of Local Gene Regulators in Arabidopsis thaliana under Spaceflight Stress

Vidya Manian    
Harshini Gangapuram    
Jairo Orozco    
Heeralal Janwa and Carlos Agrinsoni    

Resumen

Spaceflight microgravity affects normal plant growth in several ways. The transcriptional dataset of the plant model organism Arabidopsis thaliana grown in the international space station is mined using graph-theoretic network analysis approaches to identify significant gene transcriptions in microgravity essential for the plant?s survival and growth in altered environments. The photosynthesis process is critical for the survival of the plants in spaceflight under different environmentally stressful conditions such as lower levels of gravity, lesser oxygen availability, low atmospheric pressure, and the presence of cosmic radiation. Lasso regression method is used for gene regulatory network inferencing from gene expressions of four different ecotypes of Arabidopsis in spaceflight microgravity related to the photosynthetic process. The individual behavior of hub-genes and stress response genes in the photosynthetic process and their impact on the whole network is analyzed. Logistic regression on centrality measures computed from the networks, including average shortest path, betweenness centrality, closeness centrality, and eccentricity, and the HITS algorithm is used to rank genes and identify interactor or target genes from the networks. Through the hub and authority gene interactions, several biological processes associated with photosynthesis and carbon fixation genes are identified. The altered conditions in spaceflight have made all the ecotypes of Arabidopsis sensitive to dehydration-and-salt stress. The oxidative and heat-shock stress-response genes regulate the photosynthesis genes that are involved in the oxidation-reduction process in spaceflight microgravity, enabling the plant to adapt successfully to the spaceflight environment.

 Artículos similares

       
 
?tefan Bila?co and Titus-Cristian Man    
On a global scale, traffic incidents are a leading cause of mortality and material damage. Romania exhibits the highest rate of road traffic fatalities both in the European Union and worldwide, requiring a comprehensive examination of its overall influen... ver más
Revista: Applied Sciences

 
Lei Yang, Mengxue Xu and Yunan He    
Convolutional Neural Networks (CNNs) have become essential in deep learning applications, especially in computer vision, yet their complex internal mechanisms pose significant challenges to interpretability, crucial for ethical applications. Addressing t... ver más
Revista: Applied Sciences

 
Dragana Slavic, Ugljesa Marjanovic, Nenad Medic, Nenad Simeunovic and Slavko Rakic    
During 2022 and 2023, Industry 5.0 attracted a lot of attention. Many articles and papers regarding the basics of Industry 5.0, its pillars, and a comparison of Industry 5.0 and Industry 4.0, Society 5.0, and Operator 5.0 have been published. Although th... ver más
Revista: Applied Sciences

 
Yuyan Zheng, Jianhua Qu and Jiajia Yang    
Similarity measures in heterogeneous information networks (HINs) have become increasingly important in recent years. Most measures in such networks are based on the meta path, a relation sequence connecting object types. However, in real-world scenarios,... ver más
Revista: Applied Sciences

 
Lina Yu, Dongxin Duan, Kwi-sik Min and Tao Wang    
This study presents a groundbreaking approach to evaluating the resilience of China?s blue economy, shedding light on its critical role in promoting sustainable development along the nation?s coastlines. By employing advanced methodologies such as social... ver más
Revista: Water