scholarly journals BOV – a web-based BLAST output visualization tool

BMC Genomics ◽  
2008 ◽  
Vol 9 (1) ◽  
pp. 414 ◽  
Author(s):  
Rajesh Gollapudi ◽  
Kashi Revanna ◽  
Chris Hemmerich ◽  
Sarah Schaack ◽  
Qunfeng Dong
2020 ◽  
Vol 6 (3) ◽  
pp. 563-566
Author(s):  
Cristina Laura Oyarzun ◽  
Katrin Hartwig ◽  
Anna-Sophie Hertlein ◽  
Florian Jung ◽  
Jan Burmeister ◽  
...  

AbstractProper treatment of prostate cancer is essential to increase the survival chance. In this sense, numerous studies show how important the communication between all stakeholders in the clinic is. This communication is difficult because of the lack of conventions while referring to the location where a biopsy for diagnosis was taken. This becomes even more challenging taking into account that experts of different fields work on the data and have different requirements. In this paper a web-based communication tool is proposed that incorporates a visualization of the prostate divided into 27 segments according to the PI-RADS protocol. The tool provides 2 working modes that consider the requirements of radiologist and pathologist while keeping it consistent. The tool comprises all relevant information given by pathologists and radiologists, such as, severity grades of the disease or tumor length. Everything is visualized using a colour code for better undestanding.


Author(s):  
Abdullah Alfarrarjeh ◽  
Zeyu Ma ◽  
Seon Ho Kim ◽  
Yeonsoo Park ◽  
Cyrus Shahabi

2017 ◽  
Author(s):  
Venkata Manem ◽  
George Adam ◽  
Tina Gruosso ◽  
Mathieu Gigoux ◽  
Nicholas Bertos ◽  
...  

ABSTRACTBackground:Over the last several years, we have witnessed the metamorphosis of network biology from being a mere representation of molecular interactions to models enabling inference of complex biological processes. Networks provide promising tools to elucidate intercellular interactions that contribute to the functioning of key biological pathways in a cell. However, the exploration of these large-scale networks remains a challenge due to their high-dimensionality.Results:CrosstalkNet is a user friendly, web-based network visualization tool to retrieve and mine interactions in large-scale bipartite co-expression networks. In this study, we discuss the use of gene co-expression networks to explore the rewiring of interactions between tumor epithelial and stromal cells. We show how CrosstalkNet can be used to efficiently visualize, mine, and interpret large co-expression networks representing the crosstalk occurring between the tumour and its microenvironment.Conclusion:CrosstalkNet serves as a tool to assist biologists and clinicians in exploring complex, large interaction graphs to obtain insights into the biological processes that govern the tumor epithelial-stromal crosstalk. A comprehensive tutorial along with case studies are provided with the application.Availability:The web-based application is available at the following location: http://epistroma.pmgenomics.ca/app/. The code is open-source and freely available from http://github.com/bhklab/EpiStroma-webapp.Contact:[email protected]


2020 ◽  
Author(s):  
David Saffo ◽  
Aristotelis Leventidis ◽  
Twinkle Jain ◽  
Michelle Borkin ◽  
Cody Dunne

Autonomous unmanned aerial vehicles are complex systems of hardware, software, and human input. Understanding this complexity is key to their development and operation. Information visualizations already exist for exploring flight logs but comprehensive analyses currently require several disparate and custom tools. This design study helps address the pain points faced by autonomous unmanned aerial vehicle developers and operators. We contribute: a spiral development process model for grounded evaluation visualization development focused on progressively broadening target user involvement and refining user goals; a demonstration of the model as part of developing a deployed and adopted visualization system; a data and task abstraction for developers and operators performing post-flight analysis of autonomous unmanned aerial vehicle logs; the design and implementation of DATA COMETS, an open-source and web-based interactive visualization tool for post-flight log analysis incorporating temporal, geospatial, and multivariate data; and the results of a summative evaluation of the visualization system and our abstractions based on in-the-wild usage. A free copy of this paper and source code are available at osf.io/h4p7g


2006 ◽  
Vol 5 (3) ◽  
pp. 185-191 ◽  
Author(s):  
Alex Ivanov ◽  
Dianne Cyr

Electronic brainstorming systems have been shown to lead to more ideas, yet unsupported face-to-face brainstorming is still widely preferred. This paper proposes a graphical user interface for a web-based system for design problem-solving or other intellective tasks involving convergent and divergent thinking. Referring to the literature on group support systems and information and knowledge visualization, the study extends features of concept mapping and synthesizes these into a prototype called the Concept Plot (CP). Based on an advertising design task, the paper shows how the CP can be collaboratively constructed in two directions, as text and pictures are uploaded onto nodes, and these nodes scaled up or down as users click to evaluate ideas. The expectation is that this integrated visualization would diminish information overload, while enhancing the social dynamics of the process. Also presented is the pilot deployment of a Flash prototype. The results were inconclusive, yet promising that a study with more participants might demonstrate the functional and affective benefits of the CP.


2021 ◽  
Author(s):  
Christina Humer ◽  
Henry Heberle ◽  
Floriane Montanari ◽  
Thomas Wolf ◽  
Florian Huber ◽  
...  

The introduction of machine learning to small molecule research – an inherently multidisciplinary field in which chemists and data scientists combine their expertise and collaborate – has been vital to making screening processes more efficient. In recent years, numerous models that predict pharmacokinetic properties or bioactivity have been published, and these are used on a daily basis by chemists to make decisions and prioritize ideas. The emerging field of explainable artificial intelligence is opening up new possibilities for understanding the reasoning that underlies a model. In small molecule research, this means relating contributions of substructures of compounds to their predicted properties, which in turn also allows the areas of the compounds that have the greatest influence on the outcome to be identified. However, there is no interactive visualization tool that facilitates such interdisciplinary collaborations towards interpretability of machine learning models for small molecules. To fill this gap, we present CIME (ChemInformatics Model Explorer), an interactive web-based system that allows users to inspect chemical data sets, visualize model explanations, compare interpretability techniques, and explore subgroups of compounds. The tool is model-agnostic and can be run on a server or a workstation.


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