Online Resources for Viral Networks: Connecting Digital Humanities and Medical History
Page Directory
Overview
The volume Viral Networks (2018, VT Publishing) features detailed data visualizations that provide a deeper look into the
relationships described by the underlying data sets examined in the chapters. In some cases, some detail contained in a visualization may be lost due to limitations imposed by page size. For this reason, the authors and publishers of this volume have
chosen to make the data visualizations and associated data sets for each chapter freely available for download on the web. The download contains 9 folders, one for each chapter that features a visualization. Each visualization found in the book can
be found in the folder that corresponds to the name of the chapter author. In many cases, data sets and Cytoscape files are also present which you can use as sample data in your own learning, as well as using to replicate the analysis. The download
also includes interactive visualizations for figure 1.1 and figure 6.7. This readme provides further information on requirements to use each type of file.
Directory of chapters
- 00 E. Thomas Ewing and Katherine Randall, Connecting Digital Humanities and Medical History
- 01 Sarah Runcie, Networks of the Unnamed and Medical Interventions in Colonial Cameroon
- 02 Kylie Smith, Unravelling Networks of Segregation in Alabama's Psychiatric Hospitals
- 03 Katherine Sorrels, Can Network Analysis Capture Connections Across Medical Sects
- 06 Katherine Cottle, Epistolary Network Analysis
- 07 Nicole Archambeau, The "First Mortality" as a Time Marker
- 08 A.R. Ruis, Toward a Historical Definition of Nutrition
- 09 Christopher J. Phillips, Networks of Statisticians
- 10 Nathaniel D. Porter, Using Network Analysis in the Humanities
File types and software versions
The list below provides an overview of the various types of files (extensions) included in this repository and, where applicable, the software and versions used to produce them. This material is provided to aid in viewing and replicating or adapting the
material.
Image files
- SVG Vector graphics files; can rescaled without loss of quality; can be viewed in all modern browsers; individual elements can be manipulated in vector graphics software such as Adobe Illustrator and Inkscape
- PNG Static images that retain the quality of the original image file; can be viewed in all modern browsers; can be manipulated in image editing software such as Adobe Photoshop; individual elements cannot be modified
- JPG Static images that may lose image quality above a specific resolution but are typically are smaller in total file size; can be viewed in all modern browsers; can be manipulated in image editing software such as Adobe Photoshop;
individual elements cannot be modified
Data files
- CSV Plain-text comma-delimited data file; can be read in any text editor, statistical software, or spreadsheet program
- ACCDB Microsoft Access 2007-2016 database; created in Access 2016 for Office365; can be read in any version of Microsoft Access 2007 or newer
- XLSX Microsoft Excel workbook; created in Excel 2016 for Office365; can be read in any version of Microsoft Excel 2004 or newer
- CYS Cytoscape project file (network data); created in the free Cytoscape version 3.6.1
- GEPHI Gephi project file (network data); created in the free Gephi 0.9.2 with GeoLayout plugin version 0.9.2.2
- RDATA R statistics data file; created in the free R version 3.5.0
Other files
-
ZIP A compressed archive; used in this repository for interactive Cytoscape projects (version above); to use, download and unzip to a new directory then open the "index.html" file in the "web_session" directory; can be viewed
in all modern browsers with JavaScript and html5 support
- R R statistics script file; used to replicate analysis in R (Ruis); created in R version 3.5.0 with package rENA 0.1.5
- PY Python 3 script file; used to download and preprocess text data in Python (Cottle); tested in Anaconda distribution of Python 3.6.6 with the following packages: pandas 0.23.3, scipy 1.1.0, scikit-learn 0.91.1
License
All data and visualizations in this repository are licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Google ngrams data used by permission; see terms at https://books.google.com/ngrams/info for more information.
How to cite
To cite the whole repository: please refer to the citation provided on VTechData.
To cite one or more visualizations from a single chapter, please cite the chapter and reference the visualizations by figure number and page.
When citing an individual datafile or project file, please include at least the author/collector name, the filename, the dataset name and doi, and the date the file was downloaded.