Illinois Data Bank Dataset Search Results
Results
published:
2019-05-22
Lao, Yuyang; Schiffer, Peter
(2019)
This is the experimental data of isolated nanomagnet islands with or without the presence of large nanomagnet islands. The small islands are made of Permalloy materials with size of 170 nm by 470 nm by 2.5 nm. The systems are measured at a temperature where the small islands are fluctuating around room temperature. The data is recorded as photoemission electron microscopy intensity. More details about the data can be found in the note.txt and Spe_2016.xlsx file.
Note: The raw data folders are stored in five volumes during the compression. All five volumes are needed in order to recover the original folder.
keywords:
artificial spin ice; magnetism
published:
2024-03-27
Zheng, Heng; Schneider, Jodi
(2024)
To gather news articles from the web that discuss the Cochrane Review, we used Altmetric Explorer from Altmetric.com and retrieved articles on August 1, 2023. We selected all articles that were written in English, published in the United States, and had a publication date <b>prior to March 10, 2023</b> (according to the “Mention Date” on Altmetric.com). This date is significant as it is when Cochrane issued a statement about the "misleading interpretation" of the Cochrane Review.
The collection of news articles is presented in the Altmetric_data.csv file. The dataset contains the following data that we exported from Altmetric Explorer:
- Publication date of the news article
- Title of the news article
- Source/publication venue of the news article
- URL
- Country
We manually checked and added the following information:
- Whether the article still exists
- Whether the article is accessible
- Whether the article is from the original source
We assigned MAXQDA IDs to the news articles. News articles were assigned the same ID when they were (a) identical or (b) in the case of Article 207, closely paraphrased, paragraph by paragraph. Inaccessible items were assigned a MAXQDA ID based on their "Mention Title".
For each article from Altmetric.com, we first tried to use the Web Collector for MAXQDA to download the article from the website and imported it into MAXQDA (version 22.7.0). If an article could not be retrieved using the Web Collector, we either downloaded the .html file or in the case of Article 128, retrieved it from the NewsBank database through the University of Illinois Library.
We then manually extracted direct quotations from the articles using MAXQDA.
We included surrounding words and sentences, and in one case, a news agency’s commentary, around direct quotations for context where needed. The quotations (with context) are the positions in our analysis.
We also identified who was quoted. We excluded quotations when we could not identify who or what was being quoted. We annotated quotations with codes representing groups (government agencies, other organizations, and research publications) and individuals (authors of the Cochrane Review, government agency representatives, journalists, and other experts such as epidemiologists).
The MAXQDA_data.csv file contains excerpts from the news articles that contain the direct quotations we identified. For each excerpt, we included the following information:
- MAXQDA ID of the document from which the excerpt originates;
- The collection date and source of the document;
- The code with which the excerpt is annotated;
- The code category;
- The excerpt itself.
keywords:
altmetrics; MAXQDA; polylogue analysis; masks for COVID-19; scientific controversies; news articles
published:
2025-01-31
Punyasena, Surangi W.; Romero, Ingrid; Urban, Michael A.
(2025)
Title: Airyscan confocal superresolution images of extant Malvaceae pollen with a focus on Bombacoideae
Authors: Surangi W. Punyasena, Ingrid Romero, Michael A. Urban
Subject: Biological sciences
Keywords: Malvaceae; superresolution microscopy; Zeiss; Bombacacidites; Neotropics; CZI
Funder: NSF-DBI Advances in Bioinformatics (NSF-DBI-1262561)
Corresponding Creator: Surangi W. Punyasena
This dataset includes a total of 430 images of extant specimens of the Malvaceae, with a focus on species that are or have been included within the subfamily Bombacoideae. There are 27 genera included within 26 folders. Each folder is named by genus and contains all the images that correspond to that genus. Note that the genus _Matisia_ is included with _Quararibea_ as detailed in the metadata READ ME file.
The specimens imaged are from the palynological collections of the Swedish Museum of Natural History and Smithsonian Tropical Research Institute, and herbarium specimens from the Smithsonian Herbarium National Museum.
The optical superresolution microscopy images were taken using a Zeiss LSM 880 with Airyscan at 630X magnification (63x/NA 1.4 oil DIC). The images are in the original CZI file format. They can be opened using Zeiss propriety software (Zen, Zen lite) or in ImageJ/FIJI. More information on how to open CZI files can be found here: [https://www.zeiss.com/microscopy/en/products/software/zeiss-zen/czi-image-file-format.html]
Image metadata and file organization are described in the CSV file "METADATA_Malvaceae_Bombacoideae_modern-species.csv". The column headings are:
Folder The folder in which the image file is found
Subfamily The current subfamily determination based on the literature. Note that _Pentaplaris_ and _Septotheca_ have not been assigned a subfamily.
Genus Genus name
Species Species name
Accepted name Accepted species name, updated from the literature
Slide name Species name as denoted on the herbarium slide
Collection Source of the herbarium slide: Sweden National Museum of Natural History or the Smithsonian Tropical Research Institute
File name File name using the species name denoted on the herbarium slide
Slide ID/Herbarium ID Specimen collection number
Please cite this dataset as:
Punyasena, Surangi W.; Romero, Ingrid; Urban, Michael A. (2025): Airyscan confocal superresolution images of extant Malvaceae pollen with a focus on Bombacoideae. University of Illinois Urbana-Champaign. https://doi.org/10.13012/B2IDB-2968712_V1
keywords:
Malvaceae; superresolution microscopy; Zeiss; Bombacoideae; Neotropics; CZI
published:
2025-10-30
Koh, Hyun Gi; Kim, Jinhong; Rao, Christopher V.; Park, Sung-Jin; Jin, Yong-Su
(2025)
A small and efficient DNA mutation-inducing machine was constructed with an array of microplasma jet devices (7 × 1) that can be operated at atmospheric pressure for microbial mutagenesis. Using this machine, we report disruption of a plasmid DNA and generation of mutants of an oleaginous yeast Rhodosporidium toruloides. Specifically, a compact-sized microplasma channel (25 × 20 × 2 mm3) capable of generating an electron density of greater than 1013 cm–3 was constructed to produce reactive species (N2*, N2+, O, OH, and Hα) under helium atmospheric conditions to induce DNA mutagenesis. The length of microplasma channels in the device played a critical role in augmenting both the volume of plasma and the concentration of reactive species. First, we confirmed that microplasma treatment can linearize a plasmid by creating nicks in vitro. Second, we treated R. toruloides cells with a jet device containing 7 microchannels for 5 min; 94.8% of the treated cells were killed, and 0.44% of surviving cells showed different colony colors as compared to their parental colony. Microplasma-based DNA mutation is energy-efficient and can be a safe alternative for inducing mutations compared to conventional methods using toxic mutagens. This compact and scalable device is amenable for industrial strain improvement involving large-scale mutagenesis.
keywords:
Conversion;Genome Engineering
published:
2020-02-12
Asplund, Joshua; Karahalios, Karrie
(2020)
This dataset contains the results of a three month audit of housing advertisements. It accompanies the 2020 ICWSM paper "Auditing Race and Gender Discrimination in Online Housing Markets". It covers data collected between Dec 7, 2018 and March 19, 2019.
There are two json files in the dataset: The first contains a list of json objects representing advertisements separated by newlines. Each object includes the date and time it was collected, the image and title (if collected) of the ad, the page on which it was displayed, and the training treatment it received. The second file is a list of json objects representing a visit to a housing lister separated by newlines. Each object contains the url, training treatment applied, the location searched, and the metadata of the top sites scraped. This metadata includes location, price, and number of rooms.
The dataset also includes the raw images of ads collected in order to code them by interest and targeting. These were captured by selenium and named using a perceptive hash to de-duplicate images.
keywords:
algorithmic audit; advertisement audit;
published:
2022-02-14
Yao, Yu; Curtis, Jeffrey; Ching, Joseph; Zheng, Zhonghua; Riemer, Nicole
(2022)
This dataset contains simulation results from numerical model PartMC-MOSAIC used in the article "Quantifying the effects of mixing state on aerosol optical properties". This article is submitted to the journal Atmospheric Physics and Chemistry. There are total 100 scenario directories in this dataset, denoted from 00-99. Each scenario contains 25 NetCDF files hourly output from PartMC-MOSAIC simulations containing the simulated gas and particle information.
The data was produced using version 2.5.0 of PartMC-MOSAIC. Instructions to compile and run PartMC-MOSAIC are available at https://github.com/compdyn/partmc. The chemistry code MOSAIC is available by request from Rahul.Zaveri@pnl.gov. For more details of reproducing the cases, please contact nriemer@illinois.edu and yuyao3@illinois.edu.
keywords:
Aerosol mixing state; Aerosol optical properties; Mie calculation; Black Carbon
published:
2025-11-24
Maitra, Shraddha; Cheng, Ming-Hsun; Liu, Hui; Cao, Viet Dang; Kannan, Baskaran; Long, Stephen; Shanklin, John; Altpeter, Fredy; Singh, Vijay
(2025)
Development of sustainable and scalable technologies to convert lignocellulosic biomass to biofuels is critical to achieving carbon neutrality. The potential of transgenic bioenergy crops as a renewable source of sugars and lipids has been demonstrated at bench-scale. However, scaling up these processes is important for holistic analysis. Here proof-of-concept for chemical-free hydrothermal pretreatment of transgenic energycane-oilcane line L13 at an industrially relevant scale to recover vegetative lipids along with cellulosic sugars is presented. Pilot-scale processing of 97 kg of transgenic energycane-oilcane L13 stems and high solids pretreatment of bagasse enhanced the recovery of cellulosic glucose and xylose by 5-fold as compared to untreated bagasse and helped in the enrichment of vegetative lipids in the biomass residues which allowed its recovery at the end of the bioprocess. Palmitic and oleic acids were the predominant fatty acids (FAs) extracted from stems and leaves. The processing did not affect lipid composition. The efficiency of lipid recovery from untreated biomass was 75.9% which improved to 88.7% upon pretreatment. The vegetative tissues of transgenic energycane-oilcane L13 contained 0.42 metric tons/hectare of lipids. Processing vegetative tissues yielded 0.38 metric tons/hectare of lipids. This approaches an oil yield similar to soybean (global average 0.44 metric tons/hectare) and is almost twice as high as the oil yield from sugarcane engineered to hyperaccumulate lipids (0.20 metric tons/hectare). The study suggests that further optimization by state-of-the-art metabolic engineering and biomass processing can establish transgenic bioenergy crops for commercial drop-in fuel production.
keywords:
Conversion;Feedstock Production;Biomass Analytics;Energycane;Lipidomics
published:
2021-04-06
Hadley, Daniel; Abrams, Daniel; Mannix, Devin; Cullen, Cecilia
(2021)
These datasets contain modeling files and GIS data associated with a risk assessment study for the Cambrian-Ordovician sandstone aquifer system in Illinois from predevelopment (1863) to the year 2070. Modeling work was completed using the Illinois Groundwater Flow Model, a regional MODFLOW model developed for water supply planning in Illinois, as a base model. The model is run using the graphical user interface Groundwater Vistas 7.0. The development and technical details of the base Illinois Groundwater Flow Model, including hydraulic property zonation, boundary conditions, hydrostratigraphy, solver settings, and discretization, are described in Abrams et al. (2018). Modifications to this base model (the version presented here) are described in Mannix et al. (2018), Hadley et al. (2020) and Abrams and Cullen (2020). Modifications include removal of particular multi-aquifer wells to improve calibration, changing Sandwich Fault Zone properties to achieve calibration at production wells within and near the fault zone, and the incorporation of demand scenarios based on a participatory modeling project with the Southwest Water Planning Group.
The zipped folder of model files contains MODFLOW input (package) files, Groundwater Vistas files, and a head file for the entire model run. The zipped folder of GIS data contains rasters of: simulated drawdown in the St. Peter sandstone from predevelopment to 2018, simulated drawdown in the Ironton-Galesville sandstone from predevelopment to 2018, simulated head difference between the St. Peter and Ironton-Galesville sandstone units in 2018, simulated head above the top of the St. Peter sandstone for the years 2029, 2050, and 2070, and simulated head above the top of the Ironton-Galesville sandstone for the years 2029, 2050, and 2070. Raster outputs were derived directly from the simulated heads in the Illinois Groundwater Flow Model. Rasters are clipped to the 8 county northeastern Illinois region (Cook, DuPage, Grundy, Kane, Kendall, Lake, McHenry, and Will counties).
Well names, historic and current head targets, and spatial offsets for the Illinois Groundwater Flow Model are available upon request via a data license agreement. Please contact authors to set this up if needed.
keywords:
groundwater; aquifer; sandstone aquifer; risk assessment; depletion; Illinois; MODFLOW; modeling
published:
2024-01-04
Kim, Hyunchul; Zhao, Helin; van der Zande, Arend
(2024)
This data set includes all of data related to stretchable TFTs based on 2D heterostructures including optical images of TFTs, Raman and Photoluminescence characteristics data, Transport measurement data, and AFM topography data.
Abstract
Two-dimensional (2D) materials are outstanding candidates for stretchable electronics, but a significant challenge is their heterogeneous integration into stretchable geometries on soft substrates. Here, we demonstrate a strategy for stretchable thin film transistors (2D S-TFT) based on wrinkled heterostructures on elastomer substrates where 2D materials formed the gate, source, drain, and channel, and characterized them with Raman spectroscopy and transport measurements.
keywords:
2D materials; 2D heterstructures; Stretchable electronics; transistors; buckling engineering
published:
2019-07-26
Buckles, Brittany J; Harmon-Threatt, Alexandra
(2019)
Data used in paper published in the Journal of Applied Ecology titled " Bee diversity in tallgrass prairies affected by management and its effects on above- and below-ground resources"
Bee Community file contains info on bees sampled in each site. The first column contain the Tallgrass Prairie Sites sampled all additional columns contain the bee species name in the first row and all individuals recorded.
Plant Community file contains info on plants sampled in each site. The first column contain the Tallgrass Prairie Sites sampled all additional columns contain the plant species name in the first row and all individuals recorded.
Soil PC1 file contains the soil PC1 values used in the analyses. The first column contain the Tallgrass Prairie Sites sampled, the second column contains the calculated soil PC1 values.
keywords:
bee; community; tallgrass prairie; grazing
published:
2023-03-08
Majeed, Fahd; Khanna, Madhu
(2023)
A stochastic domination analysis model was developed to examine the effect that emerging carbon markets can have on the spatially varying returns and risk profiles of bioenergy crops relative to conventional crops. The code is written in MATLAB, and includes the calculated output.
See the README file for instructions to run the code.
keywords:
bioenergy crops; economic modeling; stochastic domination analysis model;
published:
2020-02-23
Ye, Di; Hill, Alison; Whitehorn (Fulton), Ashley; Schneider, Jodi
(2020)
Citation context annotation for papers citing retracted paper Matsuyama 2005 (RETRACTED: Matsuyama W, Mitsuyama H, Watanabe M, Oonakahara KI, Higashimoto I, Osame M, Arimura K. Effects of omega-3 polyunsaturated fatty acids on inflammatory markers in COPD. Chest. 2005 Dec 1;128(6):3817-27.), retracted in 2008 (Retraction in: Chest (2008) 134:4 (893) <a href="https://doi.org/10.1016/S0012-3692(08)60339-6">https://doi.org/10.1016/S0012-3692(08)60339-6<a/> ). This is part of the supplemental data for Jodi Schneider, Di Ye, Alison Hill, and Ashley Whitehorn. "Continued Citation of a Fraudulent Clinical Trial Report, Eleven Years after it was retracted for Falsifying Data" [R&R under review with Scientometrics].
Overall we found 148 citations to the retracted paper from 2006 to 2019, However, this dataset does not include the annotations described in the 2015. in Ashley Fulton, Alison Coates, Marie Williams, Peter Howe, and Alison Hill. "Persistent citation of the only published randomized controlled trial of omega-3 supplementation in chronic obstructive pulmonary disease six years after its retraction." Publications 3, no. 1 (2015): 17-26.
In this dataset 70 new and newly found citations are listed: 66 annotated citations and 4 pending citations (non-annotated since we don't have full-text).
"New citations" refer to articles published from March 25, 2014 to 2019, found in Google Scholar and Web of Science.
"Newly found citations" refer articles published 2006-2013, found in Google Scholar and Web of Science, but not previously covered in Ashley Fulton, Alison Coates, Marie Williams, Peter Howe, and Alison Hill. "Persistent citation of the only published randomised controlled trial of omega-3 supplementation in chronic obstructive pulmonary disease six years after its retraction." Publications 3, no. 1 (2015): 17-26.
NOTES:
This is Unicode data. Some publication titles & quotes are in non-Latin characters and they may contain commas, quotation marks, etc.
FILES/FILE FORMATS
Same data in two formats:
2006-2019-new-citation-contexts-to-Matsuyama.csv - Unicode CSV (preservation format only)
2006-2019-new-citation-contexts-to-Matsuyama.xlsx - Excel workbook (preferred format)
ROW EXPLANATIONS
70 rows of data - one citing publication per row
COLUMN HEADER EXPLANATIONS
Note - processing notes
Annotation pending - Y or blank
Year Published - publication year
ID - ID corresponding to the network analysis. See Ye, Di; Schneider, Jodi (2019): Network of First and Second-generation citations to Matsuyama 2005 from Google
Scholar and Web of Science. University of Illinois at Urbana-Champaign. <a href="https://doi.org/10.13012/B2IDB-1403534_V2">https://doi.org/10.13012/B2IDB-1403534_V2</a>
Title - item title (some have non-Latin characters, commas, etc.)
Official Translated Title - item title in English, as listed in the publication
Machine Translated Title - item title in English, translated by Google Scholar
Language - publication language
Type - publication type (e.g., bachelor's thesis, blog post, book chapter, clinical guidelines, Cochrane Review, consumer-oriented evidence summary, continuing education journal article, journal article, letter to the editor, magazine article, Master's thesis, patent, Ph.D. thesis, textbook chapter, training module)
Book title for book chapters - Only for a book chapter - the book title
University for theses - for bachelor's thesis, Master's thesis, Ph.D. thesis - the associated university
Pre/Post Retraction - "Pre" for 2006-2008 (means published before the October 2008 retraction notice or in the 2 months afterwards); "Post" for 2009-2019 (considered post-retraction for our analysis)
Identifier where relevant - ISBN, Patent ID, PMID (only for items we considered hard to find/identify, e.g. those without a DOI-based URL)
URL where available - URL, ideally a DOI-based URL
Reference number/style - reference
Only in bibliography - Y or blank
Acknowledged - If annotated, Y, Not relevant as retraction not published yet, or N (blank otherwise)
Positive / "Poor Research" (Negative) - P for positive, N for negative if annotated; blank otherwise
Human translated quotations - Y or blank; blank means Google scholar was used to translate quotations for Translated Quotation X
Specific/in passing (overall) - Specific if any of the 5 quotations are specific [aggregates Specific / In Passing (Quotation X)]
Quotation 1 - First quotation (or blank) (includes non-Latin characters in some cases)
Translated Quotation 1 - English translation of "Quotation 1" (or blank)
Specific / In Passing (Quotation 1) - Specific if "Quotation 1" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 1) - Methods; Results; or Methods and Results - blank if "Quotation 1" not specific, no associated quotation, or not yet annotated
Quotation 2 - Second quotation (includes non-Latin characters in some cases)
Translated Quotation 2 - English translation of "Quotation 2"
Specific / In Passing (Quotation 2) - Specific if "Quotation 2" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 2) - Methods; Results; or Methods and Results - blank if "Quotation 2" not specific, no associated quotation, or not yet annotated
Quotation 3 - Third quotation (includes non-Latin characters in some cases)
Translated Quotation 3 - English translation of "Quotation 3"
Specific / In Passing (Quotation 3) - Specific if "Quotation 3" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 3) - Methods; Results; or Methods and Results - blank if "Quotation 3" not specific, no associated quotation, or not yet annotated
Quotation 4 - Fourth quotation (includes non-Latin characters in some cases)
Translated Quotation 4 - English translation of "Quotation 4"
Specific / In Passing (Quotation 4) - Specific if "Quotation 4" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 4) - Methods; Results; or Methods and Results - blank if "Quotation 4" not specific, no associated quotation, or not yet annotated
Quotation 5 - Fifth quotation (includes non-Latin characters in some cases)
Translated Quotation 5 - English translation of "Quotation 5"
Specific / In Passing (Quotation 5) - Specific if "Quotation 5" refers to methods or results of the Matsuyama paper (or blank)
What is referenced from Matsuyama (Quotation 5) - Methods; Results; or Methods and Results - blank if "Quotation 5" not specific, no associated quotation, or not yet annotated
Further Notes - additional notes
keywords:
citation context annotation, retraction, diffusion of retraction
published:
2024-08-06
Xing, Yuqing; Bae, Seokjin; Madhavan, Vidya
(2024)
This is the raw topographies (without linear background subtraction) related to the publication: https://www.nature.com/articles/s41586-024-07519-5
published:
2020-11-18
Gardner, Allison; Allan, Brian
(2020)
These data obtained from the peer-reviewed literature and a public database depict the geographic expansion of the black-legged tick (Ixodes scapularis) and human cases of Lyme disease in the midwestern U.S.
<b><i>Note</b></i>: There was an omission from the first version (V1) of the data set that required us to update the data. Specifically, we failed to include the data from the article "Caporale DA, Johnson CM, Millard BJ. 2005 Presence of Borrelia burgdorferi (Spirochaetales: Spirochaetaceae) in Southern Kettle Moraine State Forest, Wisconsin, and characterization of strain W97F51. J. Med. Entomol. 42, 457–472". In the second version (V2) of the data, this omission is corrected.
keywords:
Lyme disease; Borrelia burgdorferi; Ixodes scapularis; black-legged tick
published:
2022-11-28
Avrin, Alexandra; Pekins, Charles; Wilmers, Christopher; Sperry, Jinelle; Allen, Maximilian
(2022)
Detection data of carnivores and their prey species from camera traps in Fort Hood, Texas and Santa Cruz, California, USA. Non-carnivore and non-prey species (humans, domestic species, avian species, etc.) were excluded from this dataset. All detections of each species at a camera within 30 minutes have been combined to 1 detection (only first detection within that 30 minutes kept) to avoid pseudoreplication.
Variable Description:
Site= Study area data were collected
MonitoringPeriod= year in which data was collected (data were collected at each location over multiple monitoring periods)
CameraName= Unique name for each camera location
Date= calendar date of detection
Time= time of detection
-Fort Hood= Central Time USA
-Santa Cruz= Pacific Time USA
Species= Common name of species detected
keywords:
carnivore; community ecology; competition; interspecific interactions; keystone species; mesopredator; predation; trophic cascade
published:
2023-04-02
Lee, Yuanyao; Khanna, Madhu; Chen, Luoye
(2023)
Use of cellulosic biofuels from non-feedstocks are modeled using the BEPAM (Biofuel and Environmental Policy Analysis Model) model to quantifying the uncertainties about induced land use change effects, net greenhouse gas saving potential, and economic costs. The code is in GAMS, general algebraic modeling language.
NOTE: Column 3 is titled "BAU" in "merged_BAU.gdx", "merged_RFS.gdx", and "merged_CEM.gdx", but contains "RFS" data in "merged_RFS.gdx" and "CEM" data in "merged_CEM.gdx".
keywords:
cellulosic biomass; BEPAM; economic modeling
published:
2024-08-02
Morrow Plots Data Curation Working Group
(2024)
The Morrow Plots at the University of Illinois at Urbana-Champaign are the longest-running continuous experimental plots in the Americas. In continuous operation since 1876, the plots were established to explore the impact of crop rotation and soil treatment on corn crop yields. In 2018, The Morrow Plots Data Curation Working Group began to identify, collect and curate the various data records created over the history of the experiment. The resulting data table published here includes planting, treatment and yield data for the Morrow Plots since 1888. Please see the included codebook for a detailed explanation of the data sources and their content. This dataset will be updated as new yield data becomes available.
*NOTE: While digitized and accessed through IDEALS, the physical copy of the field notebook: <a href="https://archon.library.illinois.edu/archives/index.php?p=collections/controlcard&id=11846">Morrow Plots Notebook, 1876-1913, 1967</a> is also held at the University of Illinois Archives.
keywords:
Corn; Crop Science; Experimental Fields; Crop Yields; Agriculture; Illinois; Morrow Plots
published:
2025-11-20
Ahmed, Md Wadud; Esquerre, Carlos A.; Eilts, Kristen; Allen, Dylan P.; McCoy, Scott M.; Varela, Sebastian; Singh, Vijay; Leakey, Andrew; Kamruzzaman, Mohammad
(2025)
NIR spectroscopy is a rapid and accurate green technology for high-throughput biomass characterization, including sorghum (Sorghum bicolor), a promising energy crop for the biofuel industry. This study assessed the influence of particle size on NIR spectroscopic analysis (wavelength range: 867–2535 nm) of sorghum biomass composition. Grown under field conditions, a total of 113 types of genetically diverse sorghum accessions were dried, ground, and sieved (<250, 250–600, 600–850, and > 850 µm particle size) for developing partial least square regression (PLSR) prediction models for moisture, ash, extractive, glucan, xylan, acid-soluble lignin (ASL), acid-insoluble lignin (AIL), and total lignin (ASL + AIL). Overall, smaller particle sizes provided better model performance, while no single particle size provided the best performance for all the selected components. With only 9 selected bands and 4 latent variables (LVs), the best PLSR model was obtained for moisture with particle size of 600–850 µm with the square root of the coefficient of determination (R) of 0.85, the ratio of prediction to deviation (RPD) of 2.2, and the root mean square error (RMSE) of 0.46 % in external validation. Similar model performances were also obtained for ash, extractive, glucan, and xylan. This study showed that size reduction could effectively improve NIR spectroscopic analysis for lipid-producing sorghum biomass for the biofuel industry.
keywords:
Conversion;Feedstock Production;Biomass Analytics;Modeling;Sorghum
published:
2016-12-20
Wickes, Elizabeth; Nakamura, Katia
(2016)
Scripts and example data for AIDData (aiddata.org) processing in support of forthcoming Nakamura dissertation.
This dataset includes two sets of scripts and example data files from an aiddata.org data dump. Fuller documentation about the functionality for these scripts is within the readme file. Additional background information and description of usage will be in the forthcoming Nakamura dissertation (link will be added when available). Data originally supplied by Nakamura. Python code and this readme file created by Wickes. Data included within this deposit are examples to demonstrate execution.
Roughly, there are two python scripts in here: keyword_search.py, designed to assist in finding records matching specific keywords, and matching_tool.ipynb, designed to assist in detection of which records are and are not contained within a keyword results file and an aiddata project data file.
keywords:
aiddata; natural resources
published:
2020-08-22
Qiu, Haoran; Banerjee, Subho S.; Jha, Saurabh; Kalbarczyk, Zbigniew T.; Iyer, Ravishankar K.
(2020)
We are releasing the tracing dataset of four microservice benchmarks deployed on our dedicated Kubernetes cluster consisting of 15 heterogeneous nodes. The dataset is not sampled and is from selected types of requests in each benchmark, i.e., compose-posts in the social network application, compose-reviews in the media service application, book-rooms in the hotel reservation application, and reserve-tickets in the train ticket booking application.
The four microservice applications come from [DeathStarBench](https://github.com/delimitrou/DeathStarBench) and [Train-Ticket](https://github.com/FudanSELab/train-ticket). The performance anomaly injector is from [FIRM](https://gitlab.engr.illinois.edu/DEPEND/firm.git).
The dataset was preprocessed from the raw data generated in FIRM's tracing system. The dataset is separated by on which microservice component is the performance anomaly located (as the file name suggests). Each dataset is in CSV format and fields are separated by commas. Each line consists of the tracing ID and the duration (in 10^(-3) ms) of each component. Execution paths are specified in `execution_paths.txt` in each directory.
keywords:
Microservices; Tracing; Performance
published:
2021-07-22
Hsiao, Tzu-Kun; Schneider, Jodi
(2021)
This dataset includes five files. Descriptions of the files are given as follows:
<b>FILENAME: PubMed_retracted_publication_full_v3.tsv</b>
- Bibliographic data of retracted papers indexed in PubMed (retrieved on August 20, 2020, searched with the query "retracted publication" [PT] ).
- Except for the information in the "cited_by" column, all the data is from PubMed.
- PMIDs in the "cited_by" column that meet either of the two conditions below have been excluded from analyses:
[1] PMIDs of the citing papers are from retraction notices (i.e., those in the “retraction_notice_PMID.csv” file).
[2] Citing paper and the cited retracted paper have the same PMID.
ROW EXPLANATIONS
- Each row is a retracted paper. There are 7,813 retracted papers.
COLUMN HEADER EXPLANATIONS
1) PMID - PubMed ID
2) Title - Paper title
3) Authors - Author names
4) Citation - Bibliographic information of the paper
5) First Author - First author's name
6) Journal/Book - Publication name
7) Publication Year
8) Create Date - The date the record was added to the PubMed database
9) PMCID - PubMed Central ID (if applicable, otherwise blank)
10) NIHMS ID - NIH Manuscript Submission ID (if applicable, otherwise blank)
11) DOI - Digital object identifier (if applicable, otherwise blank)
12) retracted_in - Information of retraction notice (given by PubMed)
13) retracted_yr - Retraction year identified from "retracted_in" (if applicable, otherwise blank)
14) cited_by - PMIDs of the citing papers. (if applicable, otherwise blank) Data collected from iCite.
15) retraction_notice_pmid - PMID of the retraction notice (if applicable, otherwise blank)
<b>FILENAME: PubMed_retracted_publication_CitCntxt_withYR_v3.tsv</b>
- This file contains citation contexts (i.e., citing sentences) where the retracted papers were cited. The citation contexts were identified from the XML version of PubMed Central open access (PMCOA) articles.
- This is part of the data from: Hsiao, T.-K., & Torvik, V. I. (manuscript in preparation). Citation contexts identified from PubMed Central open access articles: A resource for text mining and citation analysis.
- Citation contexts that meet either of the two conditions below have been excluded from analyses:
[1] PMIDs of the citing papers are from retraction notices (i.e., those in the “retraction_notice_PMID.csv” file).
[2] Citing paper and the cited retracted paper have the same PMID.
ROW EXPLANATIONS
- Each row is a citation context associated with one retracted paper that's cited.
- In the manuscript, we count each citation context once, even if it cites multiple retracted papers.
COLUMN HEADER EXPLANATIONS
1) pmcid - PubMed Central ID of the citing paper
2) pmid - PubMed ID of the citing paper
3) year - Publication year of the citing paper
4) location - Location of the citation context (abstract = abstract, body = main text, back = supporting material, tbl_fig_caption = tables and table/figure captions)
5) IMRaD - IMRaD section of the citation context (I = Introduction, M = Methods, R = Results, D = Discussions/Conclusion, NoIMRaD = not identified)
6) sentence_id - The ID of the citation context in a given location. For location information, please see column 4. The first sentence in the location gets the ID 1, and subsequent sentences are numbered consecutively.
7) total_sentences - Total number of sentences in a given location
8) intxt_id - Identifier of a cited paper. Here, a cited paper is the retracted paper.
9) intxt_pmid - PubMed ID of a cited paper. Here, a cited paper is the retracted paper.
10) citation - The citation context
11) progression - Position of a citation context by centile within the citing paper.
12) retracted_yr - Retraction year of the retracted paper
13) post_retraction - 0 = not post-retraction citation; 1 = post-retraction citation. A post-retraction citation is a citation made after the calendar year of retraction.
<b>FILENAME: 724_knowingly_post_retraction_cit.csv</b> (updated)
- The 724 post-retraction citation contexts that we determined knowingly cited the 7,813 retracted papers in "PubMed_retracted_publication_full_v3.tsv".
- Two citation contexts from retraction notices have been excluded from analyses.
ROW EXPLANATIONS
- Each row is a citation context.
COLUMN HEADER EXPLANATIONS
1) pmcid - PubMed Central ID of the citing paper
2) pmid - PubMed ID of the citing paper
3) pub_type - Publication type collected from the metadata in the PMCOA XML files.
4) pub_type2 - Specific article types. Please see the manuscript for explanations.
5) year - Publication year of the citing paper
6) location - Location of the citation context (abstract = abstract, body = main text, back = supporting material, table_or_figure_caption = tables and table/figure captions)
7) intxt_id - Identifier of a cited paper. Here, a cited paper is the retracted paper.
8) intxt_pmid - PubMed ID of a cited paper. Here, a cited paper is the retracted paper.
9) citation - The citation context
10) retracted_yr - Retraction year of the retracted paper
11) cit_purpose - Purpose of citing the retracted paper. This is from human annotations. Please see the manuscript for further information about annotation.
12) longer_context - A extended version of the citation context. (if applicable, otherwise blank) Manually pulled from the full-texts in the process of annotation.
<b>FILENAME: Annotation manual.pdf</b>
- The manual for annotating the citation purposes in column 11) of the 724_knowingly_post_retraction_cit.tsv.
<b>FILENAME: retraction_notice_PMID.csv</b> (new file added for this version)
- A list of 8,346 PMIDs of retraction notices indexed in PubMed (retrieved on August 20, 2020, searched with the query "retraction of publication" [PT] ).
keywords:
citation context; in-text citation; citation to retracted papers; retraction
published:
2022-04-20
This is the core data for Zinnen et al., "Functional traits and responses to nutrient and mycorrhizal addition are inconsistently related to wetland plant species’ coefficients of conservatism." This is submitted to Wetlands Ecology and Management.
Two datasets are submitted here. The first is greenhouse-collected data of 9 plant traits and concurrent treatment responses of Illinois wetland plant species. The second are field-collected leaf trait data of Illinois wetland plant species. These data are analyzed in the paper. Please refer to the main manuscript to see how these data were produced and specific analyses.
keywords:
ecological indicators; Floristic Quality Assessment; Floristic Quality Index; wetland degradation
published:
2021-11-05
Keralis, Spencer D. C.; Yakin, Syamil
(2021)
This data set contains survey results from a 2021 survey of University of Illinois University Library employees conducted as part of the Becoming A Trans Inclusive Library Project to evaluate the awareness of University of Illinois faculty, staff, and student employees regarding transgender identities, and to assess the professional development needs of library employees to better serve trans and gender non-conforming patrons. The survey instrument is available in the IDEALS repository: http://hdl.handle.net/2142/110080.
keywords:
transgender awareness, academic library, gender identity awareness, professional development opportunities
published:
2023-03-28
Hsiao, Tzu-Kun; Torvik, Vetle
(2023)
Sentences and citation contexts identified from the PubMed Central open access articles
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The dataset is delivered as 24 tab-delimited text files. The files contain 720,649,608 sentences, 75,848,689 of which are citation contexts. The dataset is based on a snapshot of articles in the XML version of the PubMed Central open access subset (i.e., the PMCOA subset). The PMCOA subset was collected in May 2019.
The dataset is created as described in: Hsiao TK., & Torvik V. I. (manuscript) OpCitance: Citation contexts identified from the PubMed Central open access articles.
<b>Files</b>:
• A_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with A.
• B_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with B.
• C_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with C.
• D_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with D.
• E_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with E.
• F_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with F.
• G_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with G.
• H_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with H.
• I_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with I.
• J_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with J.
• K_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with K.
• L_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with L.
• M_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with M.
• N_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with N.
• O_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with O.
• P_p1_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with P (part 1).
• P_p2_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with P (part 2).
• Q_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with Q.
• R_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with R.
• S_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with S.
• T_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with T.
• UV_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with U or V.
• W_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with W.
• XYZ_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with X, Y or Z.
Each row in the file is a sentence/citation context and contains the following columns:
• pmcid: PMCID of the article
• pmid: PMID of the article. If an article does not have a PMID, the value is NONE.
• location: The article component (abstract, main text, table, figure, etc.) to which the citation context/sentence belongs.
• IMRaD: The type of IMRaD section associated with the citation context/sentence. I, M, R, and D represent introduction/background, method, results, and conclusion/discussion, respectively; NoIMRaD indicates that the section type is not identifiable.
• sentence_id: The ID of the citation context/sentence in the article component
• total_sentences: The number of sentences in the article component.
• intxt_id: The ID of the citation.
• intxt_pmid: PMID of the citation (as tagged in the XML file). If a citation does not have a PMID tagged in the XML file, the value is "-".
• intxt_pmid_source: The sources where the intxt_pmid can be identified. Xml represents that the PMID is only identified from the XML file; xml,pmc represents that the PMID is not only from the XML file, but also in the citation data collected from the NCBI Entrez Programming Utilities. If a citation does not have an intxt_pmid, the value is "-".
• intxt_mark: The citation marker associated with the inline citation.
• best_id: The best source link ID (e.g., PMID) of the citation.
• best_source: The sources that confirm the best ID.
• best_id_diff: The comparison result between the best_id column and the intxt_pmid column.
• citation: A citation context. If no citation is found in a sentence, the value is the sentence.
• progression: Text progression of the citation context/sentence.
<b>Supplementary Files</b>
• PMC-OA-patci.tsv.gz – This file contains the best source link IDs for the references (e.g., PMID). Patci [1] was used to identify the best source link IDs. The best source link IDs are mapped to the citation contexts and displayed in the *_journal IntxtCit.tsv files as the best_id column.
Each row in the PMC-OA-patci.tsv.gz file is a citation (i.e., a reference extracted from the XML file) and contains the following columns:
• pmcid: PMCID of the citing article.
• pos: The citation's position in the reference list.
• fromPMID: PMID of the citing article.
• toPMID: Source link ID (e.g., PMID) of the citation. This ID is identified by Patci.
• SRC: The sources that confirm the toPMID.
• MatchDB: The origin bibliographic database of the toPMID.
• Probability: The match probability of the toPMID.
• toPMID2: PMID of the citation (as tagged in the XML file).
• SRC2: The sources that confirm the toPMID2.
• intxt_id: The ID of the citation.
• journal: The first letter of the journal title. This maps to the *_journal_IntxtCit.tsv files.
• same_ref_string: Whether the citation string appears in the reference list more than once.
• DIFF: The comparison result between the toPMID column and the toPMID2 column.
• bestID: The best source link ID (e.g., PMID) of the citation.
• bestSRC: The sources that confirm the best ID.
• Match: Matching result produced by Patci.
[1] Agarwal, S., Lincoln, M., Cai, H., & Torvik, V. (2014). Patci – a tool for identifying scientific articles cited by patents. GSLIS Research Showcase 2014. http://hdl.handle.net/2142/54885
• intxt_cit_license_fromPMC.tsv – This file contains the CC licensing information for each article. The licensing information is from PMC's file lists [2], retrieved on June 19, 2020, and March 9, 2023. It should be noted that the license information for 189,855 PMCIDs is <b>NO-CC CODE</b> in the file lists, and 521 PMCIDs are absent in the file lists. The absence of CC licensing information does not indicate that the article lacks a CC license. For example, PMCID: 6156294 (<b>NO-CC CODE</b>) and PMCID: 6118074 (absent in the PMC's file lists) are under CC-BY licenses according to their PDF versions of articles.
The intxt_cit_license_fromPMC.tsv file has two columns:
• pmcid: PMCID of the article.
• license: The article’s CC license information provided in PMC’s file lists. The value is nan when an article is not present in the PMC’s file lists.
[2] https://www.ncbi.nlm.nih.gov/pmc/tools/ftp/
• Supplementary_File_1.zip – This file contains the code for generating the dataset.
keywords:
citation context; in-text citation; inline citation; bibliometrics; science of science
published:
2025-04-24
Smith, Rebecca; Chakraborty, Sulagna; Lyons, Lee Ann; Winata, Fikriyah; Mateus-Pinilla, Nohra
(2025)
These are the datasets underlying the figures in the manuscript "Methods of active surveillance for hard ticks and associated tick-borne pathogens of public health importance in the contiguous United States: A Comprehensive Systematic Review".
The review considered only publications reporting on active tick or tick-borne pathogen surveillance in the contiguous United States published between 1944 and 2018. For the purposes of this review, we were only concerned with studies of Ixodidae (hard ticks) and/or studies of tick-borne pathogens (in humans, animals, or hard ticks) of public health importance to humans. Study designs included cross-sectional, serological, epidemiological, ecological, or observational studies. Only peer-reviewed publications published in the English language were included. Studies were excluded if they focused on a tick that is not a vector of a human pathogen or on a pathogen that does not cause disease in humans, if the tick or tick-borne pathogen findings were incidental, or if they did not include quantitative surveillance data. For the purpose of this study, we defined surveillance data as information on ticks or pathogens provided through active sampling in natural areas; it should be noted that this does not match the strict definition used by the CDC, which requires sustained sampling efforts across time. Studies were also excluded if they: explored regions other than the contiguous US; focused on treatment, vaccine, or therapeutics development and/or diagnostics of human disease; focused on tick or pathogen genetics; focused on experimental studies with ticks or hosts; were tick control and/or management studies; performed only passive surveillance; were review articles; were not peer reviewed; were in a language other than English; the full text was not available; and if the disease was not a risk to the general public. In addition, for articles which reported data that had previously been published, we only included previously unreported information collected by the authors, and we referenced the specific period of collection for these data to ensure we were not double-recording data. Due to publication delays, we also performed a non-systematic review of the literature of articles published between 2019 – 2023 on tick and tickborne pathogen surveillance methods conducted in the contiguous United States.
Keyword search was performed in PubMed Central and Web of Science Core Collection databases. The search algorithm keywords included tick(s), Amblyomma, Dermacentor, Ixodes, Rhipicephalus, Acari Ixodidea, tick host(s), Lyme disease, Rocky Mountain Spotted Fever, Spotted Fever Group, Rickettsiosis, Ehrlichiosis, Anaplasmosis, Borreliosis, Tularemia, Babesiosis, tick-borne pathogen, Powassan, Heartland, Bourbon, Colorado tick fever, Pacific Coast tick fever, tick surveillance, surveillance, (sero)epidemiology, prevalence, distribution, ecology, United States. The search algorithm utilized is provided as follows:
TI= ((ticks OR Ixodes OR Amblyomma OR Dermacentor OR Rhipicephalus OR "Acari Ixodidi" OR "tick hosts" OR "tick host") OR ("Lyme Disease" OR "Rocky Mountain Spotted Fever" OR "Spotted Fever Group" OR Rickettsiosis OR Rickettsial OR Ehrlichiosis OR Anaplasmosis OR Borreliosis OR Tularemia OR Babesiosis OR Borrelia OR Ehrlichia OR Anaplasma OR Rickettsia OR Babesia OR "tick-borne pathogen" OR "tick borne pathogen")) AND TS= ("tick surveillance" OR surveillance OR epidemiology OR seroepidemiology OR ecology) AND CU=("United States of America" OR "USA" OR "United States" OR United-States).
These datasets are the collated data underlying the figures in the manuscript. For more details, please see the publication.
The following are explanations for variables used in all the CSV files:
Tick: Species of tick collected
Tick_Method: Method of collecting ticks
Pathogen: Species of pathogen tested for
Path_Method: Method of testing for pathogens
Decade: Decade of publication
n: Number of publications
STATE: state in which study was conducted
COUNTY: county in which study was conducted
1944 - 2018 (Was surveillance performed?): was there at least one publication included with a publication date within the 1944-2018 period in this geographic region?
2019 - 2023 (Was surveillance performed?): was there at least one publication included with a publication date within the 2019-2023 period in this geographic region?
keywords:
ticks; systematic review; surveillance