№ files_lp_3_process_7_045924
File format: docx
Character count: 5557
File size: 24 KB
Preprocess 0 document describes the process of splitting MARC records into multiple records in preparation for converting them to BIBFRAME Works and Instances.
Year:
2023
Region / City:
N/A
Topic:
MARC to BIBFRAME conversion
Document type:
Process documentation
Organization / Institution:
N/A
Author:
N/A
Target Audience:
Library professionals, cataloging staff
Effective period:
N/A
Approval date:
N/A
Modification date:
N/A
Price: 8 / 10 USD
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The product description is provided for reference. Actual content and formatting may differ slightly.
Year:
2026
Field:
Neuroimaging / Cognitive Neuroscience
Document Type:
Supplementary Material
Institution:
University or Research Laboratory (not specified)
Methods:
fMRI preprocessing, longitudinal registration, ROI computation
Software:
SPM12, CAT12, DARTEL
Brain Regions:
PFC-PPC, PFC-BG, frontal pole, anterior cingulate cortex, basal ganglia, inferior frontal junction, dorsolateral prefrontal cortex, ventrolateral prefrontal cortex, superior and inferior parietal lobules
Data Resolution:
2 x 2 x 2 mm³
Smoothing:
8-mm FWHM Gaussian kernel
Masking Threshold:
0.2
Document type:
Supplementary materials
Subject:
Radiomics feature extraction and machine learning model evaluation
Imaging modality:
Computed tomography (CT)
Preprocessing methods:
Intensity normalization, gray-level discretization, Gaussian transform, wavelet transform, voxel resampling
Voxel size:
1×1×1 mm³
Feature selection method:
mRMR algorithm with 1000-fold bootstrap resampling
Dimensionality reduction:
LASSO regression analysis
Model interpretation:
SHAP analysis
Machine learning algorithms:
LR, SVM, RF, ExtraTrees, LightGBM, MLP
Evaluation metrics:
AUC, ACC, SEN, SPE, PPV, NPV
Validation cohorts:
Training set, internal validation, external validation
Variables included:
Intra-radiomics features, Peri-radiomics features, Intra-Peri-radiomics features, body composition indices (VFI, SFI, SMI, IMFI, SMD, VSR, VMR)
Tables:
S1–S4
Figures:
S1–S11
Pagination:
Pages 2–14
Year:
2026
Region / City:
Taigu, Shanxi, China
Subject:
Food science, food processing, rheology
Document Type:
Research article
Institution:
Shanxi Agricultural University
Authors:
Tingting Sun, Huijun Yin, Lijing Yan, Xiaying Hao, Lihong Fu, Yaoxuan Jia, Xiaobin Li
Target Audience:
Food scientists, agricultural engineers
Keywords:
High-voltage pulsed electric field, Sanbai melon juice, rheological properties, fruit and vegetable juice, dynamic viscoelasticity
Abstract:
Study of the effect of high-voltage pulsed electric field pretreatment on the rheological properties of Sanbai melon juice, including shear viscosity and dynamic viscoelasticity.
Methodology:
Experimental analysis with two concentrations of Sanbai melon juice, measuring shear stress, viscosity at different temperatures, and viscoelastic properties.
Document type:
Supplementary materials
Research field:
Cognitive neuroscience
Topic:
Contamination obsessive-compulsive disorder and disgust conditioning
Methods:
fMRI data acquisition and preprocessing; stimulus selection; whole-brain analysis
Imaging modality:
Functional magnetic resonance imaging (fMRI)
MRI scanner:
Siemens Prisma 3.0T
Software:
E-prime 2.0
Stimulus categories:
Death; animals; food; hygiene; body products; envelope violations
Data formats:
DICOM; NIFTI
Preprocessing steps:
Conversion; slice timing correction; head movement correction; spatial segmentation; spatial alignment; spatial smoothing
Statistical analysis:
Whole-brain analysis with FWE correction
Figures:
Fig. S1; Fig. S2; Fig. S3; Fig. S5
Tables:
Table S1; Supplementary Table S2
References cited:
Burns et al. (1996); Foa et al. (2002); Gan et al. (2024); Haberkamp et al. (2017); Olatunji et al. (2007; 2015); Sydeman (2018); Wang et al. (2024)
Year:
Not specified
Region / City:
Not specified
Topic:
Preprocessing methods for PLS-DA model
Document Type:
Supplementary material
Organization / Institution:
Not specified
Author:
Not specified
Target Audience:
Researchers in data analysis and preprocessing
Period of Validity:
Not specified
Approval Date:
Not specified
Date of Modifications:
Not specified
Year:
2020
Region / City:
United States
Topic:
Software Deployment
Document Type:
Guide
Organization:
Department of Veterans Affairs, Office of Information and Technology (OI&T)
Author:
S. Davidson, David Horn
Target Audience:
IT professionals, system administrators, technical personnel in healthcare
Effective Period:
December 2020
Approval Date:
December 2020
Revision History:
12/04/2020, 10/06/2020, 07/21/2020, 05/29/2020
Year:
2020
Region / City:
United States
Topic:
Deployment, Installation, Rollback
Document Type:
Guide
Organization / Institution:
Department of Veterans Affairs, Office of Information and Technology (OI&T)
Author:
Technatomy
Target Audience:
Veterans Affairs staff, IT professionals, project stakeholders
Period of Validity:
February 2020 - Ongoing
Approval Date:
02/20/2020
Modification Date:
02/20/2020
Year:
2025
Region / City:
Global
Subject Category:
Cyber Incident Response Management
Document Type:
Playbook
Organisation:
NCC Group
Creator:
NCC Group
Target Audience:
First responders, Service Desk team
Period of Effectiveness:
Annual review
Approval Date:
15/12/2025
Note:
Revision History
Year:
2022
Region / city:
Netherlands
Topic:
Data delivery agreement for reporting agents
Document type:
Agreement
Organization / institution:
European Central Bank (ECB), De Nederlandsche Bank (DNB)
Author:
Arjan Bos, Ronald Damhof, Roland Hommes, Iris Balemans, Wim Goes, Vincent Jungen
Target audience:
Reporting agents
Effective period:
2016–2022
Approval date:
May 18, 2016
Date of changes:
September 2022
Author:
Bill Ruggirello
Email:
[email protected]
Device:
NanoVNA V2 PLUS4 v2.4
Firmware version:
git-20201013-32077fd
Document type:
Technical manual
Manual version:
0.56
Subject area:
RF measurement instruments
Instrument type:
Vector Network Analyzer
Intended audience:
Beginners and new users
Scope:
Operation and functions of NanoVNA V2 PLUS4 v2.4
Coverage:
Calibration, measurement principles, menus, traces, markers, time domain operation, and firmware
Source type:
Instructional and reference documentation
Year:
2023
Region / City:
Galway
Topic:
Data Protection, Privacy, GDPR
Document Type:
Template
Organization:
University of Galway
Author:
Not specified
Target Audience:
Project owners, researchers, data protection officers
Effective Period:
Not specified
Approval Date:
Not specified
Amendment Date:
Not specified
Year:
2023
Region / City:
N/A
Subject:
Image quality assessment, color accuracy, FADGI standards
Document Type:
User Manual
Institution:
N/A
Author:
Lei Helehe
Target Audience:
Users of OpenDICE
Period of Validity:
N/A
Approval Date:
N/A
Revision Date:
N/A
Year:
2004
Software Version:
CPRS GUI v.24
Patch:
OR3.0190
System:
Veterans Health Information Systems and Technology Architecture (VistA)
Document Type:
Technical Setup Instructions
Audience:
IRM and clinical staff responsible for CPRS configuration
Parameters Updated:
ORWDX WRITE ORDERS LIST, ORWOR WRITE ORDERS LIST, ORWOR CATEGORY SEQUENCE
Menu Entry Added:
PSH OERR
Sequence Numbers:
53, 68
Location in GUI:
Between Inpatient Medications and Outpatient Medications
Date Created:
March 2004