Skip to Main Content
Borrow, Request, & Renew
Articles, Journals, & Databases
Research Help
Hours, Locations, & Events
Ask a Question Now
Off‐Campus Access
My Library Account
Search
Library
LibGuides
HBLS
Resources for Research Rigor & Transparency
Clinical Research
Search this Guide
Search
Resources for Research Rigor & Transparency
A partnership between Office of Vice President for Research (OVPR) Office of Research Integrity (ORI) and University Library
Home
Reporting Guidelines & Standards
Pre-Registering a Study
Find Protocols & Methods
Experimental Design
Data Acquisition
Resource Identification
Antibody & Cell Line Validation
Computational & Statistical Reproducibility
Clinical Research
Clinical Frameworks
Image Manipulation
Qualitative Research
Research Data Management
This link opens in a new window
Clinical Frameworks
NIH Principles and Guidelines for Reporting Preclinical Research
The EQUATOR Network: Enhancing the QUAlity and Transparency Of Health Research
CONSORT Explanation and Elaboration
Reporting of Observational Studies in Epidemiology (STROBE) recommendations to improve the quality of reporting of observational studies
SEPTRE (SPIRIT Electronic Protocol Tool & Resource) web-based software to create, manage, and register protocols for clinical trials
Controlled trial for reproducibility (Nature Comment, 2020)
A Multidisciplinary Approach to Ensure Scientific Integrity in Clinical Research by Dr. Ko Bando, et. al.
Replications do not fail (Nature Editorial, 2020)
Reproducibility Project: Cancer Biology (RP:CB) Overview
The retrospective chart review: important methodological considerations (Vassar and Holzmann, Journal of Educational Evaluation for Health Professions 2013)
Columbia University Compilation of suggested practices for creation of a retrospective chart review form
Rigor and Transparency Index, a new metric of quality for assessing biological and medical science methods (preprint, Menke et al. 2020)
Society of Neuroscience: Foundations of Rigorous Neuroscience Research
<<
Previous:
Computational & Statistical Reproducibility
Next:
Image Manipulation >>