| Literature DB >> 33948243 |
Betsy Rolland1,2, Elizabeth S Burnside1,2,3, Corrine I Voils1,4,5, Manish N Shah1,6,7, Allan R Brasier1,7.
Abstract
The pervasive problem of irreproducibility of preclinical research represents a substantial threat to the translation of CTSA-generated health interventions. Key stakeholders in the research process have proposed solutions to this challenge to encourage research practices that improve reproducibility. However, these proposals have had minimal impact, because they either 1. take place too late in the research process, 2. focus exclusively on the products of research instead of the processes of research, and/or 3. fail to take into account the driving incentives in the research enterprise. Because so much clinical and translational science is team-based, CTSA hubs have a unique opportunity to leverage Science of Team Science research to implement and support innovative, evidence-based, team-focused, reproducibility-enhancing activities at a project's start, and across its evolution. Here, we describe the impact of irreproducibility on clinical and translational science, review its origins, and then describe stakeholders' efforts to impact reproducibility, and why those efforts may not have the desired effect. Based on team-science best practices and principles of scientific integrity, we then propose ways for Translational Teams to build reproducible behaviors. We end with suggestions for how CTSAs can leverage team-based best practices and identify observable behaviors that indicate a culture of reproducible research. © The Association for Clinical and Translational Science 2020.Entities:
Keywords: Team science; ethics; interprofessional teams; reproducibility; translational teams
Year: 2020 PMID: 33948243 PMCID: PMC8057443 DOI: 10.1017/cts.2020.512
Source DB: PubMed Journal: J Clin Transl Sci ISSN: 2059-8661
Fig. 1.Lifecycle of a preclinical research project. Shown is a schematic view of the lifecycle of a preclinical research project related to the four developmental phases of a translational team. Behaviors for each reproducibility domain are indicated. Team behaviors that reinforce good institutional practices of reproducible science are indicated.
Fig. 2.Best practices in reproducible team science support the culture of good institutional practices (GIPs). Mapping the best practices in reproducible team science with the six GIPs proposed by Begley et al.
Rubric for assessing the conduct of reproducible science in a Translational Team
| Best practice in team science | Specific behavior | High performance | Low performance (DRPs) |
|---|---|---|---|
| Mission/Vision/Goals | Build consensus around the mission, vision, and goal, and ensure individuals goals are also met | Team members articulate the same mission, vision, goals. | Individuals have different goals for the teams and engage in behaviors that do not serve the larger goals. |
| Culture of trust | Create a culture of psychological safety | Team members feel comfortable questioning each other’s data and conclusions. | Team members are defensive about being questioned and rarely question others. |
| Interdisciplinary conversations on approaches, methods, and results | Include disciplinary diversity | Statisticians/bioinformatics represented at early design stage. | Analysis expertise involved post hoc. |
| Define hypotheses for testing | Primary endpoint established and reported. Study appropriately powered. | Testing post hoc, endpoints selected from multiple options that meet prior bias or statistical significance. | |
| Discuss methods, analysis, and results | Hypothesis testing. | Primary endpoint established and reported. Study appropriately powered. | |
| Share experimental design/description | Experimental details are transparent, discussed at team meetings, methods, and conclusions challenged. | Team scientists do not know the details of other team members’ experiments | |
| Conduct semi-independent replication | Subgroups within Translational Team conduct similar experiments. | Experiments not replicated; published as n = 1. | |
| Research support systems | Conduct team business openly and transparently | Collaboration plan developed by team – agreed upon and used. | Lack of consistency and transparency in communication and operations. |
| Data management | Build a data management system that works for all team members with appropriate data structure, access, and archival | Data system to archive experimental results, securely accessible to all team members. | Experiments kept in individual lab archives not accessible to other team members. |
| Build robust data analysis pipelines | Source code, metadata archived with primary data. | Data analysis pipeline not shared/available. | |
| Leadership | Attribute authorship and IP responsibly | Authorship, IP policies exist and are based on explicit contribution criteria. | No written authorship policy. Authorship given to funders without direct study involvement; or to high-profile scientist in the field to enhance impact. Manuscript sections recycled. |
| Foster a culture of mentoring | Co-mentoring and career development embedded in team development activities. | Scientists/students used as technical support. | |
| Require and track training above and beyond institutional or funder requirements | Team members current with compliance, responsible conduct of research (RCR), and security. Security/privacy/ethical issues incorporated into team discussions. | Training, compliance, and RCR not visible or consistent across team members. |
DRP, detrimental research practices.