The hardware and bandwidth for this mirror is donated by dogado GmbH, the Webhosting and Full Service-Cloud Provider. Check out our Wordpress Tutorial.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]dogado.de.
rtransparency is a pattern-based detector. It is
designed for high precision on the statements it targets, and its
predictions come with the exact text that triggered them so they can be
audited. This vignette describes what each indicator does and does not
capture, so results are interpreted correctly.
| Indicator | Detects | Does not mean |
|---|---|---|
| Conflicts of interest | A COI disclosure is present (including “the authors declare no competing interests”) | That a conflict exists |
| Funding | A statement that funding was received | Presence of a funding section (a “no funding” section is read as absence) |
| Registration | A protocol/trial registration identifier or statement | Ethics/IRB approval numbers |
| Novelty | The article claims its own work is novel or first | That the work is objectively novel |
| Replication | A replication or external/independent validation was performed | An internal train/test split, or future/recommended validation |
| Data sharing | The authors’ own data are made available (repository, accession, or in-article) | Data merely reused, cited, or available “upon request” |
| Code sharing | The authors’ own analysis code is shared | Use of third-party software/tools |
| AI disclosure | A statement discloses generative-AI use in manuscript preparation (including “no AI was used”) | Use of AI as a research method |
Conflicts of interest and AI disclosure are disclosure-based: a statement addressing the topic counts as present, whether the disclosure is positive or negative. This mirrors how these are reported and counted in the literature.
inst/benchmark/.rt_ai() is a special case: with no
publication date and no section structure available, it applies
no 2023 year gate (it never returns NA)
and scans the whole document, so the caller must restrict it to
2023-or-later articles and tolerate a higher false-positive rate on
AI-method papers than rt_ai_pmc().rt_summary() can
correct apparent prevalence using bundled sensitivity/specificity
estimates (rt_accuracy). These derive from the validation
benchmarks; supply your own via rt_summary(accuracy = )
when you have study-specific estimates. AI disclosure is reported
uncorrected (its prevalence is too low in unselected literature for a
stable estimate).Every per-article detector returns the prediction columns
is_coi_pred, is_fund_pred,
is_register_pred, is_novelty_pred,
is_replication_pred, is_open_data,
is_open_code, and the year-gated is_ai_pred
(NA before 2023), each paired with the extracted text.
rt_all_pmc() returns all eight for one file;
rt_all_pmc_dir() runs a whole directory.
The data- and code-availability links the detector extracts
(open_data_links, open_code_links) can be
passed to FAIR-assessment tooling such as rfair, a native
R implementation of FAIR data and software assessment, to score the
findability and accessibility of the shared resources.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.