Automated Author ProfileMula, Anna Monistrol
Mula, Anna Monistrol
Current S-Index
Sum of Dataset Indices for all datasets
Average Dataset Index per Dataset
Average Dataset Index per dataset
Total Datasets
Total datasets for this author
Average FAIR Score
Average FAIR Score per dataset
Total Citations
Total citations to the author's datasets
Total Mentions
Total mentions of the author's datasets
S-Index Interpretation
The S-Index (Sharing Index) is a comprehensive metric that represents the cumulative impact of all your datasets. It is calculated as the sum of Dataset Index scores across all your claimed datasets.
What it means:
- A higher S-index indicates greater overall impact of your datasets relative to typical datasets in their fields of research
- The S-Index grows as you add more datasets or as existing datasets gain more citations and mentions
- It provides a single number to track your research data impact over time
Current S-Index: 4.9 (sum of 2 datasets Dataset Index scores)
More information here.
S-Index Over Time
Cumulative Citations Over Time
Cumulative Mentions Over Time
Datasets
Background: The SARS-Cov-2 pandemic was associated with a substantial rise in trauma and stressor exposure. The Co-RESPOND consortium (part of the EU horizon 2020-funded RESPOND project) has been initiated to study the impact on mental health, using longitudinal data of separate international cohorts. Aims: The Co-RESPOND initiative aims to retrospectively harmonize mental health and resilience data of ongoing longitudinal cohort studies at the individual participant level; to create an interoperable network of cohorts within a secure environment; to manage these data along with harmonization products (e.g. transformation procedures and variable dictionaries) according to the FAIR principles; and to keep this network live in order to add new data waves or to be joined by new cohorts. Methods: Data were harmonized retrospectively according to the Maelstrom guidance. A federated data network (FDN) was created using the OBiBa software suite. Results: To date, Co-RESPOND consists of nine European cohorts and one global cohort, including 50,885 individual participants. This paper presents Co-RESPOND as a case study for retrospective harmonization of decentralized data where teams collected and transformed data without prior coordination, facing methodological as well as regulatory challenges. The process of this project is outlined in detail, so it could be applied by other researchers for future projects. Its outcomes and the resulting data harmonization products are presented. Conclusions and outlook: The harmonized data are now ready to be shared with external partners for analyses, and Co-RESPOND is open for more partners to join. Lessons learned throughout the project will be reported, and established classification standards will be recommended for use to generate data sets that are available for joint analyses from the start. Trial registration:ClinicalTrials.gov identifier: NCT04556565. Longitudinal cohort data collected during the COVID-19 pandemic hold an extraordinary opportunity to study the impact of elevated trauma and stressor prevalence on trauma and mental health.This project aims to retrospectively harmonize, i.e. transform, already collected data of originally separate cohorts in a way that it can be analysed jointly on the individual-participant level, and to manage data sustainably in a fair (findable, accessible, interoperable, and reusable) way.Ten cohort studies covering mental health outcomes of more than 50.000 individuals have been harmonized so far. The data sets are available within a federated data network and can be accessed upon request for further analyses. Longitudinal cohort data collected during the COVID-19 pandemic hold an extraordinary opportunity to study the impact of elevated trauma and stressor prevalence on trauma and mental health. This project aims to retrospectively harmonize, i.e. transform, already collected data of originally separate cohorts in a way that it can be analysed jointly on the individual-participant level, and to manage data sustainably in a fair (findable, accessible, interoperable, and reusable) way. Ten cohort studies covering mental health outcomes of more than 50.000 individuals have been harmonized so far. The data sets are available within a federated data network and can be accessed upon request for further analyses.
Authors
- Petri-Romão, Papoula ;
- Stoffers-Winterling, Jutta ;
- Doerschner, Charlotte ;
- Jurgeit, Jocelyne ;
- Gödde, Philipp ;
- Hecker, Irwin ;
- Melchior, Maria ;
- Czepiel, Diana ;
- Witteveen, Anke ;
- van der Ven, Els ;
- Sijbrandij, Marit ;
- Mediavilla, Roberto ;
- Ayuso-Mateos, José Luis ;
- Smith, Pierre ;
- Lorant, Vincent ;
- Mula, Anna Monistrol ;
- Abad, Josep Maria Haro ;
- Gémes, Katalin ;
- Mittendorder-Rutz, Ellenor ;
- Compagnoni, Matteo Monzio ;
- Lora, Antonio ;
- Caggiu, Giulia ;
- Conflitti, Claudia ;
- Kalisch, Raffael ;
- Lieb, Klaus
Background: The SARS-Cov-2 pandemic was associated with a substantial rise in trauma and stressor exposure. The Co-RESPOND consortium (part of the EU horizon 2020-funded RESPOND project) has been initiated to study the impact on mental health, using longitudinal data of separate international cohorts. Aims: The Co-RESPOND initiative aims to retrospectively harmonize mental health and resilience data of ongoing longitudinal cohort studies at the individual participant level; to create an interoperable network of cohorts within a secure environment; to manage these data along with harmonization products (e.g. transformation procedures and variable dictionaries) according to the FAIR principles; and to keep this network live in order to add new data waves or to be joined by new cohorts. Methods: Data were harmonized retrospectively according to the Maelstrom guidance. A federated data network (FDN) was created using the OBiBa software suite. Results: To date, Co-RESPOND consists of nine European cohorts and one global cohort, including 50,885 individual participants. This paper presents Co-RESPOND as a case study for retrospective harmonization of decentralized data where teams collected and transformed data without prior coordination, facing methodological as well as regulatory challenges. The process of this project is outlined in detail, so it could be applied by other researchers for future projects. Its outcomes and the resulting data harmonization products are presented. Conclusions and outlook: The harmonized data are now ready to be shared with external partners for analyses, and Co-RESPOND is open for more partners to join. Lessons learned throughout the project will be reported, and established classification standards will be recommended for use to generate data sets that are available for joint analyses from the start. Trial registration:ClinicalTrials.gov identifier: NCT04556565. Longitudinal cohort data collected during the COVID-19 pandemic hold an extraordinary opportunity to study the impact of elevated trauma and stressor prevalence on trauma and mental health.This project aims to retrospectively harmonize, i.e. transform, already collected data of originally separate cohorts in a way that it can be analysed jointly on the individual-participant level, and to manage data sustainably in a fair (findable, accessible, interoperable, and reusable) way.Ten cohort studies covering mental health outcomes of more than 50.000 individuals have been harmonized so far. The data sets are available within a federated data network and can be accessed upon request for further analyses. Longitudinal cohort data collected during the COVID-19 pandemic hold an extraordinary opportunity to study the impact of elevated trauma and stressor prevalence on trauma and mental health. This project aims to retrospectively harmonize, i.e. transform, already collected data of originally separate cohorts in a way that it can be analysed jointly on the individual-participant level, and to manage data sustainably in a fair (findable, accessible, interoperable, and reusable) way. Ten cohort studies covering mental health outcomes of more than 50.000 individuals have been harmonized so far. The data sets are available within a federated data network and can be accessed upon request for further analyses.
Authors
- Petri-Romão, Papoula ;
- Stoffers-Winterling, Jutta ;
- Doerschner, Charlotte ;
- Jurgeit, Jocelyne ;
- Gödde, Philipp ;
- Hecker, Irwin ;
- Melchior, Maria ;
- Czepiel, Diana ;
- Witteveen, Anke ;
- van der Ven, Els ;
- Sijbrandij, Marit ;
- Mediavilla, Roberto ;
- Ayuso-Mateos, José Luis ;
- Smith, Pierre ;
- Lorant, Vincent ;
- Mula, Anna Monistrol ;
- Abad, Josep Maria Haro ;
- Gémes, Katalin ;
- Mittendorder-Rutz, Ellenor ;
- Compagnoni, Matteo Monzio ;
- Lora, Antonio ;
- Caggiu, Giulia ;
- Conflitti, Claudia ;
- Kalisch, Raffael ;
- Lieb, Klaus