|
|
- IRMS - Nicolae Testemitanu SUMPh
- 1. COLECȚIA INSTITUȚIONALĂ
- MATERIALE ALE CONFERINȚELOR ȘTIINȚIFICE
- Satellite Conference “New horizons in mental health” organized within the Anniversary Congress “80 Years of Innovation in Health and Medical Education” of Nicolae Testemițanu State University of Medicine and Pharmacy, 20-23 October 2025, Chisinau, Republic of Moldova
- Satellite Conference “New horizons in mental health” organized within the Anniversary Congress “80 Years of Innovation in Health and Medical Education” of Nicolae Testemițanu State University of Medicine and Pharmacy, 20-23 October 2025, Chisinau, Republic of Moldova. Abstract book
Please use this identifier to cite or link to this item:
http://hdl.handle.net/20.500.12710/32573
| Title: | Big data in psychiatry: current applications in diagnosis, prevention and personalized treatments |
| Authors: | Covalenco, D. Chihai, Jana |
| Issue Date: | 2025 |
| Publisher: | Universitatea de Stat de Medicină și Farmacie "Nicolae Testemiţanu" din Republica Moldova, Ministerul Sănătăţii al Republicii Moldova |
| Citation: | COVALENCO, D. and Jana CHIHAI. Big data in psychiatry: current applications in diagnosis, prevention and personalized treatments. In: Satellite Conference “New horizons in mental health” organized within the Anniversary Congress “80 Years of Innovation in Health and Medical Education” of Nicolae Testemițanu State University of Medicine and Pharmacy, 20-23 October 2025, Chisinau, Republic of Moldova. Abstract book/ presidents of the scientific committee: Emil Ceban, Jana Chihai. Chișinău: [s. n.], 2025, p. 30. ISBN 978-5-86654-547-6. |
| Abstract: | With the digitalization of healthcare systems, psychiatry has begun to integrate data science concepts to better
understand the mechanisms of disorders. The complex analysis of biological, behavioral, and clinical data
allows for a more complete clinical picture and improved prediction of disease progression. The aim of this
paper is to explore how Big Data is used in psychiatry to improve early diagnosis, predict relapses, and
personalize treatment. A systematic review of 24 publications from 2015 to 2024 was conducted using
databases such as PubMed and Nature. The included studies used clinical data, brain imaging, digital
monitoring, genetic information, and artificial intelligence applied in psychiatric assessment, intervention,
relapse prediction, and treatment monitoring. Large-scale resources (ENIGMA, PGC, UK Biobank) and
routinely collected digital footprints enabled population-level analyses in psychiatry. Methodological reviews
emphasize that careful feature engineering, data harmonization, and external validation are crucial; naïve
application of complex models risks overly optimistic estimates. Big Data has helped clarify the architecture of
disorders and enabled scalable measurement, but its clinical utility depends on multimodal integration, robust
external validation, and precise calibration. The study confirms that the integration of multidimensional data
(clinical, digital, and biological) can enhance the accuracy of relapse prediction and treatment response in
psychiatry. Big Data is becoming a valuable tool in the development of personalized psychiatry and preventive
interventions. |
| metadata.dc.relation.ispartof: | Satellite Conference “New horizons in mental health” organized within the Anniversary Congress “80 Years of Innovation in Health and Medical Education” of Nicolae Testemițanu State University of Medicine and Pharmacy, 20-23 October 2025, Chisinau, Republic of Moldova |
| URI: | https://sanatatemintala.md/images/Abstract%20BOOK%202025.pdf https://repository.usmf.md/handle/20.500.12710/32573 |
| ISBN: | 978-5-86654-547-6 |
| Appears in Collections: | Satellite Conference “New horizons in mental health” organized within the Anniversary Congress “80 Years of Innovation in Health and Medical Education” of Nicolae Testemițanu State University of Medicine and Pharmacy, 20-23 October 2025, Chisinau, Republic of Moldova. Abstract book
|
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.
|