Dementia ascertainment in India and development of nation‐specific cutoffs: A machine learning and diagnostic analysis
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- Title
- Dementia ascertainment in India and development of nation‐specific cutoffs: A machine learning and diagnostic analysis
- Creators
- Danny Maupin - University of Surrey, School of Health SciencesHongxin Gao - University of Surrey, School of Health SciencesEmma Nichols - University of WashingtonAlden Gross - Johns Hopkins UniversityErik Meijer - University of Southern CaliforniaHaomiao Jin - University of Surrey, School of Health Sciences
- Publication Details
- Alzheimer's & dementia : diagnosis, assessment & disease monitoring, Vol.17(1), e70049
- Publisher
- John Wiley & Sons, Inc
- Number of pages
- 10
- Publication Date
- 28/03/2025
- Date accepted for publication
- 24/11/2024
- Grant note
- National Institute on Aging: 2R01AG051125, R01 AG030153, RC2 AG036619, 1R03AG043052 Centre of Excellence on Ageing - National Institute on Aging
D.M. led the statistical analysis, development, and drafting of this paper. H.J. and H.G. were contributed to the statistical analysis and drafting of the paper, as well as advised on the project direction. E.N., E.M., and A.G. all methodological feedback and recommendations as well as contributed to the drafting of the final manuscript. The lead author (D.M.) is currently a Fellow of the University of Surrey, Centre of Excellence on Ageing. This analysis uses data or information from the Harmonized LASI-DAD dataset and Codebook, Version A.3 as of January 2022 developed by the Gateway to Global Aging Data. The development of the Harmonized LASI-DAD was funded by the National Institute on Aging (2R01AG051125, R01 AG030153, RC2 AG036619, 1R03AG043052). For more information, please refer to g2aging.org. This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.
- Identifiers
- 99978964602346; WOS:001455695700001
- Academic Unit
- School of Health Sciences
- Language
- English
- Resource Type
- Journal article