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Parminder S Reel

Showing results (1-10 of 6) with videos related to

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Biotechnology Advances|April 1, 2021
Using machine learning approaches for multi-omics data analysis: A reviewParminder S Reel, Smarti Reel, Ewan Pearson, et al.
Phenomics (Cham, Switzerland)|March 20, 2023
A Meta-Analysis of the Genome-Wide Association Studies on Two Genetically Correlated Phenotypes Suggests Four New Risk Loci for HeadachesWeihua Meng, Parminder S Reel, Charvi Nangia, et al.
Metabolites|August 25, 2022
Predicting Hypertension Subtypes with Machine Learning Using Targeted Metabolites and Their RatiosSmarti Reel, Parminder S Reel, Zoran Erlic, et al.
European Journal of Endocrinology|March 19, 2025
Identification of hypertension subtypes using microRNA profiles and machine learningSmarti Reel, Parminder S Reel, Josie Van Kralingen, et al.
Clinical Epigenetics|November 4, 2022
Whole blood methylome-derived features to discriminate endocrine hypertensionRoberta Armignacco, Parminder S Reel, Smarti Reel, et al.
Ebiomedicine|September 30, 2022
Machine learning for classification of hypertension subtypes using multi-omics: A multi-centre, retrospective, data-driven studyParminder S Reel, Smarti Reel, Josie C van Kralingen, et al.
Pageof 1

Showing results (1-10 of 6) with videos related to

Sort By:
Pageof 1
Biotechnology Advances|April 1, 2021
Using machine learning approaches for multi-omics data analysis: A reviewParminder S Reel, Smarti Reel, Ewan Pearson, et al.
Phenomics (Cham, Switzerland)|March 20, 2023
A Meta-Analysis of the Genome-Wide Association Studies on Two Genetically Correlated Phenotypes Suggests Four New Risk Loci for HeadachesWeihua Meng, Parminder S Reel, Charvi Nangia, et al.
Metabolites|August 25, 2022
Predicting Hypertension Subtypes with Machine Learning Using Targeted Metabolites and Their RatiosSmarti Reel, Parminder S Reel, Zoran Erlic, et al.
European Journal of Endocrinology|March 19, 2025
Identification of hypertension subtypes using microRNA profiles and machine learningSmarti Reel, Parminder S Reel, Josie Van Kralingen, et al.
Clinical Epigenetics|November 4, 2022
Whole blood methylome-derived features to discriminate endocrine hypertensionRoberta Armignacco, Parminder S Reel, Smarti Reel, et al.
Ebiomedicine|September 30, 2022
Machine learning for classification of hypertension subtypes using multi-omics: A multi-centre, retrospective, data-driven studyParminder S Reel, Smarti Reel, Josie C van Kralingen, et al.
Pageof 1