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Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets
Health advances are contingent on continuous development of new methods and approaches to foster data-driven discovery in the biomedical and clinical sciences. Open-science and team-based scientific discovery offer hope for tackling some of the difficult challenges associated with managing, modeling...
Autores principales: | , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Public Library of Science
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7455041/ https://www.ncbi.nlm.nih.gov/pubmed/32857775 http://dx.doi.org/10.1371/journal.pone.0228520 |
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author | Marino, Simeone Zhao, Yi Zhou, Nina Zhou, Yiwang Toga, Arthur W. Zhao, Lu Jian, Yingsi Yang, Yichen Chen, Yehu Wu, Qiucheng Wild, Jessica Cummings, Brandon Dinov, Ivo D. |
author_facet | Marino, Simeone Zhao, Yi Zhou, Nina Zhou, Yiwang Toga, Arthur W. Zhao, Lu Jian, Yingsi Yang, Yichen Chen, Yehu Wu, Qiucheng Wild, Jessica Cummings, Brandon Dinov, Ivo D. |
author_sort | Marino, Simeone |
collection | PubMed |
description | Health advances are contingent on continuous development of new methods and approaches to foster data-driven discovery in the biomedical and clinical sciences. Open-science and team-based scientific discovery offer hope for tackling some of the difficult challenges associated with managing, modeling, and interpreting of large, complex, and multisource data. Translating raw observations into useful information and actionable knowledge depends on effective domain-independent reproducibility, area-specific replicability, data curation, analysis protocols, organization, management and sharing of health-related digital objects. This study expands the functionality and utility of an ensemble semi-supervised machine learning technique called Compressive Big Data Analytics (CBDA). Applied to high-dimensional data, CBDA (1) identifies salient features and key biomarkers enabling reliable and reproducible forecasting of binary, multinomial and continuous outcomes (i.e., feature mining); and (2) suggests the most accurate algorithms/models for predictive analytics of the observed data (i.e., model mining). The method relies on iterative subsampling, combines function optimization and statistical inference, and generates ensemble predictions for observed univariate outcomes. The novelty of this study is highlighted by a new and expanded set of CBDA features including (1) efficiently handling extremely large datasets (>100,000 cases and >1,000 features); (2) generalizing the internal and external validation steps; (3) expanding the set of base-learners for joint ensemble prediction; (4) introducing an automated selection of CBDA specifications; and (5) providing mechanisms to assess CBDA convergence, evaluate the prediction accuracy, and measure result consistency. To ground the mathematical model and the corresponding computational algorithm, CBDA 2.0 validation utilizes synthetic datasets as well as a population-wide census-like study. Specifically, an empirical validation of the CBDA technique is based on a translational health research using a large-scale clinical study (UK Biobank), which includes imaging, cognitive, and clinical assessment data. The UK Biobank archive presents several difficult challenges related to the aggregation, harmonization, modeling, and interrogation of the information. These problems are related to the complex longitudinal structure, variable heterogeneity, feature multicollinearity, incongruency, and missingness, as well as violations of classical parametric assumptions. Our results show the scalability, efficiency, and usability of CBDA to interrogate complex data into structural information leading to derived knowledge and translational action. Applying CBDA 2.0 to the UK Biobank case-study allows predicting various outcomes of interest, e.g., mood disorders and irritability, and suggests new and exciting avenues of evidence-based research in the context of identifying, tracking, and treating mental health and aging-related diseases. Following open-science principles, we share the entire end-to-end protocol, source-code, and results. This facilitates independent validation, result reproducibility, and team-based collaborative discovery. |
format | Online Article Text |
id | pubmed-7455041 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Public Library of Science |
record_format | MEDLINE/PubMed |
spelling | pubmed-74550412020-09-02 Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets Marino, Simeone Zhao, Yi Zhou, Nina Zhou, Yiwang Toga, Arthur W. Zhao, Lu Jian, Yingsi Yang, Yichen Chen, Yehu Wu, Qiucheng Wild, Jessica Cummings, Brandon Dinov, Ivo D. PLoS One Research Article Health advances are contingent on continuous development of new methods and approaches to foster data-driven discovery in the biomedical and clinical sciences. Open-science and team-based scientific discovery offer hope for tackling some of the difficult challenges associated with managing, modeling, and interpreting of large, complex, and multisource data. Translating raw observations into useful information and actionable knowledge depends on effective domain-independent reproducibility, area-specific replicability, data curation, analysis protocols, organization, management and sharing of health-related digital objects. This study expands the functionality and utility of an ensemble semi-supervised machine learning technique called Compressive Big Data Analytics (CBDA). Applied to high-dimensional data, CBDA (1) identifies salient features and key biomarkers enabling reliable and reproducible forecasting of binary, multinomial and continuous outcomes (i.e., feature mining); and (2) suggests the most accurate algorithms/models for predictive analytics of the observed data (i.e., model mining). The method relies on iterative subsampling, combines function optimization and statistical inference, and generates ensemble predictions for observed univariate outcomes. The novelty of this study is highlighted by a new and expanded set of CBDA features including (1) efficiently handling extremely large datasets (>100,000 cases and >1,000 features); (2) generalizing the internal and external validation steps; (3) expanding the set of base-learners for joint ensemble prediction; (4) introducing an automated selection of CBDA specifications; and (5) providing mechanisms to assess CBDA convergence, evaluate the prediction accuracy, and measure result consistency. To ground the mathematical model and the corresponding computational algorithm, CBDA 2.0 validation utilizes synthetic datasets as well as a population-wide census-like study. Specifically, an empirical validation of the CBDA technique is based on a translational health research using a large-scale clinical study (UK Biobank), which includes imaging, cognitive, and clinical assessment data. The UK Biobank archive presents several difficult challenges related to the aggregation, harmonization, modeling, and interrogation of the information. These problems are related to the complex longitudinal structure, variable heterogeneity, feature multicollinearity, incongruency, and missingness, as well as violations of classical parametric assumptions. Our results show the scalability, efficiency, and usability of CBDA to interrogate complex data into structural information leading to derived knowledge and translational action. Applying CBDA 2.0 to the UK Biobank case-study allows predicting various outcomes of interest, e.g., mood disorders and irritability, and suggests new and exciting avenues of evidence-based research in the context of identifying, tracking, and treating mental health and aging-related diseases. Following open-science principles, we share the entire end-to-end protocol, source-code, and results. This facilitates independent validation, result reproducibility, and team-based collaborative discovery. Public Library of Science 2020-08-28 /pmc/articles/PMC7455041/ /pubmed/32857775 http://dx.doi.org/10.1371/journal.pone.0228520 Text en © 2020 Marino et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. |
spellingShingle | Research Article Marino, Simeone Zhao, Yi Zhou, Nina Zhou, Yiwang Toga, Arthur W. Zhao, Lu Jian, Yingsi Yang, Yichen Chen, Yehu Wu, Qiucheng Wild, Jessica Cummings, Brandon Dinov, Ivo D. Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets |
title | Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets |
title_full | Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets |
title_fullStr | Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets |
title_full_unstemmed | Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets |
title_short | Compressive Big Data Analytics: An ensemble meta-algorithm for high-dimensional multisource datasets |
title_sort | compressive big data analytics: an ensemble meta-algorithm for high-dimensional multisource datasets |
topic | Research Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7455041/ https://www.ncbi.nlm.nih.gov/pubmed/32857775 http://dx.doi.org/10.1371/journal.pone.0228520 |
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