A scalable, secure, and interoperable platform for deep data-driven health management
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Published:2021-10-01
Issue:1
Volume:12
Page:
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ISSN:2041-1723
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Container-title:Nature Communications
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language:en
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Short-container-title:Nat Commun
Author:
Bahmani Amir, Alavi ArashORCID, Buergel ThoreORCID, Upadhyayula Sushil, Wang Qiwen, Ananthakrishnan Srinath Krishna, Alavi Amir, Celis Diego, Gillespie DanORCID, Young Gregory, Xing Ziye, Nguyen Minh Hoang Huynh, Haque Audrey, Mathur Ankit, Payne JoshORCID, Mazaheri Ghazal, Li Jason Kenichi, Kotipalli Pramod, Liao Lisa, Bhasin Rajat, Cha Kexin, Rolnik Benjamin, Celli Alessandra, Dagan-Rosenfeld Orit, Higgs Emily, Zhou Wenyu, Berry Camille Lauren, Van Winkle Katherine Grace, Contrepois KévinORCID, Ray Utsab, Bettinger Keith, Datta Somalee, Li Xiao, Snyder Michael P.ORCID
Abstract
AbstractThe large amount of biomedical data derived from wearable sensors, electronic health records, and molecular profiling (e.g., genomics data) is rapidly transforming our healthcare systems. The increasing scale and scope of biomedical data not only is generating enormous opportunities for improving health outcomes but also raises new challenges ranging from data acquisition and storage to data analysis and utilization. To meet these challenges, we developed the Personal Health Dashboard (PHD), which utilizes state-of-the-art security and scalability technologies to provide an end-to-end solution for big biomedical data analytics. The PHD platform is an open-source software framework that can be easily configured and deployed to any big data health project to store, organize, and process complex biomedical data sets, support real-time data analysis at both the individual level and the cohort level, and ensure participant privacy at every step. In addition to presenting the system, we illustrate the use of the PHD framework for large-scale applications in emerging multi-omics disease studies, such as collecting and visualization of diverse data types (wearable, clinical, omics) at a personal level, investigation of insulin resistance, and an infrastructure for the detection of presymptomatic COVID-19.
Funder
NIH - Center for Personal Dynamic Regulomes
Publisher
Springer Science and Business Media LLC
Subject
General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry
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