| Literature DB >> 26594179 |
Abstract
Entities:
Keywords: avatars; computational; discipulus; electronic health record; precision medicine; supermodels; systems medicine; virtual patient
Year: 2015 PMID: 26594179 PMCID: PMC4635220 DOI: 10.3389/fphys.2015.00318
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566
Figure 1Building SuperModels for precision and systems medicine, with incorporation of computational avatars. Input: A feedforward loop (top left panel X connects to patient avatar Z both indirectly via bottom left panel Y and also directly, by large blue arrows) is fueled by two disparate paths. In the top left panel labeled X, various systems medicine data types, along with network biology and emerging computational models (including genome-scale metabolic models, Agren et al., 2014; Yizhak et al., 2015), provide input for patient representations such as the digital human construct being developed by The Discipulus Project. In the bottom left panel labeled Y, systems medicine data are integrated into patients' mobile health (mHealth) technologies and electronic health records (EHR) (Brown et al., 2015b). mHealth and EHR data are coupled with external knowledge [e.g., from medical societies guidelines and Food and Drug Administration (FDA) approvals] by cognitive machines such as Watson, and analytics are employed to process multi-omics (integrated personal omics profile; iPOP) and patient similarity algorithms. The path labeled Y is already in progress with EHR data, independent of digital human constructs described in the path labeled X. Paths X and Y can be bridged by locally supervised metric learning (LSML) similarity measures and similarity network fusions (SNF), for synergistic creation of SuperModels to produce results that cannot be obtained from path X or path Y alone. Output: High-yield predictive, preventive, and personalized data indicate patients at low/high risk for disease/adverse effect development. Individualized therapeutic plans can therefore be devised, also guided by the patient's likelihood of being a responder or non-responder to specific medications. Provision of personalized data should be in the context of systems medicine counseling, integrating genetic counseling with information about various forms of systems medicine data (Brown et al., 2015b). Iteration: The curved gray arrow linking output to input represents using outcome observations to iterate and refine SuperModels at all stages of development, to guide precision medicine. 1Hood and Flores (2012), 2Brown et al. (2015b), 3Barabási and Oltvai (2004), 4Schuyler et al. (2011), 5Plotkin et al. (2013), 6Bikson et al. (2012a), 7Brown and Loew (2014), 8Brown et al. (2015a), 9Henderson et al. (2014), 10Tortolina et al. (2012), 11Stamatakos et al. (2010), 12El-Kareh and Secomb (2000), 13Utsler (2015), 14Agren et al. (2014), 15Yizhak et al. (2015), 16The Discipulus Project (2013), 17Kullo et al. (2013), 18Steinhubl et al. (2015), 19Zhang et al. (2014), 20Chen et al. (2012), 21Savage (2014).