Unlocking proteomic heterogeneity in complex diseases through visual analytics

Despite years of preclinical development, biological interventions designed to treat complex diseases such as asthma often fail in phase III clinical trials. These failures suggest that current methods to analyze biomedical data might be missing critical aspects of biological complexity such as the...

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Published inProteomics (Weinheim) Vol. 15; no. 8; pp. 1405 - 1418
Main Authors Bhavnani, Suresh K., Dang, Bryant, Bellala, Gowtham, Divekar, Rohit, Visweswaran, Shyam, Brasier, Allan R., Kurosky, Alex
Format Journal Article
LanguageEnglish
Published Germany Blackwell Publishing Ltd 01.04.2015
Wiley Subscription Services, Inc
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Summary:Despite years of preclinical development, biological interventions designed to treat complex diseases such as asthma often fail in phase III clinical trials. These failures suggest that current methods to analyze biomedical data might be missing critical aspects of biological complexity such as the assumption that cases and controls come from homogeneous distributions. Here we discuss why and how methods from the rapidly evolving field of visual analytics can help translational teams (consisting of biologists, clinicians, and bioinformaticians) to address the challenge of modeling and inferring heterogeneity in the proteomic and phenotypic profiles of patients with complex diseases. Because a primary goal of visual analytics is to amplify the cognitive capacities of humans for detecting patterns in complex data, we begin with an overview of the cognitive foundations for the field of visual analytics. Next, we organize the primary ways in which a specific form of visual analytics called networks has been used to model and infer biological mechanisms, which help to identify the properties of networks that are particularly useful for the discovery and analysis of proteomic heterogeneity in complex diseases. We describe one such approach called subject‐protein networks, and demonstrate its application on two proteomic datasets. This demonstration provides insights to help translational teams overcome theoretical, practical, and pedagogical hurdles for the widespread use of subject‐protein networks for analyzing molecular heterogeneities, with the translational goal of designing biomarker‐based clinical trials, and accelerating the development of personalized approaches to medicine.
Bibliography:ark:/67375/WNG-345SH187-W
istex:DC82F0F147FC6D9AE20948EC84ECE97B0B1361B3
NIH - No. 1UL1TR000071
University of Texas Systems - No. R21OH009441-01A2
Response to ReviewsSupplementary Material A: Materials and Methods for Asthma Network Analysis
NHLB - No. HHSN268201000037C-0-0-1
ArticleID:PMIC8082
See the article online to view Figs. 1–5 in colour.
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ISSN:1615-9853
1615-9861
1615-9861
DOI:10.1002/pmic.201400451