Literature DB >> 29976841

Personalized disease signatures through information-theoretic compaction of big cancer data.

Swetha Vasudevan1,2, Efrat Flashner-Abramson1, F Remacle2,3, R D Levine4,5,6, Nataly Kravchenko-Balasha7.   

Abstract

Every individual cancer develops and grows in its own specific way, giving rise to a recognized need for the development of personalized cancer diagnostics. This suggested that the identification of patient-specific oncogene markers would be an effective diagnostics approach. However, tumors that are classified as similar according to the expression levels of certain oncogenes can eventually demonstrate divergent responses to treatment. This implies that the information gained from the identification of tumor-specific biomarkers is still not sufficient. We present a method to quantitatively transform heterogeneous big cancer data to patient-specific transcription networks. These networks characterize the unbalanced molecular processes that deviate the tissue from the normal state. We study a number of datasets spanning five different cancer types, aiming to capture the extensive interpatient heterogeneity that exists within a specific cancer type as well as between cancers of different origins. We show that a relatively small number of altered molecular processes suffices to accurately characterize over 500 tumors, showing extreme compaction of the data. Every patient is characterized by a small specific subset of unbalanced processes. We validate the result by verifying that the processes identified characterize other cancer patients as well. We show that different patients may display similar oncogene expression levels, albeit carrying biologically distinct tumors that harbor different sets of unbalanced molecular processes. Thus, tumors may be inaccurately classified and addressed as similar. These findings highlight the need to expand the notion of tumor-specific oncogenic biomarkers to patient-specific, comprehensive transcriptional networks for improved patient-tailored diagnostics.

Entities:  

Keywords:  cancer diagnostics; information theory; intertumor heterogeneity; patient-specific gene expression signatures; surprisal analysis

Mesh:

Year:  2018        PMID: 29976841      PMCID: PMC6065026          DOI: 10.1073/pnas.1804214115

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  32 in total

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7.  IL1 Receptor Antagonist Inhibits Pancreatic Cancer Growth by Abrogating NF-κB Activation.

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8.  Convergence of logic of cellular regulation in different premalignant cells by an information theoretic approach.

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6.  Overcoming resistance to BRAFV600E inhibition in melanoma by deciphering and targeting personalized protein network alterations.

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