Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.

Computational models in biomedicine rely on biological and clinical assumptions. The selection of these assumptions contributes substantially to modeling success or failure. Assumptions used by experts at the cutting edge of research, however, are rarely explicitly described in scientific publicatio...

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Main Authors: Anna Divoli, Eneida A Mendonça, James A Evans, Andrey Rzhetsky
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-10-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3188482?pdf=render
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spelling doaj-ae62ebaaa8044032be870328fd7a95da2020-11-25T01:44:26ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582011-10-01710e100213210.1371/journal.pcbi.1002132Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.Anna DivoliEneida A MendonçaJames A EvansAndrey RzhetskyComputational models in biomedicine rely on biological and clinical assumptions. The selection of these assumptions contributes substantially to modeling success or failure. Assumptions used by experts at the cutting edge of research, however, are rarely explicitly described in scientific publications. One can directly collect and assess some of these assumptions through interviews and surveys. Here we investigate diversity in expert views about a complex biological phenomenon, the process of cancer metastasis. We harvested individual viewpoints from 28 experts in clinical and molecular aspects of cancer metastasis and summarized them computationally. While experts predominantly agreed on the definition of individual steps involved in metastasis, no two expert scenarios for metastasis were identical. We computed the probability that any two experts would disagree on k or fewer metastatic stages and found that any two randomly selected experts are likely to disagree about several assumptions. Considering the probability that two or more of these experts review an article or a proposal about metastatic cascades, the probability that they will disagree with elements of a proposed model approaches 1. This diversity of conceptions has clear consequences for advance and deadlock in the field. We suggest that strong, incompatible views are common in biomedicine but largely invisible to biomedical experts themselves. We built a formal Markov model of metastasis to encapsulate expert convergence and divergence regarding the entire sequence of metastatic stages. This model revealed stages of greatest disagreement, including the points at which cancer enters and leaves the bloodstream. The model provides a formal probabilistic hypothesis against which researchers can evaluate data on the process of metastasis. This would enable subsequent improvement of the model through Bayesian probabilistic update. Practically, we propose that model assumptions and hunches be harvested systematically and made available for modelers and scientists.http://europepmc.org/articles/PMC3188482?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Anna Divoli
Eneida A Mendonça
James A Evans
Andrey Rzhetsky
spellingShingle Anna Divoli
Eneida A Mendonça
James A Evans
Andrey Rzhetsky
Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
PLoS Computational Biology
author_facet Anna Divoli
Eneida A Mendonça
James A Evans
Andrey Rzhetsky
author_sort Anna Divoli
title Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
title_short Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
title_full Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
title_fullStr Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
title_full_unstemmed Conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
title_sort conflicting biomedical assumptions for mathematical modeling: the case of cancer metastasis.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2011-10-01
description Computational models in biomedicine rely on biological and clinical assumptions. The selection of these assumptions contributes substantially to modeling success or failure. Assumptions used by experts at the cutting edge of research, however, are rarely explicitly described in scientific publications. One can directly collect and assess some of these assumptions through interviews and surveys. Here we investigate diversity in expert views about a complex biological phenomenon, the process of cancer metastasis. We harvested individual viewpoints from 28 experts in clinical and molecular aspects of cancer metastasis and summarized them computationally. While experts predominantly agreed on the definition of individual steps involved in metastasis, no two expert scenarios for metastasis were identical. We computed the probability that any two experts would disagree on k or fewer metastatic stages and found that any two randomly selected experts are likely to disagree about several assumptions. Considering the probability that two or more of these experts review an article or a proposal about metastatic cascades, the probability that they will disagree with elements of a proposed model approaches 1. This diversity of conceptions has clear consequences for advance and deadlock in the field. We suggest that strong, incompatible views are common in biomedicine but largely invisible to biomedical experts themselves. We built a formal Markov model of metastasis to encapsulate expert convergence and divergence regarding the entire sequence of metastatic stages. This model revealed stages of greatest disagreement, including the points at which cancer enters and leaves the bloodstream. The model provides a formal probabilistic hypothesis against which researchers can evaluate data on the process of metastasis. This would enable subsequent improvement of the model through Bayesian probabilistic update. Practically, we propose that model assumptions and hunches be harvested systematically and made available for modelers and scientists.
url http://europepmc.org/articles/PMC3188482?pdf=render
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