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From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support

OBJECTIVES: 1) To develop a rigorous and repeatable method for building effective Bayesian network (BN) models for medical decision support from complex, unstructured and incomplete patient questionnaires and interviews that inevitably contain examples of repetitive, redundant and contradictory resp...

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Autores principales: Constantinou, Anthony Costa, Fenton, Norman, Marsh, William, Radlinski, Lukasz
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4839499/
https://www.ncbi.nlm.nih.gov/pubmed/26830286
http://dx.doi.org/10.1016/j.artmed.2016.01.002
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author Constantinou, Anthony Costa
Fenton, Norman
Marsh, William
Radlinski, Lukasz
author_facet Constantinou, Anthony Costa
Fenton, Norman
Marsh, William
Radlinski, Lukasz
author_sort Constantinou, Anthony Costa
collection PubMed
description OBJECTIVES: 1) To develop a rigorous and repeatable method for building effective Bayesian network (BN) models for medical decision support from complex, unstructured and incomplete patient questionnaires and interviews that inevitably contain examples of repetitive, redundant and contradictory responses; 2) To exploit expert knowledge in the BN development since further data acquisition is usually not possible; 3) To ensure the BN model can be used for interventional analysis; 4) To demonstrate why using data alone to learn the model structure and parameters is often unsatisfactory even when extensive data is available. METHOD: The method is based on applying a range of recent BN developments targeted at helping experts build BNs given limited data. While most of the components of the method are based on established work, its novelty is that it provides a rigorous consolidated and generalised framework that addresses the whole life-cycle of BN model development. The method is based on two original and recent validated BN models in forensic psychiatry, known as DSVM-MSS and DSVM-P. RESULTS: When employed with the same datasets, the DSVM-MSS demonstrated competitive to superior predictive performance (AUC scores 0.708 and 0.797) against the state-of-the-art (AUC scores ranging from 0.527 to 0.705), and the DSVM-P demonstrated superior predictive performance (cross-validated AUC score of 0.78) against the state-of-the-art (AUC scores ranging from 0.665 to 0.717). More importantly, the resulting models go beyond improving predictive accuracy and into usefulness for risk management purposes through intervention, and enhanced decision support in terms of answering complex clinical questions that are based on unobserved evidence. CONCLUSIONS: This development process is applicable to any application domain which involves large-scale decision analysis based on such complex information, rather than based on data with hard facts, and in conjunction with the incorporation of expert knowledge for decision support via intervention. The novelty extends to challenging the decision scientists to reason about building models based on what information is really required for inference, rather than based on what data is available and hence, forces decision scientists to use available data in a much smarter way.
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spelling pubmed-48394992016-04-21 From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support Constantinou, Anthony Costa Fenton, Norman Marsh, William Radlinski, Lukasz Artif Intell Med Article OBJECTIVES: 1) To develop a rigorous and repeatable method for building effective Bayesian network (BN) models for medical decision support from complex, unstructured and incomplete patient questionnaires and interviews that inevitably contain examples of repetitive, redundant and contradictory responses; 2) To exploit expert knowledge in the BN development since further data acquisition is usually not possible; 3) To ensure the BN model can be used for interventional analysis; 4) To demonstrate why using data alone to learn the model structure and parameters is often unsatisfactory even when extensive data is available. METHOD: The method is based on applying a range of recent BN developments targeted at helping experts build BNs given limited data. While most of the components of the method are based on established work, its novelty is that it provides a rigorous consolidated and generalised framework that addresses the whole life-cycle of BN model development. The method is based on two original and recent validated BN models in forensic psychiatry, known as DSVM-MSS and DSVM-P. RESULTS: When employed with the same datasets, the DSVM-MSS demonstrated competitive to superior predictive performance (AUC scores 0.708 and 0.797) against the state-of-the-art (AUC scores ranging from 0.527 to 0.705), and the DSVM-P demonstrated superior predictive performance (cross-validated AUC score of 0.78) against the state-of-the-art (AUC scores ranging from 0.665 to 0.717). More importantly, the resulting models go beyond improving predictive accuracy and into usefulness for risk management purposes through intervention, and enhanced decision support in terms of answering complex clinical questions that are based on unobserved evidence. CONCLUSIONS: This development process is applicable to any application domain which involves large-scale decision analysis based on such complex information, rather than based on data with hard facts, and in conjunction with the incorporation of expert knowledge for decision support via intervention. The novelty extends to challenging the decision scientists to reason about building models based on what information is really required for inference, rather than based on what data is available and hence, forces decision scientists to use available data in a much smarter way. 2016-01-16 2016-02 /pmc/articles/PMC4839499/ /pubmed/26830286 http://dx.doi.org/10.1016/j.artmed.2016.01.002 Text en This manuscript version is made available under the CC-BY-NC-ND 4.0 license: http://creativecommons.org/licenses/by-nc-nd/4.0/
spellingShingle Article
Constantinou, Anthony Costa
Fenton, Norman
Marsh, William
Radlinski, Lukasz
From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support
title From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support
title_full From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support
title_fullStr From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support
title_full_unstemmed From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support
title_short From complex questionnaire and interviewing data to intelligent Bayesian Network models for medical decision support
title_sort from complex questionnaire and interviewing data to intelligent bayesian network models for medical decision support
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4839499/
https://www.ncbi.nlm.nih.gov/pubmed/26830286
http://dx.doi.org/10.1016/j.artmed.2016.01.002
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