Literature DB >> 35898852

Active Learning for Multi-way Sensitivity Analysis with Application to Disease Screening Modeling.

Mucahit Cevik1, Sabrina Angco1, Elham Heydarigharaei1, Hadi Jahanshahi1, Nicholas Prayogo1.   

Abstract

Sensitivity analysis is an important aspect of model development as it can be used to assess the level of confidence that is associated with the outcomes of a study. In many practical problems, sensitivity analysis involves evaluating a large number of parameter combinations which may require an extensive amount of time and resources. However, such a computational burden can be avoided by identifying smaller subsets of parameter combinations that can be later used to generate the desired outcomes for other parameter combinations. In this study, we investigate machine learning-based approaches for speeding up the sensitivity analysis. Furthermore, we apply feature selection methods to identify the relative importance of quantitative model parameters in terms of their predictive ability on the outcomes. Finally, we highlight the effectiveness of active learning strategies in improving the sensitivity analysis processes by reducing the total number of quantitative model runs required to construct a high-performance prediction model. Our experiments on two datasets obtained from the sensitivity analysis performed for two disease screening modeling studies indicate that ensemble methods such as Random Forests and XGBoost consistently outperform other machine learning algorithms in the prediction task of the associated sensitivity analysis. In addition, we note that active learning can lead to significant speed-ups in sensitivity analysis by enabling the selection of more useful parameter combinations (i.e., instances) to be used for prediction models.
© The Author(s), under exclusive licence to Springer Nature Switzerland AG 2022.

Entities:  

Keywords:  Active learning; Disease screening; Machine learning; Regression; Sensitivity analysis

Year:  2022        PMID: 35898852      PMCID: PMC9309115          DOI: 10.1007/s41666-022-00117-y

Source DB:  PubMed          Journal:  J Healthc Inform Res        ISSN: 2509-498X


  7 in total

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Journal:  Health Econ       Date:  2005-04       Impact factor: 3.046

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Authors:  Yuanhui Zhang; Haipeng Wu; Brian T Denton; James R Wilson; Jennifer M Lobo
Journal:  Health Care Manag Sci       Date:  2017-10-27

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4.  Using Active Learning for Speeding up Calibration in Simulation Models.

Authors:  Mucahit Cevik; Mehmet Ali Ergun; Natasha K Stout; Amy Trentham-Dietz; Mark Craven; Oguzhan Alagoz
Journal:  Med Decis Making       Date:  2015-10-15       Impact factor: 2.583

5.  Sensitivity Analysis in Sequential Decision Models.

Authors:  Qiushi Chen; Turgay Ayer; Jagpreet Chhatwal
Journal:  Med Decis Making       Date:  2016-09-29       Impact factor: 2.583

6.  Active learning for clinical text classification: is it better than random sampling?

Authors:  Rosa L Figueroa; Qing Zeng-Treitler; Long H Ngo; Sergey Goryachev; Eduardo P Wiechmann
Journal:  J Am Med Inform Assoc       Date:  2012-06-15       Impact factor: 4.497

7.  The Wisconsin Breast Cancer Epidemiology Simulation Model.

Authors:  Dennis G Fryback; Natasha K Stout; Marjorie A Rosenberg; Amy Trentham-Dietz; Vipat Kuruchittham; Patrick L Remington
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  7 in total

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