2020
DOI: 10.18865/ed.30.s1.217
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Machine Learning Methods for Precision Medicine Research Designed to Reduce Health Disparities: A Structured Tutorial

Abstract: Precision medicine research designed to reduce health disparities often involves studying multi-level datasets to understand how diseases manifest disproportionately in one group over another, and how scarce health care resources can be directed precisely to those most at risk for disease. In this article, we provide a structured tutorial for medical and public health research­ers on the application of machine learning methods to conduct precision medicine research designed to reduce health dispari­ties. We re… Show more

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Cited by 14 publications
(8 citation statements)
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“…Therefore, the RF is robust to outliers, works well with nonlinear data, and has a lower risk of overfitting than single decision trees. As a result, the RF could handle even the relatively small prevalence of airway management cases in the test sets, achieved a good PRC area, and had a robust performance [ 15 , 25 ]. Given the prevalence between the different test sets, the RFs differ, and a final model cannot be given.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Therefore, the RF is robust to outliers, works well with nonlinear data, and has a lower risk of overfitting than single decision trees. As a result, the RF could handle even the relatively small prevalence of airway management cases in the test sets, achieved a good PRC area, and had a robust performance [ 15 , 25 ]. Given the prevalence between the different test sets, the RFs differ, and a final model cannot be given.…”
Section: Discussionmentioning
confidence: 99%
“…As a result, the RF could handle even the relatively small prevalence of airway management cases in the test sets, achieved a good PRC area, and had a robust performance. 15,25 Given the prevalence between the different test sets, the RFs differ, and a final model cannot be given.…”
Section: Model Performancementioning
confidence: 99%
“…Ensemble learning is a meta-learning approach that combines decisions from several base learning models to improve the final prediction performance. 16 , 17 This effectively leverages differences in the way the base models are learning predictive features, by allowing each base model to contribute output class probabilities in a vote. The ensemble in this study comprised three base models, including the support vector machine (SVM), adaboost with decision trees, and logistic regression, extended hierarchically in two steps.…”
Section: Methodsmentioning
confidence: 99%
“…Traditional approaches to address health disparities often fail to capture the issue's complexity and leave many gaps unresolved ( 11 ). By analyzing large datasets for patterns, correlations, or predictive markers that are difficult to identify through traditional analyses, AI can help us uncover hidden mechanisms and underpinnings of health disparities ( 12 , 13 ). AI has many advantages compared with traditional strategies for addressing health disparities, notably in its ability to uncover unexpected correlations and relationships that have remained unidentified in human-driven analyses, offering new insights.…”
Section: Ai As a Tool To Address Health Disparitiesmentioning
confidence: 99%
“…There is a need to establish stringent ethical guidelines and frameworks for designing AI algorithms. Prioritization of transparency, fairness, and accountability throughout the AI development and implementation process is key ( 8 , 13 , 18 , 31 , 32 ). We must leverage tools like the AI Fairness Project to mitigate biases and discrimination in AI algorithms used within healthcare.…”
Section: Recommendations For Leveraging Ai To Address Health Disparitiesmentioning
confidence: 99%