Journal article 109 views 18 downloads
Enhancing cardiovascular risk assessment with advanced data balancing and domain knowledge-driven explainability
Expert Systems with Applications, Volume: 255, Start page: 124886
Swansea University Author: Mohammad Abedin
-
PDF | Version of Record
© 2024 The Author(s). This is an open access article under the CC BY license
Download (3.67MB)
DOI (Published version): 10.1016/j.eswa.2024.124886
Abstract
In medical risk prediction, such as predicting heart disease, machine learning (ML) classifiers must achieve high accuracy, precision, and recall to minimize the chances of incorrect diagnoses or treatment recommendations. However, real-world datasets often have imbalanced data, which can affect cla...
Published in: | Expert Systems with Applications |
---|---|
ISSN: | 0957-4174 |
Published: |
Elsevier BV
2024
|
Online Access: |
Check full text
|
URI: | https://cronfa.swan.ac.uk/Record/cronfa67523 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Abstract: |
In medical risk prediction, such as predicting heart disease, machine learning (ML) classifiers must achieve high accuracy, precision, and recall to minimize the chances of incorrect diagnoses or treatment recommendations. However, real-world datasets often have imbalanced data, which can affect classifier performance. Traditional data balancing methods can lead to overfitting and underfitting, making it difficult to identify potential health risks accurately. Early prediction of heart attacks is of paramount importance, and researchers have developed ML-based systems to address this problem. However, much of the existing ML research is based on a single dataset, often ignoring performance evaluation across multiple datasets. As the demand for interpretable ML models grows, model interpretability becomes central to revealing insights and feature effects within predictive models. To address these challenges, we present a novel data balancing technique that uses a divide-and-conquer strategy with the -Means clustering algorithm to segment the dataset. The performance of our approach is highlighted through comparisons with established techniques, which demonstrate the superiority of our proposed method. To address the challenge of inter-dataset discrepancies, we use two different datasets. Our holistic pipeline, strengthened by the innovative balancing technique, effectively addresses performance discrepancies, culminating in a significant improvement from 81% to 90%. Furthermore, through advanced statistical analysis, it has been determined that the 95% confidence interval for the AUC metric of our method ranges from 0.8187 to 0.8411. This observation serves to underscore the consistency and reliability of our approach, demonstrating its ability to achieve high performance across a range of scenarios. Incorporating Explainable AI (XAI), we examine the feature rankings and their contributions within the best performing Random Forest model. While the domain expert feedback is consistent with the explanatory power of XAI, some differences remain. Nevertheless, a remarkable convergence in feature ranking and weighting is observed, bridging the insights from XAI tools and domain expert perspectives. |
---|---|
Keywords: |
Heart disease risk, Data balancing, Performance discrepancy, Explainability, Expert system, Domain knowledge |
College: |
Faculty of Humanities and Social Sciences |
Funders: |
This research is supported by the Natural Science Basic Research Program of Shaanxi [Program No.
2023-JC-YB-490]. This research is also supported by the Research Fund of Guangxi Key Lab of Multi-source Information Mining & Security (MIMS24-06). This research is also supported by ”the Fundamental Research Funds for the Central Universities, JLU” (93K172024K12). |
Start Page: |
124886 |