Providing a Foresight Model for Selecting the Appropriate Breast Cancer Diagnosis Model

Message:
Article Type:
Research/Original Article (دارای رتبه معتبر)
Abstract:
Introduction

Selecting an appropriate model for breast cancer diagnosis is critical. Unsuitable models can compromise diagnostic accuracy, lead to incorrect outcomes, and impact clinical decision-making. In this context, foresight models are valuable tools for identifying and selecting the most effective diagnostic models. The objective of this study was to identify optimal models for breast cancer detection using foresight models. 

Method

This study began by extracting articles related to artificial intelligence-based breast cancer diagnosis. The number of articles associated with each algorithm was determined, and algorithms referenced in fewer than 50 articles were excluded. Subsequently, annual publication trends were analyzed. A time series model based on artificial neural networks was developed to predict research trends over the next two years and to identify the algorithms expected to receive more research attention. 

Results

After applying the exclusion criteria, a total of 2,308 articles were categorized into eight groups: deep learning, artificial neural networks, support vector machines, fuzzy logic, clustering, decision trees, Bayesian methods, and logistic regression.  Additionally, eight time series models were constructed using data from the past seven years, predicting that deep learning and artificial neural networks will lead future research efforts in breast cancer diagnosis. 

Conclusion

This study highlights the effectiveness of foresight as a methodological approach for selecting optimal techniques for breast cancer diagnosis. The results indicate that artificial neural networks and deep learning demonstrate superior performance and are likely to be pivotal methodologies for future research in this area.

Language:
Persian
Published:
Journal of Health and Biomedical Informatics, Volume:11 Issue: 3, 2024
Pages:
244 to 256
https://www.magiran.com/p2830152