Abstract

Cancer is enlisted as the second leading reason for death across the world wherein almost one person out of six dies of cancer. Breast cancer is one of the most common forms of cancer predominant in women having the second highest mortality rate in the world. Various scientific studies have been conducted to combat this disease, and machine learning approaches have been an extremely popular choice. Particle swarm optimization has been identified as one of the most powerful and efficient technique for the diagnosis of breast cancer guiding physicians towards timely and accurate treatment. It is also pertinent to mention that multi-modal prediction methods are used to make decisions depending upon different scenarios and aspects whereas the non-dominating sorting feature is useful to sort different objects based on differing requirements. The main novelty of this work is multi-modal prediction algorithm for breast cancer prediction is proposed. The work encompasses the use of particle swarm optimization, non-dominating sorting and multi-classifier techniques, namely, k-nearest neighbour method, fast decision tree and kernel density estimation. Finally, Bayes’ theorem is implemented for revising the results to achieve optimum accuracy in the breast cancer prediction. The proposed particle swarm optimization and non-domination sorting with classifier technique model helps to select the most significant features relevant to breast cancer predictions. The selected features design the objective of the problem model. The proposed model is implemented on the WBCD and WDBC breast cancer data sets publicly available from the UCI machine learning data repository. The metrics considered are sensitivity, specificity, accuracy and time complexity. The experimental results of the study using measures such as sensitivity, specificity, accuracy and time complexity. The experimental results of the study are evaluated against the state-of-the-art algorithms, namely, genetic algorithm kernel density estimation and particle swarm optimization kernel density estimation wherein the results justify the superiority of the proposed model.

Highlights

  • Breast cancer is one of the leading causes of death among women in the world today.[1,2,3,4] It is one of the most invasive types of cancer, and statistics reveal that every year approximately 40,000 women die from breast cancer in the United States alone

  • This study proposes a new breast cancer determination and diagnosing method based on swarm intelligence for the detection of breast cancer

  • The computation of the study results of particle swarm optimization (PSO)-non-dominating sorting (NDS) is compared with PSO-KDE13 and genetic algorithms (GAs)-kernel density estimation (KDE).[29]

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Summary

Introduction

Breast cancer is one of the leading causes of death among women in the world today.[1,2,3,4] It is one of the most invasive types of cancer, and statistics reveal that every year approximately 40,000 women die from breast cancer in the United States alone. In India, as per the reports of 2012, around 1,44,937 women had breast cancer and out of which 70,218 of them succumbed to death.[4] It is an enormously serious health concern for women worldwide. The accuracy in the prediction of breast cancer plays a vital role as it leads to timely and conclusive decision-making providing opportunity to avail the sophisticated modern day healthcare treatments. With the ever increasing number of techniques introduced for the cancer diagnosis in the present day and age, data mining and artificial intelligence (AI)–based diagnosis hold a popular and significant choice among researchers for the prediction and discovery of tissues affected by cancer. The data mining techniques are used to detect large, heterogeneous, time series and complex information from data sets aiding various diagnostic and therapeutic services in the health care industry. The data sets in these approaches are fragmented, distributed and analysed to yield predictive results for accurate diagnosis

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