Abstract

In this paper, we present a novel feature extraction technique, termed Three-Dimensional Local Energy-Based Shape Histogram (3D-LESH), and exploit it to detect breast cancer in volumetric medical images. The technique is incorporated as part of an intelligent expert system that can aid medical practitioners making diagnostic decisions. Analysis of volumetric images, slice by slice, is cumbersome and inefficient. Hence, 3D-LESH is designed to compute a histogram-based feature set from a local energy map, calculated using a phase congruency (PC) measure of volumetric Magnetic Resonance Imaging (MRI) scans in 3D space. 3D-LESH features are invariant to contrast intensity variations within different slices of the MRI scan and are thus suitable for medical image analysis.The contribution of this article is manifold. First, we formulate a novel 3D-LESH feature extraction technique for 3D medical images to analyse volumetric images. Further, the proposed 3D-LESH algorithmis, for the first time, applied to medical MRI images. The final contribution is the design of an intelligent clinical decision support system (CDSS) as a multi-stage approach, combining novel 3D-LESH feature extraction with machine learning classifiers, to detect cancer from breast MRI scans. The proposed system applies contrast-limited adaptive histogram equalisation (CLAHE) to the MRI images before extracting 3D-LESH features. Furthermore, a selected subset of these features is fed into a machine-learning classifier, namely, a support vector machine (SVM), an extreme learning machine (ELM) or an echo state network (ESN) classifier, to detect abnormalities and distinguish between different stages of abnormality. We demonstrate the performance of the proposed technique by its application to benchmark breast cancer MRI images. The results indicate high-performance accuracy of the proposed system (98%±0.0050, with an area under a receiver operating charactertistic curve value of 0.9900 ± 0.0050) with multiple classifiers. When compared with the state-of-the-art wavelet-based feature extraction technique, statistical analysis provides conclusive evidence of the significance of our proposed 3D-LESH algorithm.

Highlights

  • Extraction of distinctive features is a vital task in medical image analysis as it assists in the detection and diagnosis of chronic diseases

  • We report results using a classification accuracy measure which accounts for the number of correct predictions made from overall predictions

  • We employ a receiver operating characteristic (ROC) curve to measure the significance of the results generated

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Summary

Introduction

Extraction of distinctive features is a vital task in medical image analysis as it assists in the detection and diagnosis of chronic diseases. A variety of methods have been proposed in the literature for extracting significant features for medical diagnosis, some of these are discussed in the related works section. S.K. Wajid et al / Expert Systems With Applications 112 (2018) 388–400 by review of related work. Wajid et al / Expert Systems With Applications 112 (2018) 388–400 by review of related work This is followed by a detailed description of the 3D-LESH feature extraction technique and CDSS system, and comparative simulation results. Mammography has been considered the mainstay for cancer diagnosis for decades, it’s low sensitivity rate in detecting lesions from dense breast tissue results in unnecessary biopsies, causing emotional and economic stress for patients. The requirement for breast compression can cause discomfort for patients (Aminololama-Shakeri & Khatri, 2014)

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