Abstract

Prostate Cancer (PCa) is one of the common cancers among men in the world. About 16.67% of men will be affected by PCa in their life. Due to the integration of magnetic resonance imaging in the current clinical procedure for detecting prostate cancer and the apparent success of imaging techniques in the estimation of PCa volume in the gland, we provide a more detailed review of methodologies that use specific parameters for prostate tissue representation. After collecting over 200 researches on image-based systems for diagnosing prostate cancer, in this paper, we provide a detailed review of existing computer-aided diagnosis (CAD) methods and approaches to identify prostate cancer from images generated using Near-Infrared (NIR), Mid-Infrared (MIR), and Magnetic Resonance Imaging (MRI) techniques. Furthermore, we introduce two research methodologies to build intelligent CAD systems. The first methodology applies a fuzzy integral method to maintain the diversity and capacity of different classifiers aggregation to detect PCa tumor from NIR and MIR images. The second methodology investigates a typical workflow for developing an automated prostate cancer diagnosis using MRI images. Essentially, CAD development remains a helpful tool of radiology for diagnosing prostate cancer disease. Nonetheless, a complete implementation of effective and intelligent methods is still required for the PCa-diagnostic system. While some CAD applications work well, some limitations need to be solved for automated clinical PCa diagnostic. It is anticipated that more advances should be made in computational image analysis and computer-assisted approaches to satisfy clinical needs shortly in the coming years.

Highlights

  • Cancer is one of the most critical health issues globally, in terms of morbidity, mortality, and its social, economic, or quality of life, affecting one in three people throughout their lives [1]

  • We propose two research methodologies of ComputerAided Diagnosis (CAD) systems based on NIR, MIR, and Magnetic Resonance Imaging (MRI) images in this work

  • Magnetic Image Resonance (MR) Acquisition. e Multi-Parametric MR (mp-MR) analysis typically consists of an anatomical sequence (T2-weighted (T2W)) images and multiple functional sequences, generally diffusion-weighted imaging (DWI) and dynamic contrast-enhanced (DCE) sequences. e sequence choice is based on the medical need and time and costs limitations [61]. ere is currently growing research into the use of mp-MR as a triage tool

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Summary

Introduction

Cancer is one of the most critical health issues globally, in terms of morbidity, mortality, and its social, economic, or quality of life, affecting one in three people throughout their lives [1]. Cancer became the leading cause of death worldwide for men and women after cardiovascular diseases [2]. Prostate cancer is the most frequent tumor location in men (excluding nonmelanoma skin tumors) and the third leading cause of death from cancer, in both cases behind cancer of the lung and colorectal. It is estimated that one in six men will develop prostate cancer in their lifetime [3]. E probability of developing prostate cancer increases with age so that nine out of ten cases appear in people over 65 years of age [4]. Diagnostic practices and therapeutic options have continued to evolve for detecting prostate cancer. Recent advances in prostate imaging make it possible to detect tiny tumors and guide treatment [5]. ComputerAided Diagnosis (CAD) software and tools are designed to aid physicians in diagnosing suspicious areas of the image

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