Predictive Approach of Multiple Sclerosis MR-Lesions Evolution based on Chaotic Attributes

Chaima Dachraoui, A. Mouelhi, C. Drissi, S. Labidi
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引用次数: 1

Abstract

The diagnosis, evaluation, and treatment of multiple sclerosis are based essentially on a visual analysis of brain MR-Images. The main objective of this paper is to propose a new predictive approach of the multiple sclerosis lesions evolution’s in order to computerise the daily routine and sometimes difficult diagnostic process and moreover the follow-up. Hence, we chose to introduce the chaos theory. This theory can be used to provide a better understanding of complex systems whose comportment is unpredictable in the long term due to their high sensitivity to initial conditions. A quantitative study is presented in this paper to validate our results using the BrainWeb simulator, MICCAI2008 and MICCAI2016. This funded research was tested on 10 clinical cases (5 pathological patients and 5 healthy cases). Patients with multiple sclerosis are divided into 2 men and 3 women with an age group ranging from 30 to 72 years. The proposed method presents promising results showing the robustness of our segmentation as well as insights into multiple sclerosis which can act as a guideline for the medical neurology researchers. It presents a novel method to analyze the MR-images using the chaotic theory.
基于混沌属性的多发性硬化mr -病变演化预测方法
多发性硬化症的诊断、评估和治疗基本上是基于脑磁共振图像的视觉分析。本文的主要目的是提出一种新的预测多发性硬化症病变演变的方法,以便计算机化日常和有时困难的诊断过程以及随访。因此,我们选择引入混沌理论。该理论可用于更好地理解复杂系统,其行为在长期内是不可预测的,因为它们对初始条件的高度敏感性。本文使用BrainWeb模拟器MICCAI2008和MICCAI2016进行了定量研究,以验证我们的结果。本研究在10例临床病例(5例病理患者和5例健康患者)中进行了试验。多发性硬化症患者分为2男3女,年龄从30岁到72岁不等。所提出的方法显示出有希望的结果,显示了我们的分割的鲁棒性以及对多发性硬化症的见解,可以作为医学神经学研究人员的指导方针。提出了一种利用混沌理论分析核磁共振图像的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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