A. K. Alzahrani, A. Alsheikhy, T. Shawly, Mohammad Barr, Hossam E. Ahmed
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引用次数: 0
摘要
目前,肌萎缩性脊髓侧索硬化症(ALS)被认为是一种致命疾病,因为它会影响中枢神经系统,而且没有治愈或明确的治疗方法。这种疾病会影响脊髓,特别是大脑内的下运动神经元(LMN)和上运动神经元(UMN)及其网络。目前已开发出多种预测 ALS 的解决方案。其中一些解决方案是利用不同的深度学习方法(DLM)实现的。然而,这种疾病被认为是一项艰巨的任务和巨大的挑战。本文提出了一种基于深度学习工具(DLT)的预测 ALS 疾病的可靠模型。开发的 DLT 采用 UNET 架构设计。本文针对数据集上的不同性能量对所提出的方法进行了评估,结果令人鼓舞。平均准确率在 82% 到 87% 之间,F-score 约为 86%。这些结果为应用 DLM 预测和识别 ALS 疾病打开了大门。
A New Artificial Intelligence-Based Model for Amyotrophic Lateral Sclerosis Prediction
Currently, amyotrophic lateral sclerosis (ALS) disease is considered fatal since it affects the central nervous system with no cure or clear treatments. This disease affects the spinal cord, more specifically, the lower motor neurons (LMNs) and the upper motor neurons (UMNs) inside the brain along with their networks. Various solutions have been developed to predict ALS. Some of these solutions were implemented using different deep-learning methods (DLMs). Nevertheless, this disease is considered a tough task and a huge challenge. This article proposes a reliable model to predict ALS disease based on a deep-learning tool (DLT). The developed DLT is designed using a UNET architecture. The proposed approach is evaluated for different performance quantities on a dataset and provides promising results. An average obtained accuracy ranged between 82% and 87% with around 86% of the F-score. The obtained outcomes can open the door to applying DLMs to predict and identify ALS disease.