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A Novel Pathological Stroke Classification System using NSST and WLEPCA

机译:使用NSST和WLEPCA的新型病理学中风分类系统

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Stroke is a type of cerebrovascular disease, and it is one of the leading cause of death, with over six million deaths recorded annually. In this paper, a novel scheme for an accurate multi-class stroke disease classification named Pathological Stroke Classification System (PSCS) is introduced to classify stroke disease into six classes. Features are extracted using Nonsubsampled Shearlet Transform (NSST), which decomposes the fused image into the low-frequency band and k-bands of high frequency. The low-frequency band is further analyzed using a new scheme of feature reduction and selection using weighted local energy based principal component analysis (WLEPCA). Different subsets of principal vectors are applied to three decision models, k-Nearest Neighbors (KNN), random forest (RF), and Support Vector Machine (SVM). The RF-based classifier performed better than SVM and k-NN and achieved an accuracy of 96.10%. The proposed PSCS showed a promising result in stroke classification can be considered as a reliable and robust diagnostic tool for medical practitioners.
机译:中风是一种脑血管病,它是死亡原因之一,每年记录超过600万人死亡。本文将引入称为病理中风分类系统(PSC)的准确多级中风疾病分类的新方案以将卒中疾病分类为六种课程。使用非管制的Shearlet变换(NSST)提取特征,其将熔融图像分解成低频带和高频的k带。使用基于加权本地能量的主成分分析(WLEPCA)进一步分析低频带进一步分析了低频带。主要的主要向量子集应用于三个决定模型,K-CORMALT邻居(KNN),随机林(RF)和支持向量机(SVM)。基于RF的分类器比SVM和K-NN更好,并达到96.10%的精度。所提出的PSC在中风分类中显示出有希望的结果可以被认为是医生的可靠且坚固的诊断工具。

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