Heart Failure Predictive Analysis Using Decision Tree Classification

Venkata Subbarao Manne
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Abstract

With an average age of 28 compared to Western countries, India's young population accounts for half of heart attacks in South Asia, which happen to people under 52. Autopsy reports, which identify the actual cause of death, frequently concentrate on sudden deaths in young adults that have no apparent reason or warning signs. Fat accumulation in the blood vessels of the heart is the cause of abrupt, unexpected natural deaths. The heart stops beating and loses blood as a result of these arteries narrowing or blocking. The body may exhibit subtle symptoms prior to abrupt death, such as shortness of breath, palpitations, tightness in the chest, and chest discomfort. A decision tree classification is a death dataset model that generates labelled classes at leaf nodes and makes judgments at edges to predict class labels for subsequent records. The purpose of the proposed paper study is to predict abrupt natural deaths, which are frequently brought on by smoking, by using regression analysis, a statistical technique that establishes the relationship between independent and dependent variables. The experiment's outcome, which looks at how Artificial Neural Networks (ANN) may be used to forecast heart failure, shows five records out of 50,000 patients from different hospitals. Perceptron’s, both single- and multi-layer, were used to gather patient information. Keywords: Artificial Neural Network, Linear Regression Analysis, Sudden and Unexpected Natural Deaths etc.
利用决策树分类法进行心衰预测分析
与西方国家相比,印度的平均年龄为 28 岁,印度的年轻人口占南亚心脏病发作人数的一半,这些心脏病发作都发生在 52 岁以下的人身上。验尸报告可以确定真正的死因,但往往集中在没有明显原因或警兆的青壮年猝死。心脏血管中的脂肪堆积是突然、意外自然死亡的原因。心脏停止跳动和失血是这些动脉变窄或堵塞的结果。人体在突然死亡前可能会出现一些细微的症状,如呼吸急促、心悸、胸闷和胸部不适等。决策树分类是一种死亡数据集模型,它在叶节点上生成标签类,并在边缘上做出判断,以预测后续记录的类标签。本文研究的目的是通过使用回归分析(一种建立自变量和因变量之间关系的统计技术)来预测突然的自然死亡(经常由吸烟引起)。实验结果显示,在来自不同医院的 50,000 名患者中,有五份记录显示,人工神经网络(ANN)可用于预测心力衰竭。单层和多层感知器被用来收集病人信息:人工神经网络、线性回归分析、突然和意外自然死亡等。
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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