Linkage Detection of Features that Cause Stroke using Feyn Qlattice Machine Learning Model

P. Purwono, A. Ma’arif, Iis Setiawan Mangku Negara, Wahyu Rahmaniar, Jihad Rahmawan
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引用次数: 9

Abstract

Received November 13, 2021 Revised December 14, 2021 Accepted December 21, 2021 Stroke is a disease caused by brain tissue damage because of blockage in the cerebrovascular system that disrupts body sensory and motoric systems Stroke disease is one of the highest death cause in the world. Data collection from Electronic Health Records (EHR) is increasing and has been included in the health service big data. It can be processed and analyzed using machine learning to determine the risk group of stroke disease. Machine learning can be used as a predictor of stroke causes, while the predictor clarifies the influence of each cause factor of the disease. Our contribution in this research is to evaluate Feyn Qlattice machine learning models to detect the influence of stroke disease's main cause features. We attempt to obtain a correlation between features of the stroke disease, especially on the gender as a feature, whether any other features can influence the gender feature. This research utilizes 4908 data of the disease predictor using the Feyn Qlattice model. The result implies that gender highly impacts age and hypertension on stroke disease causes. Autorun in Feyn Qlattice model was run with ten epochs, resulting in 17596 test models at 57s. Query string parameter that was focused on age and hypertension features resulted in 1245 models at 4s. An increase of accuracy was found in training metrics from 0.723 to 0.732 and in testing metrics from 0.695 to 0.708. Evaluation results showed that the model is reasonably good as a predictor of stroke disease, indicated with blue lines of AUC in training and testing metrics close to ROC's left side peak curve.
基于Feyn Qlattice机器学习模型的卒中特征联动检测
2021年11月13日收到2021年12月14日修订2021年12月14日接受2021年12月21日卒中是一种由脑血管系统堵塞导致的脑组织损伤引起的疾病,这种疾病扰乱了身体的感觉和运动系统卒中疾病是世界上最高的死亡原因之一。电子健康档案(EHR)收集的数据越来越多,并已被纳入卫生服务大数据。可以使用机器学习对其进行处理和分析,以确定中风疾病的风险群体。机器学习可以用作中风原因的预测器,而预测器则阐明了每种导致疾病的因素的影响。我们在这项研究中的贡献是评估Feyn Qlattice机器学习模型来检测中风疾病主要原因特征的影响。我们试图获得脑卒中疾病的特征之间的相关性,特别是性别作为一个特征,是否有其他特征会影响性别特征。本研究使用Feyn Qlattice模型利用4908个疾病预测器数据。结果表明,性别对年龄和高血压对脑卒中病因的影响很大。在Feyn Qlattice模型中运行Autorun,共10个epoch,在57s内得到17596个测试模型。以年龄和高血压特征为重点的查询字符串参数在4s时得到1245个模型。准确度在训练指标从0.723增加到0.732,在测试指标从0.695增加到0.708。评估结果显示,该模型作为脑卒中疾病的预测指标相当好,训练和测试指标中的AUC的蓝线接近ROC左侧峰值曲线。
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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