INTERNET OF THINGS UNTUK MONITORING GEJALA KECEMASAN PADA PASIEN MENGGUNAKAN LOGIKA FUZZY

Muh Sakir, Indah Purwitasari Ihsan, Farida Yusuf
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Abstract

A patient should not be in a psychologically worrisome condition for fear of lowering the temperature causing slow healing to last a long time. Prolonged anxiety will develop into stress, so it is very necessary to detect anxiety early before anxiety persists and results in stress. However, these anxiety symptoms are related to the same psychological factors and contain uncertainties that cannot always be controlled and monitored by doctors. The purpose of this research is to create a system that can monitor the patient's anxiety symptoms in real-time based on the Internet of Things (IoT) so that doctors can determine the right treatment to maintain the patient's psychological condition. The system detects responses in humans when someone feels anxious, namely heart rate, body temperature, and sweat intensity which are detected using sensors. The information obtained from the sensor becomes input parameters which are then processed using fuzzy logic to detect early symptoms. Fuzzy logic was chosen because it is a method for solving fuzzy problems with the uncertainty of the threshold value of symptom change. The output is in the form of anxiety symptoms which are divided into 3 (three) symptoms, namely normal, mild, and severe. The research method used is the SDLC (System Development Life-Cycle) method. the results based on the black box test state that the entire functional system works according to its function, the white box test results state that all logic is correct and appropriate. The results showed that the system that had been built succeeded in monitoring anxiety in patients with a system accuracy of 98%.
互联网上的焦虑症状监测病人使用模糊的逻辑
患者不应处于心理不安状态,以免体温降低导致长期缓慢愈合。长期的焦虑会发展成压力,所以在焦虑持续并导致压力之前及早发现焦虑是非常必要的。然而,这些焦虑症状与相同的心理因素有关,并且包含不确定性,不能总是由医生控制和监测。本研究的目的是创建一个基于物联网(IoT)的实时监测患者焦虑症状的系统,以便医生确定正确的治疗方法,以维持患者的心理状态。当人们感到焦虑时,该系统会检测人类的反应,即通过传感器检测到的心率、体温和出汗强度。从传感器获得的信息成为输入参数,然后使用模糊逻辑处理以检测早期症状。选择模糊逻辑是因为它是一种解决症状变化阈值不确定的模糊问题的方法。输出以焦虑症状的形式,分为3(3)种症状,即正常、轻度和重度。使用的研究方法是SDLC(系统开发生命周期)方法。基于黑盒测试的结果表明整个功能系统按照其功能工作,白盒测试结果表明所有逻辑都是正确和适当的。结果表明,所建立的系统成功地监测了患者的焦虑,系统准确率达到98%。
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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