Respiratory System Analysis System for Patient Care Against a Possible Risk of Tuberculosis

Brian Meneses-Claudio, Melissa Yauri-Machaca, Juan Saberbein-Muñoz, Maria Salinas-Cruz, Enrique Lee Huamani, Gustavo Zarate-Ruiz
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Abstract

According to the studies developed in advance, there is a crucial problem of doctors analysing computerised images of the chest visually, making a generalised diagnosis for their patients based on their experience, and making mistakes due to the different characteristics of each patient affected by bacteria in their respiratory tract. An infectious disease that has been increasing over the years is pulmonary tuberculosis, which has had around 12.7 million patients infected in 2020, with low-income countries being the main ones affected by this lung disease that is transmitted from person to person, so it cannot be based on the visual experience of the doctor, as this disease causes an increase of bacteria in the bloodstream and damages the alveoli, although there are various methods of detection, they do not provide a complete result on the patient's condition. The aim of this research is to develop a respiratory tract analysis system that will help doctors to detect tuberculosis earlier and more accurately and avoid prolonged infections that could be fatal for patients. The methodology used for this research is based on carrying out a computer analysis of the patient's chest and then carrying out image processing using MATLAB, using its various digital image processing techniques to detect these conditions. According to the system tests, it was observed that the system performs the detection of tuberculosis with an efficiency of 97.40% in its handling, standing out notoriously for its high value of efficiency, in addition to having the precise time for the determination of tuberculosis in the analysis of computerised images. In conclusion, this system can be used in different circumstances of the patient's condition, from the initial symptoms to an advanced stage of the patient's condition.
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患者护理呼吸系统分析系统,防范可能的结核病风险
根据预先开展的研究,存在一个关键问题,即医生通过电脑直观地分析胸部图像,根据自己的经验对病人做出笼统的诊断,由于每个病人呼吸道受细菌影响的特点不同,因此会出现错误。肺结核是近年来发病率不断上升的一种传染病,2020 年约有 1270 万患者感染,低收入国家是这种肺部疾病的主要流行地区,这种疾病通过人与人之间的传播,因此不能仅凭医生的视觉经验进行诊断,因为这种疾病会导致血液中的细菌增多,损害肺泡,虽然有各种检测方法,但并不能提供患者病情的完整结果。这项研究的目的是开发一种呼吸道分析系统,帮助医生更早、更准确地检测结核病,避免长时间感染而对病人造成致命伤害。这项研究采用的方法是对病人的胸部进行计算机分析,然后使用 MATLAB 进行图像处理,利用其各种数字图像处理技术来检测这些病症。系统测试结果表明,该系统对肺结核的检测效率高达 97.40%,除了在计算机图像分析中准确把握肺结核的判断时间外,还以其高效率而著称。总之,该系统可用于病人从初期症状到晚期病情的不同情况。
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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