Institute of Clinical Physiology, National Research Council of Italy (IFC-CNR), 56124 Pisa, Italy.
Sensors (Basel). 2024 Oct 8;24(19):6475. doi: 10.3390/s24196475.
Kidney diseases are a group of conditions related to the functioning of kidneys, which are in turn unable to properly filter waste and excessive fluids from the blood, resulting in the presence of dangerous levels of electrolytes, fluids, and waste substances in the human body, possibly leading to significant health effects. At the same time, the toxins amassing in the organism can lead to significant changes in breath composition, resulting in halitosis with peculiar features like the popular ammonia breath. Starting from this evidence, scientists have started to work on systems that can detect the presence of kidney diseases using a minimally invasive approach, minimizing the burden to the individuals, albeit providing clinicians with useful information about the disease's presence or its main related features. The electronic nose (e-nose) is one of such tools, and its applications in this specific domain represent the core of the present review, performed on articles published in the last 20 years on humans to stay updated with the latest technological advancements, and conducted under the PRISMA guidelines. This review focuses not only on the chemical and physical principles of detection of such compounds (mainly ammonia), but also on the most popular data processing approaches adopted by the research community (mainly those relying on Machine Learning), to draw exhaustive conclusions about the state of the art and to figure out possible cues for future developments in the field.
肾脏疾病是一组与肾脏功能相关的疾病,肾脏无法正常过滤血液中的废物和多余液体,导致体内电解质、液体和废物物质达到危险水平,可能对健康产生重大影响。同时,在体内积聚的毒素会导致呼吸成分发生显著变化,从而导致口臭,具有独特的特征,如常见的氨气味。基于这一证据,科学家们开始研究使用微创方法检测肾脏疾病的系统,尽量减轻个体的负担,尽管为临床医生提供了有关疾病存在或其主要相关特征的有用信息。电子鼻 (e-nose) 就是这样一种工具,其在这一特定领域的应用是本综述的核心内容,综述内容基于过去 20 年在人类身上发表的文章,以了解最新的技术进展,并根据 PRISMA 指南进行。本综述不仅关注检测此类化合物(主要是氨)的化学和物理原理,还关注研究界采用的最流行的数据处理方法(主要是那些依赖机器学习的方法),以全面总结该领域的最新技术,并找出该领域未来发展的可能线索。