Implementation of Fuzzy Logic in Managing Common Anesthesia

Hemlata Sahay, S. K. Goyal
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Abstract

Using fuzzy sets for reasoning is what we mean when we talk about fuzzy logic. Contradictory natures are prevalent phenomena in the medical field. Guidelines are used by anesthesiologists when taking care of patients. After gauging the patient’s vitals, he may make adjustments to the flow of medication and fluids, or even the ventilator settings. Knowledge about the real world is typically sketchy, inaccurate, and inconsistent. Due to the inherent representation of subjective human conceptions used in much medical decision making, fuzzy logic seems well-suited for use in anaesthesia. We have developed a fuzzy expert system using fuzzy methodology for the aim of fluid management during general anaesthesia. The desired intravenous fluid rate (IFR) is the defuzzified value that is output by the fuzzy expert system. Fuzzy inputs serve as antecedent parts of rules for a fuzzy expert system, and some examples of such inputs are mean arterial pressure (HUO), hourly urine output (HUO), and central venous pressure (CVP). It would only cost a little sum to have a human operator sometimes enter MAP, HUO, and CVP values into a personal computer for this purpose. The study’s overarching goal was to devise a method for approximating IFR by making use of a linguistic description of MAP and HUO. Fuzzy sets, including decreasing, constant, and growing MAP and HUO rates of change, would assist to illustrate the trend in a patient’s fluid state. To regulate fluid levels more precisely would be possible. Expert guidance in addition to the calculated use of fuzzy methods are essential for achievement of the desired outcome. Patients must be in generally good health before this mode may be used on them, and they must be undergoing minimally invasive surgery. Moderate to severe blood loss after surgery need more complex modalities involving more factors.
模糊逻辑在普通麻醉管理中的应用
使用模糊集进行推理就是我们所说的模糊逻辑。矛盾性质是医学领域普遍存在的现象。麻醉医师在照顾病人时使用指南。在测量病人的生命体征后,他可能会调整药物和液体的流量,甚至是呼吸机的设置。关于现实世界的知识通常是粗略的、不准确的和不一致的。由于在许多医疗决策中使用的主观人类概念的固有表示,模糊逻辑似乎非常适合在麻醉中使用。我们已经开发了一个模糊专家系统使用模糊方法的目的液体管理在全身麻醉。期望静脉输液速率(IFR)是模糊专家系统输出的去模糊化值。模糊输入作为模糊专家系统规则的先行部分,这些输入的一些例子是平均动脉压(HUO),小时尿量(HUO)和中心静脉压(CVP)。为此目的,让人工操作员有时在个人计算机中输入MAP、HUO和CVP值只需要花费很少的费用。本研究的首要目标是设计一种方法,通过使用MAP和HUO的语言描述来近似IFR。模糊集,包括MAP和HUO变化率的下降、恒定和增长,将有助于说明患者体液状态的趋势。更精确地调节体液水平是可能的。专家指导和模糊方法的计算使用对于实现预期的结果是必不可少的。在使用这种模式之前,患者必须总体健康状况良好,并且必须接受微创手术。手术后中重度失血需要更复杂的方式,涉及更多的因素。
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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