A Fuzzy Rule-Based Expert System to Determine Propofol Drug Dosage in Anesthesia

Melika Babaei, Sharareh R. Niakan Kalhori, S. Sheybani, Hesam Karim
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引用次数: 1

Abstract

Introduction: Inadequate anesthetic, including under or over dosage, may lead to intraoperative awareness or prolonged recovery. Fuzzy expert systems can assist anesthesiologist to manage drug dosage in a right manner. Designing a fuzzy rule-based expert system to determine the Propofol anesthetic drug dosage was the main objective of this study.Material and Methods: This is a retrospective study. Fuzzy IF-THEN rules were defined based on evidences and experts’ linguistic rules for Propofol dose determination. Fuzzy toolbox in MATLAB software was used to design the system. Validation of system conducted with calculation of mean absolute error (MAE) and root mean squared error (RMSE). Also, difference mean between actual and predicted doses was tested with paired t-test in SPSS V.26 software. Data from 50 ENT (ears, nose, and throat) surgeries were used to validate the fuzzy system.Results: MAE for induction and maintenance doses was 0.128 and 1.95 respectively. RMSE for induction and maintenance doses was 0.228 and 3.383 respectively. Based on paired t-test result, there was no significant correlation between actual and predicted values (P>0.05).Conclusion: Obtained value from test and validation of system demonstrated a high performance and satisfying accuracy of the system. Therefore, this expert system can be used as a decision support system to determine initial dosage of anesthetic drugs. It can also be used for anesthesia students to learn drug administration.
基于模糊规则的异丙酚麻醉剂量确定专家系统
麻醉不足,包括剂量不足或过量,可能导致术中意识不清或恢复时间延长。模糊专家系统可以帮助麻醉师正确管理药物剂量。设计一个基于模糊规则的专家系统来确定异丙酚麻醉药物的剂量是本研究的主要目的。材料与方法:本研究为回顾性研究。基于证据和专家语言规则,定义了模糊IF-THEN规则。采用MATLAB软件中的模糊工具箱进行系统设计。通过计算平均绝对误差(MAE)和均方根误差(RMSE)对系统进行验证。使用SPSS V.26软件对实际剂量与预测剂量的差均值进行配对t检验。来自50例耳鼻喉科手术的数据被用来验证模糊系统。结果:诱导和维持剂量的MAE分别为0.128和1.95。诱导剂量和维持剂量的RMSE分别为0.228和3.383。配对t检验结果显示,实测值与预测值无显著相关(P>0.05)。结论:系统的测试和验证结果表明,系统具有良好的性能和令人满意的准确性。因此,该专家系统可作为麻醉药物初始剂量确定的决策支持系统。也可用于麻醉专业学生学习给药。
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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CiteScore
1.20
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