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首页> 外文期刊>Artificial intelligence in medicine >Pharmacological therapy selection of type 2 diabetes based on the SWARA and modified MULTIMOORA methods under a fuzzy environment
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Pharmacological therapy selection of type 2 diabetes based on the SWARA and modified MULTIMOORA methods under a fuzzy environment

机译:模糊环境下基于SWARA和改进的MULTIMOORA方法的2型糖尿病药物治疗选择

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摘要

Medication selection for Type 2 Diabetes (T2D) is a challenging medical decision-making problem involving multiple medications that can be prescribed to control the patient's blood glucose. The wide range of hyperglycemia lowering agents with varying effects and various side effects makes the decision quite difficult. This paper presents computer-aided medical decision support using a fuzzy Multi-Criteria Decision-Making (MCDM) model that hybridizes a Step-wise Weight Assessment Ratio Analysis (SWARA) method with a modification of Fuzzy Multi-Objective Optimization on the basis of a Ratio Analysis plus the full multiplicative form (FMULTIMOORA) method for pharmacological therapy selection of T2D. It makes the use of SWARA for obtaining the relative significance of every selected criterion by soliciting experts' opinions and FMULTIMOORA method for evaluation of each alternative according to all criteria based on a published clinical guideline. In this paper, an extended reference point approach is considered in the proposed hybrid MCDM model that resolves the classic reference point limitations and improves the FMULTIMOORA ranking procedure. Computational results indicate that Metformin is confirmed as the first-line medication and Sulfonylurea as the second-line add-on therapy. The Glucagon-like peptide-1 receptor agonist, Dipeptidyl peptidase-4 inhibitor, and Insulin are placed 3rd, 4th, and 5th, respectively. A sensitivity analysis is conducted to validate the model performance by comparing its result with studies in the literature, other fuzzy MCDM techniques and an interval MULTIMOORA method based on an observational dataset. The close correspondence between the final rankings of anti-diabetic agents resulted from the proposed hybrid model and other methodologies provide significant implications for endocrinologists to refer. (C) 2018 Elsevier B.V. All rights reserved.
机译:2型糖尿病(T2D)的药物选择是一个具有挑战性的医学决策问题,涉及可处方以控制患者血糖的多种药物。具有各种作用和各种副作用的多种高血糖降低剂使该决定相当困难。本文提出了一种使用模糊多准则决策模型(MCDM)的计算机辅助医疗决策支持,该模型将逐步权重评估比分析(SWARA)方法与基于模糊多目标优化的改进相结合。比率分析和完全乘法形式(FMULTIMOORA)方法用于T2D的药理治疗选择。它利用SWARA来征求专家意见,从而获得每个选定标准的相对重要性,并使用FMULTIMOORA方法根据已发布的临床指南根据所有标准对每个替代方案进行评估。本文在提出的混合MCDM模型中考虑了扩展参考点方法,该方法解决了经典参考点局限性并改进了FMULTIMOORA排名程序。计算结果表明,二甲双胍被确认为一线药物,磺脲类被确认为二线附加疗法。胰高血糖素样肽-1受体激动剂,二肽基肽酶-4抑制剂和胰岛素分别位于第3、4和5位。通过将其结果与文献研究,其他模糊MCDM技术和基于观测数据集的区间MULTIMOORA方法进行比较,进行了敏感性分析以验证模型的性能。由提出的混合模型和其他方法得出的抗糖尿病药物最终排名之间的密切对应关系为内分泌学家提供了重要的参考。 (C)2018 Elsevier B.V.保留所有权利。

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