On physical analysis of cadmium bismuth sulfide using quadratic regression approach

IF 2.5 4区 化学 Q2 Engineering Chemical Papers Pub Date : 2025-02-03 DOI:10.1007/s11696-025-03902-2
Khawlah Hamad Alhulwah, Mazhar Hussain, Nasreen Ebrahim Almohanna, Muhammad Farhan Hanif, Muhammad Kamran Siddiqui
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引用次数: 0

Abstract

Antimicrobial resistance and cancer detection are two popular applications for cadmium bismuth sulfide nanoparticles. Cadmium bismuth sulfide nanoparticles have demonstrated antibacterial capabilities and a broad range of antibacterial activity against both gram-positive and gram-negative bacteria. To obtain more insights into its bonding and connectivity patterns, we calculate new Zagreb-type indices. To evaluate the material’s stability and predict its behavior in different situations, we can calculate the entropy measure. By using a quadratic regression model, we create mathematical connections between the Zagreb-type indices and entropy, which helps maximize its utilization in specific applications. Through the regression model, we see the relation between indices and entropy. In the present paper, a new application of quadratic regression models is presented in developing a mathematical relation between Zagreb-type indices and entropy measures to derive a new methodology for predicting and optimizing stability and behavior in cadmium bismuth sulfide nanoparticles. It connects molecular graph theory with material analysis in new ways toward deeper insights into molecular connectivity patterns and enhances the practical utility of topological indices in advanced material science.

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二次回归法分析硫化铋镉的物理性质
抗菌素耐药性和癌症检测是硫化铋镉纳米颗粒的两个流行应用。硫化铋镉纳米颗粒对革兰氏阳性和革兰氏阴性细菌均具有抗菌能力和广泛的抗菌活性。为了更深入地了解其结合和连通性模式,我们计算了新的萨格勒布型指数。为了评估材料的稳定性并预测其在不同情况下的行为,我们可以计算熵测度。通过使用二次回归模型,我们建立了萨格勒布型指数和熵之间的数学联系,这有助于在特定应用中最大限度地利用它。通过回归模型,我们看到了指标与熵之间的关系。本文提出了二次回归模型的新应用,建立了萨格勒布型指数和熵测度之间的数学关系,从而推导出一种预测和优化硫化铋镉纳米颗粒稳定性和行为的新方法。它以新的方式将分子图理论与材料分析联系起来,以更深入地了解分子连接模式,并增强拓扑指数在先进材料科学中的实际应用。
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来源期刊
Chemical Papers
Chemical Papers Chemical Engineering-General Chemical Engineering
CiteScore
3.30
自引率
4.50%
发文量
590
期刊介绍: Chemical Papers is a peer-reviewed, international journal devoted to basic and applied chemical research. It has a broad scope covering the chemical sciences, but favors interdisciplinary research and studies that bring chemistry together with other disciplines.
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