Application of Artificial Neural Network Technique for the Production of Biotoxin

IF 0.6 4区 化学 Q4 CHEMISTRY, MULTIDISCIPLINARY Journal of the chemical society of pakistan Pub Date : 2022-01-01 DOI:10.52568/001181/jcsp/44.06.2022
Farzana Bashir Farzana Bashir, Yumna Sadef Yumna Sadef, Iqra Nadeem Iqra Nadeem, Romana Shahzadi Romana Shahzadi, Rubina Nelofer and Muhammad Tariq Rubina Nelofer and Muhammad Tariq
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Abstract

In this study. a locally isolated strain of Bacillus thuringiensis that has insecticidal activity against dengue vector (larvae of Aedes aegypti), was cultivated. Different carbon and nitrogen sources were screened for enhanced bacterial growth. The factors affecting Bacillus thuringiensis’s biomass production like concentration of carbon, nitrogen, pH and temperature were optimized by one parameter at a time technique. The optimal levels of the selected parameters were also obtained by using an Artificial Neural Network (ANN). Peptone and molasses were selected as the best nitrogen and carbon sources respectively. The optimal levels obtained for nitrogen, carbon, pH and temperature by using the one parameter at a time technique were 1%, 0.25%, 8, and 37 ℃ respectively with 0.53 mg/mL biomass production. The ANN predicted levels were 1% for nitrogen, 0.25% for carbon, 9 pH and 31 ℃ for temperature with the predicted value of biomass being 0.85 mg/ml. The biomass produced at predicted optimum levels of variables was 0.82 mg/ml, very close to the predicted value of 0.85 mg/ml.
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人工神经网络技术在生物毒素生产中的应用
在这项研究中。培养了一株当地分离的苏云金芽孢杆菌菌株,该菌株对登革热病媒(埃及伊蚊幼虫)具有杀虫活性。筛选不同的碳源和氮源促进细菌生长。采用单参数优化技术,对影响苏云金芽孢杆菌生物量的碳浓度、氮浓度、pH、温度等因素进行了优化。并利用人工神经网络(ANN)对所选参数进行了优化。选择蛋白胨和糖蜜分别作为最佳氮源和碳源。采用单参数技术,获得的最佳氮、碳、pH和温度水平分别为1%、0.25%、8和37℃,生物量产量为0.53 mg/mL。人工神经网络预测氮、碳、pH、温度分别为1%、0.25%、9、31℃,生物量预测值为0.85 mg/ml。在预测的最佳变量水平下产生的生物量为0.82 mg/ml,非常接近预测值0.85 mg/ml。
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来源期刊
CiteScore
1.30
自引率
14.30%
发文量
41
审稿时长
3.4 months
期刊介绍: This journal covers different research areas in the field of Chemistry. These include; Analytical Chemistry, Applied Chemistry, Biochemistry, Environmental Chemistry, Industrial Chemistry, Inorganic Chemistry, Organic Chemistry and Physical Chemistry. The journal publishes full length articles and Reviews from researchers in academia in addition to featuring comments. Chemical Research presents short, concise and critical articles offering easy-to-read overviews of basic research and applications in all areas of chemistry.
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