PENERAPAN PENDEKATAN MACHINE LEARNING PADA PENGEMBANGAN BASIS DATA HERBAL SEBAGAI SUMBER INFORMASI KANDIDAT OBAT KANKER

A. Parikesit, Rizky Nurdiansyah, dan David Agustriawan
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引用次数: 4

Abstract

Cancer is still an epidemiological disease in Indonesia. Drug development against cancer still relies to pharmacological laboratories and natural chemicals, which could have side effects. Cancer drug development has entered the stage of molecular biology, where the interaction of ligand chemical structure with receptor protein can be studied with high accuracy. Various chemical compounds, ranging from synthetic, semi-synthetic, to natural materials, developed for the purpose to fight one of the most dangerous diseases. In the context of the development of herbal-based drugs, there has been found heaps of natural compounds, curated and annotated, in various databases belonging to China, Taiwan, Indonesia, Japan, and several other countries. However, problems arise when choosing the best bioactive compounds to develop against cancer. Complexity arises because the metabolic pathway of cancer is very diverse, depending on the type and phase of cancer. Therefore, in this systematic review, we developed a machine learning approach to screen for these bioactive compounds, then took the best candidates for molecular simulation operations that would be tested for validity in wet experiments. Thus, the automation of the candidate drug development process for cancer could be achieved with great significance. It is known that the most effective and efficient machine learning method was Naive Bayes, but the best in processing large amounts of compound data was classfier SVM. The future of complex bioactive compounds data could be secured by employing deep learning method. Keywords: machine learning, drug development, natural material compounds, metabolic pathways, cancer
采用药学方法建立草药数据库,作为抗癌药物候选人的信息来源
癌症在印度尼西亚仍然是一种流行病学疾病。抗癌药物的开发仍然依赖于药理学实验室和可能有副作用的天然化学物质。抗癌药物的开发已进入分子生物学阶段,可以高精度地研究配体化学结构与受体蛋白的相互作用。各种化合物,从合成、半合成到天然材料,都是为了对抗最危险的疾病之一而开发的。在草药开发的背景下,在中国、台湾、印度尼西亚、日本和其他几个国家的各种数据库中发现了大量的天然化合物,并进行了整理和注释。然而,当选择最好的生物活性化合物来开发抗癌时,问题就出现了。复杂性的产生是因为癌症的代谢途径是非常多样化的,这取决于癌症的类型和阶段。因此,在本系统综述中,我们开发了一种机器学习方法来筛选这些生物活性化合物,然后采用最佳候选分子模拟操作,在湿实验中测试有效性。因此,实现癌症候选药物开发过程的自动化具有重要意义。众所周知,最有效和高效的机器学习方法是朴素贝叶斯,但在处理大量复合数据时,最好的是分类器SVM。采用深度学习方法可以确保复杂生物活性化合物数据的未来。关键词:机器学习,药物开发,天然物质化合物,代谢途径,癌症
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