Identification of Drug Compound Bio-Activities Through Artificial Intelligence

R. Rastogi, Y. Rastogi, Saurav Kumar Rathaur, Vaibhav Srivastava
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Abstract

In the fields of drug discovery and development, machine learning techniques have been used for the development of novel drug candidates. The methods for designing drug targets and novel drug discovery now routinely combine machine learning algorithms such as regression and classification models to enhance the efficiency, efficacy, and quality of developed outputs. Applying machine learning model for drug discovery on different diseases that exists already, the author team fetched the datasets from the ChEMBL database that contain the bio-activity data, after preprocessing the data according to the bioactivity threshold in order to obtain a curated bio-activity data. Therefore, structural analogs of the drugs that bind to the target are selected as drug candidates. However, even though compounds are not structural analogs, they may achieve the desired response. A new drug discovery method based on drug response, which can complement the structure-based methods, is needed. Present manuscript is an effort for same.
基于人工智能的药物化合物生物活性鉴定
在药物发现和开发领域,机器学习技术已被用于开发新的候选药物。设计药物靶点和新药物发现的方法现在通常结合机器学习算法,如回归和分类模型,以提高开发产出的效率、功效和质量。作者团队将机器学习模型应用于已经存在的不同疾病的药物发现,从ChEMBL数据库中获取包含生物活性数据的数据集,并根据生物活性阈值对数据进行预处理,以获得经过整理的生物活性数据。因此,选择与靶标结合的药物的结构类似物作为候选药物。然而,即使化合物不是结构类似物,它们也可以达到预期的反应。需要一种新的基于药物反应的药物发现方法,以补充基于结构的方法。现在的手稿就是为此所作的努力。
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