PTML优化临床前疟原虫检测

Viviana F Quevedo-Tumailli, Bernabé Ortega-Tenezaca
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引用次数: 0

摘要

. 摘要:利用包含临床前检测实验条件和蛋白质、基因和染色体特征的数据集,利用算法预测临床前疟疾检测的最佳结果是一项突破性研究。从数据收集到数据处理的过程需要70%的时间来开发。从创建初步模型到制作模型的过程占总研究时间的30%。有几个数据库,如ChEMBL、Uniprot和NCBI-GDV,可以收集任何物种的临床前分析和特征信息,在这个案例中研究的是恶性疟原虫。该物种是热带和亚热带国家的一个主要公共卫生问题。恶性疟原虫通常会引起高烧、腹泻、发冷,并在几个小时内演变成严重的病例,导致死亡。使用不同的算法,如:线性判别分析(LDA)、单变量分裂分类树(CTUS)、线性组合分类树(CTLC)等。这些算法和摄动理论的使用允许制药行业优化临床前测试过程,获得具有高比例特异性和敏感性的最优模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PTML in optimizing preclinical plasmodium assays
. Abstract: The use of algorithms to predict optimal results in preclinical malaria assays from a data set that includes the experimental conditions of preclinical assays and characteristics of proteins, genes and chromosomes is a breakthrough in research. The process from data collection to data processing takes 70 percent of the time to develop. The process from the creation of preliminary models to the production of the model takes 30 percent of the total research time. There are several databases such as ChEMBL, Uniprot and NCBI-GDV that allow the collection of information on both preclinical assays and characteristics of any species, in this case study is plasmodium falciparum . This species is a major public health problem in tropical and subtropical countries. P. falciparum usually causes high fever, diarrhea, chills and in a few hours, it can evolve to a severe case causing death. The use of different algorithms such as: Linear Discriminant Analysis (LDA), Classification Tree with Univariate Splits (CTUS), Classification Tree with Linear Combinations (CTLC), and so on. The use of these algorithms and the perturbation theory allows pharmaceutical industries to optimize preclinical testing processes obtaining the most optimal models with a high percentage of specificity and sensitivity.
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