[The development of model of prognostication and minimization of risk of by-effects under combined application of agents for treatment of chronic cardiac deficiency using AI].

Q4 Medicine
T A Kuropatkina, T V Sivakova, M M Shegai, Y N Orlov, N L Shimanovskii
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引用次数: 0

Abstract

The chronic cardiac deficiency continues to be one of the leading health care problems requiring innovative solutions. The article presents mathematical algorithm to evaluate drug interactions and targeted to minimize side effects and to optimize chronic cardiac deficiency therapy. The mathematical model, elaborated using AI, is based on analysis of fully connected sub-graphs and ranking of side effects of combined application of medications. This approach permits to implement optimal selection of the safest and most effective combinations of medications. This is particularly important with regard for co-morbid conditions when patients take simultaneously several different medications. The proposed approach can significantly improve risk prediction and favor more precise selection of combined therapy. The algorithm surmises necessity for further extension and specification of model, including consideration of wider spectrum of medications and mechanism of their interaction. In the context of rapidly advancing digital medicine, models based on mathematical algorithms and machine learning can complement systems of clinical decision support. These models also can become valuable tool improving treatment of various diseases, especially in co-morbid conditions opening new horizons in medical practice.

[人工智能联合应用药物治疗慢性心功能不全的预后模型的建立及副作用风险的最小化]。
慢性心脏缺陷仍然是需要创新解决方案的主要保健问题之一。本文提出了数学算法来评估药物相互作用和目标,以减少副作用和优化慢性心脏缺陷的治疗。该数学模型采用人工智能技术,基于对全连通子图的分析和药物联合应用副作用的排序。这种方法可以实现最安全、最有效的药物组合的最佳选择。当患者同时服用几种不同的药物时,这一点尤其重要。该方法可以显著提高风险预测,有利于更精确地选择联合治疗。该算法推测了进一步扩展和规范模型的必要性,包括考虑更广泛的药物范围及其相互作用的机制。在快速发展的数字医学背景下,基于数学算法和机器学习的模型可以补充临床决策支持系统。这些模型也可以成为改善各种疾病治疗的宝贵工具,特别是在合并症条件下,为医疗实践开辟了新的视野。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.40
自引率
0.00%
发文量
234
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