Developing predictive models for HIV Drug resistance: A genomic and AI approach

Charles Chukwudalu Ebulue, Ogochukwu Virginia Ekkeh, Ogochukwu Roseline Ebulue, Chukwunonso Sylvester Ekesiobi
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Abstract

 This paper proposes a novel approach to combating HIV drug resistance through the development of predictive models leveraging genomic data and artificial intelligence (AI). With the increasing prevalence of drug-resistant strains of HIV, there is a critical need for innovative strategies to predict and manage resistance mutations, thereby optimizing treatment outcomes and prolonging the efficacy of antiretroviral therapy (ART). Drawing on advances in genomics and AI, this study outlines a conceptual framework for the development of predictive models that can identify potential drug-resistance mutations in HIV genomes and inform clinical decision-making. The proposed framework integrates genomic data from HIV-infected individuals with AI algorithms capable of learning complex patterns within the data. By analyzing genomic sequences obtained from HIV-positive patients, the models aim to identify genetic variations associated with drug resistance, predict the likelihood of resistance development, and guide the selection of appropriate treatment regimens. This approach holds promise for personalized medicine in HIV care, enabling clinicians to tailor therapy based on an individual's genetic profile and risk of resistance. Key components of the conceptual framework include data preprocessing to extract relevant genomic features, model training using machine learning techniques such as deep learning and ensemble methods, and validation of predictive performance through cross-validation and independent testing. Furthermore, the integration of clinical data, such as treatment history and viral load measurements, enhances the predictive accuracy of the models and provides valuable insights into treatment response dynamics.The development of predictive models for HIV drug resistance represents a paradigm shift in HIV care, offering a proactive approach to treatment management and surveillance. By leveraging genomic and AI technologies, healthcare providers can anticipate and address emerging resistance mutations before they compromise treatment efficacy. Ultimately, the implementation of predictive models holds the potential to improve patient outcomes, reduce the transmission of drug-resistant HIV strains, and advance the global fight against HIV/AIDS. Keywords:  Developing, Predictive Models, HIV Drug Resistance, Genomic, AI Approach.
开发艾滋病毒耐药性预测模型:基因组学和人工智能方法
本文提出了一种利用基因组数据和人工智能(AI)开发预测模型来对抗艾滋病耐药性的新方法。随着艾滋病耐药株的日益流行,亟需创新战略来预测和管理耐药突变,从而优化治疗效果并延长抗逆转录病毒疗法(ART)的疗效。本研究利用基因组学和人工智能方面的进展,概述了开发预测模型的概念框架,该模型可识别 HIV 基因组中潜在的耐药性突变,并为临床决策提供信息。所提出的框架整合了艾滋病毒感染者的基因组数据和能够学习数据中复杂模式的人工智能算法。通过分析 HIV 阳性患者的基因组序列,这些模型旨在识别与耐药性相关的基因变异,预测耐药性产生的可能性,并指导选择适当的治疗方案。这种方法为艾滋病护理中的个性化医疗带来了希望,使临床医生能够根据个体的基因特征和耐药性风险量身定制治疗方案。概念框架的关键组成部分包括提取相关基因组特征的数据预处理、使用深度学习和集合方法等机器学习技术进行模型训练,以及通过交叉验证和独立测试验证预测性能。此外,治疗史和病毒载量测量等临床数据的整合提高了模型的预测准确性,并为治疗反应动态提供了有价值的见解。通过利用基因组学和人工智能技术,医疗服务提供者可以在新出现的耐药性突变影响治疗效果之前对其进行预测和处理。最终,预测模型的实施有可能改善患者的治疗效果,减少耐药艾滋病菌株的传播,推动全球抗击艾滋病的斗争。关键词 开发 预测模型 HIV 耐药性 基因组 人工智能方法
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