人工智能(AI)和药物诱导的特异性细胞减少症:AI在预防、预测和患者参与中的作用。

IF 1.1 Q4 HEMATOLOGY
Emmanuel Andrès, Amir El Hassani Hajjam, Frédéric Maloisel, Maria Belén Alonso-Ortiz, Manuel Méndez-Bailón, Thierry Lavigne, Xavier Jannot, Noel Lorenzo-Villalba
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引用次数: 0

摘要

药物性和特异性细胞减少症,包括贫血、中性粒细胞减少症和血小板减少症,在免疫血液学和内科等领域提出了重大挑战。这些疾病通常是不可预测的、多因素的,并且可能是由药物反应、免疫异常和其他鲜为人知的机制的复杂相互作用引起的。在许多情况下,确切的触发因素和潜在因素仍然不清楚,使诊断和管理困难。然而,人工智能(AI)的进步为应对这些挑战提供了新的机会。凭借其处理大量临床、基因组和药物警戒数据的能力,人工智能可以识别传统方法可能遗漏的模式和风险因素。机器学习算法可以改进预测模型,实现更早的检测和更准确的风险评估。此外,通过量身定制的监测和个性化的治疗策略,人工智能在提高患者参与度方面的作用确保了对这些可能危及生命的疾病的患者进行更有效的随访并改善了临床结果。通过这些创新,人工智能正在为更积极主动和个性化的方法铺平道路,以管理药物引起的细胞减少症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence (AI) and Drug-Induced and Idiosyncratic Cytopenia: The Role of AI in Prevention, Prediction, and Patient Participation.

Drug-induced and idiosyncratic cytopenias, including anemia, neutropenia, and thrombocytopenia, present significant challenges in fields like immunohematology and internal medicine. These conditions are often unpredictable, multifactorial, and can arise from a complex interplay of drug reactions, immune abnormalities, and other poorly understood mechanisms. In many cases, the precise triggers and underlying factors remain unclear, making diagnosis and management difficult. However, advancements in artificial intelligence (AI) are offering new opportunities to address these challenges. With its ability to process vast amounts of clinical, genomic, and pharmacovigilance data, AI can identify patterns and risk factors that may be missed by traditional methods. Machine learning algorithms can refine predictive models, enabling earlier detection and more accurate risk assessments. Additionally, AI's role in enhancing patient engagement-through tailored monitoring and personalized treatment strategies-ensures more effective follow-up and improved clinical outcomes for patients at risk of these potentially life-threatening conditions. Through these innovations, AI is paving the way for a more proactive and personalized approach to managing drug-induced cytopenias.

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来源期刊
Hematology Reports
Hematology Reports HEMATOLOGY-
CiteScore
0.90
自引率
0.00%
发文量
47
审稿时长
10 weeks
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