AI-driven innovations in Alzheimer's disease: Integrating early diagnosis, personalized treatment, and prognostic modelling

IF 12.5 1区 医学 Q1 CELL BIOLOGY
Mayur Kale , Nitu Wankhede , Rupali Pawar , Suhas Ballal , Rohit Kumawat , Manish Goswami , Mohammad Khalid , Brijesh Taksande , Aman Upaganlawar , Milind Umekar , Spandana Rajendra Kopalli , Sushruta Koppula
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引用次数: 0

Abstract

Alzheimer’s disease (AD) presents a significant challenge in neurodegenerative research and clinical practice due to its complex etiology and progressive nature. The integration of artificial intelligence (AI) into the diagnosis, treatment, and prognostic modelling of AD holds promising potential to transform the landscape of dementia care. This review explores recent advancements in AI applications across various stages of AD management. In early diagnosis, AI-enhanced neuroimaging techniques, including MRI, PET, and CT scans, enable precise detection of AD biomarkers. Machine learning models analyze these images to identify patterns indicative of early cognitive decline. Additionally, AI algorithms are employed to detect genetic and proteomic biomarkers, facilitating early intervention. Cognitive and behavioral assessments have also benefited from AI, with tools that enhance the accuracy of neuropsychological tests and analyze speech and language patterns for early signs of dementia. Personalized treatment strategies have been revolutionized by AI-driven approaches. In drug discovery, virtual screening and drug repurposing, guided by predictive modelling, accelerate the identification of effective treatments. AI also aids in tailoring therapeutic interventions by predicting individual responses to treatments and monitoring patient progress, allowing for dynamic adjustment of care plans. Prognostic modelling, another critical area, utilizes AI to predict disease progression through longitudinal data analysis and risk prediction models. The integration of multi-modal data, combining clinical, genetic, and imaging information, enhances the accuracy of these predictions. Deep learning techniques are particularly effective in fusing diverse data types to uncover new insights into disease mechanisms and progression. Despite these advancements, challenges remain, including ethical considerations, data privacy, and the need for seamless integration of AI tools into clinical workflows. This review underscores the transformative potential of AI in AD management while highlighting areas for future research and development. By leveraging AI, the healthcare community can improve early diagnosis, personalize treatments, and predict disease outcomes more accurately, ultimately enhancing the quality of life for individuals with AD.
阿尔茨海默病的人工智能创新:整合早期诊断、个性化治疗和预后模型。
阿尔茨海默病(AD)因其复杂的病因和渐进性,给神经退行性疾病的研究和临床实践带来了巨大挑战。将人工智能(AI)整合到阿尔茨海默病的诊断、治疗和预后建模中,有望改变痴呆症护理的现状。本综述探讨了在痴呆症管理的各个阶段应用人工智能的最新进展。在早期诊断方面,包括核磁共振成像、正电子发射计算机断层扫描和 CT 扫描在内的人工智能增强型神经成像技术能够精确检测出痴呆症的生物标志物。机器学习模型对这些图像进行分析,以识别表明早期认知功能衰退的模式。此外,人工智能算法还可用于检测基因和蛋白质组生物标志物,从而促进早期干预。认知和行为评估也受益于人工智能,其工具可提高神经心理测试的准确性,并分析言语和语言模式,以发现痴呆症的早期迹象。人工智能驱动的方法彻底改变了个性化治疗策略。在药物发现方面,以预测建模为指导的虚拟筛选和药物再利用加快了有效治疗方法的确定。人工智能还通过预测个人对治疗的反应和监测患者的病情进展,帮助定制治疗干预措施,从而实现护理计划的动态调整。预后建模是另一个关键领域,它利用人工智能通过纵向数据分析和风险预测模型来预测疾病进展。多模态数据的整合结合了临床、遗传和成像信息,提高了这些预测的准确性。深度学习技术在融合不同数据类型以揭示疾病机制和进展的新见解方面尤为有效。尽管取得了这些进步,但挑战依然存在,包括伦理考虑、数据隐私以及将人工智能工具无缝集成到临床工作流程中的必要性。本综述强调了人工智能在艾滋病管理方面的变革潜力,同时也突出了未来研究和发展的领域。通过利用人工智能,医疗界可以改善早期诊断、个性化治疗并更准确地预测疾病结果,最终提高注意力缺失症患者的生活质量。
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来源期刊
Ageing Research Reviews
Ageing Research Reviews 医学-老年医学
CiteScore
19.80
自引率
2.30%
发文量
216
审稿时长
55 days
期刊介绍: With the rise in average human life expectancy, the impact of ageing and age-related diseases on our society has become increasingly significant. Ageing research is now a focal point for numerous laboratories, encompassing leaders in genetics, molecular and cellular biology, biochemistry, and behavior. Ageing Research Reviews (ARR) serves as a cornerstone in this field, addressing emerging trends. ARR aims to fill a substantial gap by providing critical reviews and viewpoints on evolving discoveries concerning the mechanisms of ageing and age-related diseases. The rapid progress in understanding the mechanisms controlling cellular proliferation, differentiation, and survival is unveiling new insights into the regulation of ageing. From telomerase to stem cells, and from energy to oxyradical metabolism, we are witnessing an exciting era in the multidisciplinary field of ageing research. The journal explores the cellular and molecular foundations of interventions that extend lifespan, such as caloric restriction. It identifies the underpinnings of manipulations that extend lifespan, shedding light on novel approaches for preventing age-related diseases. ARR publishes articles on focused topics selected from the expansive field of ageing research, with a particular emphasis on the cellular and molecular mechanisms of the aging process. This includes age-related diseases like cancer, cardiovascular disease, diabetes, and neurodegenerative disorders. The journal also covers applications of basic ageing research to lifespan extension and disease prevention, offering a comprehensive platform for advancing our understanding of this critical field.
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