通过机器学习推进风湿病护理。

IF 3.1 Q2 PHARMACOLOGY & PHARMACY
Pharmaceutical Medicine Pub Date : 2024-03-01 Epub Date: 2024-02-29 DOI:10.1007/s40290-024-00515-0
Thomas Hügle
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引用次数: 0

摘要

风湿病的特点是复杂,涉及免疫、代谢和机械介导的过程,可影响不同的器官系统。尽管有越来越多的靶向药物,但许多风湿病患者仍无法获得完全缓解。由于患者优先考虑的症状不同,疾病表型也各异,因此评估疾病活动性仍具有挑战性。这也反映在临床试验中,传统的结果评估不一定能以最佳方式衡量药物的疗效。最近的 COVID-19 大流行推动了医疗保健领域的数字化转型,通过应用程序和可穿戴设备接受远程监测和患者报告数据。作为数字医疗的进一步推动力,电子病历(EMR)提供商正积极开发用于临床决策支持的算法,这预示着向以患者为中心的分散式医疗转变。机器学习算法已成为处理日益增多的患者数据的重要工具,有望提高治疗质量和患者福利。卷积神经网络(CNN)尤其适用于放射图像分析,可帮助检测侵蚀、骶髂关节炎或骨关节炎等特定病变,其应用已获得美国食品及药物管理局(FDA)批准。临床预测,包括疾病活动数值预测和药物选择,为优化治疗策略提供了可能。数值预测可集成到临床工作流程中,与患者共同决策。根据疾病特征对患者进行分组可提供个性化护理方法。患者报告的结果和可穿戴设备数据等数字生物标志物可以在患者会诊之外更灵活地洞察疾病进展和治疗反应。与患者报告的结果相结合,通过图像识别或单摄像头动作捕捉获得特定疾病的数字生物标志物,可实现更高效的远程患者监测。未来,数字生物标志物还可能在临床试验中发挥重要作用,作为连续的、疾病特异性结果测量,可促进分散式研究。预测模型有助于在临床试验中选择病人,如预测疾病的高度活动性。目前正在努力利用数字路径和远程患者监测平台将这些先进技术整合到临床工作流程中。总之,机器学习、数字生物标记物和先进的成像技术在加强风湿病学的临床决策支持和临床试验方面大有可为。要实现有效整合,需要采用多学科方法,并通过前瞻性研究不断验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing Rheumatology Care Through Machine Learning.

Rheumatologic diseases are marked by their complexity, involving immune-, metabolic- and mechanically mediated processes which can affect different organ systems. Despite a growing arsenal of targeted medications, many rheumatology patients fail to achieve full remission. Assessing disease activity remains challenging, as patients prioritize different symptoms and disease phenotypes vary. This is also reflected in clinical trials where the efficacy of drugs is not necessarily measured in an optimal way with the traditional outcome assessment. The recent COVID-19 pandemic has catalyzed a digital transformation in healthcare, embracing telemonitoring and patient-reported data via apps and wearables. As a further driver of digital medicine, electronic medical record (EMR) providers are actively engaged in developing algorithms for clinical decision support, heralding a shift towards patient-centered, decentralized care. Machine learning algorithms have emerged as valuable tools for handling the increasing volume of patient data, promising to enhance treatment quality and patient well-being. Convolutional neural networks (CNN) are particularly promising for radiological image analysis, aiding in the detection of specific lesions such as erosions, sacroiliitis, or osteoarthritis, with several FDA-approved applications. Clinical predictions, including numerical disease activity forecasts and medication choices, offer the potential to optimize treatment strategies. Numeric predictions can be integrated into clinical workflows, allowing for shared decision making with patients. Clustering patients based on disease characteristics provides a personalized care approach. Digital biomarkers, such as patient-reported outcomes and wearables data, offer insights into disease progression and therapy response more flexibly and outside patient consultations. In association with patient-reported outcomes, disease-specific digital biomarkers via image recognition or single-camera motion capture enables more efficient remote patient monitoring. Digital biomarkers may also play a major role in clinical trials in the future as continuous, disease-specific outcome measurement facilitating decentralized studies. Prediction models can help with patient selection in clinical trials, such as by predicting high disease activity. Efforts are underway to integrate these advancements into clinical workflows using digital pathways and remote patient monitoring platforms. In summary, machine learning, digital biomarkers, and advanced imaging technologies hold immense promise for enhancing clinical decision support and clinical trials in rheumatology. Effective integration will require a multidisciplinary approach and continued validation through prospective studies.

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来源期刊
Pharmaceutical Medicine
Pharmaceutical Medicine PHARMACOLOGY & PHARMACY-
CiteScore
5.10
自引率
4.00%
发文量
36
期刊介绍: Pharmaceutical Medicine is a specialist discipline concerned with medical aspects of the discovery, development, evaluation, registration, regulation, monitoring, marketing, distribution and pricing of medicines, drug-device and drug-diagnostic combinations. The Journal disseminates information to support the community of professionals working in these highly inter-related functions. Key areas include translational medicine, clinical trial design, pharmacovigilance, clinical toxicology, drug regulation, clinical pharmacology, biostatistics and pharmacoeconomics. The Journal includes:Overviews of contentious or emerging issues.Comprehensive narrative reviews that provide an authoritative source of information on topical issues.Systematic reviews that collate empirical evidence to answer a specific research question, using explicit, systematic methods as outlined by PRISMA statement.Original research articles reporting the results of well-designed studies with a strong link to wider areas of clinical research.Additional digital features (including animated abstracts, video abstracts, slide decks, audio slides, instructional videos, infographics, podcasts and animations) can be published with articles; these are designed to increase the visibility, readership and educational value of the journal’s content. In addition, articles published in Pharmaceutical Medicine may be accompanied by plain language summaries to assist readers who have some knowledge of, but not in-depth expertise in, the area to understand important medical advances.All manuscripts are subject to peer review by international experts. Letters to the Editor are welcomed and will be considered for publication.
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