Spies Erica, Flynn Jennifer A, Oliveira Nuno Guitian, Karmalkar Prathamesh, Gurulingappa Harsha
Work Completed While Employees of EMD Serono Research & Development Institute, Inc., Billerica, MA, United States.
Healthcare Business of Merck KGaA, Darmstadt, Germany.
Front Digit Health. 2024 Nov 20;6:1459201. doi: 10.3389/fdgth.2024.1459201. eCollection 2024.
This article examines the opportunities and benefits of artificial intelligence (AI)-enabled social media listening (SML) in assisting successful patient-focused drug development (PFDD). PFDD aims to incorporate the patient perspective to improve the quality, relevance, safety, and efficiency of drug development and evaluation. Gathering patient perspectives to support PFDD is aided by the participation of patient groups in communicating their treatment experiences, needs, preferences, and priorities through online platforms. SML is a method of gathering feedback directly from patients; however, distilling the quantity of data into actionable insights is challenging. AI-enabled methods, such as natural language processing (NLP), can facilitate data processing from SML studies. Herein, we describe a novel, trainable, AI-enabled, SML workflow that classifies posts made by patients or caregivers and uses NLP to provide data on their experiences. Our approach is an iterative process that balances human expert-led milestones and AI-enabled processes to support data preprocessing, patient and caregiver classification, and NLP methods to produce qualitative data. We explored the applicability of this workflow in 2 studies: 1 in patients with head and neck cancers and another in patients with esophageal cancer. Continuous refinement of AI-enabled algorithms was essential for collecting accurate and valuable results. This approach and workflow contribute to the establishment of well-defined standards of SML studies and advance the methodologic quality and rigor of researchers contributing to, conducting, and evaluating SML studies in a PFDD context.
本文探讨了借助人工智能(AI)的社交媒体倾听(SML)在助力以患者为中心的成功药物研发(PFDD)方面的机遇和益处。PFDD旨在纳入患者视角,以提高药物研发与评估的质量、相关性、安全性和效率。患者群体通过在线平台交流其治疗经历、需求、偏好和优先事项,这有助于收集患者视角以支持PFDD。SML是一种直接从患者那里收集反馈的方法;然而,将大量数据提炼为可付诸行动的见解具有挑战性。诸如自然语言处理(NLP)等借助AI的方法能够促进来自SML研究的数据处理。在此,我们描述了一种新颖的、可训练的、借助AI的SML工作流程,该流程对患者或护理人员发布的帖子进行分类,并使用NLP来提供有关他们经历的数据。我们的方法是一个迭代过程,平衡了由人类专家主导的里程碑和借助AI的流程,以支持数据预处理、患者和护理人员分类,以及用于生成定性数据的NLP方法。我们在两项研究中探索了这种工作流程的适用性:一项针对头颈癌患者,另一项针对食管癌患者。持续优化借助AI的算法对于收集准确且有价值的结果至关重要。这种方法和工作流程有助于确立SML研究明确的标准,并提升在PFDD背景下参与、开展和评估SML研究的研究人员的方法学质量和严谨性。