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首页> 外文期刊>JMIR mHealth and uHealth >Use of a Novel Artificial Intelligence Platform on Mobile Devices to Assess Dosing Compliance in a Phase 2 Clinical Trial in Subjects With Schizophrenia
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Use of a Novel Artificial Intelligence Platform on Mobile Devices to Assess Dosing Compliance in a Phase 2 Clinical Trial in Subjects With Schizophrenia

机译:在精神分裂症患者的第二阶段临床试验中,在移动设备上使用新型人工智能平台评估剂量依从性

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Background Accurately monitoring and collecting drug adherence data can allow for better understanding and interpretation of the outcomes of clinical trials. Most clinical trials use a combination of pill counts and self-reported data to measure drug adherence, despite the drawbacks of relying on these types of indirect measures. It is assumed that doses are taken, but the exact timing of these events is often incomplete and imprecise. Objective The objective of this pilot study was to evaluate the use of a novel artificial intelligence (AI) platform (AiCure) on mobile devices for measuring medication adherence, compared with modified directly observed therapy (mDOT) in a substudy of a Phase 2 trial of the α7 nicotinic receptor agonist (ABT-126) in subjects with schizophrenia. Methods AI platform generated adherence measures were compared with adherence inferred from drug concentration measurements. Results The mean cumulative pharmacokinetic adherence over 24 weeks was 89.7% (standard deviation [SD] 24.92) for subjects receiving ABT-126 who were monitored using the AI platform, compared with 71.9% (SD 39.81) for subjects receiving ABT-126 who were monitored by mDOT. The difference was 17.9% (95% CI -2 to 37.7; P =.08). Conclusions Using drug levels, this substudy demonstrates the potential of AI platforms to increase adherence, rapidly detect nonadherence, and predict future nonadherence. Subjects monitored using the AI platform demonstrated a percentage change in adherence of 25% over the mDOT group. Subjects were able to use the technology successfully for up to 6 months in an ambulatory setting with early termination rates that are comparable to subjects outside of the substudy.
机译:背景技术准确监测和收集药物依从性数据可以更好地理解和解释临床试验的结果。尽管依赖于这些类型的间接测量方法有很多弊端,但大多数临床试验还是结合药丸计数和自我报告数据来衡量药物依从性。假定已服用剂量,但这些事件的确切时机往往不完整且不准确。目的这项初步研究的目的是评估在移动设备上使用新型人工智能(AI)平台(AiCure)来衡量药物依从性的情况,并与改良的直接观察疗法(mDOT)进行一项2期临床试验的子研究精神分裂症患者的α7烟碱样受体激动剂(ABT-126)。方法将AI平台生成的依从性度量与从药物浓度测量得出的依从性进行比较。结果使用AI平台监测的接受ABT-126的受试者在24周内的平均累积药代动力学依从性为89.7%(标准差[SD] 24.92),而接受ABT-126的受试者在7周内的平均累积药代动力学依从性为71.9%(SD 39.81)。由mDOT监控。差异为17.9%(95%CI -2至37.7; P = .08)。结论使用药物水平,该亚研究证明了AI平台增加依从性,快速检测不依从性并预测未来不依从性的潜力。使用AI平台监控的受试者在mDOT组中的依从性百分比变化为25%。在非卧床环境中,受试者能够成功使用该技术长达6个月,且早期终止率与子研究范围外的受试者相当。

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