机器学习增强的阿尔茨海默病临床试验筛选漏斗

IF 4.9 Q1 CLINICAL NEUROLOGY
Scott Gladstein, Liuqing Yang, Dustin Wooten, Xin Huang, Robert Comley, Qi Guo, the Alzheimer's Disease Neuroimaging Initiative
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引用次数: 0

摘要

引言 由于阿尔茨海默病(AD)的病情变化多端且进展缓慢,治疗干预的临床试验需要对数百名受试者进行长达数月/年的研究。本文介绍了一种整合疾病进展模型的新型筛选范式,通过为早期临床研究确定合适的候选对象来提高试验效率。 方法 使用机器学习模型(包括三维卷积神经网络和集合模型)对传统的筛选漏斗进行增强,这些模型整合了神经影像学、人口统计学、遗传学和临床数据。 结果 这种方法能预测临床进展(2 年临床痴呆评级方框总和变化> 1),曲线下面积为 0.836。将其纳入试验(最大限度地优化灵敏度/特异性)可将所需受试者人数减少 55%,招募时间缩短 13 个月,淀粉样正电子发射断层扫描筛查次数减少 72%。 讨论 通过减轻患者负担和缩短临床试验时间,这种增强型筛查漏斗可加速AD疗法的开发。 亮点 为提高阿尔茨海默病临床试验的效率,我们开发了一种创新型筛查漏斗。 该漏斗结合了基于机器学习(ML)的疾病进展模型。 机器学习模型能识别出进展率最适合临床试验的患者。 不适合的患者将在繁琐的成像程序之前在漏斗早期失败。 该筛选漏斗可根据具体研究需求进行定制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning–enhanced screening funnel for clinical trials in Alzheimer's disease

Machine learning–enhanced screening funnel for clinical trials in Alzheimer's disease

INTRODUCTION

Alzheimer's disease (AD) clinical trials with therapeutic interventions require hundreds of subjects to be studied over many months/years due to variable and slow disease progression. This article presents a novel screening paradigm integrating disease progression models to improve trial efficiency by identifying appropriate candidates for early phase clinical studies.

METHODS

A traditional screening funnel is enhanced using machine learning models, including 3D convolutional neural networks and ensemble models, which integrate neuroimaging, demographic, genetic, and clinical data.

RESULTS

This approach predicts clinical progression (2-year Clinical Dementia Rating Sum of Boxes change > 1) with an area under the curve of 0.836. Incorporating it into trials (with maximized sensitivity/specificity optimization) could reduce the number of subjects required by 55%, shorten recruitment by 13 months, and reduce screening amyloid positron emission tomography scans by 72%.

DISCUSSION

By reducing patient burden and shortening timelines in clinical trials, this enhanced screening funnel could accelerate the development of AD therapies.

Highlights

  • An innovative screening funnel was developed to improve Alzheimer's disease clinical trial efficiency.
  • The funnel incorporates machine learning (ML)–based disease progression models.
  • The ML model identifies patients with progression rate optimal for clinical trials.
  • Unsuitable patients would fail early in the funnel before burdensome imaging procedures.
  • This screening funnel is customizable to specific study needs.
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来源期刊
CiteScore
10.10
自引率
2.10%
发文量
134
审稿时长
10 weeks
期刊介绍: Alzheimer''s & Dementia: Translational Research & Clinical Interventions (TRCI) is a peer-reviewed, open access,journal from the Alzheimer''s Association®. The journal seeks to bridge the full scope of explorations between basic research on drug discovery and clinical studies, validating putative therapies for aging-related chronic brain conditions that affect cognition, motor functions, and other behavioral or clinical symptoms associated with all forms dementia and Alzheimer''s disease. The journal will publish findings from diverse domains of research and disciplines to accelerate the conversion of abstract facts into practical knowledge: specifically, to translate what is learned at the bench into bedside applications. The journal seeks to publish articles that go beyond a singular emphasis on either basic drug discovery research or clinical research. Rather, an important theme of articles will be the linkages between and among the various discrete steps in the complex continuum of therapy development. For rapid communication among a multidisciplinary research audience involving the range of therapeutic interventions, TRCI will consider only original contributions that include feature length research articles, systematic reviews, meta-analyses, brief reports, narrative reviews, commentaries, letters, perspectives, and research news that would advance wide range of interventions to ameliorate symptoms or alter the progression of chronic neurocognitive disorders such as dementia and Alzheimer''s disease. The journal will publish on topics related to medicine, geriatrics, neuroscience, neurophysiology, neurology, psychiatry, clinical psychology, bioinformatics, pharmaco-genetics, regulatory issues, health economics, pharmacoeconomics, and public health policy as these apply to preclinical and clinical research on therapeutics.
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