早期亨廷顿氏病的预后富集:用于临床试验的可解释机器学习方法

IF 3.4 2区 医学 Q2 NEUROIMAGING Neuroimage-Clinical Pub Date : 2024-01-01 DOI:10.1016/j.nicl.2024.103650
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引用次数: 0

摘要

背景在亨廷顿氏病临床试验中,招募和分层方法主要依赖于遗传负荷、认知和运动评估分数。它们较少关注体内脑成像标记物,而这些标记物早在临床诊断之前就能反映神经病理学。机器学习方法具有一定的复杂性,可以利用大型数据集中的多模态生物标记物,显著改善预后和分层。这些模型专门针对 HD 基因扩增携带者,可以进一步提高分层过程的效果。方法我们使用了 451 名亨廷顿氏病患者(包括显现前和确诊者)的基因阳性数据,这些数据来自之前发表的队列(PREDICT、TRACK、TrackON 和 IMAGE)。我们对纵向脑扫描进行了全脑解析,并测量了 3 年来的侧脑室扩大率,将其作为预后随机森林回归模型的目标变量。模型根据基线特征的不同组合进行训练,包括遗传负荷、认知和运动评估评分生物标志物以及脑成像衍生特征。结果将脑成像特征与遗传负荷、认知和运动生物标志物相结合,大大提高了预后模型的预测准确性:交叉验证平均绝对误差降低了 24%,误差为 530 mm3/年。该分层模型在区分中度和快速进展者方面的交叉验证准确率为 81%(精确度 = 83%,召回率 = 80%)。这些模型完全使用来自 HD 患者的特征进行训练,与以往研究中依赖从健康对照组中提取的特征相比,这种方法提供了一种更具疾病特异性、更简化、更准确的预后富集方法。所提出的方法有望通过以下方式提高临床实用性:i) 更有针对性地招募患者参与临床试验;ii) 改进对患者的事后评估;iii) 最终通过个性化治疗选择为患者带来更好的治疗效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Prognostic enrichment for early-stage Huntington’s disease: An explainable machine learning approach for clinical trial

Background

In Huntington’s disease clinical trials, recruitment and stratification approaches primarily rely on genetic load, cognitive and motor assessment scores. They focus less on in vivo brain imaging markers, which reflect neuropathology well before clinical diagnosis. Machine learning methods offer a degree of sophistication which could significantly improve prognosis and stratification by leveraging multimodal biomarkers from large datasets. Such models specifically tailored to HD gene expansion carriers could further enhance the efficacy of the stratification process.

Objectives

To improve stratification of Huntington’s disease individuals for clinical trials.

Methods

We used data from 451 gene positive individuals with Huntington’s disease (both premanifest and diagnosed) from previously published cohorts (PREDICT, TRACK, TrackON, and IMAGE). We applied whole-brain parcellation to longitudinal brain scans and measured the rate of lateral ventricular enlargement, over 3 years, which was used as the target variable for our prognostic random forest regression models. The models were trained on various combinations of features at baseline, including genetic load, cognitive and motor assessment score biomarkers, as well as brain imaging-derived features. Furthermore, a simplified stratification model was developed to classify individuals into two homogenous groups (low risk and high risk) based on their anticipated rate of ventricular enlargement.

Results

The predictive accuracy of the prognostic models substantially improved by integrating brain imaging features alongside genetic load, cognitive and motor biomarkers: a 24 % reduction in the cross-validated mean absolute error, yielding an error of 530 mm3/year. The stratification model had a cross-validated accuracy of 81 % in differentiating between moderate and fast progressors (precision = 83 %, recall = 80 %).

Conclusions

This study validated the effectiveness of machine learning in differentiating between low- and high-risk individuals based on the rate of ventricular enlargement. The models were exclusively trained using features from HD individuals, which offers a more disease-specific, simplified, and accurate approach for prognostic enrichment compared to relying on features extracted from healthy control groups, as done in previous studies. The proposed method has the potential to enhance clinical utility by: i) enabling more targeted recruitment of individuals for clinical trials, ii) improving post-hoc evaluation of individuals, and iii) ultimately leading to better outcomes for individuals through personalized treatment selection.

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来源期刊
Neuroimage-Clinical
Neuroimage-Clinical NEUROIMAGING-
CiteScore
7.50
自引率
4.80%
发文量
368
审稿时长
52 days
期刊介绍: NeuroImage: Clinical, a journal of diseases, disorders and syndromes involving the Nervous System, provides a vehicle for communicating important advances in the study of abnormal structure-function relationships of the human nervous system based on imaging. The focus of NeuroImage: Clinical is on defining changes to the brain associated with primary neurologic and psychiatric diseases and disorders of the nervous system as well as behavioral syndromes and developmental conditions. The main criterion for judging papers is the extent of scientific advancement in the understanding of the pathophysiologic mechanisms of diseases and disorders, in identification of functional models that link clinical signs and symptoms with brain function and in the creation of image based tools applicable to a broad range of clinical needs including diagnosis, monitoring and tracking of illness, predicting therapeutic response and development of new treatments. Papers dealing with structure and function in animal models will also be considered if they reveal mechanisms that can be readily translated to human conditions.
期刊最新文献
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