Identifying and predicting headache trajectories among those with acute post-traumatic headache.

IF 4 2区 医学 Q1 CLINICAL NEUROLOGY
Headache Pub Date : 2025-07-01 Epub Date: 2025-05-30 DOI:10.1111/head.14955
Lingchao Mao, Jing Li, Todd J Schwedt, Teresa Wu, Katherine Ross, Gina Dumkrieger, Dani C Smith, Catherine D Chong
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引用次数: 0

Abstract

Objectives/background: Post-traumatic headache (PTH) is a common symptom following mild traumatic brain injury (mTBI). Currently, there is no identified way to accurately predict if, when, and at what pace a person will have PTH improvement. In our prior studies, we focused on predicting headache improvement at 3 months post-mTBI. However, that approach may overlook individual differences in how headaches evolve over time. This study aimed to identify individual subgroups based on their headache trajectories and to develop machine-learning (ML) models for early prediction of headache evolution.

Methods: Participants with acute PTH completed a daily electronic headache diary over 3 months, recording their headache-related symptoms. Tensor decomposition was utilized to extract latent factors underlying the time-varying symptoms. We applied clustering techniques on the latent factors to identify patient subgroups with varying headache improvement trajectory. Next, we developed an ML method to classify each individual into a headache trajectory subgroup as early as possible within the 3-month interval.

Results: Seventy-three individuals with acute PTH (mean age = 44.8 years, SD = 14.0; 50 females/23 males) were enrolled between 0 and 59 days post-mTBI. Data from 54 individuals were used as the training cohort for model training, and 19 individuals were used as the test cohort for model evaluation. Tensor decomposition extracted two latent factors: one factor representing the overall state of PTH severity and disability and the other representing the improvement state of these symptoms over 3 months. Clustering identified four patient subgroups with distinct headache evolution trajectories: (1) severe symptoms without improvement, (2) severe symptoms with mild improvement, (3) milder symptoms with substantial improvement, and (4) mildest symptoms with mild improvement. The proposed ML model achieved 0.80 cross-validation accuracy in classifying individuals with PTH into subgroups for the training cohort and 0.84 accuracy for the test cohort. Notably, the model required only the first 2 weeks of headache data to accurately identify the subgroup with the mildest headaches, 3 additional weeks to identify the subgroup with the most severe headaches and no improvement in 3 months, and 2 additional weeks to distinguish the remaining subgroups.

Conclusion: This study identified subgroups of individuals with acute PTH with distinct headache improvement trajectories. The proposed ML method accurately classified individuals into these subgroups using the minimally necessary early headache data for each person, including detecting the subgroup with the mildest headaches at 2 weeks. This approach could offer an estimated forecast of headache burden over time and could assist clinicians with determining treatment needs and eligibility for PTH clinical trials.

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识别和预测急性创伤后头痛患者的头痛轨迹。
目的/背景:创伤后头痛(PTH)是轻度外伤性脑损伤(mTBI)后的常见症状。目前,还没有确定的方法来准确预测一个人是否、何时以及以何种速度会有甲状旁腺功能的改善。在我们之前的研究中,我们专注于预测mtbi后3个月头痛的改善。然而,这种方法可能忽略了头痛随时间演变的个体差异。本研究旨在根据头痛轨迹确定单个亚组,并开发用于早期预测头痛演变的机器学习(ML)模型。方法:急性甲状旁腺激素患者在3个月内完成每日电子头痛日记,记录其头痛相关症状。利用张量分解提取时变症状的潜在因素。我们对潜在因素应用聚类技术来识别具有不同头痛改善轨迹的患者亚组。接下来,我们开发了一种ML方法,以便在3个月内尽早将每个个体划分为头痛轨迹亚组。结果:急性甲状旁腺激素73例,平均年龄44.8岁,SD = 14.0;50名女性/23名男性)在mtbi后0至59天内入组。54名个体的数据被用作模型训练的训练队列,19名个体的数据被用作模型评价的测试队列。张量分解提取了两个潜在因素:一个代表PTH严重程度和残疾的总体状态,另一个代表这些症状在3个月内的改善状态。聚类确定了四个具有不同头痛演变轨迹的患者亚组:(1)严重症状无改善,(2)严重症状轻度改善,(3)轻度症状明显改善,(4)轻度症状轻度改善。所提出的ML模型在将PTH个体划分为训练队列的亚组时达到了0.80的交叉验证准确率,在测试队列中达到了0.84的准确率。值得注意的是,该模型只需要前2周的头痛数据来准确识别头痛最轻的亚组,另外3周来识别头痛最严重且3个月内没有改善的亚组,另外2周来区分其余亚组。结论:本研究确定了急性甲状旁腺激素患者的亚组,他们有明显的头痛改善轨迹。提出的ML方法使用每个人的最低必要的早期头痛数据准确地将个体分为这些亚组,包括在2周时检测头痛最轻微的亚组。这种方法可以提供随时间推移的头痛负担的估计预测,并可以帮助临床医生确定治疗需求和PTH临床试验的资格。
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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来源期刊
Headache
Headache 医学-临床神经学
CiteScore
9.40
自引率
10.00%
发文量
172
审稿时长
3-8 weeks
期刊介绍: Headache publishes original articles on all aspects of head and face pain including communications on clinical and basic research, diagnosis and management, epidemiology, genetics, and pathophysiology of primary and secondary headaches, cranial neuralgias, and pains referred to the head and face. Monthly issues feature case reports, short communications, review articles, letters to the editor, and news items regarding AHS plus medicolegal and socioeconomic aspects of head pain. This is the official journal of the American Headache Society.
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