Post-concussion symptom burden and dynamics: Insights from a digital health intervention and machine learning.

PLOS digital health Pub Date : 2025-01-07 eCollection Date: 2025-01-01 DOI:10.1371/journal.pdig.0000697
Rebecca Blundell, Christine d'Offay, Charles Hand, Daniel Tadmor, Alan Carson, David Gillespie, Matthew Reed, Aimun A B Jamjoom
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Abstract

Individuals who sustain a concussion can experience a range of symptoms which can significantly impact their quality of life and functional outcome. This study aims to understand the nature and recovery trajectories of post-concussion symptomatology by applying an unsupervised machine learning approach to data captured from a digital health intervention (HeadOn). As part of the 35-day program, patients complete a daily symptom diary which rates 8 post-concussion symptoms. Symptom data were analysed using K-means clustering to categorize patients based on their symptom profiles. During the study period, a total of 758 symptom diaries were completed by 84 patients, equating to 6064 individual symptom ratings. Fatigue, sleep disturbance and difficulty concentrating were the most prevalent symptoms reported. A decline in symptom burden was observed over the 35-day period, with physical and emotional symptoms showing early rates of recovery. In a correlation matrix, there were strong positive correlations between low mood and irritability (r = 0.84), and poor memory and difficulty concentrating (r = 0.83). K-means cluster analysis identified three distinct patient clusters based on symptom severity. Cluster 0 (n = 24) had a low symptom burden profile across all the post-concussion symptoms. Cluster 1 (n = 35) had moderate symptom burden but with pronounced fatigue. Cluster 2 (n = 25) had a high symptom burden profile across all the post-concussion symptoms. Reflecting the severity of the clusters, there was a significant relationship between the symptom clusters for both the Rivermead (p = 0.05) and PHQ-9 (p = 0.003) questionnaires at 6-weeks follow-up. By leveraging digital ecological momentary assessments, a rich dataset of daily symptom ratings was captured allowing for the identification of symptom severity clusters. These findings underscore the potential of digital technology and machine learning to enhance our understanding of post-concussion symptomatology and offer a scalable solution to support patients with their recovery.

脑震荡后症状负担和动态:来自数字健康干预和机器学习的见解。
遭受脑震荡的人可能会经历一系列症状,这些症状会严重影响他们的生活质量和功能结果。本研究旨在通过将无监督机器学习方法应用于从数字健康干预(HeadOn)中捕获的数据,了解脑震荡后症状的性质和恢复轨迹。作为35天项目的一部分,患者要完成一份每日症状日记,对8种脑震荡后症状进行评分。使用k均值聚类分析症状数据,根据患者的症状概况对患者进行分类。在研究期间,共有84名患者完成了758份症状日记,相当于6064个个体症状评分。疲劳、睡眠障碍和注意力难以集中是报告的最普遍症状。在35天的时间内观察到症状负担的下降,身体和情绪症状显示出早期的恢复速度。在相关矩阵中,情绪低落和易怒(r = 0.84)与记忆力差和注意力难以集中(r = 0.83)之间存在很强的正相关。K-means聚类分析根据症状严重程度确定了三个不同的患者聚类。第0组(n = 24)在所有脑震荡后症状中症状负担较低。第1组(n = 35)有中度症状负担,但有明显的疲劳。第2组(n = 25)在所有脑震荡后症状中都有很高的症状负担。在6周的随访中,Rivermead (p = 0.05)和PHQ-9 (p = 0.003)问卷的症状分类之间存在显著相关性,反映了症状的严重程度。通过利用数字生态瞬时评估,捕获了丰富的每日症状评级数据集,从而可以识别症状严重程度群集。这些发现强调了数字技术和机器学习的潜力,可以增强我们对脑震荡后症状的理解,并提供可扩展的解决方案来支持患者的康复。
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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