Department of Neurology, Massachusetts General Hospital, Harvard Medical School, Boston, MA, United States of America.
Department of Computing, Imperial College London, London, United Kingdom.
PLoS One. 2023 Jan 3;18(1):e0278239. doi: 10.1371/journal.pone.0278239. eCollection 2023.
Path integration changes may precede a clinical presentation of Alzheimer's disease by several years. Studies to date have focused on how spatial cell changes affect path integration in preclinical AD. However, vestibular input is also critical for intact path integration. Here, we developed the vestibular rotation task that requires individuals to manually point an iPad device in the direction of their starting point following rotational movement, without any visual cues. Vestibular features were derived from the sensor data using feature selection. Machine learning models illustrate that the vestibular features accurately classified Apolipoprotein E ε3ε4 carriers and ε3ε3 carrier controls (mean age 62.7 years), with 65% to 79% accuracy depending on task trial. All machine learning models produced a similar classification accuracy. Our results demonstrate the cross-sectional role of the vestibular system in Alzheimer's disease risk carriers. Future investigations should examine if vestibular functions explain individual phenotypic heterogeneity in path integration among Alzheimer's disease risk carriers.
路径整合的变化可能在阿尔茨海默病的临床症状出现前几年就已经发生了。迄今为止的研究主要集中在空间细胞变化如何影响临床前 AD 中的路径整合。然而,前庭输入对于完整的路径整合也很关键。在这里,我们开发了前庭旋转任务,要求个体在手边没有任何视觉提示的情况下,在旋转运动后,手动将 iPad 设备指向其起始点的方向。前庭特征是使用特征选择从传感器数据中得出的。机器学习模型表明,前庭特征可以准确地对载脂蛋白 E ε3ε4 携带者和 ε3ε3 携带者进行分类(平均年龄 62.7 岁),准确率在 65%到 79%之间,具体取决于任务试验。所有机器学习模型的分类准确率都相似。我们的研究结果表明,前庭系统在阿尔茨海默病风险携带者中具有横断面作用。未来的研究应探讨前庭功能是否可以解释阿尔茨海默病风险携带者在路径整合方面的个体表型异质性。