IEEE Trans Neural Syst Rehabil Eng. 2024;32:3710-3718. doi: 10.1109/TNSRE.2024.3469284. Epub 2024 Oct 8.
Transcranial photobiomodulation (tPBM) has been widely studied for its potential to enhance cognitive functions of the elderly. However, its efficacy varies, with some individuals exhibiting no significant response to the treatment. Considering these inconsistencies, we introduce a machine learning approach aimed at distinguishing between individuals that respond and do not respond to tPBM treatment based on functional near-infrared spectroscopy (fNIRS) acquired before the treatment. We measured nine cognitive scores and recorded fNIRS data from 62 older adults with cognitive decline (43 experimental and 19 control subjects). The experimental group underwent tPBM intervention over a span of 12 weeks. Based on the comparison of the global cognitive score (GCS), merging the nine cognitive scores into a single representation, acquired before and after tPBM treatment, we classified all participants as responders or non-responders to tPBM with a threshold for the GCS change. The fNIRS data were recorded during the resting state, recognition memory task (RMT), Stroop task, and verbal fluency task. A regularized support vector machine was utilized to classify the responders and non-responders to tPBM. The most promising performance of our machine learning model was observed when using the fNIRS data collected during the RMT, which yielded an accuracy of 0.8537, an F1-score of 0.8421, sensitivity of 0.7619, and specificity of 0.95. To the best of our knowledge, this is the first study to demonstrate the feasibility of predicting the tPBM efficacy. Our approach is expected to contribute to more efficient treatment planning by excluding ineffective treatment options.
经颅光生物调节(tPBM)已被广泛研究,因其具有增强老年人认知功能的潜力。然而,其疗效存在差异,一些个体对治疗没有明显反应。考虑到这些不一致性,我们引入了一种机器学习方法,旨在根据治疗前获得的功能近红外光谱(fNIRS)数据,区分对 tPBM 治疗有反应和无反应的个体。我们测量了 62 名认知能力下降的老年人的 9 项认知评分,并记录了他们的 fNIRS 数据(43 名实验组和 19 名对照组)。实验组接受了为期 12 周的 tPBM 干预。基于全球认知评分(GCS)的比较,将 9 项认知评分合并为单一表示,在 tPBM 治疗前后进行测量,我们将所有参与者根据 GCS 变化的阈值分类为 tPBM 的应答者或无应答者。fNIRS 数据在静息状态、识别记忆任务(RMT)、斯特鲁普任务和言语流畅性任务期间记录。使用正则化支持向量机对 tPBM 的应答者和无应答者进行分类。当使用 RMT 期间收集的 fNIRS 数据时,我们的机器学习模型表现出最有希望的性能,其准确率为 0.8537,F1 得分为 0.8421,灵敏度为 0.7619,特异性为 0.95。据我们所知,这是首次证明预测 tPBM 疗效的可行性的研究。我们的方法有望通过排除无效的治疗选择,为更有效的治疗计划做出贡献。