From treadmill to outdoor overground walking: Enhancing ground contact timing detection for older adults using transfer learning

IF 4.3
Experimental gerontology Pub Date : 2026-03-01 Epub Date: 2026-02-05 DOI:10.1016/j.exger.2026.113056
Sailee Sansgiri , Emmi Matikainen-Tervola , Merja Rantakokko , Taija Finni , Timo Rantalainen , Neil J. Cronin
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Abstract

Identification of ground contact timings (GCT) is critical for monitoring mobility in older adults. Laboratory methods are precise but limited to controlled environments, restricting their applicability in real-world settings. Treadmills allow extended measurements but fail to reflect the variability of overground walking. We evaluated the performance of deep learning models trained on treadmill data from young adults and their generalizability to treadmill and outdoor walking in older adults. We also explored transfer learning to enhance predictions by fine-tuning models with older adults’ treadmill and outdoor walking data. Foot-mounted inertial measurement unit (IMU) walking data was collected from 20 young adults on treadmills and 26 older adults on treadmills and outdoor level, incline, and decline terrains. Ground truth GCTs were derived using pressure insoles (young adults) and manually-annotated motion capture (older adults). A fully connected neural network, a convolutional neural network (CNN), and a bidirectional long short-term memory network were trained on IMU data. Transfer learning was applied incrementally by fine-tuning the best-performing model with older adults’ data. Model performance was evaluated on unseen outdoor data from 6 participants using F1-score and mean absolute error (MAE). The CNN achieved the highest F1-scores (0.9864 — treadmill, 0.9637 — outdoor level, 0.9538 — incline, and 0.9029 — decline walking) and the lowest MAE. Fine-tuning improved treadmill F1-scores up to n=10, while outdoor level scores plateaued at n=5. Decline walking showed poorer performance, highlighting the need for advanced modeling strategies. These findings underscore the potential of transfer learning for real-world mobility monitoring.
从跑步机到户外地面行走:使用迁移学习增强老年人地面接触时间检测。
识别地面接触时间(GCT)对于监测老年人的行动能力至关重要。实验室方法是精确的,但仅限于受控环境,限制了它们在现实环境中的适用性。跑步机允许扩展测量,但不能反映地上行走的可变性。我们评估了在年轻人跑步机数据上训练的深度学习模型的性能,以及它们在老年人跑步机和户外行走中的泛化性。我们还探索了迁移学习,通过对老年人跑步机和户外步行数据的微调模型来增强预测。研究人员收集了20名年轻人和26名老年人在跑步机上和户外水平、倾斜和下降地形上的步行数据。使用压力鞋垫(年轻人)和手动注释的动作捕捉(老年人)获得真实gct。在IMU数据上训练了全连接神经网络、卷积神经网络(CNN)和双向长短期记忆网络。迁移学习是通过对老年人数据的最佳表现模型进行微调来逐步应用的。采用f1评分和平均绝对误差(MAE)对6名参与者的未见室外数据进行模型性能评估。CNN的f1得分最高(跑步机得分0.9864,户外水平得分0.9637,倾斜得分0.9538,下降步行得分0.9029),MAE最低。微调后的跑步机f1得分达到了n=10,而户外水平的得分在n=5时趋于稳定。下降行走表现较差,突出了需要先进的建模策略。这些发现强调了迁移学习在现实世界移动监测中的潜力。
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来源期刊
Experimental gerontology
Experimental gerontology Ageing, Biochemistry, Geriatrics and Gerontology
CiteScore
6.70
自引率
0.00%
发文量
0
审稿时长
66 days
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